Perfusion Imaging in Deep Prostate Cancer Detection from MP-MRI: Can We Take Advantage of it?

Audrey Duran, Gaspard Dussert, C. Lartizien
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Abstract

To our knowledge, all deep computer-aided detection and diagnosis (CAD) systems for prostate cancer (PCa) detection consider bi-parametric magnetic resonance imaging (bp-MRI) only, including T2w and ADC sequences while excluding the 4D perfusion sequence,which is however part of standard clinical protocols for this diagnostic task. In this paper, we question strategies to integrate information from perfusion imaging in deep neural architectures. To do so, we evaluate several ways to encode the perfusion information in a U-Net like architecture, also considering early versus mid fusion strategies. We compare performance of multiparametric MRI (mp-MRI) models with the baseline bp-MRI model based on a private dataset of 219 mp-MRI exams. Perfusion maps derived from dynamic contrast enhanced MR exams are shown to positively impact segmentation and grading performance of PCa lesions, especially the 3D MR volume corresponding to the maximum slope of the wash-in curve as well as Tmax perfusion maps. The latter mp-MRI models indeed outperform the bp-MRI one whatever the fusion strategy, with Co-hen’s kappa score of 0.318±0.019 for the bp-MRI model and 0.378 ± 0.033 for the model including the maximum slope with a mid fusion strategy, also achieving competitive Co-hen’s kappa score compared to state of the art.
灌注成像在MP-MRI深部前列腺癌检测中的应用:我们能利用它吗?
据我们所知,所有用于前列腺癌(PCa)检测的深度计算机辅助检测和诊断(CAD)系统仅考虑双参数磁共振成像(bp-MRI),包括T2w和ADC序列,而不包括4D灌注序列,然而这是该诊断任务的标准临床方案的一部分。在本文中,我们对深度神经结构中灌注成像信息的整合策略提出了质疑。为此,我们评估了在类似U-Net的架构中编码灌注信息的几种方法,同时考虑了早期和中期融合策略。我们比较了多参数MRI (mp-MRI)模型与基于219个mp-MRI检查私有数据集的基线bp-MRI模型的性能。动态增强MR检查产生的灌注图对PCa病变的分割和分级性能有积极影响,特别是与冲刷曲线最大斜率对应的3D MR体积以及Tmax灌注图。无论融合策略如何,后一种mp-MRI模型确实优于bp-MRI模型,bp-MRI模型的Co-hen kappa评分为0.318±0.019,包括最大斜率和中间融合策略的模型的Co-hen kappa评分为0.378±0.033,与最先进的Co-hen kappa评分相比也具有竞争力。
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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