Deep Transfer Learning for Early Parkinson's Disease Detection

Nur Afroz, Boshir Ahmed
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Abstract

The main reason for Parkinson's Disease (PD) is unspecified. No permanent cure is available for this disease. Only medication can mitigate its effect. At present PD can be diagnosed through gait characteristics, voice recording or by handwriting. These methods share the same pipelines to detect the infancy level of PD. But to detect the early stage of PD is very challenging. In our study we have used deep convolutional neural networks to detect early stages of PD through patients' handwriting images. To increase the performance, we have combined four datasets of PD handwriting images without the additional signals and used an ensemble method of transfer learning technique. High handwriting sample variability presents a difficulty that is tackled by the transfer learning approach. We have used accuracy, loss, precision, recall, AUC and F1 score as measure metrics to evaluate the models. Our approach shows that the proposed ensemble model shows 95.5% accuracy
深度迁移学习用于早期帕金森病检测
帕金森病(PD)的主要病因尚未明确。这种疾病没有永久性的治疗方法。只有药物才能减轻其影响。目前PD可以通过步态特征、录音或手写来诊断。这些方法共享相同的管道来检测婴儿期PD水平。但是要发现PD的早期阶段是非常具有挑战性的。在我们的研究中,我们使用深度卷积神经网络通过患者的笔迹图像来检测PD的早期阶段。为了提高性能,我们将四个PD手写图像数据集组合在一起,不添加额外的信号,并使用迁移学习技术的集成方法。笔迹样本的高可变性是迁移学习方法解决的一个难题。我们使用准确性、损失、精度、召回率、AUC和F1分数作为衡量指标来评估模型。我们的方法表明,所提出的集成模型的准确率为95.5%
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