Nicholas E. Phillips, Julie Mareschal, Andrew D. Biancolin, Flore Sinturel, Sylvie Umwali, Stéphanie Blanc, Alexandra Hemmer, Felix Naef, Marcel Salathé, Charna Dibner, Jardena J. Puder, Tinh-Hai Collet
{"title":"使用多种可穿戴设备描述产后妊娠糖尿病的代谢和昼夜节律特征","authors":"Nicholas E. Phillips, Julie Mareschal, Andrew D. Biancolin, Flore Sinturel, Sylvie Umwali, Stéphanie Blanc, Alexandra Hemmer, Felix Naef, Marcel Salathé, Charna Dibner, Jardena J. Puder, Tinh-Hai Collet","doi":"10.1007/s00125-024-06318-x","DOIUrl":null,"url":null,"abstract":"<h3 data-test=\"abstract-sub-heading\">Aims/hypothesis</h3><p>Gestational diabetes mellitus (GDM) affects 14% of all pregnancies worldwide and is associated with cardiometabolic risk. We aimed to exploit high-resolution wearable device time-series data to create a fine-grained physiological characterisation of the postpartum GDM state in free-living conditions, including clinical variables, daily glucose dynamics, food and drink consumption, physical activity, sleep patterns and heart rate.</p><h3 data-test=\"abstract-sub-heading\">Methods</h3><p>In a prospective observational study, we employed continuous glucose monitors (CGMs), a smartphone food diary, triaxial accelerometers and heart rate and heart rate variability monitors over a 2 week period to compare women who had GDM in the previous pregnancy (GDM group) and women who had a pregnancy with normal glucose metabolism (non-GDM group) at 1–2 months after delivery (baseline) and 6 months later (follow-up). We integrated CGM data with ingestion events recorded with the smartphone app MyFoodRepo to quantify the rapidity of returning to preprandial glucose levels after meal consumption. We inferred the properties of the underlying 24 h rhythm in the baseline glucose. Aggregating the baseline and follow-up data in a linear mixed model, we quantified the relationships between glycaemic variables and wearable device-derived markers of circadian timing.</p><h3 data-test=\"abstract-sub-heading\">Results</h3><p>Compared with the non-GDM group (<i>n</i>=15), the GDM group (<i>n</i>=22, including five with prediabetes defined based on fasting plasma glucose [5.6–6.9 mmol/l (100–125 mg/dl)] and/or HbA<sub>1c</sub> [39–47 mmol/mol (5.7–6.4%)]) had a higher BMI, HbA<sub>1c</sub> and mean amplitude of glycaemic excursion at baseline (all <i>p</i>≤0.05). Integrating CGM data and ingestion events showed that the GDM group had a slower postprandial glucose decrease (<i>p</i>=0.01) despite having a lower proportion of carbohydrate intake, similar mean glucose levels and a reduced amplitude of the underlying glucose 24 h rhythm (<i>p</i>=0.005). Differences in CGM-derived variables persisted when the five women with prediabetes were removed from the comparison. Longitudinal analysis from baseline to follow-up showed a significant increase in fasting plasma glucose across both groups. The CGM-derived metrics showed no differences from baseline to follow-up. Late circadian timing (i.e. sleep midpoint, eating midpoint and peak time of heart rate) was correlated with higher fasting plasma glucose and reduced amplitudes of the underlying glucose 24 h rhythm (all <i>p</i>≤0.05).</p><h3 data-test=\"abstract-sub-heading\">Conclusions/interpretation</h3><p>We reveal GDM-related postpartum differences in glucose variability and 24 h rhythms, even among women clinically considered to be normoglycaemic. Our results provide a rationale for future interventions aimed at improving glucose variability and encouraging earlier daily behavioural patterns to mitigate the long-term cardiometabolic risk of GDM.</p><h3 data-test=\"abstract-sub-heading\">Trial registration</h3><p>ClinicalTrials.gov no. NCT04642534</p><h3 data-test=\"abstract-sub-heading\">Graphical Abstract</h3>\n","PeriodicalId":11164,"journal":{"name":"Diabetologia","volume":"60 3 1","pages":""},"PeriodicalIF":8.4000,"publicationDate":"2024-11-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"The metabolic and circadian signatures of gestational diabetes in the postpartum period characterised using multiple wearable devices\",\"authors\":\"Nicholas E. Phillips, Julie Mareschal, Andrew D. Biancolin, Flore Sinturel, Sylvie Umwali, Stéphanie Blanc, Alexandra Hemmer, Felix Naef, Marcel Salathé, Charna Dibner, Jardena J. Puder, Tinh-Hai Collet\",\"doi\":\"10.1007/s00125-024-06318-x\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<h3 data-test=\\\"abstract-sub-heading\\\">Aims/hypothesis</h3><p>Gestational diabetes mellitus (GDM) affects 14% of all pregnancies worldwide and is associated with cardiometabolic risk. 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We inferred the properties of the underlying 24 h rhythm in the baseline glucose. Aggregating the baseline and follow-up data in a linear mixed model, we quantified the relationships between glycaemic variables and wearable device-derived markers of circadian timing.</p><h3 data-test=\\\"abstract-sub-heading\\\">Results</h3><p>Compared with the non-GDM group (<i>n</i>=15), the GDM group (<i>n</i>=22, including five with prediabetes defined based on fasting plasma glucose [5.6–6.9 mmol/l (100–125 mg/dl)] and/or HbA<sub>1c</sub> [39–47 mmol/mol (5.7–6.4%)]) had a higher BMI, HbA<sub>1c</sub> and mean amplitude of glycaemic excursion at baseline (all <i>p</i>≤0.05). Integrating CGM data and ingestion events showed that the GDM group had a slower postprandial glucose decrease (<i>p</i>=0.01) despite having a lower proportion of carbohydrate intake, similar mean glucose levels and a reduced amplitude of the underlying glucose 24 h rhythm (<i>p</i>=0.005). Differences in CGM-derived variables persisted when the five women with prediabetes were removed from the comparison. Longitudinal analysis from baseline to follow-up showed a significant increase in fasting plasma glucose across both groups. The CGM-derived metrics showed no differences from baseline to follow-up. Late circadian timing (i.e. sleep midpoint, eating midpoint and peak time of heart rate) was correlated with higher fasting plasma glucose and reduced amplitudes of the underlying glucose 24 h rhythm (all <i>p</i>≤0.05).</p><h3 data-test=\\\"abstract-sub-heading\\\">Conclusions/interpretation</h3><p>We reveal GDM-related postpartum differences in glucose variability and 24 h rhythms, even among women clinically considered to be normoglycaemic. 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The metabolic and circadian signatures of gestational diabetes in the postpartum period characterised using multiple wearable devices
Aims/hypothesis
Gestational diabetes mellitus (GDM) affects 14% of all pregnancies worldwide and is associated with cardiometabolic risk. We aimed to exploit high-resolution wearable device time-series data to create a fine-grained physiological characterisation of the postpartum GDM state in free-living conditions, including clinical variables, daily glucose dynamics, food and drink consumption, physical activity, sleep patterns and heart rate.
Methods
In a prospective observational study, we employed continuous glucose monitors (CGMs), a smartphone food diary, triaxial accelerometers and heart rate and heart rate variability monitors over a 2 week period to compare women who had GDM in the previous pregnancy (GDM group) and women who had a pregnancy with normal glucose metabolism (non-GDM group) at 1–2 months after delivery (baseline) and 6 months later (follow-up). We integrated CGM data with ingestion events recorded with the smartphone app MyFoodRepo to quantify the rapidity of returning to preprandial glucose levels after meal consumption. We inferred the properties of the underlying 24 h rhythm in the baseline glucose. Aggregating the baseline and follow-up data in a linear mixed model, we quantified the relationships between glycaemic variables and wearable device-derived markers of circadian timing.
Results
Compared with the non-GDM group (n=15), the GDM group (n=22, including five with prediabetes defined based on fasting plasma glucose [5.6–6.9 mmol/l (100–125 mg/dl)] and/or HbA1c [39–47 mmol/mol (5.7–6.4%)]) had a higher BMI, HbA1c and mean amplitude of glycaemic excursion at baseline (all p≤0.05). Integrating CGM data and ingestion events showed that the GDM group had a slower postprandial glucose decrease (p=0.01) despite having a lower proportion of carbohydrate intake, similar mean glucose levels and a reduced amplitude of the underlying glucose 24 h rhythm (p=0.005). Differences in CGM-derived variables persisted when the five women with prediabetes were removed from the comparison. Longitudinal analysis from baseline to follow-up showed a significant increase in fasting plasma glucose across both groups. The CGM-derived metrics showed no differences from baseline to follow-up. Late circadian timing (i.e. sleep midpoint, eating midpoint and peak time of heart rate) was correlated with higher fasting plasma glucose and reduced amplitudes of the underlying glucose 24 h rhythm (all p≤0.05).
Conclusions/interpretation
We reveal GDM-related postpartum differences in glucose variability and 24 h rhythms, even among women clinically considered to be normoglycaemic. Our results provide a rationale for future interventions aimed at improving glucose variability and encouraging earlier daily behavioural patterns to mitigate the long-term cardiometabolic risk of GDM.
期刊介绍:
Diabetologia, the authoritative journal dedicated to diabetes research, holds high visibility through society membership, libraries, and social media. As the official journal of the European Association for the Study of Diabetes, it is ranked in the top quartile of the 2019 JCR Impact Factors in the Endocrinology & Metabolism category. The journal boasts dedicated and expert editorial teams committed to supporting authors throughout the peer review process.