Automated Diagnosis of Prostate Cancer Using mpMRI Images: A Deep Learning Approach for Clinical Decision Support

Comput. Pub Date : 2023-07-28 DOI:10.3390/computers12080152
A. .. Gavade, R. Nerli, Neel Kanwal, Priyanka A. Gavade, Shridhar Sunilkumar Pol, Syed Sajjad Hussain Rizvi
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引用次数: 2

Abstract

Prostate cancer (PCa) is a significant health concern for men worldwide, where early detection and effective diagnosis can be crucial for successful treatment. Multiparametric magnetic resonance imaging (mpMRI) has evolved into a significant imaging modality in this regard, which provides detailed images of the anatomy and tissue characteristics of the prostate gland. However, interpreting mpMRI images can be challenging for humans due to the wide range of appearances and features of PCa, which can be subtle and difficult to distinguish from normal prostate tissue. Deep learning (DL) approaches can be beneficial in this regard by automatically differentiating relevant features and providing an automated diagnosis of PCa. DL models can assist the existing clinical decision support system by saving a physician’s time in localizing regions of interest (ROIs) and help in providing better patient care. In this paper, contemporary DL models are used to create a pipeline for the segmentation and classification of mpMRI images. Our DL approach follows two steps: a U-Net architecture for segmenting ROI in the first stage and a long short-term memory (LSTM) network for classifying the ROI as either cancerous or non-cancerous. We trained our DL models on the I2CVB (Initiative for Collaborative Computer Vision Benchmarking) dataset and conducted a thorough comparison with our experimental setup. Our proposed DL approach, with simpler architectures and training strategy using a single dataset, outperforms existing techniques in the literature. Results demonstrate that the proposed approach can detect PCa disease with high precision and also has a high potential to improve clinical assessment.
使用mpMRI图像自动诊断前列腺癌:用于临床决策支持的深度学习方法
前列腺癌(PCa)是全世界男性的一个重大健康问题,早期发现和有效诊断对于成功治疗至关重要。在这方面,多参数磁共振成像(mpMRI)已经发展成为一种重要的成像方式,它提供了前列腺解剖和组织特征的详细图像。然而,由于前列腺癌的外观和特征范围广泛,很难与正常前列腺组织区分开来,因此解释mpMRI图像对人类来说是具有挑战性的。深度学习(DL)方法可以通过自动区分相关特征并提供PCa的自动诊断在这方面是有益的。深度学习模型可以通过节省医生定位感兴趣区域(roi)的时间来辅助现有的临床决策支持系统,并帮助提供更好的患者护理。在本文中,使用现代深度学习模型来创建mpMRI图像的分割和分类管道。我们的深度学习方法分为两个步骤:第一阶段用于分割ROI的U-Net架构和用于将ROI分类为癌变或非癌变的长短期记忆(LSTM)网络。我们在I2CVB (Initiative for Collaborative Computer Vision Benchmarking)数据集上训练我们的深度学习模型,并与我们的实验设置进行了彻底的比较。我们提出的深度学习方法具有更简单的架构和使用单个数据集的训练策略,优于文献中的现有技术。结果表明,该方法可以较准确地检测前列腺癌,并具有提高临床评估的潜力。
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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