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利用单矢状面 MRI 对帕金森病进行深度学习区分:概念验证研究。

Deep learning to differentiate parkinsonian disorders separately using single midsagittal MR imaging: a proof of concept study.

机构信息

Department of Radiology, International University of Health and Welfare Hospital, 537-3, Iguchi, Nasushiobara, Tochigi, 329-2763, Japan.

Department of Radiology, The Institute of Medical Science, The University of Tokyo, 4-6-1 Shirokanedai, Minato-ku, Tokyo, 108-8639, Japan.

出版信息

Eur Radiol. 2019 Dec;29(12):6891-6899. doi: 10.1007/s00330-019-06327-0. Epub 2019 Jul 1.

Abstract

OBJECTIVES

To evaluate the diagnostic performance of deep learning with the convolutional neural networks (CNN) to distinguish each representative parkinsonian disorder using MRI.

METHODS

This clinical retrospective study was approved by the institutional review board, and the requirement for written informed consent was waived. Midsagittal T1-weighted MRI of a total of 419 subjects (125 Parkinson's disease (PD), 98 progressive supranuclear palsy (PSP), and 54 multiple system atrophy with predominant parkinsonian features (MSA-P) patients, and 142 normal subjects) between January 2012 and April 2016 was retrospectively assessed. To deal with the overfitting problem of deep learning, all subjects were randomly divided into training (85%) and validation (15%) data sets with the same proportions of each disease and normal subjects. We trained the CNN to distinguish each parkinsonian disorder using single midsagittal T1-weighted MRI with a training group to minimize the differences between predicted output probabilities and the clinical diagnoses; then, we adopted the trained CNN to the validation data set. Subjects were classified into each parkinsonian disorder or normal condition according to the final diagnosis of the trained CNN, and we assessed the diagnostic performance of the CNN.

RESULTS

The accuracies of diagnostic performances regarding PD, PSP, MSA-P, and normal subjects were 96.8, 93.7, 95.2, and 98.4%, respectively. The areas under the receiver operating characteristic curves for distinguishing each condition from others (PD, PSP, MSA-P, and normal subjects) were 0.995, 0.982, 0.990, and 1.000, respectively.

CONCLUSION

Deep learning with CNN enables highly accurate discrimination of parkinsonian disorders using MRI.

KEY POINTS

• Deep learning convolution neural network achieves differential diagnosis of PD, PSP, MSA-P, and normal controls with an accuracy of 96.8, 93.7, 95.2, and 98.4%, respectively. • The areas under the curves for distinguishing between PD, PSP, MSA-P, and normality were 0.995, 0.982, 0.990, and 1.000, respectively. • CNN may learn important features that humans not notice, and has a possibility to perform previously impossible diagnoses.

摘要

目的

利用卷积神经网络(CNN)评估深度学习在使用 MRI 区分每种代表性帕金森病方面的诊断性能。

方法

本临床回顾性研究经机构审查委员会批准,且豁免了书面知情同意书的要求。回顾性分析了 2012 年 1 月至 2016 年 4 月期间共 419 名受试者(125 名帕金森病(PD)患者、98 名进行性核上性麻痹(PSP)患者、54 名以帕金森特征为主的多系统萎缩(MSA-P)患者和 142 名正常受试者)的正中矢状位 T1 加权 MRI。为了解决深度学习的过拟合问题,所有受试者均采用相同疾病和正常受试者比例随机分为训练(85%)和验证(15%)数据集。我们使用训练集训练 CNN 以区分每种帕金森病,从而使预测输出概率和临床诊断之间的差异最小化;然后,我们将经过训练的 CNN 应用于验证数据集。根据经过训练的 CNN 的最终诊断,将受试者分类为每种帕金森病或正常情况,并评估 CNN 的诊断性能。

结果

PD、PSP、MSA-P 和正常受试者的诊断性能准确率分别为 96.8%、93.7%、95.2%和 98.4%。鉴别每个条件(PD、PSP、MSA-P 和正常受试者)的受试者工作特征曲线下面积分别为 0.995、0.982、0.990 和 1.000。

结论

使用 CNN 的深度学习可以实现使用 MRI 对帕金森病进行高度准确的鉴别诊断。

关键点

  1. 深度学习卷积神经网络实现了对 PD、PSP、MSA-P 和正常对照的鉴别诊断,准确率分别为 96.8%、93.7%、95.2%和 98.4%。

  2. 鉴别 PD、PSP、MSA-P 和正常的曲线下面积分别为 0.995、0.982、0.990 和 1.000。

  3. CNN 可能会学习到人类未注意到的重要特征,并有机会进行以前不可能的诊断。

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