Application of Machine Learning and Deep Learning Models in Prostate Cancer Diagnosis Using Medical Images: A Systematic Review

Olusola Olabanjo, Ashiribo Wusu, Mauton Asokere, Oseni Afisi, Basheerat Okugbesan, Olufemi Olabanjo, Olusegun Folorunso, Manuel Mazzara
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Abstract

Introduction: Prostate cancer (PCa) is one of the deadliest and most common causes of malignancy and death in men worldwide, with a higher prevalence and mortality in developing countries specifically. Factors such as age, family history, race and certain genetic mutations are some of the factors contributing to the occurrence of PCa in men. Recent advances in technology and algorithms gave rise to the computer-aided diagnosis (CAD) of PCa. With the availability of medical image datasets and emerging trends in state-of-the-art machine and deep learning techniques, there has been a growth in recent related publications. Materials and Methods: In this study, we present a systematic review of PCa diagnosis with medical images using machine learning and deep learning techniques. We conducted a thorough review of the relevant studies indexed in four databases (IEEE, PubMed, Springer and ScienceDirect) using the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines. With well-defined search terms, a total of 608 articles were identified, and 77 met the final inclusion criteria. The key elements in the included papers are presented and conclusions are drawn from them. Results: The findings show that the United States has the most research in PCa diagnosis with machine learning, Magnetic Resonance Images are the most used datasets and transfer learning is the most used method of diagnosing PCa in recent times. In addition, some available PCa datasets and some key considerations for the choice of loss function in the deep learning models are presented. The limitations and lessons learnt are discussed, and some key recommendations are made. Conclusion: The discoveries and the conclusions of this work are organized so as to enable researchers in the same domain to use this work and make crucial implementation decisions.
机器学习和深度学习模型在前列腺癌医学图像诊断中的应用:系统综述
前言:前列腺癌(PCa)是世界范围内男性恶性肿瘤和死亡的最致命和最常见的原因之一,特别是在发展中国家的患病率和死亡率更高。年龄、家族史、种族和某些基因突变等因素是导致男性前列腺癌发生的一些因素。近年来,随着技术和算法的进步,前列腺癌的计算机辅助诊断(CAD)应运而生。随着医学图像数据集的可用性以及最先进的机器和深度学习技术的新兴趋势,最近相关出版物有所增长。材料和方法:在本研究中,我们使用机器学习和深度学习技术对医学图像的PCa诊断进行了系统回顾。我们对四个数据库(IEEE、PubMed、b施普林格和ScienceDirect)中收录的相关研究进行了全面的综述,采用了系统评价和meta分析的首选报告项目(PRISMA)指南。通过定义明确的检索词,共确定了608篇文章,其中77篇符合最终的纳入标准。介绍了所包括的论文中的关键要素,并从中得出结论。结果:研究结果显示,美国在机器学习诊断PCa方面的研究最多,磁共振图像是近年来使用最多的数据集,迁移学习是近年来诊断PCa使用最多的方法。此外,还介绍了一些可用的PCa数据集和深度学习模型中损失函数选择的一些关键考虑因素。讨论了局限性和经验教训,并提出了一些关键建议。结论:这项工作的发现和结论被组织起来,以便使同一领域的研究人员能够使用这项工作并做出关键的实施决策。
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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