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增强动态血糖图谱以辅助决策和调整治疗

Enhancement of Ambulatory Glucose Profile for Decision Assistance and Treatment Adjustments.

作者信息

Satuluri V K R Rajeswari, Ponnusamy Vijayakumar

机构信息

Department of ECE, SRM Institute of Science and Technology, Kattankulathur 603203, Tamil Nadu, India.

出版信息

Diagnostics (Basel). 2024 Feb 16;14(4):436. doi: 10.3390/diagnostics14040436.

Abstract

The ambulatory glucose profile (AGP) lacks sufficient statistical metrics and insightful graphs; indeed, it is missing important information on the temporal patterns of glucose variations. The AGP graph is difficult to interpret due to the overlapping metrics and fluctuations in glucose levels over 14 days. The objective of this proposed work is to overcome these challenges, specifically the lack of insightful information and difficulty in interpreting AGP graphs, to create a platform for decision assistance. The present work proposes 20 findings built from decision rules that were developed from a combination of AGP metrics and additional statistical metrics, which have the potential to identify patterns and insightful information on hyperglycemia and hypoglycemia. The "CGM Trace" webpage was developed, in which insightful metrics and graphical representations can be used to make inferences regarding the glucose data of any user. However, doctors (endocrinologists) can access the "Findings" tab for a summarized presentation of their patients' glycemic control. The findings were implemented for 67 patients' data, in which the data of 15 patients were collected from a clinical study and the data of 52 patients were gathered from a public dataset. The findings were validated by means of MANOVA (multivariate analysis of variance), wherein a value of < 0.05 was obtained, depicting a strong significant correlation between the findings and the metrics. The proposed work from "CGM Trace" offers a deeper understanding of the CGM data, enhancing AGP reports for doctors to make treatment adjustments based on insightful information and hidden patterns for better diabetic management.

摘要

动态血糖图谱(AGP)缺乏足够的统计指标和有洞察力的图表;实际上,它缺少有关血糖变化时间模式的重要信息。由于指标重叠以及14天内血糖水平的波动,AGP图表难以解读。这项拟议工作的目标是克服这些挑战,特别是缺乏有洞察力的信息以及AGP图表解读困难的问题,以创建一个决策辅助平台。目前的工作提出了20项基于决策规则得出的结果,这些决策规则是由AGP指标和其他统计指标组合开发而成的,有可能识别高血糖和低血糖的模式及有洞察力的信息。开发了“CGM Trace”网页,其中有洞察力的指标和图形表示可用于对任何用户的血糖数据进行推断。然而,医生(内分泌科医生)可以访问“结果”标签,以获取其患者血糖控制情况的汇总展示。这些结果应用于67例患者的数据,其中15例患者的数据来自一项临床研究,52例患者的数据来自一个公共数据集。这些结果通过多变量方差分析(MANOVA)进行了验证,得到的p值<0.05,表明结果与指标之间存在很强的显著相关性。“CGM Trace”提出的工作提供了对CGM数据的更深入理解,增强了AGP报告,以便医生根据有洞察力的信息和隐藏模式进行治疗调整,从而更好地管理糖尿病。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a979/10888350/b4908a6e8c1c/diagnostics-14-00436-g001.jpg

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