基于深度神经网络的特发性帕金森病分类与诊断

Anusha Chintam, Rajendra Kumar G, Anitha Rani J, Srilatha Yalamati, C. D
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引用次数: 1

摘要

目前,深度神经网络在疾病的预测和分类中起着至关重要的作用。毫无疑问,深度神经网络在医学领域,尤其是临床成像领域有着广阔的前景。深度学习方法之所以声名鹊起,是因为它们处理大量信息的能力使患者在有限的时间内能够可靠、准确地集中注意力。尽管如此,专家们可能会留出时间来分解和制作报告。本文提出了一种基于深度神经网络的帕金森病分类方法(DPDC)。我们提出的技术就是这样一个真正的模型,为帕金森病患者的表征提供了更快、更精确的结果,准确率高达94.87%。由于患者数据集的特点,该模型可用于帕金森病的可识别证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Neural Network-Based Classification and Diagnosis of Idiopathic Parkinsonism Disease
Present days deep neural networks play a crucial role in the prediction and classification of diseases. Without a doubt, DNN has a promising future in the medical area, particularly in clinical imaging. The fame of profound learning approaches is a result of their capacity to deal with a lot of information identified with the patients with reliability, accuracy in a limited ability to focus time. Nonetheless, the specialists might set aside time in breaking down and produce reports. In this work, have proposed a Deep Neural Network-based Parkinson's disease classification (DPDC). Our proposed technique is one such genuine model giving quicker and more precise outcomes for the characterization of Parkinson's sickness patients with magnificent accuracy of 94.87%. Because of the traits of the dataset of the patient, the model can be utilized for the recognizable proof of Parkinsonism's.
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