Abstract
Neurocognitive studies of visual word recognition have provided information about brain activity correlated with orthographic processing. Some of these studies related the orthographic neighborhood density of letter strings to the amount of hypothetical global lexical activity (GLA) in the brain as simulated by computational models of word recognition. To further investigate this issue, we used GLA of words and nonwords from the multiple read-out model of visual word recognition (MROM) and related this activity to neural correlates of orthographic processing in the brain by using functional magnetic resonance imaging (fMRI). Words and nonwords elicited linear effects in the cortex with increasing BOLD responses for decreasing values of GLA. In addition, words showed increasing linear BOLD responses for increasing GLA values in subcortical regions comprising the hippocampus, globus pallidus and caudate nucleus. We propose that these regions are involved in the matching of orthographic input onto representations in long-term memory. The results speak to a potential involvement of the basal ganglia in visual word recognition with globus pallidus and caudate nucleus activity potentially reflecting maintenance of orthographic input in working memory supporting the matching of the input onto stored representations by selection of appropriate lexical candidates and the inhibition of orthographically similar but non-matching candidates.
Similar content being viewed by others
Introduction
Orthographic processing in visual word recognition
Successful processing of written words requires the activation and retrieval/reconstruction of stored orthographic information about these words from memory. On average, an English-speaking adult has an active vocabulary ranging from about 17000 to 45000 words1. The astonishing efficiency, speed and ease with which our brains usually carry out visual word recognition reveals indeed a fabulous faculty. This is all the more amazing given that all these words are formed by the combination of a limited number of symbols or letters implying a considerable orthographic similarity between words, which makes some letter combinations more familiar and easier to access and to remember than others2.
Neighborhood density, global lexical activity, and familiarity
In studies of visual word recognition orthographic similarity is typically operationalized by neighborhood density (the number of orthographic word neighbors, which can be generated by changing one letter of a given word3). For example, when subjects make lexical decisions to words and nonwords the standard finding is that responses to words with a high number of neighbors are faster than to words with a low number of neighbors4. In contrast, reaction times to nonwords are slower when they have many word neighbors. This is suggested to be related to the high amount of global lexical activity (GLA) elicited by the activated word neighbors. However, according to the multiple read-out model of visual word recognition (MROM5) one of three response criteria are in effect when subjects make lexical decisions to words.
The response criteria are the following: (1) identification of words: if the activation of a lexical unit reaches a criterion (M-criterion) a YES-answer is produced and the word is identified; (2) a fast-guess mechanism: if GLA over all lexical units reaches a criterion (S-criterion) a YES-answer is elicited. GLA serves as a familiarity/word-likeliness estimate; (3) a time-out criterion (T-criterion) which is set to a fixed value. If this value is reached before the other two are reached a NO-answer will be given. The T- and the S-criteria vary depending on the GLA in the lexicon at a given point in time. If GLA is high then the T-criterion will be delayed and the S-criterion is set to a lower value resulting in an easier to reach deadline. Thus, each word is described by its specific activation over time and because there is multiple read-out from the model, a response can be caused by an item’s activation-match to these different criteria.
When processing words with a high number of neighbors it is assumed – as shown by computer simulations – that these generate high GLA values in the hypothetical mental lexicon through partial activation of all similar representation units5. This extra activity is supposed to allow for the fast-guess resulting in shorter ‘yes’ responses compared to words with only some neighbors and low values of GLA. As for words, nonwords with many neighbors are more wordlike and are supposed to elicit higher levels of GLA in the model suggesting the presence of words and thus to prolong processing of these items by shifting the temporal deadline. As GLA was previously shown to correlate with reaction times6,7 and to correlate with a number of linguistic measures like neighborhood density, word frequency, bigram frequency etc. (see Methods), we use GLA as a single computational measure of orthographic familiarity.
Evidence from neuroimaging
By investigating responses to words and nonwords differing in number of neighbors, previous neuroimaging research found only little neural evidence for the GLA-hypothesis as implemented in the MROM. Rather, it was repeatedly found that blood oxygen level dependent (BOLD) responses were greater for less familiar stimuli (i.e., words with only some neighbors). For example, Binder and colleagues8 reported greater activation in response to words without neighbors in left angular gyrus and prefrontal and ventro-lateral temporal areas which was suggested to reflect the fact that accurate responses in lexical decisions depend on the activation of single word semantics. Moreover, Fiebach and colleagues9 found a lexicality by neighborhood density interaction in the left mid-dorsolateral prefrontal cortex and in a region slightly anterior to the pre-SMA in the medial superior frontal gyrus. Activity in the mid-dorsolateral prefrontal cortex was strongest in response to nonwords with many neighbors. In contrast, activation in the medial superior frontal gyrus was stronger for words with only some neighbors. Fiebach et al.9 interpreted this activation in frontal regions to reflect domain-general processing at a later post- or extra-lexical level rather than as reflecting activation in a hypothetical mental lexicon. However, recent findings showed that words with many neighbors elicited higher activity in the dorsolateral prefrontal cortex suggested to reflect working memory processes, and activity in the middle temporal cortex was related to the identification of words from long term memory10.
While it is clear that for successful reading, orthographically similar words must be efficiently distinguished from each other, it is still not exactly understood how and where (i.e., in which neural networks) the whole process of word recognition is carried out. A lot of neuroimaging evidence suggests that the ventral occipital-temporal cortex hosting the visual word form area (VWFA) is involved in the identification of sublexical and probably also of lexical codes11,12,13,14,15,16,17. Furthermore, evidence suggests an increasing specialization from letters to words from posterior to anterior17. Recent research indicates that visual word recognition is rather based on a highly distributed pattern of ‘orthographic’, ‘phonological’, and ‘semantic’ brain activity including the posterior inferior parietal lobule (angular and supramarginal gyrus), the lateral temporal cortex (middle and inferior temporal gyri), and parts of the left inferior frontal gyrus (pars opercularis, pars orbitalis and triangularis) rather than being restricted to a specialized region8,18,19,20,21.
Subcortical involvement in memory for words
Previous research on visual word recognition mostly focused on cortical regions involving the dorsal and ventral reading pathways22. But there are also findings showing an involvement of subcortical regions, such as the perirhinal cortex and hippocampus23,24,25,26,27,28,29 and of the basal ganglia30,31,32,33,34,35.
A number of studies reported activity of the caudate nucleus of the basal ganglia during language tasks30,31,32,33,34,35,36,37,38,39,40. For example, stimulation of the left head of the caudate nucleus was found to induce perseveration in picture naming40 and showed higher activation in bilinguals when words had to be translated rather than repeated41. Caudate activity was also found when pictures had to be named in the non-dominant language or when subjects had to decide if a letter string is a word in the second language when it is also a word with a different meaning in the first42. Further evidence for an involvement in lexico-semantic control is provided by caudate activation in bilingual semantic judgment tasks39 and by studies showing activation of the caudate in the maintenance of visual and verbal information in working memory30,43,44.
Recollection and familiarity
By many accounts45,46,47,48,49 the hippocampus is suggested to play an important role in recollection and to be involved in the formation of associative memories50,51. In line with this view are findings showing hippocampus activation during learning of new lexicons23,52 and results showing correlations of hippocampal grey matter volume with form-sound associations of words53. In contrast to its widely accepted role in recollection there is considerable disagreement about the hippocampus’ role in processing the familiarity of stimuli, which by most views is believed to be supported by the perirhinal cortex48,54,55,56. However, there is evidence in support of the idea that the hippocampus supports both recollection and familiarity57,58,59,60,61,62,63.
The present study
Taken together, previous studies investigating lexical processing by manipulating orthographic similarity in visual word recognition tasks reported mixed results. Some studies found evidence for GLA-effects compatible with the activation of orthographically similar representations6,7 while others did not8,9.
Previous studies mostly used the lexical decision task to investigate visual word recognition, which potentially introduces extra-lexical executive processes thus making it difficult to dissociate lexical and extra-lexical processing. To avoid such potential confounds we used a silent reading paradigm. Furthermore, we presented only short words and nonwords (four letters in length) posing only low demands on the reading process itself.
As previously shown the task used has an influence on how stimuli will be processed64. Silent reading will probably result in less brain activity elicited by our stimuli because no explicit decision related process is involved and reading is a highly automated process. However, in terms of ecological validity, if we investigate processes of (silent) reading we should use silent reading as a task. Thus, with respect to previous results obtained with the lexical decision task, we would expect less brain activity in general and probably less decision-related brain activity in regions involved in such processing.
Thus, with the present fMRI study we aimed to investigate the neural bases of orthographic processing at a more fine-grained level by using model-generated GLA (which was shown to be correlated with reaction times) as an index of orthographic familiarity (instead of using a single linguistic measure such as, e.g., neighborhood density). For this, we used the GLA values of 300 words and 300 nonwords as simulated by the MROM5. We hypothesized that we should observe a systematic variation of BOLD responses to words and nonwords corresponding to these levels of GLA. GLA-correlated neural activation should provide information about orthographic familiarity processing in the brain by identifying brain regions which potentially could be parts of a distributed mental lexicon. In addition, if GLA is correlated with brain activity in subcortical regions like the hippocampus or basal ganglia we should observe a systematic graded variation of the BOLD response for different levels of GLA which could be interpreted as reflecting familiarity processing.
Results
Imaging results
Words and Nonwords compared to Baseline
We first contrasted words and nonwords with the fixation baseline at the whole-brain level (FWE corrected, p < 0.05, cluster extent 25 voxels). Both words and nonwords recruited nearly the same regions showing activation in regions of the ventral stream, including the occipital pole, the occipital fusiform/temporal cortex and the temporal gyrus. Furthermore, words and nonwords showed higher activation in the superior parietal lobule/anterior parietal sulcus including parts of the angular and supramarginal gyri as well as in the precentral gyrus and the pars opercularis of the inferior frontal gyrus. Another cluster was evident for words and nonwords in premotor cortex/supplementary motor area. In addition, higher activation compared to baseline was obtained in bilateral hippocampus and in the central/postcentral gyrus. Furthermore, the central opercular cortex/postcentral gyrus showed higher activation for nonwords compared to the fixtion baseline (see Tables 1 and 2 and Fig. 1).
Words vs. Nonwords
The direct comparison of words and nonwords (cluster-level FDR corrected for multiple comparisons, p < 0.05) revealed that no region was activated higher for words than for nonwords. In contrast, several left hemispheric regions comprising the anterior and posterior supramarginal gyrus, the precentral gyrus, the superior parietal lobule, the inferior occipital cortex and the occipital fusiform gyrus showed greater activity for nonwords compared to words (Fig. 1).
Effects of GLA for Words and Nonwords
To identify regions related to orthographic similarity we looked for effects of GLA by contrasting the highest vs. lowest levels of GLA, separately for words and nonwords. We looked also for effects with GLA as a continous variable on the whole brain level. The regions and the effects for words and nonwords were nearly the same as for the reported analyses with GLA-levels. The results of this analysis can be found as Supplementary Table S1.
For nonwords no region showed higher activity for high GLA- than for low GLA-nonwords. In contrast, low GLA-nonwords showed greater activity than high GLA-nonwords in many regions comprising the pre- and postcentral gyrus and the pars opercularis of the inferior frontal gyrus (−57 2 22), left superior parietal lobule, left anterior/posterior supramarginal gyrus, left angular and postcentral gyrus (−36 −43 40), left planum polare, Heschl’s Gyrus, left anterior superior temporal gyrus, left central opercular cortex (−51 −1 −5), right superior lateral occipital cortex, right angular gyrus, right precuneus (27 − 61 34), left lateral occipital cortex (−33 −88 13), visual cortex, left supplementary motor area (−3 −1 58), left lingual gyrus, precuneus (−3 −67 7) and right anterior/posterior supramarginal gyrus, right superior parietal lobule, right angular and postcentral gyrus (45 −40 55).
We calculated 2 (lexical status: words/nonwords) × 3 (GLA: low/medium/high) repeated measures ANOVAs and tested for linear effects of GLA. All regions showed main effects of GLA (all Fs > 3.2) and all of these were found to be linear (all Fs > 8.5). Furthermore, the left dorsolateral prefrontal cluster (F(2, 38) = 8.729, p = 0.001), left planum polare (F(2, 38) = 5.373, p = 0.009), right lateral superior occipital cortex/angular gyrus (F(2, 38) = 6.179, p = 0.005) and left lingual gyrus (F(2, 38) = 4.358, p = 0.020) showed interactions of lexical status and GLA which was due to linear effects of GLA for nonwords but not for words in these regions (see Table 3 and Fig. 2).
The contrast of higher activity for high GLA-words compared to low GLA-words showed the strongest activity in subcortical regions comprising the hippocampus and parts of the basal ganglia. The strongest activation was found for a globus pallidus/hippocampus cluster. Furthermore, the caudate tail and body showed stronger activation in response to high GLA-words. In addition, four cortical regions showed higher activity for high GLA-words compared to low GLA-words comprising, right posterior cingulate cortex, left supramarginal gyrus and right insula (see Table 4). To verify if regions associated with higher activity for high GLA compared to low GLA stimuli were preferentially associated with words or nonwords we calculated 2 (lexical status: words/nonwords) by 3 (GLA: low/medium/high) repeated measures ANOVAs on the peak values of the respective contrasts and checked for linear effects of GLA.
The ANOVA for the globus pallidus/hippocampus cluster (−15 −7 1/−21 −13 −14) revealed a main effect of GLA (F(1, 19) = 6.386, p = 0.004) and an interaction of lexical status with GLA (F(2, 38) = 4.214, p = 0.022). The main effect of GLA was linear (F(1, 19) = 9.962, p = 0.005). Closer evaluation of the interaction showed that the effect of GLA was significant for words (F(2, 38) = 6.111, p = 0.005) and nonwords F(2, 38) = 4.555, p = 0.017). However, the GLA effect was linear for words (F(1, 19) = 12.236, p = 0.002), but not for nonwords (F(1, 19) = 1.286, p = 0.271).
Furthermore, the tail of the left caudate nucleus (−18 −46 13) showed a main effect of GLA (F(1, 19) = 3.914, p = 0.028) and the interaction of lexical status with GLA (F(2, 38) = 2.940, p = 0.065) approached significance. The main effect of GLA was again linear (F(1, 19) = 5.106, p = 0.036). The evaluation of the interaction showed that the effect of GLA was significant for words (F(2, 38) = 5.510, p = 0.008), but not for nonwords (F(2, 38) = 0.839, p = 0.440). Again, the test for linear effects of GLA was significant for words (F(1, 19) = 5.993, p = 0.024), but not for nonwords (F(1, 19) = 1.293, p = 0.270) (see Table 4 and Fig. 3).
Further main effects of GLA were found in the caudate body (F(2, 38) = 4.285, p = 0.021), the right posterior cingulate cortex (F(2, 38) = 6.084, p = 0.005), and the left anterior supramarginal gyrus (F(2, 38) = 4.688, p = 0.015), which were also linear: caudate body (F(1, 19) = 9.221, p = 0.007), right posterior cingulate (F(1, 19) = 12.260, p = 0.002), left anterior supramarginal gyrus (F(1, 19) = 8.151, p = 0.010). These regions showed no main effect of lexical status and no interaction of lexical status and GLA suggesting that orthographic similarity was not processed differently for words and nonwords in these regions.
The reverse contrast of higher activity for low GLA-words compared to high GLA-words revealed significant differences in left inferior lateral occipital and occipital fusiform gyrus (−30 −82 −2), the superior frontal cortex/precentral gyrus (−18 −4 64) and in the superior parietal lobule/posterior supramarginal gyrus/primary somatosensory cortex (−39 −40 58) (Table 4 and Fig. 4). Thus, in regions believed to be involved in orthographic-phonological conversion and articulatory processing. The repeated measures ANOVAs and the linear contrasts revealed higher activity for low GLA-words in all three regions: occipital fusiform (F(2, 38) = 8.390 p = 0.001; F(1, 19) = 12.924, p = 0.002), premotor cortex (F(2, 38) = 6.313, p = 0.004; F(1, 19) = 15.776, p = 0.001) and superior parietal lobule/posterior supramarginal gyrus (F(2, 38) = 12.644, p < 0.001; F(1, 19) = 40.548, p < 0.001).
Discussion
The present fMRI study aimed to investigate the neural basis of orthographic processing by using GLA as the simulated activity of a computational model of visual word recognition of words and nonwords as an index of orthographic familiarity and similarity. We reasoned that if in response to these words and nonwords differential GLA-correlated neural activation is found in brain regions believed to be involved in visual word processing, (e.g., ventral occipital-temporal cortex), or in regions suggested to process orthographic-phonological relations, (e.g., inferior parietal, inferior frontal and middle temporal cortex), or in subcortical regions involved in recollection and/or familiarity processing, (e.g., hippocampal complex or parts of the basal ganglia), this would provide evidence for these regions to be involved in the processing of orthographic familiarity and similarity.
The words and nonwords in the present study activated the reading network of the left ventral stream in the occipital pole, the inferior occipital-temporal cortex, and the fusiform gyrus. Activation was also found in the dorsal stream where words and nonwords showed higher activation compared to fixation baseline in the superior parietal lobule, the anterior intraparietal sulcus, parts of the angular and supramarginal gyri, as well as in precentral gyrus and pars opercularis of the inferior frontal gyrus and premotor and supplementary motor area (see Fig. 1 and Tables 1 and 2).
To investigate orthographic processing more specifically, we looked for brain activity in response to model-generated GLA of words and nonwords assumed to reflect different levels of orthographic similarity. The results showed differential brain activity for the different levels of GLA. Nonwords with low GLA always elicited higher activity than nonwords with high GLA and this activity was found in regions comprising left pars opercularis of the inferior frontal gyrus, left pre- and postcentral gyrus, left superior parietal lobule (supramarginal and angular gyri), left superior/inferior lateral occipital cortex and the occipital pole (see Table 3 and Fig. 2).
In contrast to nonwords, responses to words showed a more differential pattern. As nonwords words elicited linear effects with increasing brain activity for decreasing levels of GLA in cortical regions comprising left inferior lateral occipital, occipital fusiform cortex and superior parietal lobule, as well as a decrease in deactivation with decreasing levels of GLA in the premotor cortex (see Table 4 and Fig. 3). One might speculate that this activity could be related to higher demands on the inhibition of button presses in response to more familiar words and word-like nonwords.
Thus, words and nonwords showed higher activity in response to less familiar items in regions suggested to be involved in identification, articulation and also in grapheme-phoneme conversion like the fusiform gyrus, pars opercularis, precentral gyrus and superior parietal lobule. This higher activity in response to lower levels of GLA is likley related to more effortful processing of these items.
However, words elicited also linear effects of increasing brain activity for increasing levels of GLA in subcortical regions comprising a globus pallidus/hippocampus cluster and the body and tail of the caudate nucleus (see Table 4 and Fig. 3).
Concerning the recognition of previously encountered stimuli dual-process theories of recognition memory assume that the processes of familiarity and recollection are in effect and to be supported by structures of the medial temporal lobe64. Most researchers agree that the hippocampus is involved in the recollection of memories49,65,66 whereas the perirhinal cortex is suggested to support familiarity processing45,46,48.
However, recent research suggests a possible strength confound when investigating recollection and familiarity based recognition memory. It was proposed that recollection based memories in previous studies were always stronger memories and familiarity based memories were always somewhat weaker and thus the obtained activation differences in hippocampal and perirhinal regions could simply have reflected differences in the degree of strength and not in kind60. In line with this view, recent studies reported increased hippocampus activation for strong familiarity based memories57,58,61 adding support for familiarity processing in the hippocampus. Activity in the hippocampus and perirhinal cortex during learning varied as a function of subsequent item memory strength when source memory strength was held at chance level, suggesting that activation in the medial temporal cortex signals memory strength57. Furthermore, a non-linear relationship between predictive memory strength in the hippocampus and perirhinal cortex was found58. Both regions showed a differential pattern of activity for items with high vs. medium and medium vs. low memory strength. A cluster in left hippocampus discriminated between high and medium memory strength and a cluster in right perirhinal cortex discriminated between medium and low memory strength, suggesting that hippocampus activation signals strong memories and perirhinal cortex somewhat weaker memories. Furthermore, results from intracranial EEG showed that the hippocampus is found to be active for both recollection and familiarity67.
In line with the above reported findings and the idea that the hippocampus could also signal the familiarity of stimuli68, we would like to propose that the linear increase in BOLD response for words with increasing GLA in the globus pallidus/hippocampus cluster reflects the (pre-)activation of word representations with similar orthographic codes in long-term memory. High GLA-words are likely to be encountered more often and to have more neighbors with higher frequencies and also higher bigram counts and frequencies, as was the case in the present study (see Table 5). Thus, they are per se more similar to many other word representations and thus more familiar. We suggest that this resulted in the formation of stronger memory traces for orthographically similar words, which are activated when high GLA-words are encountered. A higher activity for high GLA-words could thus reflect the matching process of word stimuli onto orthographic representations in long-term memory. The specifics of this matching process probably depend on the level of orthographic similarity between the input and stored word representations in long-term memory, but probably also on inter-item similiarity of the stored representations. We thus suggest that higher activity in the hippocampus in response to high GLA-words reflects a higher degree of familiarity with the input as compared to low GLA-words. Such an interpretation would be in line with the assumption of the declarative/procedural model of memory28, proposing the hippocampus to be part of a declarative memory system and to be involved in the storage of lexico-semantic information. In addition, it is likely that perception of high GLA-words not only leads to stronger activation of representations of orthographically similar words, but also to stronger activation of other features of these words, such as phonological and semantic ones26,69,70.
Similar to words, nonwords elicited higher activity in the hippocampus compared to the fixation baseline (see Table 2). In contrast to words, nonwords showed no linear effect for different levels of GLA in the hippocampus, which contrasts with predictions of models of visual word recognition that assume similar linear effects for words and nonwords as a function of similar levels of GLA. One explanation for this dissociation could be that in addition to the activation of orthographically similar representations words activate their item-specific representation in memory which should boost activation for highly familiar stimuli69 compared to less familiar ones, probably also driven by semantic activity. In contrast, nonwords which by definition have no item-specific representations exactly matching the input (and no semantic representations) would fail to produce such item-specific activation, which in turn results in lower activation and no linear effects of GLA.
Concerning the activation of the globus pallidus and the caudate nucleus previous language studies studies showed a possible involvement in higher cognitive processing30,39,70,71,72,73,74. Increased caudate activity for semantic memories was reported during living/non-living decisions70. Furthermore, caudate nucleus activity was found for the type of semantic attributes during similarity judgments for written words71. In addition, caudate activity was found to be higher in response to words than to pseudowords in an auditory semantic priming study72 and for late-learned words compared to early-learned words73, as well as in high-level semantic ambiguity processing74. Furthermore, findings from intracranial electrical stimulation of the caudate nucleus and putamen during surgery for tumors were found to result in anarthria (putamen), whereas stimulation of the caudate nucleus led to perserverations suggesting putamen involvement in motor processing and caudate nucleus involvement in the cognitive control of language39. A recent resting-state functional connectivity study with 970 healthy subjects with seed regions in Broca’s and Wernicke’s areas also identified an extended network, which included not only prefrontal, temporal and parietal cortical regions, but also subcortical ones, such as the bilateral caudate and left putamen/globus pallidus and subthalamic nucleus which were found to be functionally connected to Broca’s and Wernicke’s areas75.
Most models of visual word recognition do not directly speak to brain regions involved in language processing but some models do and suggest an subcortical involvement. The lexical selection model allocates the selection of appropriate candidate representations to the basal ganglia33,76. The basal ganglia are proposed to contribute to the alignment of language related input into ongoing language plans by monitoring, inhibiting and selecting appropriate lexical candidates. Specifically, it is proposed that the basal ganglia are involved in a monitoring process, which becomes active in case too many lexical alternatives were activated and scanning for improper candidates is necessary to inhibit and preclude these items from further processing.
Moreover, Longworth and colleagues34 tested the idea of the declarative/procedural memory model26 that the basal ganglia are part of the fronto-striatal procedural memory system where grammatical rules are automatically applied to language. Contrary to the expectations, their results showed that dysfunction of the basal ganglia did not lead to impairment in grammatical processing, but instead to difficulties in suppressing semantically appropriate alternatives. In addition, patients with striatal dysfunctions were found to have difficulties to suppress the infrequent meaning of homophones in semantic priming studies providing further evidence for an involvement of the basal ganglia in the selection process of appropriate lexical candidates76.
Previous research showed an involvement of the basal ganglia and especially the caudate in articulatory aspects of language77. However, it seems that caudate activation is not restricted to language tasks involving a productive component and thus not solely to depend on the articulatory aspects of language, as evidenced by caudate activation during listening to auditorily presented narratives78, or during reading of texts with either positive or negative valence79.
A number of studies with healthy participants showed caudate nucleus and globus pallidus activation for visual and verbal material mainly during the maintenance phase of working memory tasks, but sometimes during encoding and retrieval31,42,43,44,80. Bilateral caudate nucleus showed prolonged activation during the maintenance phase for both materials and caudate head showed higher activation during retrieval in the verbal condition. Especially, the tail of the caudate nucleus showed more prolonged activation during verbal short-term memory43.
Moreover, equally active working memory load dependent activation of the left anterior caudate, left anterior putamen and globus pallidus was found during encoding and maintenance phases, but not during the response phase in a Sternberg task31 (for similar results see81,82 for globus pallidus activation during the response phase). These results were interpreted to reflect an important role of the anterior basal ganglia in working memory load dependent encoding, maintenance and retrieval. Such an interpretation is further in line with electrophysiological findings from primates83,84 and results of a meta-analysis based on human functional connectivity measures suggesting a tripartite division of the basal ganglia into motor, associative and limbic regions80. Thus, besides the well-established role of the basal ganglia in motor control much evidence suggests an involvement in language processing, most probably by supporting verbal working memory processes and the selection and inhibition of competing lexical alternatives.
In line with these findings we suggest that the linear activity in response to words in the globus pallidus and the caudate reflects an involvement in working memory and the selection and inhibition of lexical candidates during silent reading. Compared to low GLA- and medium GLA-words, high GLA-words in our study activate more orthographically similar representations posing a higher working memory load, higher maintenance effort during matching the input against stored representations, and higher effort for the selection of appropriate and the inhibition of inappropriate candidates, theoretically associated with the hippocampus.
In summary, the results showed that model simulated GLA – as a computational measure from a model of visual word recognition – is likely to reflect orthographic familiarity and wordlikeliness. Words and nonwords showed increased activation in response to decreasing levels of GLA in cortical regions suggested to be involved in the perception, articulation and grapheme-phoneme conversion. Probably reflecting more effortful processing of these items. In addition, the brain’s response to different levels of GLA of words showed that the more familiar a word the higher the subcortical activation in the basal ganglia and the hippocampus. We suggest that this activation reflects the level of familiarity with these words and probably to be based on the interaction of working memory and long-term memory processes in these regions.
Method
We used the same procedure, experimental settings and the same scanner parameters as in10.
Ethics
The study was approved by the ethics committee of the University of Salzburg (”Ethikkommission der Universität Salzburg”) and was in accordance with the principles expressed in the declaration of Helsinki. Informed consent was obtained from all participants.
Participants
Twenty-three healthy subjects (eight men) participated in the fMRI study. All were right-handed, native German speakers. All had normal or corrected to normal vision, were free of any current or past neuropsychiatric disorders, and did not take psychoactive medication. All subjects were skilled readers with no reading disabilities. All subjects were not bilinguals in terms of having the same level of fluency in two or more languages. Mean age was 25.4 years (Range: 18–44; SD: 5.8). Three subjects were excluded from the analysis, two because of a programming error and one due to a hardware failure. Participants were recruited by students of the University of Salzburg and received course credit for their participation. All participants provided written informed consent and were tested individually at the Centre for Cognitive Neuroscience (CCNS) at the University of Salzburg.
Procedure
Before the experimental session subjects performed a practice session with 20 items on a laptop outside the scanner. In the scanner, subjects were asked to read the words and nonwords silently. The scanning session lasted about 50 minutes and the whole experiment about one hour and 30 minutes. First, there were five minutes of anatomical scanning, followed by 2 × 21 minutes of testing with a short break in between the functional scans. Words and nonwords were presented on a 1024 × 768 pixel screen in white font on black background projected on a mirror inside the scanner. The font was “Arial” (50 pt). Words and nonwords were presented in random order to each subjects for 700 ms. After each stimulus, a blank screen with a fixation cross was presented. Presentation times of the fixation cross were jittered: 500 fixation crosses were presented for 2500 ms, 60 for 3200 ms, 25 for 7500 ms and 15 for 10500 ms. The experimental software used was Presentation from Neurobehavioral Systems (San Francisco, USA; http://www.neurobs.com/). Male or female names (30 in total; four to seven letters long) were randomly presented as catch trials during the experiment. Subjects were instructed to respond to the catch trials by pressing a button of an fMRI compatible button box (Cambridge Research Systems Ltd, Rochester, UK) whenever a name was presented during testing.
Stimuli
The stimuli were the same as in6. Their GLA values were generated with the MROM as described in5,85 using a lexicon of 1025 monosyllabic three to five letter German words.
All 551 four-letter words were chosen from the CELEX database86 and a pool of 2000 nonwords was generated from these words by changing one, two, three, or four letters, excluding combinations that formed words. As a stable measure of global lexical activity (GLA), the average summed lexical activity generated across the first seven cycles of processing in the MROM was computed and transformed into z-values. 300 words and 300 nonwords were then selected so that the two resulting distributions were normal with significantly different means and equal variances. All 600 stimuli had four letters. Table 5 shows the stimulus characteristics for the different GLA levels for words and nonwords.
In addition, a correlation analysis of GLA with several linguistic variables for words and nonwords of the current study revealed several significant correlations showing that GLA as a single computational measure of the MROM reflects the linguistic properties of words and nonwords (neighborhood density: words = 0.78, nonwords = 0.75; summed frequency of neighbors: words = 0.36, nonwords = 0.31; number of higher frequency neighbors: words = 0.50, nonwords = 0.71; summed frequency of higher frequency neighbors: words = 0.34, nonwords = 0.31; bigram count: words = 0.67, nonwords = 0.74; summed bigram frequency: words = 0.40, nonwords = 0.31; and number of bigram neighbours: words = 0.33, nonwords = 0.49).
Image acquisition
Functional and structural imaging was performed with a Siemens Tim Trio 3 Tesla scanner using a 32-channel head coil (Siemens, Erlangen, Germany). A gradient echo field map (TR 488 ms, TE 1 = 4.49 ms, TE 2 = 6.95 ms) and a high resolution (1 × 1 × 1.2 mm) structural scan with a T1 weighted MPRAGE sequence was acquired from each participant. The structural images were followed by two runs with 510 volumes each of functional images sensitive to BOLD contrast acquired with a T2* weighted gradient echo EPI sequence (TR = 2520 ms, TE = 33 ms, flip angle = 77°, number of slices = 36, slice thickness = 3 mm, 64 × 64 matrix, FOV = 192 mm). Six dummy scans were acquired at the beginning of each functional run before stimulus presentation. Low frequency noise was removed with a high-pass filter (128 s).
For preprocessing and statistical analysis, SPM8 software (http://www.fil.ion.ucl.ac.uk/spm/), running in a MATLAB 7.6 environment (Mathworks Inc., Natick MA, USA), was used. Functional images were realigned, unwarped, corrected for geometric distortions using the fieldmap of each participant and slice time corrected. The high resolution structural T1weighted image of each participant was processed and normalized with the VBM8 toolbox (http://dbm.neuro.uni-jena.de/vbm8) using default settings. Each structural image was segmented into gray matter, white matter and CSF and denoised and warped into MNI space by registering it to the DARTEL template provided by the VBM8 toolbox via the high-dimensional DARTEL87 registration algorithm. Based on these steps, a skull stripped version of each image in native space was created. To normalize functional images into MNI space, the functional images were co-registered to the skull stripped structural image and the parameters from the DARTEL registration were used to warp the functional images, which were resampled to 3 × 3 × 3 mm voxels and smoothed with a 8-mm FWHM Gaussian kernel.
Imaging analysis
Statistical analysis was performed with a GLM two staged mixed effects approach. In the subject-specific first level model, each condition was modelled by convolving stick functions at its onsets with SPM8’s canonical hemodynamic response function and no time derivatives. On this subject-specific first level model conditions of interest were contrasted against the fixation baseline. These subject-specific contrast images were used for the second level group analysis. For statistical comparisons of words and nonwords against the fixation baseline a familywise error (FWE) corrected cluster threshold (p < 0.05) with a cluster extent of 25 was used. Direct comparisons of words and nonwords were thresholded at the cluster level at p < 0.05 corrected with false discovery rate (FDR), voxel level uncorrected p < 0.001. Furthermore, direct comparisons of levels of GLA for words and nonwords were thresholded at an uncorrected voxel level threshold of p < 0.005 and a cluster extent of 25 in order to allow potential activations in the medial temporal lobe to be included, given the lower signal to noise ratio in this region88. All stereotaxic coordinates for voxels with maximal z-values within activation clusters are reported in the MNI coordinate system.
References
D’Anna, C. A., Zechmeister, E. B. & Hall, J. W. Toward a meaningful definition of vocabulary size. J Lit Res. 23(1), 109–122 (1991).
Jacobs, A. M. & Graf, R. Wortformgedächtnis als intuitive Statistik in Sprachen mit unterschiedlicher Konsistenz [Word form memory as intuitive statistics in languages with different consistency]. Zeitschrift für Psychologie. 213(3), 133–141 (2005).
Coltheart, M., E. Davelaar, J. T. Jonasson & Besner, D. Access to the internal lexicon. Attention and performance VI. (1977).
Andrews, S. The effect of orthographic similarity on lexical retrieval: Resolving neighborhood conflicts. Psychon Bull Rev. 4(4), 439–461 (1997).
Grainger, J. & Jacobs, A. M. Orthographic processing in visual word recognition: A multiple read-out model. Psychol Rev. 103(3), 518–565 (1996).
Braun, M. et al. Model-generated lexical activity predicts graded ERP amplitudes in lexical decision. Cognitive Brain Res. 1073-1074, 431–439 (2006).
Holcomb, P. J., Grainger, J. & O’Rourke, T. An electrophysiological study of the effects of orthographic neighborhood size on printed word perception. J Cogn. Neurosci. 14(6), 938–950 (2002).
Binder, J. R. et al. Neural correlates of lexical access during visual word recognition. J Cogn Neurosci. 15(3), 372–393 (2003).
Fiebach, C. J., Ricker, B., Friederici, A. D. & Jacobs, A. M. Inhibition and facilitation in visual word recognition: Prefrontal contribution to the orthographic neighborhood size effect. Neuroimage. 36(3), 901–911 (2007).
Braun, M. et al. Many Neighbors are not Silent. Lexical and extra-lexical processing in visual word recognition. Front Hum Neurosci. 9 (2015).
Baeck, A., Kravitz, D., Baker, C. & Op de Beeck, H. P. Influence of lexical status and orthographic similarity on the multi-voxel response of the visual word form area. Neuroimage. 111, 321–328 (2015).
Cohen, L. et al. The visual word form area. Brain 123(2), 291–307 (2000).
Kronbichler, M. et al. The visual word form area and the frequency with which words are encountered: Evidence from a parametric fMRI study. Neuroimage. 21(3), 946–953 (2004).
Kronbichler, M. et al. Taxi vs. taksi: on orthographic word recognition in the left ventral occipitotemporal cortex. J Cogn Neurosci. 19(10), 1584–1594 (2007).
Schurz, M. et al. Top-down and bottom-up influence on the left ventral occipito-temporal cortex during visual word recognition: An analysis of effective connectivity. Hum Brain Mapp. 35(4), 1668–1680 (2014).
Schurz, M. et al. A dual-route perspective on brain activation in response to visual words: evidence for a length by lexicality interaction in the visual word form area (VWFA). Neuroimage. 49(3), 2649–2661 (2010).
Vinckier, F. et al. Hierarchical Coding of Letter Strings in the Ventral Stream: Dissecting the Inner Organization of the Visual Word-Form System. Neuron. 55(1), 143–156 (2007).
Binder, J. R., Desai, R. H., Graves, W. W. & Conant, L. L. Where is the semantic system? A critical review and meta-analysis of 120 functional neuroimaging studies. Cereb Cortex. 19(12), 2767–2796 (2009).
Binder, J. R. & Desai, R. H. The neurobiology of semantic memory. Trends Cogn Sci. 15(11), 527–536 (2011).
Huth, A. G., de Heer, W. A., Griffiths, T. L., Theunissen, F. E. & Gallant, J. L. Natural speech reveals the semantic maps that tile human cerebral cortex. Nature. 532(7600), 453–458 (2016).
Price, C. J. & Devlin, J. T. The interactive account of ventral occipitotemporal contributions to reading. Trends Cogn Sci. 15(6), 246–253 (2011).
Cohen, L. et al. Reading normal and degraded words: contribution of the dorsal and ventral visual pathways. Neuroimage. 40(1), 353–366 (2008).
Breitenstein, C. et al. Hippocampus activity differentiates good from poor learners of a novel lexicon. Neuroimage. 25(3), 958–968 (2005).
de Zubicaray, G. I., McMahon, K. L., Eastburn, M. M., Finnigan, S. & Humphreys, M. S. fMRI evidence of word frequency and strength effects in recognition memory. Cogn Brain Res. 24(3), 587–598 (2005).
Duff, M. C. & Brown-Schmidt, S. The hippocampus and the flexible use and processing of language. Front Hum Neurosci. 6, 1–11 (2012).
Kuchinke, L., Fritzemeier, S., Hofmann, M. J. & Jacobs, A. M. Neural correlates of episodic memory: Associative memory and confidence drive hippocampus activations. Behav Brain Res. 254, 92–101 (2013).
Meinzer, M. et al. Integrity of the hippocampus and surrounding white matter is correlated with language training success in aphasia. Neuroimage. 53(1), 283–290 (2010).
Ullman, M. T. Contributions of memory circuits to language: The declarative/procedural model. Cognition. 92(1), 231–270 (2004).
Whitney, C. et al. Task-dependent modulations of prefrontal and hippocampal activity during intrinsic word production. J Cogn Neurosci. 21(4), 697–712 (2009).
Ali, N., Green, D. W., Kherif, F., Devlin, J. T. & Price, C. J. The role of the left head of caudate in suppressing irrelevant words. J Cogn Neurosci. 22(10), 2369–2386 (2010).
Chang, C., Crottaz-Herbette, S. & Menon, V. Temporal dynamics of basal ganglia response and connectivity during verbal working memory. Neuroimage. 34(3), 1253–1269 (2007).
Fiebach, C. J., Friederici, A. D., Müller, K. & von Cramon, D. Y. fMRI evidence for dual routes to the mental lexicon in visual word recognition. J Cogn Neurosci. 14(1), 11–23 (2002).
Klostermann, F., Krugel, L. K. & Ehlen, F. Functional roles of the thalamus for language capacities. Front Sys Neurosci. 7, 32 (2013).
Longworth, C. E., Keenan, S. E., Barker, R. A., Marslen-Wilson, W. D. & Tyler, L. K. The basal ganglia and rule-governed language use: Evidence from vascular and degenerative conditions. Brain. 128(3), 584–596 (2005).
Rosen, H. J., Ojemann, J. G., Ollinger, J. M. & Petersen, S. E. Comparison of brain activation during word retrieval done silently and aloud using fmri. Brain Cogn. 42(2), 201–217 (2000).
Tettamanti, M. et al. Basal ganglia and language: phonology modulates dopaminergic release. Neuroreport. 16(4), 397–401 (2005).
Bohrn, I. C., Altmann, U., Lubrich, O., Menninghaus, W. & Jacobs, A. M. When we like what we know-a parametric fMRI analysis of beauty and familiarity. Brain Lang. 124, 1–8.
Friederici, A. D. What’s in control of language? Nature Neurosci. 9(8), 991–992 (2006).
Crinion, J. et al. Language control in the bilingual brain. Science 312(5779), 1537–1540 (2006).
Robles, S. G., Gatignol, P., Capelle, L., Mitchell, M.-C. & Duffau, H. The role of dominant striatum in language: a study using intraoperative electrical stimulations. J Neurolog Neurosur Psychiat. 76(7), 940–946 (2005).
Price, C. J., Green, D. W. & Von Studnitz, R. A functional imaging study of translation and language switching. Brain. 122(12), 2221–2235 (1999).
Van Heuven, W. J. B., Schriefers, H., Dijkstra, T. & Hagoort, P. Language conflict in the bilingual brain. Cereb Cortex. 18(11), 2706–2716 (2008).
Majerus, S. et al. The commonality of neural networks for verbal and visual short-term memory. J Cogn Neurosci. 22(11), 2570–2593 (2010).
Menon, V., Anagnoson, R. T., Glover, G. H. & Pfefferbaum, A. Basal ganglia involvement in memory-guided movement sequencing. Neuroreport. 11(16), 3641–3645 (2000).
Aggleton, J. P. & Brown, M. W. Interleaving brain systems for episodic and recognition memory. Trends Cogn Sci. 10(10), 455–463 (2006).
Brown, M. W. & Aggleton, J. P. Recognition memory: what are the roles of the perirhinal cortex and hippocampus? Nature Rev Neurosci. 2(1), 51–61 (2001).
Eichenbaum, H., Yonelinas, A. P. & Ranganath, C. The medial temporal lobe and recognition memory. Annu Rev Neurosci. 30, 123–152 (2007).
Montaldi, D., Spencer, T. J., Roberts, N. & Mayes, A. R. The neural system that mediates familiarity memory. Hippocampus. 16(5), 504–520 (2006).
Yonelinas, A. P. The Nature of Recollection and Familiarity: A Review of 30 Years of Research. J Mem Lang. 46(3), 441–517 (2002).
Mayes, A., Montaldi, D. & Migo, E. Associative memory and the medial temporal lobes. Trends Cogn Sci. 11(3), 126–135 (2007).
Murray, L. J. & Ranganath, C. The dorsolateral prefrontal cortex contributes to successful relational memory encoding. J Neurosci. 27(20), 5515–22 (2007).
Davis, M. H., Di Betta, A. M., Macdonald, M. J. E. & Gaskell, M. G. Learning and consolidation of novel spoken words. J Cogn Neurosci. 21(4), 803–820 (2009).
He, Q. et al. Decoding the Neuroanatomical Basis of Reading Ability: A Multivoxel Morphometric Study. J Neurosci. 33(31), 12835–12843 (2013).
Diana, Ra, Yonelinas, A. P. & Ranganath, C. Imaging recollection and familiarity in the medial temporal lobe: a three-component model. Trends Cogn Sci. 11(9), 379–86 (2007).
Henson, R. N. A., Cansino, S., Herron, J. E., Robb, W. G. K. & Rugg, M. D. A familiarity signal in human anterior medial temporal cortex? Hippocampus. 13(2), 301–304 (2003).
Suzuki, W. A. & Naya, Y. The Perirhinal Cortex. Annu Rev Neurosci. 37(1), 39–53 (2014).
Kirwan, C. B., Wixted, J. T. & Squire, L. R. Activity in the medial temporal lobe predicts memory strength, whereas activity in the prefrontal cortex predicts recollection. J Neurosci. 28(42), 10541–10548 (2008).
Song, Z., Wixted, J. T., Smith, C. N. & Squire, L. R. Different nonlinear functions in hippocampus and perirhinal cortex relating functional MRI activity to memory strength. Proc Natl Acad Sci. 108, 5783–5788 (2011).
Squire, L. R., Wixted, J. T. & Clark, R. E. Recognition memory and the medial temporal lobe: a new perspective. Nat Rev Neurosci. 8(11), 872–883 (2007).
Wixted, J. T. & Squire, L. R. The role of the human hippocampus in familiarity-based and recollection-based recognition memory. Behav Brain Res. 215(2), 197–208 (2010).
Wais, P. E., Squire, L. R. & Wixted, J. T. In search of recollection and familiarity signals in the hippocampus. J Cogn Neurosci. 22(1), 109–123 (2010).
Horn, M. et al. The multiple neural networks of familiarity: A meta-analysis of functional imaging studies. Cogn Affect Behav Neurosci. 16(1), 176–190 (2016).
Merkow, M. B., Burke, J. F. & Kahana, M. J. The human hippocampus contributes to both the recollection and familiarity components of recognition memory. P Nat A Sci. 112(46), 14378–14383 (2015).
Fischer-Baum, S., Danielle, S., Dickson, S. D., Kara, D. & Federmeier, K. D. Frequency and regularity effects in reading are task dependent: evidence from ERPs. Language, cognition and neuroscience 29(10), 1342–1355 (2014).
Squire, L. R., Stark, C. E. & Clark, R. E. The medial temporal lobe. Annu Rev Neurosci. 27, 279–306 (2004).
Yonelinas, A. P., Otten, L. J., Shaw, K. N. & Rugg, M. D. Separating the brain regions involved in recollection and familiarity in recognition memory. J Neurosci. 25(11), 3002–3008 (2005).
Piai, V. et al. Direct brain recordings reveal hippocampal rhythm underpinnings of language processing. P Nat A Sci. 113(40), 11366–11371 (2016).
Song, Z., Wixted, J. T., Hopkins, R. O. & Squire, L. R. Impaired capacity for familiarity after hippocampal damage. Proc Natl Acad Sci. 108(23), 9655–60 (2011).
Hofmann, M. J. & Jacobs, A. M. Interactive activation and competition models and semantic context: From behavioral to brain data. Neurosci Biobehav R. 46, 85–104 (2014).
Price, C. J., Moore, C. J., Humphreys, G. W. & Wise, R. J. Segregating semantic from phonological processes during reading. J Cog Neurosci. 9(6), 727–733 (1997).
Mummery, C., Patterson, K., Hodges, J. & Price, C. J. Functional neuroanatomy of the semantic system: divisible by what? J Cogn Neurosci. 10(6), 766–777 (1998).
Kotz, S. A., Cappa, S. F., von Cramon, D. Y. & Friederici, A. D. Modulation of the lexical-semantic network by auditory semantic priming: An event-related functional mri study. Neuroimage. 17(4), 1761–1772 (2002).
Fiebach, C. J., Friederici, A. D., Müller, K., von Cramon, D. Y. & Hernandez, E. Distinct brain representations for early and late learned words. Neuroimage. 19(4), 1627–1637 (2003).
Ketteler, D., Kastrau, F., Vohn, R. & Huber, W. The subcortical role of language processing. High level linguistic features such as ambiguity-resolution and the human brain; an fMRI study. Neuroimage. 39(4), 2002–2009 (2008).
Tomasi, D. & Volkow, N. D. Resting functional connectivity of language networks: characterization and reproducibility. Mol Psychiatry. 17(8), 841–54 (2012).
Alexander, M. P., Naeser, M. A. & Palumbo, C. L. Correlations of subcortical ct-lesions sites and aphasia profiles. Brain. 110(4), 961–988 (1987).
Hancock, R., Richlan, F. & Hoeft, F. Possible roles for fronto-striatal circuits in reading disorder. Neurosci Biobehav R. 72, 243–260 (2017).
Abutalebi, J. et al. The neural cost of the auditory perception of language switches: an event-related functional magnetic resonance imaging study in bilinguals. J Neurosci. 27(50), 13762–13769 (2007).
Hsu, C.-T., Jacobs, A. M., Citron, F. M. & Conrad, M. The emotion potential of words and passages in reading harry potter-an fmri study. Brain Lang. 142, 96–114 (2015).
Postuma, R. B. & Dagher, A. Basal ganglia functional connectivity based on a meta-analysis of 126 positron emission tomography and functional magnetic resonance imaging publications. Cereb Cortex. 16(10), 1508–1521 (2006).
Cairo, T. A., Liddle, P. F., Woodward, T. S. & Ngan, E. T. C. The influence of working memory load on phase specific patterns of cortical activity. Cogn Brain Res. 21(3), 377–387 (2004).
Manoach, D. S., Greve, D. N., Lindgren, K. A. & Dale, A. M. Identifying regional activity associated with temporally separated components of working memory using event-related functional MRI. Neuroimage 20(3), 1670–1684 (2003).
Mushiake, H. & Strick, P. L. Pallidal neuron activity during sequential arm movements. JNeurophysiol. 74(6), 2754–2758 (1995).
Watanabe, K., Lauwereyns, J. & Hikosaka, O. Neural correlates of rewarded and unrewarded eye movements in the primate caudate nucleus. J Neurosci. 23(31), 10052–10057 (2003).
Jacobs, A. M., Graf, R. & Kinder, A. Receiver operating characteristics in the lexical decision task: evidence for a simple signal-detection process simulated by the multiple read-out model. J Exp Psychol Learn. 29(3), 481–488 (2003).
Baayen, R. H., Piepenbrock, R. & van H. R. The {CELEX} lexical data base on {CD-ROM} (1993).
Ashburner, J. A fast diffeomorphic image registration algorithm. Neuroimage. 38(1), 95–113 (2007).
Dobbins, I. G., Rice, H. J., Wagner, A. D. & Schacter, D. L. Memory orientation and success: Separable neurocognitive components underlying episodic recognition. Neuropsychologia 41(3), 318–333 (2003).
Author information
Authors and Affiliations
Contributions
M.B., M.K., F.H. and A.M.J. wrote the manuscript. M.B., A.M.J., M.K., F.H., F.R. and S.H. conceived the experiment. M.B. and M.K. performed the experiment. M.B., M.K., F.R., S.H. analyzed the data. M.B. and S.H. prepared the figures. All authors reviewed the manuscript.
Corresponding author
Ethics declarations
Competing Interests
The authors declare no competing interests.
Additional information
Publisher’s note: Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Supplementary information
41598_2019_41011_MOESM1_ESM.docx
Table S1. Brain regions showing a positive (GLApos) or negative (GLAneg) linear relationship of GLA and BOLD response (voxel-level uncorrected, p < .005, cluster extent threshold 25).
Rights and permissions
Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The images or other third party material in this article are included in the article’s Creative Commons license, unless indicated otherwise in a credit line to the material. If material is not included in the article’s Creative Commons license and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this license, visit http://creativecommons.org/licenses/by/4.0/.
About this article
Cite this article
Braun, M., Kronbichler, M., Richlan, F. et al. A model-guided dissociation between subcortical and cortical contributions to word recognition. Sci Rep 9, 4506 (2019). https://doi.org/10.1038/s41598-019-41011-9
Received:
Accepted:
Published:
DOI: https://doi.org/10.1038/s41598-019-41011-9
- Springer Nature Limited
This article is cited by
-
Neural correlates of affective contributions to lexical decisions in children and adults
Scientific Reports (2021)