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多模态暹罗网络在前列腺 MRI 中用于诊断相似病变检索。

Multi-Modal Siamese Network for Diagnostically Similar Lesion Retrieval in Prostate MRI.

出版信息

IEEE Trans Med Imaging. 2021 Mar;40(3):986-995. doi: 10.1109/TMI.2020.3043641. Epub 2021 Mar 2.

Abstract

Multi-parametric prostate MRI (mpMRI) is a powerful tool to diagnose prostate cancer, though difficult to interpret even for experienced radiologists. A common radiological procedure is to compare a magnetic resonance image with similarly diagnosed cases. To assist the radiological image interpretation process, computerized Content-Based Image Retrieval systems (CBIRs) can therefore be employed to improve the reporting workflow and increase its accuracy. In this article, we propose a new, supervised siamese deep learning architecture able to handle multi-modal and multi-view MR images with similar PIRADS score. An experimental comparison with well-established deep learning-based CBIRs (namely standard siamese networks and autoencoders) showed significantly improved performance with respect to both diagnostic (ROC-AUC), and information retrieval metrics (Precision-Recall, Discounted Cumulative Gain and Mean Average Precision). Finally, the new proposed multi-view siamese network is general in design, facilitating a broad use in diagnostic medical imaging retrieval.

摘要

多参数前列腺 MRI(mpMRI)是诊断前列腺癌的有力工具,即使对于有经验的放射科医生来说也难以解读。一种常见的放射学程序是将磁共振图像与类似诊断的病例进行比较。为了辅助放射学图像解释过程,可以使用计算机化的基于内容的图像检索系统(CBIR)来提高报告工作流程的准确性。在本文中,我们提出了一种新的、有监督的孪生深度学习架构,能够处理具有相似 PIRADS 评分的多模态和多视图 MR 图像。与成熟的基于深度学习的 CBIR(即标准孪生网络和自动编码器)进行的实验比较表明,在诊断(ROC-AUC)和信息检索指标(精度-召回率、折扣累积增益和平均精度)方面均有显著提高。最后,新提出的多视图孪生网络在设计上具有通用性,便于在诊断医学图像检索中广泛使用。

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