帕金森病预测的机器学习模型比较

T. Kumar, Pradyumn Sharma, N. Prakash
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引用次数: 3

摘要

帕金森病(PD)是一种主要影响人类神经系统和运动控制的慢性退行性疾病。早期症状,如肌肉僵硬、震颤、平衡受损和行走困难,则不那么明显。血液检查和扫描也不能为早期诊断提供足够的证据。因此,医生很难诊断帕金森病的发病。然而,言语模糊可以提供早期预警,可以有效地用于PD的预测。本文将帕金森病患病和健康患者的录音样本用于帕金森病的预测。利用加州大学欧文分校(UCI)的数据集,使用各种机器学习技术制定了13个预测模型。在UCI数据集上对这些预测模型进行了比较研究,该数据集由健康和帕金森病患者的生物医学语音记录样本组成。这些预测模型的准确性和效率都经过了训练和测试。本文对最佳的5个模型进行了性能分析,以期对帕金森病进行早期准确预测。这些模型的处理速度也进行了分析,以评估它们在无处不在的计算环境中轻量级移动应用程序的适用性。
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Comparison of Machine learning models for Parkinson’s Disease prediction
Parkinson's Disease (PD) is a chronic degenerative disease that mainly affects the nervous system and motor controls in human beings. Early symptoms such as muscle stiffness, tremors, impaired balance and difficulty with walking are considerably less noticeable. Blood tests and Scans also do not provide sufficient evidence for early diagnosis. Hence it is very difficult for doctors to diagnose the onset of Parkinson's Disease. However, smearing of speech gives an early warning and can be effectively used for the prediction of PD. This paper, the voice recording samples of Parkinson’s disease affected and healthy patients have been used for PD prediction. Thirteen predictive models using various Machine Learning techniques have been formulated using the University of California, Irvine (UCI) dataset. A comparative study of these predictive models has been carried out on the UCI dataset consisting of biomedical voice recording samples of healthy and Parkinson’s Disease affected peoples. These predictive models have been trained and tested for their accuracy and efficiency. The performance analysis of the best five models has been presented in this paper, for accurate prediction of Parkinson's Disease at an early stage. The processing speed of these models has also been analysed, to assess their suitability for light weight mobile applications in the ubiquitous computing environment.
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