Detection of Parkinson's Disease Through Static and Dynamic Spiral Test Drawings: A Transfer Learning Approach

M. E. Mital
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引用次数: 1

Abstract

Parkinson's Disease detection can be considered a relevant yet overlooked issue in the field of research and medicine. Its effects are progressive in nature and worsens if not detected and treated accordingly. In this study, standardized tests such as static and dynamic spiral tests (SST and DST) are employed. On top of these, machine learning, specifically transfer learning is implemented. 14 pre-trained models are considered; 3 solvers are evaluated for each machine - these processes are repeated in 4 different scenarios. Based from the results, the pre-trained model with the highest accuracy is MobileNetV2 (93.94%), while the model with the sub-optimal performance is Vgg-19 (27.27%). In addition, it is realized that Stochastic Gradient Descent with Momentum (sgdm) and Adaptive Momentum (adam) are preferred over Root Mean Square Propagation (rmsprop) as the main solver for this kind of PD classification. Nonetheless, it is claimed that DST images are more correlated and significant than SST or a combination of both.
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通过静态和动态螺旋试验图检测帕金森病:一种迁移学习方法
在研究和医学领域,帕金森病的检测被认为是一个相关但被忽视的问题。它的影响本质上是渐进的,如果不及时发现和治疗,情况会恶化。本研究采用了静态和动态螺旋测试(SST和DST)等标准化测试。在这些之上,机器学习,特别是迁移学习被实现。考虑了14个预训练模型;为每台机器评估3个求解器-这些过程在4个不同的场景中重复。结果表明,预训练模型MobileNetV2准确率最高(93.94%),Vgg-19准确率次优(27.27%)。此外,还认识到随机动量梯度下降法(sgdm)和自适应动量法(adam)比均方根传播法(rmsprop)更适合作为这类PD分类的主要求解器。尽管如此,有人声称DST图像比海表温度或两者的结合更具相关性和重要性。
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