Forecasting gait freezing event in Parkinson's patients utilizing machine learning approach from accelerometer signals

YMER Digital Pub Date : 2022-08-11 DOI:10.37896/ymer21.08/37
Bal Gopal Mishra, Animesh Sarangi, Satyabhama Dash
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Abstract

Neurological illnesses are one of the most common medical conditions affecting human races and societies worldwide. Parkinson's disease is a neurological ailment caused by absence of dopamine in the human brain and has an impact on the afflicted person's daily routine. Gait freezing event is the most concerning symptom of Parkinson's disease, and it affects around half of people with severe Parkinson's. Machine learning methods are used in this study to detect and forecast gait freezing events. Two hundred thirty seven gait freezing instances from eight patients were collected from tri-axial accelerometer data set and used to train four machine learning classification models. After comparing different performance measures of the four classification models it was found that the Random forest classification model was the most suitable one for predicting gait freezing events in Parkinson disease as it had the best accuracy, sensitivity ,selectivity and least error among the four models. Keywords: Parkinson’s disease , Gait freezing , machine learning , tri-axial accelerometer , Random forest classification model.
利用加速计信号的机器学习方法预测帕金森患者的步态冻结事件
神经系统疾病是影响全世界人类和社会的最常见的医疗条件之一。帕金森氏症是一种由人脑中多巴胺缺乏引起的神经系统疾病,对患者的日常生活产生影响。步态冻结事件是帕金森病最令人担忧的症状,约有一半的严重帕金森病患者受到影响。本研究使用机器学习方法来检测和预测步态冻结事件。从三轴加速度计数据集中收集了8例患者的237例步态冻结,并用于训练4个机器学习分类模型。通过对比四种分类模型的不同性能指标,发现随机森林分类模型具有最佳的准确性、灵敏度、选择性和最小的误差,是最适合预测帕金森病步态冻结事件的分类模型。关键词:帕金森病,步态冻结,机器学习,三轴加速度计,随机森林分类模型
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