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Parkinsons Disease Detection Using Isosurfaces-Based Features and Convolutional Neural Networks

机译:基于等值面特征和卷积神经网络的帕金森病检测

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摘要

Computer aided diagnosis systems based on brain imaging are an important tool to assist in the diagnosis of Parkinson's disease, whose ultimate goal is the detection by automatic recognizing of patterns that characterize the disease. In recent times Convolutional Neural Networks (CNN) have proved to be amazingly useful for that task. The drawback, however, is that 3D brain images contain a huge amount of information that leads to complex CNN architectures. When these architectures become too complex, classification performances often degrades because the limitations of the training algorithm and overfitting. Thus, this paper proposes the use of isosurfaces as a way to reduce such amount of data while keeping the most relevant information. These isosurfaces are then used to implement a classification system which uses two of the most well-known CNN architectures, LeNet and AlexNet, to classify DaTScan images with an average accuracy of 95.1% and AUC = 97%, obtaining comparable (slightly better) values to those obtained for most of the recently proposed systems. It can be concluded therefore that the computation of isosurfaces reduces the complexity of the inputs significantly, resulting in high classification accuracies with reduced computational burden.
机译:基于脑成像的计算机辅助诊断系统是协助诊断帕金森氏病的重要工具,其最终目标是通过自动识别表征该疾病的模式进行检测。最近,卷积神经网络(CNN)被证明对这项任务非常有用。但是,缺点是3D脑图像包含大量信息,导致复杂的CNN架构。当这些架构变得过于复杂时,由于训练算法和过拟合的局限性,分类性能通常会下降。因此,本文提出使用等值面作为减少此类数据量的方法,同时保留最相关的信息。然后,这些等值面用于实施分类系统,该系统使用两种最著名的CNN架构LeNet和AlexNet对DaTScan图像进行分类,平均精度为95.1%,AUC = 97%,获得可比较的(略好)值与大多数最近提出的系统获得的结果一致。因此可以得出结论,等值面的计算显着降低了输入的复杂性,从而导致了具有降低的计算负担的高分类精度。

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