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Parkinson’s Disease Detection from Drawing Movements Using Convolutional Neural Networks

机译:使用卷积神经网络从绘画运动中检测帕金森氏病

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Nowadays, an important research effort in healthcare biometrics is finding accurate biomarkers that allow developing medical-decision support tools. These tools help to detect and supervise illnesses like Parkinson’s disease (PD). This paper contributes to this effort by analyzing a convolutional neural network (CNN) for PD detection from drawing movements. This CNN includes two parts: feature extraction (convolutional layers) and classification (fully connected layers). The inputs to the CNN are the module of the Fast Fourier’s transform in the range of frequencies between 0 Hz and 25 Hz. We analyzed the discrimination capability of different directions during drawing movements obtaining the best results for X and Y directions. This analysis was performed using a public dataset: Parkinson Disease Spiral Drawings Using Digitized Graphics Tablet dataset. The best results obtained in this work showed an accuracy of 96.5%, a F1-score of 97.7%, and an area under the curve of 99.2%.
机译:如今,在医疗保健生物识别技术方面的一项重要研究工作是找到可用于开发医疗决策支持工具的准确生物标记。这些工具有助于检测和监督帕金森氏病(PD)等疾病。本文通过分析卷积神经网络(CNN)来检测绘画运动中的PD,为这一工作做出了贡献。该CNN包括两部分:特征提取(卷积层)和分类(完全连接的层)。 CNN的输入是Fast Fourier变换的模块,其频率范围介于0 Hz和25 Hz之间。我们分析了绘图运动过程中不同方向的识别能力,从而获得了X和Y方向的最佳结果。使用公共数据集执行此分析:使用数字化图形输入板数据集的帕金森病螺旋图。在这项工作中获得的最佳结果显示准确度为96.5%,F1得分为97.7%,曲线下面积为99.2%。

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