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Artificial Intelligence Based Algorithms for Prostate Cancer Classification and Detection on Magnetic Resonance Imaging: A Narrative Review

机译:基于人工智能的前列腺癌分类算法和磁共振成像的检测:叙事评论

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摘要

Due to the upfront role of magnetic resonance imaging (MRI) for prostate cancer (PCa) diagnosis, a multitude of artificial intelligence (AI) applications have been suggested to aid in the diagnosis and detection of PCa. In this review, we provide an overview of the current field, including studies between 2018 and February 2021, describing AI algorithms for (1) lesion classification and (2) lesion detection for PCa. Our evaluation of 59 included studies showed that most research has been conducted for the task of PCa lesion classification (66%) followed by PCa lesion detection (34%). Studies showed large heterogeneity in cohort sizes, ranging between 18 to 499 patients (median = 162) combined with different approaches for performance validation. Furthermore, 85% of the studies reported on the stand-alone diagnostic accuracy, whereas 15% demonstrated the impact of AI on diagnostic thinking efficacy, indicating limited proof for the clinical utility of PCa AI applications. In order to introduce AI within the clinical workflow of PCa assessment, robustness and generalizability of AI applications need to be further validated utilizing external validation and clinical workflow experiments.
机译:由于磁共振成像(MRI)对前列腺癌(PCA)诊断的前期作用,已经提出了多种人工智能(AI)应用,以帮助诊断和检测PCA。在本次审查中,我们提供当前领域的概述,包括2018年和2月2021之间的研究,描述了(1)病变分类和(2)PCA的病变检测的AI算法。我们对59项的评估表明,大多数研究已经进行了PCA病变分类任务(66%),然后进行了PCA病变检测(34%)。研究表明群组尺寸的大量异质性,范围为18至499名(中位数= 162),结合不同的性能验证方法。此外,85%的研究报告了独立的诊断准确性,而15%展示了AI对诊断思想疗效的影响,表明PCA AI应用的临床效用有限。为了在PCA评估的临床工作流程中引入AI,利用外部验证和临床工作流程实验进一步验证AI应用的鲁棒性和普遍性。

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