足底压力
糖尿病足
足部压力
物理医学与康复
计算机科学
统计分析
医学
机器学习
人工智能
模式识别(心理学)
工程类
糖尿病
数学
统计
压力传感器
机械工程
内分泌学
作者
Dipak Kumar Agrawal,Watcharin Jongpinit,Soodkhet Pojprapai,Wipawee Usaha,Pattra Wattanapan,Pornthep Tangkanjanavelukul,Timporn Vitoonpong
标识
DOI:10.3390/technologies12110231
摘要
Diabetes is a significant global health issue impacting millions. Approximately 26 million diabetics experience foot ulcers, with 20% ending up with amputations, resulting in high morbidity, mortality, and costs. Plantar pressure screening shows potential for early detection of Diabetic Foot Ulcers (DFUs). Although foot ulcers often occur due to excessive pressure on the soles during dynamic activities, most studies focus on static pressure measurements. This study’s primary objective is to apply wireless plantar pressure sensor-embedded insoles to classify and detect diabetic feet from healthy ones based on dynamic plantar pressure. The secondary objective is to compare statistical-based and Machine Learning (ML) classification methods. Data from 150 subjects were collected from the insoles during walking, revealing that diabetic feet have higher plantar pressure than healthy feet, which is consistent with prior research. The Adaptive Boosting (AdaBoost) ML model achieved the highest accuracy of 0.85, outperforming the statistical method, which had an accuracy of 0.67. These findings suggest that ML models, combined with pressure sensor-embedded insoles, can effectively classify healthy and diabetic feet using plantar pressure features. Future research will focus on using these insoles with ML to classify various stages of diabetic neuropathy, aiming for early prediction of foot ulcers in home settings.
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