Hybrid Resampling and Xgboost Prediction Using Patient's Details as Features for Parkinson's Disease Detection

A. Keller, Anukul Pandey
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Abstract

The recognition/diagnosis of Parkinson's disease must be highly accurate to reduce the severity of the disorder with timely treatment. It is often seen that handwriting of the patient diminishes because it is tough to hold the pen/pencil due to muscle rigidity as the disease progresses. Men and women are neurologically different and so are the young and aged and thus respond differently to Parkinson's manifestation. Additionally, there is a significant link between the dominant hand of the person and the side of the body where the initial manifestation of the disease begins. This lays the foundation for research-based on gender, age and handedness (lateralization) to predict the disease. The HandPD dataset used here is inherently imbalanced. This gives rise to the issue of prediction model biasedness. The true nature of such a model is not quite revealed by the conventional accuracy alone. Thus, balanced accuracy is used to evaluate true efficiency. The technique proposed here alleviates model bias using hybrid resampling and extreme gradient boosting. It also explores the impact of features like age, gender and handedness on the mode efficiency. Experimental results of the technique proposed here yield the highest accuracy of 98.24%, a balanced accuracy of 98.14% with 100% sensitivity and 96.29% specificity when the age of the person is taken into account along with features extracted from the handwritten images.
以患者细节为特征的混合重采样和Xgboost预测用于帕金森病检测
帕金森病的识别/诊断必须高度准确,以减少疾病的严重程度并及时治疗。随着病情的发展,由于肌肉僵硬,很难握住钢笔/铅笔,因此经常可以看到患者的笔迹减少。男性和女性的神经系统不同,年轻人和老年人也不同,因此对帕金森症的反应也不同。此外,患者的惯用手与疾病最初表现开始的身体一侧之间存在显著联系。这为基于性别、年龄和偏手性(侧化)来预测疾病的研究奠定了基础。这里使用的HandPD数据集本身就是不平衡的。这就产生了预测模型偏差的问题。这种模型的真实性质仅凭传统的准确性并不能完全揭示出来。因此,平衡精度是用来评估真正的效率。本文提出的方法通过混合重采样和极端梯度增强来减轻模型偏差。本文还探讨了年龄、性别和惯用手等特征对模式效率的影响。实验结果表明,当考虑人的年龄以及从手写图像中提取的特征时,该技术的最高准确率为98.24%,平衡准确率为98.14%,灵敏度为100%,特异性为96.29%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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