UFSCAR - Federal University of São Carlos, Department of Computing, São Carlos, Brazil.
UNOESTE - University of Western São Paulo, Presidente Prudente, Brazil.
Artif Intell Med. 2018 May;87:67-77. doi: 10.1016/j.artmed.2018.04.001. Epub 2018 Apr 16.
Parkinson's disease (PD) is considered a degenerative disorder that affects the motor system, which may cause tremors, micrography, and the freezing of gait. Although PD is related to the lack of dopamine, the triggering process of its development is not fully understood yet.
In this work, we introduce convolutional neural networks to learn features from images produced by handwritten dynamics, which capture different information during the individual's assessment. Additionally, we make available a dataset composed of images and signal-based data to foster the research related to computer-aided PD diagnosis.
The proposed approach was compared against raw data and texture-based descriptors, showing suitable results, mainly in the context of early stage detection, with results nearly to 95%.
The analysis of handwritten dynamics using deep learning techniques showed to be useful for automatic Parkinson's disease identification, as well as it can outperform handcrafted features.
帕金森病(PD)被认为是一种退行性疾病,影响运动系统,可能导致震颤、细微震颤和步态冻结。尽管 PD 与多巴胺缺乏有关,但它的发展触发过程尚未完全了解。
在这项工作中,我们引入卷积神经网络从手写动力学产生的图像中学习特征,这些特征在个体评估期间捕获不同的信息。此外,我们提供了一个由图像和基于信号的数据组成的数据集,以促进与计算机辅助 PD 诊断相关的研究。
所提出的方法与原始数据和基于纹理的描述符进行了比较,显示出了合适的结果,主要在早期检测方面,结果接近 95%。
使用深度学习技术对手写动力学进行分析,对于自动帕金森病识别非常有用,并且可以胜过手工制作的特征。