A mutual communicated model based on multi-parametric MRI for automated prostate segmentation and prostate cancer classification

Piqiang Li, Kewen Liu, Zhao Li, Weida Xie, Q. Bao, Chaoyang Liu
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Abstract

Deep learning methods for multi-parametric MRI hold the greatest promise for automated computer-aided diagnosis of prostate cancer, including classification and segmentation. In this work, we propose a new model (MC-DSCN) for classification and segmentation simultaneously. MC-DSCN contains three components: the coarse segmentation component based on the residual U-net with attention blocks, the classification component based on the stacked residual blocks and multi-parametric fusion mechanism, and the fine segmentation component that incorporates the information about lesion location (cancer response map, CRM) arising from the classification component. Extensive experiments are performed to demonstrate that the proposed method could effectively transfer mutual information between segmentation and classification components and facilitate each other in a bootstrapping way, thus outperforming the methods designed to perform only one task.
基于多参数MRI的前列腺自动分割与前列腺癌分类互传模型
多参数MRI的深度学习方法在前列腺癌的自动计算机辅助诊断(包括分类和分割)方面具有很大的前景。在这项工作中,我们提出了一种新的分类和分割模型(MC-DSCN)。MC-DSCN包含三个部分:基于带有注意块的残差U-net的粗分割部分,基于残差块堆叠和多参数融合机制的分类部分,以及包含由分类部分产生的病变位置信息(癌症反应图,CRM)的精细分割部分。大量的实验表明,该方法能够有效地传递分割和分类组件之间的相互信息,并以自举的方式相互促进,从而优于仅执行一项任务的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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