Glucose360: An Open-Source Python Platform with Event-Based Integration for Continuous Glucose Monitoring Data Analysis.

IF 6.3 2区 医学 Q1 ENDOCRINOLOGY & METABOLISM
Ben Ehlert, Dhruv Aron, Dalia Perelman, Yue Wu, Michael P Snyder
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引用次数: 0

Abstract

Background and Aims: Continuous glucose monitoring (CGM) devices provide real-time actionable data on blood glucose levels, making them essential tools for effective glucose management. Integrating blood glucose data with food log data is crucial for understanding how dietary choices impact glucose levels. Despite their utility, many CGM applications lack integration with other external services, such as food trackers, and do not generate useful glycemic variability (GV) metrics or advanced visualizations. Existing solutions vary in functionality: some are proprietary, many require additional user programming or custom preprocessing to meet diverse research needs, and few have created solutions to connect CGM data with external services. Recent reviews highlight gaps such as insufficient postprandial analytics, absence of composite indices, and inadequate tools for nontechnical users. Methods: Glucose360 and commonly used alternative CGM applications and tools were compared by calculating GV metrics on 60 participant datasets and by contrasting their general applications for research workflows. Results: To address limitations, we developed Glucose360, featuring (1) an open-source python framework for event-based CGM data integration and analysis; (2) automated calculation of glucose metrics specific for meals and exercise events and other short-interval events; and (3) a user-friendly web application, designed for users with minimal programming experience and accessible at vurhd2.shinyapps.io/glucose360/. Discussion: Overall, Glucose360 provides a holistic analysis pipeline that is useful for both individuals and researchers to track and analyze CGM data. The source code for Glucose360 can be found at github.com/vurhd2/Glucose360.

Glucose360:一个基于事件集成的开源Python平台,用于连续血糖监测数据分析。
背景和目的:连续血糖监测(CGM)设备提供实时可操作的血糖水平数据,使其成为有效血糖管理的重要工具。将血糖数据与食物记录数据相结合对于理解饮食选择如何影响血糖水平至关重要。尽管它们很实用,但许多CGM应用程序缺乏与其他外部服务(如食物跟踪器)的集成,并且不能生成有用的血糖变异性(GV)指标或高级可视化。现有的解决方案在功能上各不相同:一些是专有的,许多需要额外的用户编程或自定义预处理以满足不同的研究需求,很少有创建将CGM数据与外部服务连接起来的解决方案。最近的审查突出了一些差距,如餐后分析不足、缺乏综合指数以及非技术用户使用的工具不足。方法:通过计算60个参与者数据集上的GV指标,并对比它们在研究工作流程中的一般应用,对Glucose360和常用的替代CGM应用程序和工具进行比较。结果:为了解决局限性,我们开发了Glucose360,其特点是:(1)基于事件的CGM数据集成和分析的开源python框架;(2)针对膳食、运动事件和其他短时间间隔事件的葡萄糖指标自动计算;(3)一个用户友好的web应用程序,专为具有最低编程经验的用户设计,可访问vurhd2.shinyapps.io/glucose360/。讨论:总体而言,Glucose360提供了一个整体的分析管道,对个人和研究人员跟踪和分析CGM数据都很有用。Glucose360的源代码可以在github.com/vurhd2/Glucose360上找到。
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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来源期刊
Diabetes technology & therapeutics
Diabetes technology & therapeutics 医学-内分泌学与代谢
CiteScore
10.60
自引率
14.80%
发文量
145
审稿时长
3-8 weeks
期刊介绍: Diabetes Technology & Therapeutics is the only peer-reviewed journal providing healthcare professionals with information on new devices, drugs, drug delivery systems, and software for managing patients with diabetes. This leading international journal delivers practical information and comprehensive coverage of cutting-edge technologies and therapeutics in the field, and each issue highlights new pharmacological and device developments to optimize patient care.
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