Use of machine learning to identify characteristics associated with severe hypoglycemia in older adults with type 1 diabetes: a post-hoc analysis of a case-control study.

IF 3.7 2区 医学 Q2 ENDOCRINOLOGY & METABOLISM BMJ Open Diabetes Research & Care Pub Date : 2024-02-27 DOI:10.1136/bmjdrc-2023-003748
Nikki L B Freeman, Rashmi Muthukkumar, Ruth S Weinstock, M Victor Wickerhauser, Anna R Kahkoska
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Abstract

Introduction: Severe hypoglycemia (SH) in older adults (OAs) with type 1 diabetes is associated with profound morbidity and mortality, yet its etiology can be complex and multifactorial. Enhanced tools to identify OAs who are at high risk for SH are needed. This study used machine learning to identify characteristics that distinguish those with and without recent SH, selecting from a range of demographic and clinical, behavioral and lifestyle, and neurocognitive characteristics, along with continuous glucose monitoring (CGM) measures.

Research design and methods: Data from a case-control study involving OAs recruited from the T1D Exchange Clinical Network were analyzed. The random forest machine learning algorithm was used to elucidate the characteristics associated with case versus control status and their relative importance. Models with successively rich characteristic sets were examined to systematically incorporate each domain of possible risk characteristics.

Results: Data from 191 OAs with type 1 diabetes (47.1% female, 92.1% non-Hispanic white) were analyzed. Across models, hypoglycemia unawareness was the top characteristic associated with SH history. For the model with the richest input data, the most important characteristics, in descending order, were hypoglycemia unawareness, hypoglycemia fear, coefficient of variation from CGM, % time blood glucose below 70 mg/dL, and trail making test B score.

Conclusions: Machine learning may augment risk stratification for OAs by identifying key characteristics associated with SH. Prospective studies are needed to identify the predictive performance of these risk characteristics.

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利用机器学习识别与 1 型糖尿病老年人严重低血糖相关的特征:一项病例对照研究的事后分析。
导言:1 型糖尿病老年人(OA)的严重低血糖症(SH)与严重的发病率和死亡率相关,但其病因可能是复杂和多因素的。我们需要更先进的工具来确定哪些老年人是血糖过高的高危人群。本研究利用机器学习技术,从一系列人口统计学特征、临床特征、行为和生活方式特征、神经认知特征以及连续血糖监测(CGM)测量结果中筛选出可区分近期罹患和未罹患SH的人群的特征:分析了一项病例对照研究的数据,该研究涉及从 T1D Exchange 临床网络招募的 OA。随机森林机器学习算法用于阐明与病例和对照状态相关的特征及其相对重要性。研究人员对具有连续丰富特征集的模型进行了检查,以系统地纳入每个领域的可能风险特征:分析了 191 名 1 型糖尿病 OA(47.1% 为女性,92.1% 为非西班牙裔白人)的数据。在所有模型中,不了解低血糖是与 SH 史相关的首要特征。在输入数据最丰富的模型中,最重要的特征从高到低依次为低血糖不自知、低血糖恐惧、CGM 变异系数、血糖低于 70 mg/dL 的时间百分比和追踪测试 B 评分:通过识别与 SH 相关的关键特征,机器学习可增强对 OA 的风险分层。需要进行前瞻性研究,以确定这些风险特征的预测性能。
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来源期刊
BMJ Open Diabetes Research & Care
BMJ Open Diabetes Research & Care Medicine-Endocrinology, Diabetes and Metabolism
CiteScore
9.30
自引率
2.40%
发文量
123
审稿时长
18 weeks
期刊介绍: BMJ Open Diabetes Research & Care is an open access journal committed to publishing high-quality, basic and clinical research articles regarding type 1 and type 2 diabetes, and associated complications. Only original content will be accepted, and submissions are subject to rigorous peer review to ensure the publication of high-quality — and evidence-based — original research articles.
期刊最新文献
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