1型糖尿病低血糖原因的自动推断:可行性研究。

Aleksandr Zaitcev, Mohammad R Eissa, Zheng Hui, Tim Good, Jackie Elliott, Mohammed Benaissa
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摘要

背景:低血糖是治疗糖尿病最常见的不良后果,通常是由于患者自我护理不理想所致。卫生专业人员的行为干预和自我保健教育有助于通过针对有问题的患者行为来避免低血糖复发。这依赖于对观察到的事件背后的原因进行耗时的调查,其中包括人工解释个人糖尿病日记和与患者沟通。因此,有一个明确的动机是使用监督机器学习范式自动化这个过程。本文提出了低血糖原因自动识别的可行性研究。方法:54名1型糖尿病患者在21个月内标记1885次低血糖事件的原因。从参与者在糖尿病管理平台Glucollector上例行收集的数据中,提取了描述低血糖发作和受试者一般自我护理的广泛可能的预测因子。随后,对可能的低血糖原因进行了分类,主要分为两部分分析:对自我保健数据特征与低血糖原因之间关系的统计分析,以及研究低血糖原因自动判断系统设计的分类分析。结果:体育活动对现实世界中收集到的45%的低血糖原因有贡献。统计分析为基于自我护理行为的不同低血糖原因提供了一些可解释的预测因子。分类分析显示了在f1得分、召回率和精度指标下,在不同目标的实际设置下,推理系统的性能。结论:数据采集反映了各种低血糖原因的发生率分布。分析强调了各种低血糖类型的许多可解释的预测因素。此外,可行性研究还提出了低血糖原因自动分类决策支持系统设计中一些有价值的问题。因此,自动识别低血糖的原因可能有助于客观地针对患者的护理行为和治疗改变。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Automatic inference of hypoglycemia causes in type 1 diabetes: a feasibility study.

Background: Hypoglycemia is the most common adverse consequence of treating diabetes, and is often due to suboptimal patient self-care. Behavioral interventions by health professionals and self-care education helps avoid recurrent hypoglycemic episodes by targeting problematic patient behaviors. This relies on time-consuming investigation of reasons behind the observed episodes, which involves manual interpretation of personal diabetes diaries and communication with patients. Therefore, there is a clear motivation to automate this process using a supervised machine learning paradigm. This manuscript presents a feasibility study of automatic identification of hypoglycemia causes.

Methods: Reasons for 1885 hypoglycemia events were labeled by 54 participants with type 1 diabetes over a 21 months period. A broad range of possible predictors were extracted describing a hypoglycemic episode and the subject's general self-care from participants' routinely collected data on the Glucollector, their diabetes management platform. Thereafter, the possible hypoglycemia reasons were categorized for two major analysis sections - statistical analysis of relationships between the data features of self-care and hypoglycemia reasons, and classification analysis investigating the design of an automated system to determine the reason for hypoglycemia.

Results: Physical activity contributed to 45% of hypoglycemia reasons on the real world collected data. The statistical analysis provided a number of interpretable predictors of different hypoglycemia reasons based on self-care behaviors. The classification analysis showed the performance of a reasoning system in practical settings with different objectives under F1-score, recall and precision metrics.

Conclusion: The data acquisition characterized the incidence distribution of the various hypoglycemia reasons. The analyses highlighted many interpretable predictors of the various hypoglycemia types. Also, the feasibility study presented a number of concerns valuable in the design of the decision support system for automatic hypoglycemia reason classification. Therefore, automating the identification of the causes of hypoglycemia may help objectively to target behavioral and therapeutic changes in patients' care.

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