Abstract
To investigate whether dynamic functional connectivity (DFC) metrics can better identify minimal hepatic encephalopathy (MHE) patients from cirrhotic patients without any hepatic encephalopathy (noHE) and healthy controls (HCs). Resting-state functional MRI data were acquired from 62 patients with cirrhosis (MHE, n = 30; noHE, n = 32) and 41 HCs. We used the sliding time window approach and functional connectivity analysis to extract the time-varying properties of brain connectivity. Three DFC characteristics (i.e., strength, stability, and variability) were calculated. For comparison, we also calculated the static functional connectivity (SFC). A linear support vector machine was used to differentiate MHE patients from noHE and HCs using DFC and SFC metrics as classification features. The leave-one-out cross-validation method was used to estimate the classification performance. The strength of DFC (DFC-Dstrength) achieved the best accuracy (MHE vs. noHE, 72.5%; MHE vs. HCs, 84%; and noHE vs. HCs, 88%) compared to the other dynamic features. Compared to static features, the classification accuracies of the DFC-Dstrength feature were improved by 10.5%, 8%, and 14% for MHE vs. noHE, MHE vs. HC, and noHE vs. HCs, respectively. Based on the DFC-Dstrength, seven nodes were identified as the most discriminant features to classify MHE from noHE, including left inferior parietal lobule, left supramarginal gyrus, left calcarine, left superior frontal gyrus, left cerebellum, right postcentral gyrus, and right insula. In summary, DFC characteristics have a higher classification accuracy in identifying MHE from cirrhosis patients. Our findings suggest the usefulness of DFC in capturing neural processes and identifying disease-related biomarkers important for MHE identification.
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The study was supported by grants from National Natural Science Foundation of China (No. 81601482, No. 61876126, No. 81901710 and No. 81701679).
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YC designed the study and wrote the manuscript; G.-Y. Z proposed the data analysis frame, analyzed the data and revised the manuscript; XZ collected the data and did some data analysis, YL and JL did some data processing and visualization; JZ and LH collected the data and did some statistical analysis; SX and WS drafted and revised the manuscript. We would like to thank Editage (www.editage.cn) for English language editing.
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Cheng, Y., Zhang, G., Zhang, X. et al. Identification of minimal hepatic encephalopathy based on dynamic functional connectivity. Brain Imaging and Behavior 15, 2637–2645 (2021). https://doi.org/10.1007/s11682-021-00468-x
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DOI: https://doi.org/10.1007/s11682-021-00468-x