A machine learning approach to predict foot care self-management in older adults with diabetes.

IF 3.4 3区 医学 Q2 ENDOCRINOLOGY & METABOLISM Diabetology & Metabolic Syndrome Pub Date : 2024-10-07 DOI:10.1186/s13098-024-01480-z
Su Özgür, Serpilay Mum, Hilal Benzer, Meryem Koçaslan Toran, İsmail Toygar
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Abstract

Background: Foot care self-management is underutilized in older adults and diabetic foot ulcers are more common in older adults. It is important to identify predictors of foot care self-management in older adults with diabetes in order to identify and support vulnerable groups. This study aimed to identify predictors of foot care self-management in older adults with diabetes using a machine learning approach.

Method: This cross-sectional study was conducted between November 2023 and February 2024. The data were collected in the endocrinology and metabolic diseases departments of three hospitals in Turkey. Patient identification form and the Foot Care Scale for Older Diabetics (FCS-OD) were used for data collection. Gradient boosting algorithms were used to predict the variable importance. Three machine learning algorithms were used in the study: XGBoost, LightGBM and Random Forest. The algorithms were used to predict patients with a score below or above the mean FCS-OD score.

Results: XGBoost had the best performance (AUC: 0.7469). The common predictors of the models were age (0.0534), gender (0.0038), perceived health status (0.0218), and treatment regimen (0.0027). The XGBoost model, which had the highest AUC value, also identified income level (0.0055) and A1c (0.0020) as predictors of the FCS-OD score.

Conclusion: The study identified age, gender, perceived health status, treatment regimen, income level and A1c as predictors of foot care self-management in older adults with diabetes. Attention should be given to improving foot care self-management among this vulnerable group.

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预测老年糖尿病患者足部护理自我管理情况的机器学习方法。
背景:老年人对足部护理自我管理的利用率较低,而糖尿病足溃疡在老年人中更为常见。确定糖尿病老年人足部护理自我管理的预测因素对识别和支持弱势群体非常重要。本研究旨在利用机器学习方法确定老年糖尿病患者足部护理自我管理的预测因素:这项横断面研究于 2023 年 11 月至 2024 年 2 月间进行。数据在土耳其三家医院的内分泌和代谢疾病科收集。收集数据时使用了患者身份识别表和老年糖尿病患者足部护理量表(FCS-OD)。梯度提升算法用于预测变量的重要性。研究中使用了三种机器学习算法:XGBoost、LightGBM 和随机森林。这些算法用于预测得分低于或高于 FCS-OD 平均得分的患者:XGBoost的性能最佳(AUC:0.7469)。这些模型的共同预测因子是年龄(0.0534)、性别(0.0038)、健康状况感知(0.0218)和治疗方案(0.0027)。AUC值最高的XGBoost模型还发现收入水平(0.0055)和A1c(0.0020)是FCS-OD得分的预测因素:研究发现,年龄、性别、健康状况感知、治疗方案、收入水平和 A1c 是老年糖尿病患者足部护理自我管理的预测因素。应重视改善这一弱势群体的足部护理自我管理。
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来源期刊
Diabetology & Metabolic Syndrome
Diabetology & Metabolic Syndrome ENDOCRINOLOGY & METABOLISM-
CiteScore
6.20
自引率
0.00%
发文量
170
审稿时长
7.5 months
期刊介绍: Diabetology & Metabolic Syndrome publishes articles on all aspects of the pathophysiology of diabetes and metabolic syndrome. By publishing original material exploring any area of laboratory, animal or clinical research into diabetes and metabolic syndrome, the journal offers a high-visibility forum for new insights and discussions into the issues of importance to the relevant community.
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