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基于快速区域的卷积神经网络在[F]FP-CIT正电子发射断层扫描最大强度投影图像上对纹状体不同帕金森病模式的分类

Faster Region-Based Convolutional Neural Network in the Classification of Different Parkinsonism Patterns of the Striatum on Maximum Intensity Projection Images of [F]FP-CIT Positron Emission Tomography.

作者信息

Choi Byung Wook, Kang Sungmin, Kim Hae Won, Kwon Oh Dae, Vu Huy Duc, Youn Sung Won

机构信息

Department of Nuclear Medicine, Daegu Catholic University Medical Center, Daegu Catholic University School of Medicine, Daegu 42472, Korea.

Department of Nuclear Medicine, Keimyung University Dongsan Hospital, Keimyung University School of Medicine, Daegu 42601, Korea.

出版信息

Diagnostics (Basel). 2021 Aug 28;11(9):1557. doi: 10.3390/diagnostics11091557.

Abstract

The aim of this study was to compare the performance of a deep-learning convolutional neural network (Faster R-CNN) model to detect imaging findings suggestive of idiopathic Parkinson's disease (PD) based on [F]FP-CIT PET maximum intensity projection (MIP) images versus that of nuclear medicine (NM) physicians. The anteroposterior MIP images of the [F]FP-CIT PET scan of 527 patients were classified as having PD (139 images) or non-PD (388 images) patterns according to the final diagnosis. Non-PD patterns were classified as overall-normal (ONL, 365 images) and vascular parkinsonism with definite defects or prominently decreased dopamine transporter binding (dVP, 23 images) patterns. Faster R-CNN was trained on 120 PD, 320 ONL, and 16 dVP pattern images and tested on the 19 PD, 45 ONL, and seven dVP patterns images. The performance of the Faster R-CNN and three NM physicians was assessed using receiver operating characteristics curve analysis. The difference in performance was assessed using Cochran's Q test, and the inter-rater reliability was calculated. Faster R-CNN showed high accuracy in differentiating PD from non-PD patterns and also from dVP patterns, with results comparable to those of NM physicians. There were no significant differences in the area under the curve and performance. The inter-rater reliability among Faster R-CNN and NM physicians showed substantial to almost perfect agreement. The deep-learning model accurately differentiated PD from non-PD patterns on MIP images of [F]FP-CIT PET, and its performance was comparable to that of NM physicians.

摘要

本研究的目的是比较深度学习卷积神经网络(Faster R-CNN)模型基于[F]FP-CIT PET最大强度投影(MIP)图像检测提示特发性帕金森病(PD)的影像学表现的性能与核医学(NM)医生的性能。根据最终诊断,将527例患者的[F]FP-CIT PET扫描的前后位MIP图像分类为具有PD(139幅图像)或非PD(388幅图像)模式。非PD模式分为总体正常(ONL,365幅图像)和具有明确缺损或多巴胺转运体结合显著降低的血管性帕金森综合征(dVP,23幅图像)模式。Faster R-CNN在120幅PD、320幅ONL和16幅dVP模式图像上进行训练,并在19幅PD、45幅ONL和7幅dVP模式图像上进行测试。使用受试者操作特征曲线分析评估Faster R-CNN和三名NM医生的性能。使用 Cochr an Q检验评估性能差异,并计算评分者间信度。Faster R-CNN在区分PD与非PD模式以及与dVP模式方面显示出高准确性,结果与NM医生相当。曲线下面积和性能方面无显著差异。Faster R-CNN和NM医生之间的评分者间信度显示出实质性到几乎完美的一致性。深度学习模型在[F]FP-CIT PET的MIP图像上准确区分了PD与非PD模式,其性能与NM医生相当。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/41b1/8467049/52007d67aedb/diagnostics-11-01557-g001.jpg

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