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Prostate Cancer Classification on VERDICT DW-MRI Using Convolutional Neural Networks

机译:基于卷积神经网络的VERDICT DW-MRI前列腺癌分类

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Currently, non-invasive imaging techniques such as magnetic resonance imaging (MRI) are emerging as powerful diagnostic tools for prostate cancer (PCa) characterization. This paper focuses on automated PCa classification on VERDICT (Vascular, Extracellular and Restricted Diffusion for Cytometry in Tumors) diffusion weighted (DW)-MRI, which is a non-invasive microstructural imaging technique that comprises a rich imaging protocol and a tissue computational model to map in vivo his-tological indices. The contribution of the paper is two fold. Firstly, we investigate the potential of automated, model-free PCa classification on raw VERDICT DW-MRI. Secondly, we attempt to adapt and evaluate novel fully convolutional neural networks (FCNNs) for PCa characterization. We present two neural network architectures that adapt U-Net and ResNet-18 to the PCa classification problem. We train the networks end-to-end on DW-MRI data and evaluate the diagnostic performance employing a 10-fold cross validation approach using data acquired from 103 patients. ResNet-18 outperforms U-Net with an average AUC of 86.7%. Our results show promise for the utilization of raw VERDICT DW-MRI data and FCNNs for automating the PCa diagnostic pathway.
机译:当前,诸如磁共振成像(MRI)之类的非侵入性成像技术正在成为用于前列腺癌(PCa)表征的强大诊断工具。本文重点介绍基于VERDICT(肿瘤细胞计数的血管,细胞外和限制性扩散)扩散加权(DW)-MRI的自动PCa分类,这是一种非侵入性微结构成像技术,包括丰富的成像方案和组织计算模型,绘制体内组织学指标。本文的贡献是两方面的。首先,我们研究了在原始VERDICT DW-MRI上自动进行无模型PCa分类的潜力。其次,我们尝试适应和评估新颖的全卷积神经网络(FCNN)用于PCa表征。我们提出了两种神经网络体系结构,它们使U-Net和ResNet-18适应PCa分类问题。我们在DW-MRI数据上端对端地训练网络,并使用10倍交叉验证方法(使用从103例患者获得的数据)评估诊断性能。 ResNet-18的平均AUC平均为86.7%,胜过U-Net。我们的结果表明有望利用原始VERDICT DW-MRI数据和FCNN自动化PCa诊断途径。

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