Abstract
Aims/hypothesis
Previous studies have shown that individuals with similar mean glucose levels (MG) or percentage of time in range (TIR) may have different HbA1c values. The aim of this study was to further elucidate how MG and TIR are associated with HbA1c.
Methods
Data from the randomised clinical GOLD trial (n=144) and the follow-up SILVER trial (n=98) of adults with type 1 diabetes followed for 2.5 years were analysed. A total of 596 paired HbA1c/continuous glucose monitoring measurements were included. Linear mixed-effects models were used to account for intra-individual correlations in repeated-measures data.
Results
In the GOLD trial, the mean age of the participants (± SD) was 44±13 years, 63 (44%) were female, and the mean HbA1c (± SD) was 72±9.8 mmol/mol (8.7±0.9%). When correlating MG with HbA1c, MG explained 63% of the variation in HbA1c (r=0.79, p<0.001). The variation in HbA1c explained by MG increased to 88% (r=0.94, p value for improvement of fit <0.001) when accounting for person-to-person variation in the MG–HbA1c relationship. Time below range (TBR; <3.9 mmol/l), time above range (TAR) level 2 (>13.9 mmol/l) and glycaemic variability had little or no effect on the association. For a given MG and TIR, the HbA1c of 10% of individuals deviated by >8 mmol/mol (0.8%) from their estimated HbA1c based on the overall association between MG and TIR with HbA1c. TBR and TAR level 2 significantly influenced the association between TIR and HbA1c. At a given TIR, each 1% increase in TBR was related to a 0.6 mmol/mol lower HbA1c (95% CI 0.4, 0.9; p<0.001), and each 2% increase in TAR level 2 was related to a 0.4 mmol/mol higher HbA1c (95% CI 0.1, 0.6; p=0.003). However, neither TIR, TBR nor TAR level 2 were significantly associated with HbA1c when accounting for MG.
Conclusions/interpretation
Inter-individual variations exist between MG and HbA1c, as well as between TIR and HbA1c, with clinically important deviations in relatively large groups of individuals with type 1 diabetes. These results may provide important information to both healthcare providers and individuals with diabetes in terms of prognosis and when making diabetes management decisions.
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Introduction
Glucose control is key to preventing diabetes complications in people with type 1 diabetes [1,2,3,4]. Analyses of glucose levels related to lower risk of diabetes complications have generally been based on the biomarker HbA1c [2]. HbA1c does not measure glucose level per se, but instead is based on glycation of haemoglobin and may be influenced by factors such as erythrocyte turnover and glycation rate [5, 6]. HbA1c remains a key biomarker of complications in people with type 1 diabetes for several reasons. Landmark studies relating glucose control to complications have used HbA1c as the metric of glucose control [1,2,3,4]. Large population-based studies following the prognosis of patients over long time periods have also relied on HbA1c [3]. Furthermore, it is easy to measure and is a relatively cost-effective biomarker that is measured in most healthcare systems.
While HbA1c generally remains the primary outcome for new indications of glucose-lowering treatments, many clinical judgements and research study endpoints are nowadays based on metrics obtained through continuous glucose monitoring (CGM) [7, 8]. This situation may be challenging for both individuals with diabetes and healthcare providers, as individuals may reach targets for certain metrics such as mean glucose (MG), time in range (TIR; % of time with glucose levels 3.9–10 mmol/l) or HbA1c but not all of them. The TIR target of 70% has been set due to its relationship with an HbA1c level of <53 mmol/mol (<7.0%) rather than data from long-term diabetes complication trials [7]. Therefore, it is important for clinicians to understand to what extent HbA1c may differ in relation to both MG and TIR.
The treatment target for most adults with diabetes is an HbA1c value or an MG-derived estimated HbA1c glucose management indicator (GMI) [9] of <53 mmol/mol (<7.0%) [10], which corresponds to an MG of approximately 8.6 mmol/l (155 mg/dl). In clinical practice, questions may be raised when significant differences are observed between MG, TIR and HbA1c if underlying explanatory factors such as anaemia could exist. Often such factors cannot be identified, complicating diabetes management for both individuals with diabetes and healthcare providers.
Genetic factors influencing the glycation rate of haemoglobin are probably important but are poorly understood and are not used in clinical practice. Deviations in glucose metrics are sometimes suspected to be due to insufficient CGM data being used to characterise overall glucose control. It is also speculative whether two individuals with the same MG but with different glucose patterns, such as long versus short periods with hypo- or hyperglycaemia, or high glycaemic variability versus stable glucose levels, will show different glycation rates and thereby different HbA1c, as suggested by others [11, 12]. Although earlier studies found a discordance between MG, TIR and HbA1c [13,14,15,16,17], the associations are poorly understood.
The primary aim of the present study was to determine the associations between MG and HbA1c using 2.5 years of data from the GOLD and SILVER trials, including whether different glucose patterns influence the relationship between MG and HbA1c. As a secondary aim, we also evaluated the associations between HbA1c and TIR. The results are intended to create a basis for guiding patients, clinicians and researchers in the management of type 1 diabetes.
Methods
Design and participants
All analyses in the current study were performed using data from the GOLD trial (n=144) and the SILVER trial (n=98). The studies were approved by the ethics committee of University of Gothenburg, Sweden. All participants gave written informed consent, and the studies were registered on ClinicalTrials.gov (NCT02092051 and NCT02465411, respectively).
Briefly, the GOLD trial was a randomised crossover study comparing CGM use over 6 months versus self-monitoring of blood glucose over 6 months with a 4-month washout period in between [18]. Inclusion criteria were: adults with type 1 diabetes treated with multiple daily insulin injections, diabetes duration >1 year, fasting C-peptide level <0.3 nmol/l and with HbA1c ≥58 mmol/mol (7.5%). Exclusion criteria were treatment with insulin pump. Full inclusion and exclusion criteria have been published elsewhere [19]. The primary endpoint was the difference in HbA1c at the end of each treatment phase (total study period of 1.5 years). The SILVER trial was a follow-up study of the GOLD trial [20]. Participants who completed the GOLD trial were invited to participate in the SILVER trial extension, continuing CGM treatment for an additional year, with support from a diabetes nurse every third month. Participant-reported outcomes collected in both the GOLD and SILVER trials included the diabetes treatment satisfaction questionnaire (DTSQ), which measures aspects of treatment satisfaction [21, 22], and the hypoglycaemia confidence scale (HCS), which evaluates patient confidence in preventing and addressing hypoglycaemic events [23].
Measurements
The CGM systems used in the current study store up to 30 days of active CGM data. In the current analyses, CGM data from GOLD and SILVER trials comprising a minimum of 14 days of active CGM measurements within 60 days before laboratory HbA1c were included. In the GOLD trial, all participants used the Dexcom G4 device (Dexcom, USA), but some participants switched to the Dexcom G5 device during the SILVER trial. The mean absolute relative difference for the Dexcom G4 device has been reported as 10.8±9.9% [24]. CGM data and HbA1c measurements were collected after 13 and 26 weeks of CGM in the GOLD trial, and every 13th week for up to 52 weeks follow-up in the SILVER trial (Fig. 1). CGM data downloaded at week 4 were used to evaluate how extended CGM data affected analyses. HbA1c was analysed according to the International Federation of Clinical Chemistry and Laboratory Medicine (IFCC) standard using a Variant II Turbo instrument (Bio-Rad Laboratories, USA). All blood samples were analysed at the Research Centre for Laboratory Medicine at Karolinska University Hospital, Stockholm, Sweden. Sex of participants was determined from the participants’ medical records.
Primary analyses
The primary analysis focused on determining the association between MG and HbA1c using paired MG and HbA1c values from the GOLD and SILVER trials (Fig. 1). We investigated whether individual deviations in the MG–HbA1c relationship persisted over time, indicating whether certain participants consistently deviated from the general MG–HbA1c trend. Our main analyses were performed using data from the GOLD trial. Internal validation was used to evaluate whether such inter-individual deviations persisted over time, performing temporal validation using data from the SILVER trial. Additionally, we wished to determine whether clinically important differences between MG and HbA1c existed. To do this, we estimated the magnitude of difference in HbA1c among the 5% and 10% of individuals with the largest deviations in MG–HbA1c from the general trend. Similar methods were applied for the secondary analysis relating HbA1c to TIR.
Exploratory analyses of potential explanatory factors
We hypothesised that certain glucose patterns, i.e. participants with the same MG but different glycaemic variability or time spent in hypoglycaemia, influenced HbA1c. We therefore explored whether various CGM metrics (time below range [TBR], TIR, time above range [TAR] level 2 and glycaemic variability) and the overall glucose distribution obtained through CGM explained deviations in MG–HbA1c from the general trend in MG–HbA1c. Other possible explanatory factors investigated were age, sex, whether women were of fertile age (<50 years), diabetes duration, BMI, creatinine level, C-peptide level, C-reactive protein level, blood lipids, apolipoprotein levels and participant-reported outcomes (HCS and DTSQ scores). Baseline values for participant characteristics, participant-reported outcomes and laboratory measurements obtained at the time of inclusion in the GOLD trial were used in these analyses (Fig. 1).
Finally, we also assessed whether extended CGM profiles recorded at certain time points in the dataset (>30 days of active CGM data before HbA1c measurement) influenced the MG–HbA1c association. Additionally, we examined whether the impact of MG varied depending on whether it was measured during the daytime or at night.
Similar analyses were performed to assess potential explanatory factors for the relationship between HbA1c and TIR. Analyses of the relationship between MG and TIR were also performed.
Statistical analyses
Statistical analyses of the relationships between HbA1c and MG or TIR were performed using linear mixed-effects models, with participant as random effect to account for individual deviations from the mean trend and intra-individual correlations in repeated-measures data. Individual predictions and individual trend lines were obtained from the best linear unbiased predictor of the random effects. Similar methods were used to study MG in relation to TIR and TBR.
Model fit was summarised using marginal and conditional R2 values and the marginal intraclass correlation coefficient (ICC) [25]. The marginal R2 is the fraction of variation in HbA1c that may be explained by the mean trend, and hence is similar to the ordinary coefficient of determination. The marginal ICC is the fraction of variation in HbA1c that may be explained by intra-individual variations around the mean trend. This is reported as the percentage improvement in R2 when accounting for person-to-person variations in the HbA1c–MG or HbA1c–TIR trend. The conditional (total) R2 is the sum of the marginal R2 and the marginal ICC, i.e. the total fraction of variation explained by the mean trend plus intra-individual variations. For comparability with previous studies, we also report the signed square root (r) of the marginal and conditional R2, which may be interpreted as the correlation according to the mean trend and the correlation when additionally accounting for intra-individual variations in the HbA1c–MG or HbA1c–TIR relationships. The improvement of fit between the marginal and conditional association was tested using a likelihood ratio test.
Multivariable analyses and interaction analyses were performed to investigate whether covariates explained individual variations in HbA1c or altered the HbA1c–MG or HbA1c–TIR associations. A p value <0.05 in both the GOLD and SILVER trials was required for a finding to be considered statistically significant. Additionally, we investigated whether temporal factors (time of day or time since the glucose value was attained) or glucose patterns (i.e. the entire glucose distribution) affected the association with HbA1c. Additional details are provided in the electronic supplementary material (ESM Methods).
Statistical analyses were performed using SAS/STAT Software, Version 9.4 of the SAS System for Windows (SAS Institute, USA).
Results
Baseline characteristics
The baseline characteristics of participants from both trials included in the analyses are shown in Table 1. The mean age (± SD) among GOLD and SILVER trial participants was 44±13 and 46±13 years, respectively, with 63/144 (44%) and 39/98 (40%), respectively, being female. HbA1c values were 72±9.8 (8.7±0.9%) and 71±8.0 mmol/mol (8.6±0.7%) at the start of the respective studies. HbA1c values during the CGM periods in the GOLD and SILVER trials were 62.9±8.6 and 63.5±8.3 mmol/mol (7.9±0.8 and 8.0±0.8%), respectively. The corresponding MG and TIR values were 10.3±1.6 mmol/l and 48±14%, respectively, in the GOLD trial and 10.3±1.7 mmol/l and 49±15%, respectively, in the SILVER trial. In total, two participants (1%) in the GOLD trial had an eGFR <60 ml/min per 1.73 m2 and 20 (14%) had an albumin/creatinine ratio >3 mg/mmol. The median number of days for which CGM data at each pairwise HbA1c value were available was 28.5 days (IQR 26.4–29.4) in the GOLD trial and 27.9 days (IQR 25.2–29.4) in the SILVER trial.
Primary analysis: HbA1c in relation to MG
For the primary analysis, MG explained 63% of the variation in HbA1c in the GOLD trial (r=0.79, p<0.001). Differences in person-to-person variation in the relationship between MG and HbA1c explained an additional 25% of the variation in HbA1c (p<0.001) (Fig. 2). Thus, MG together with inter-individual effects explained 88% of the variation in HbA1c in the GOLD trial (r=0.94). Inter-individual deviations persisted over time, with a coefficient of determination (R2) of 78% (r=0.88) when individual predictions from this model were evaluated prospectively using data from the SILVER trial. For a given MG, the HbA1c values in 5% and 10% of the individuals deviated more than 9.9 and 8.3 mmol/mol (0.9 and 0.8%) from the mean trend, respectively.
Secondary analysis: HbA1c in relation to TIR
In the secondary analysis relating TIR to HbA1c, TIR explained 60% (r=−0.77) of the variation in HbA1c in the GOLD trial dataset, which increased to 86% (r=−0.93) when additionally accounting for person-to-person variation in the relationship between TIR and HbA1c (p<0.001) (Fig. 2). A TIR of 70% corresponded to an HbA1c of 53 mmol/mol (7.0%). For a given TIR, the HbA1c values in 5% and 10% of the individuals deviated more than 9.9 and 8.3 mmol/mol (0.9 and 0.8%) from the mean trend, respectively.
Explanatory factors for the HbA1c–MG relationship
No CGM metrics (TBR, TIR, TAR or glycaemic variability), nor the glucose distribution based on CGM, influenced the association between MG and HbA1c persistently in the GOLD and SILVER trials (ESM Tables 1 and 2, ESM Figs 1 and 2). Other exploratory variables, including age, sex, renal function, BMI, C-peptide level, blood lipids, apolipoproteins, HCS or DTSQ score, showed no persistent association in the GOLD and SILVER trials.
Using extended time periods of CGM data during weeks 0–13 had little influence on the correlation between MG and HbA1c. The correlation was 0.79 using 30 days of active CGM (up to 60 days before HbA1c measurement) and 0.80 using 60 days of active CGM (up to 90 days before HbA1c measurement). Applying unequal weights depending on the time since the glucose value was attained when estimating MG did not result in an improved correlation (p=0.70 for improvement of fit). There was also no significant improvement when daytime and night-time glucose values were weighted unequally when assessing the relationship between MG and HbA1c (p=0.18).
Explanatory factors for the HbA1c–TIR relationship
There was a significant association for TBR (<3.9 mmol/l) (p<0.001 in the GOLD trial; p=0.012 in the SILVER trial) and TAR level 2 (>13.9 mmol/l) (p=0.003 in the GOLD trial; p=0.007 in the SILVER trial) in terms of explaining deviations in HbA1c from the estimated HbA1c–TIR mean trend (ESM Tables 3 and 4). At a given TIR, each 1% increase in TBR was related to a 0.6 mmol/mol lower HbA1c (95% CI 0.4, 0.9; p<0.001) and each 2% increase in TAR level 2 was related to a 0.4 mmol/mol higher HbA1c (95% CI 0.1, 0.6; p=0.003). Figure 3 shows the impact of TBR on the association between TIR and HbA1c. No other CGM metric or variable influenced the association between TIR and HbA1c when adjusting for TBR and TAR (ESM Tables 3 and 4). When adjusting for the MG, neither TIR, TBR nor TAR level 2 were significantly related to HbA1c (ESM Table 1).
Associations between MG and TIR
For a given TIR, MG decreased by 0.6 mmol/l (95% CI 0.5, 0.7) per 5% increase in TBR. The association between MG and TIR is shown in ESM Fig. 3. A TIR of 70% with TBR of 0% vs 15% corresponded to an MG of 8.5 vs 6.8 mmol/l.
Discussion
Principal findings
In this study, based on data from the GOLD and SILVER trials, we found important inter-individual deviations in HbA1c in relation to both MG and TIR that persisted over a combined 2.5-year follow-up period. These inter-individual deviations were of clear clinical importance, with notable deviations in HbA1c (>8 mmol/mol, >0.8%) observed in 10% of the individuals. The relationship was similar for men and women and glucose patterns had minimal or no impact on the association between MG and HbA1c. However, TBR had additional intra- and inter-individual influences on the association between TIR and HbA1c. At a given TIR, each 1% increase in TBR corresponded to a 0.6 mmol/mol lower HbA1c, and each 2% increase in TAR level 2 to a 0.4 mmol/mol higher HbA1c.
Previous studies
Previous studies relating MG to HbA1c found correlation coefficients of r=0.78–0.80 and 0.73 [13,14,15, 17], corresponding to our findings of r=0.79. However, we found that, when taking into account differences in systematic person-to-person variations of MG relative to HbA1c, the correlation increased to r=0.94. A TIR of 70% has previously been related to an HbA1c of <53 mmol/mol (<7%) [13, 14], and is commonly used in clinical practice and research as a basis for judging low complication risk based on TIR [10]. In the current study, a TIR of 70% was, on average, also related to an HbA1c of 53 mmol/mol (7%), but the HbA1c deviated systematically over time by more than 8 mmol/mol (0.8%) for over 10% of the individuals. Our findings of an influence of TBR on HbA1c in relation to TIR but not in relation to MG is novel, and this question have not been extensively studied in previous research.
Explanations and interpretations
HbA1c represents the glycation rate of haemoglobin, and is thus dependent on erythrocyte turnover and the lifespan of erythrocytes (approximately 120 days) [26]. One potential explanation for deviations in the relationship between MG or TIR and HbA1c may be due to incomplete glucose data over time. However, consistent with previous results [27], longer measurement periods for MG did not show significantly stronger associations with HbA1c. One possible explanation may be that the most recent periods have a relatively greater influence on the HbA1c [26], and that individuals generally have a relatively stable MG over time [28]. We also speculated that the glycation rate may not solely be explained by the MG but also by other characteristics of the distribution, such as fluctuations or extended periods with hypoglycaemia, as suggested previously [11, 12]. However, various glucose patterns present at the same MG did not explain deviations between MG and HbA1c, and nor did glycaemic variability.
Anaemia, which leads to a shorter erythrocyte lifespan (e.g. through haemolysis), can influence the HbA1c, but in the current study, women of fertile age, who are more commonly prone to anaemia, did not deviate in their association of MG or TIR with HbA1c.
Although race may influence the association of MG and TIR with HbA1c [29, 30], it was not a factor in the current study, in which all participants were white. Impaired renal function can affect HbA1c [31], but few individuals in the GOLD trial had impaired renal function. Instead, it seems plausible that genetic rather than glucose-related factors that influence glucose transport into erythrocytes and the glycation rate of the haemoglobin explain inter-individual differences for high and low glycators (as defined below) [32]. In addition, differences in TBR at a given TIR correspond to various MG values and thereby explain differences in HbA1c for a single individual over time.
Clinical implications
There is a critical need for clinicians to be aware of the association between MG and HbA1c. Values for these glucose indices are typically presented to individuals with type 1 diabetes during clinical visits, but they can also get information about their calculated GMI through CGM system-generated ambulatory glucose profile reports [33]. We propose that clinicians should assess both HbA1c and GMI, and not only acknowledge if a difference exists, but also record its magnitude and direction accurately. Repeated deviations between HbA1c and GMI in the same direction will suggest whether an individual is a high or low glycator [32]. A high glycator is indicated when HbA1c is consistently higher than GMI, and vice versa for a low glycator. Large discordances between MG and HbA1c may influence diabetes management [32]. From a global perspective, CGM is not available to most people with type 1 diabetes. When possible, temporary use of CGM will be valuable to confirm the true MG and whether major discordances with HbA1c exist.
Although insulin dosing per se is based on CGM or capillary glucose levels, it has been proposed that individuals with a low MG but high HbA1c may be at increased risk of hypoglycaemia [34]. Individuals with diabetes are generally aware of HbA1c targets, as this information is repeatedly given to them by clinicians at clinical visits. Hence, there is a risk that some individuals may strive for intensified treatment if HbA1c is high when GMI is on target, especially if healthcare providers do not inform the individual of discordances between the two [34]. Moreover, individuals may experience increased anxiety regarding the risk of complications correlating with a higher HbA1c [35]. In contrast, on-target HbA1c but high MG may lead to insufficient intensification of treatment [34]. However, HbA1c is still of primary focus in clinical practice and is also used for quality assessment between clinics and countries [36, 37].
TIR has increasingly come into greater focus in clinical practice and research over time [7, 8]. As HbA1c differs in relation to MG, it is possible that it will also differ in relation to TIR, as TIR is closely related to MG at a certain TBR. As the target TIR of 70% was established based on its overall relationship with an HbA1c of <53 mmol/mol (7.0%), clinicians need to be aware, as discussed earlier in the context of the MG–HbA1c relationship, that discordances between HbA1c and TIR for individuals must be recognised and considered in diabetes management. Moreover, for the same individual, a specific TIR for an individual with greater TBR will intuitively relate to lower HbA1c due to lower MG, as confirmed in the current study. Hence, HbA1c and GMI may shift over time while maintaining a stable TIR if, for example, adjustments in diabetes care are made that alter the magnitude of TBR or TAR.
At present, it is not known which glucose index (HbA1c, TIR or MG/GMI) is the most effective indicator for diabetes complications. While it may seem reasonable that MG per se would be the most predictive, HbA1c is considered a marker for the glycation rate and glycation end-products, which are related to complications beyond its relationship with MG [38, 39]. Additionally, some studies have shown associations between TIR and complications [40, 41]. Long-term studies, preferably following participants from the time of diagnosis (as profound legacy effects exist from previous hyperglycaemic episodes [4]), are necessary but take time to perform. An international standardisation for CGM systems of their calibration to blood is also crucial, as CGM systems have been shown to systematically deviate from blood glucose values, which can influence CGM metrics [42].
It is likely that HbA1c, TIR and MG/GMI will remain as essential complementary metrics. Thus, it is crucial that clinicians assess and communicate these metrics effectively to individuals with diabetes in an appropriate way to reduce complication risk and decrease diabetes-related distress.
Strengths and limitations
A major strength of the current study is that, in contrast to most earlier studies, participants were followed over 2.5 years using CGM devices from the same manufacturer and HbA1c was centrally analysed. Measurements of HbA1c and CGM metrics were obtained at similar time points. This is of critical importance when considering possible systematic deviations of CGM-based metrics over time in relation to HbA1c. A limitation is that we did not obtain data on anaemia and blood disorders, which are factors that could possibly affect HbA1c. However, adjusting for women of fertile age, who are known to have anaemia more commonly, did not influence the associations. All participants were white, used multiple daily insulin injections for insulin delivery, with HbA1c >58 mmol/mol (7.5%), and had overall good renal function, and the results may be limited to this population. Information on socioeconomic factors was not collected and the influence of such factors could therefore not be evaluated. We tested multiple variables to elucidate the relationship between MG and HbA1c. Our focus was primarily on CGM metrics, as we considered them to be more plausible explanatory factors. While performing multiple tests may increase the risk of false-positive results, this risk was mitigated by requiring positive findings in both the GOLD and SILVER trials. Although it should be acknowledged that control of the potential type 1 error rate was not strict, all variables evaluated as potential explanatory factors were judged to be non-significant except TAR and TBR for the association of TIR with HbA1c. The significance of these factors has a plausible explanation as greater TBR (TAR) at a given TIR leads to a lower (higher) MG, and hence a lower (higher) HbA1c.
Conclusions
In conclusion, the same HbA1c value may be observed in people with significantly different MG/GMI or TIR. This information is crucial for both healthcare providers and individuals with diabetes when making diabetes management decisions. Consequently, MG/GMI (obtained from including significant periods of CGM data) should be evaluated at clinical visits to determine whether people with type 1 diabetes have an HbA1c that is higher or lower than the mean trend. Additionally, time spent in hypoglycaemia should always be considered together with TIR. The evaluation of MG/GMI and HbA1c, with minimal time spent in hypoglycaemia, should be a primary focus in clinical practice to achieve glucose control with a low risk of both acute and long-term complications.
Abbreviations
- CGM:
-
Continuous glucose monitoring
- DTSQ:
-
Diabetes treatment satisfaction questionnaire
- GMI:
-
Glucose management indicator
- HCS:
-
Hypoglycaemia confidence scale
- ICC:
-
Intraclass correlation coefficient
- MG:
-
Mean glucose level
- TAR:
-
Time above range
- TBR:
-
Time below range
- TIR:
-
Time in range
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Acknowledgements
The authors thank all participating sites and staff as well as participants of the GOLD and SILVER trials who made this study possible. Part of this work was presented at the 16th International Conference on Advanced Technologies and Treatments for Diabetes; Berlin, Germany, 22–25 February 2023.
Data availability
The data that support the findings of this study are not openly available. They are available from the corresponding author upon reasonable request.
Funding
Open access funding provided by University of Gothenburg. This was an investigator-initiated trial that was financed by grants from the Swedish state under an agreement between the Swedish government and the county councils (ALFGBG-966173). Dexcom Inc. provided CGM systems and financial support for the original GOLD and SILVER trials. The study funders were not involved in the design of the study, the collection, analysis and interpretation of data or writing the report, and did not impose any restrictions regarding publication of the report.
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ES serves on advisory boards for Abbott and Sanofi, and has received lecture payments from Sanofi, Boehringer Ingelheim, Lilly and Novo Nordisk. IBH has received research grants from Dexcom, and received honoraria or fees for consulting with Abbott Diabetes Care, Hagar and embecta. JB has received honoraria for consulting and/or lecture fees from Abbott Diabetes Care, the MannKind Corporation, Nanexa, Nordic InfuCare, Novo Nordisk and Sanofi. JH serves or has served on advisory boards for Sanofi, Eli Lilly, Novo Nordisk, Boehringer Ingelheim and Abbott, and has received lecture payments from Sanofi, Boehringer Ingelheim, Rubin Medical, Nordic Infucare, Bayer, Amgen, Eli Lilly and Novo Nordisk. ML has received research grants from Eli Lilly and Novo Nordisk and been a consultant or received honoraria from Astra Zeneca, Boehringer Ingelheim, Nordic Infucare, Eli Lilly and Novo Nordisk. MW has served on advisory boards or lectured for MSD, Lilly, Novo Nordisk and Sanofi, and has organised a professional regional meeting sponsored by Eli Lilly, Rubin Medical, Sanofi, Novartis and Novo Nordisk. SH has lectured for Novo Nordisk. TN has received unrestricted grants from AstraZeneca and Novo Nordisk, and has served on national advisory boards for Amgen, Abbot, Novo Nordisk, Sanofi-Aventis, Eli Lilly, MSD and Boehringer Ingelheim. WP has received research support from Dexcom and Abbott Diabetes Care, and has received honoraria for consulting from Dexcom and Abbott Diabetes Care. The remaining authors declare that there are no relationships or activities that might bias, or be perceived to bias, their work.
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SSI drafted the manuscript and HI performed the statistical analyses. HI, ML and SSI designed the study. All authors interpreted data, contributed to critical revision of the manuscript, and approved the final version of the manuscript. ML is the guarantor of this work, and, as such, had full access to all the data in the study and takes responsibility for the integrity of the data and the accuracy of the data analysis.
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Sterner Isaksson, S., Imberg, H., Hirsch, I.B. et al. Discordance between mean glucose and time in range in relation to HbA1c in individuals with type 1 diabetes: results from the GOLD and SILVER trials. Diabetologia (2024). https://doi.org/10.1007/s00125-024-06151-2
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DOI: https://doi.org/10.1007/s00125-024-06151-2