Recognition of signs of Parkinson's disease based on the analysis of voice markers and motor activity

U. A. Vishniakou, Xia Yiwei
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Abstract

Objectives . The problem of IT diagnostics of signs of Parkinson's disease is solved by analyzing changes in the voice and slowing down the movement of patients. The urgency of the task is associated with the need for early diagnosis of the disease. A method of complex recognition of Parkinson's disease using machine learning is proposed, based on markers of voice analysis and changes in the patient's movements on known data sets. Methods . The time-frequency function (the wavelet function) and the Meyer kepstral coefficient function, the KNN algorithm ( k -Nearest Neighbors, KNN) and the algorithm of a two-layer neural network are used for training and testing on publicly available datasets on speech changes and motion retardation in Parkinson's disease. A Bayesian optimizer is also used to improve the hyperparameters of the KNN algorithm. Results . The KNN algorithm was used for speech recognition of patients, the test accuracy of 94.7% was achieved in the diagnosis of Parkinson's disease by voice change. The Bayesian neural network algorithm was applied to recognize the slowing down of the patients' movements, it gave a test accuracy of 96.2% for the diagnosis of Parkinson's disease. Conclusion . The obtained results of recognition of signs of Parkinson's disease are close to the world level. On the same set of data on speech changes of patients, one of the best indicators of foreign studies is 95.8%. On the same set of data on motion deceleration, one of the best indicators of foreign researchers is 98.8%. The proposed author's technique is intended for use in the subsystem of IT diagnostics of neurological diseases of a Smart city.
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基于声音标记和运动活动分析的帕金森氏症症状识别
目标。通过分析声音的变化和减缓患者的动作,可以解决帕金森病征兆的IT诊断问题。这项任务的紧迫性与早期诊断疾病的必要性有关。提出了一种基于语音分析标记和已知数据集上患者运动变化的机器学习复杂识别帕金森病的方法。方法。采用时频函数(小波函数)和Meyer kepstral系数函数、KNN算法(k -Nearest Neighbors, KNN)和双层神经网络算法,在公开的帕金森病语音变化和运动迟缓数据集上进行训练和测试。利用贝叶斯优化器改进了KNN算法的超参数。结果。采用KNN算法对患者进行语音识别,通过声音变化诊断帕金森病的测试准确率达到94.7%。将贝叶斯神经网络算法应用于识别患者的动作减慢,对帕金森病的诊断准确率达到96.2%。结论。所获得的帕金森病体征识别结果接近世界水平。在同一组关于患者言语变化的数据中,国外研究最好的指标之一是95.8%。在同一组运动减速数据中,国外研究人员的最佳指标之一是98.8%。该技术旨在应用于智慧城市神经系统疾病的信息技术诊断子系统。
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来源期刊
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发文量
18
审稿时长
8 weeks
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