不要惧怕人工智能:病理学中前列腺癌检测机器学习的系统回顾。

IF 3.7 3区 医学 Q2 MEDICAL LABORATORY TECHNOLOGY
Aaryn Frewing, Alexander B Gibson, Richard Robertson, Paul M Urie, Dennis Della Corte
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引用次数: 0

摘要

背景:使用机器学习技术进行前列腺癌自动检测已引发了病理学家很快将被算法取代的猜测。本综述涉及机器学习算法的发展及其在前列腺癌检测和格里森分级方面的有效性:目的:研究当前算法的准确性和分类能力。我们将对该技术及其在临床实践中的应用进行总体解释。我们还讨论了在临床实践中应用机器学习算法所面临的挑战:本综述的文献是通过系统搜索确定和收集的。在分类过程之前,我们制定了标准,以有效指导研究的选择。根据论文的相关性,我们采用了一个 4 点系统对论文进行排序。对于被认为与我们的衡量标准相关的论文,我们还审查了所有被引用和引用的研究。然后,根据研究是否采用了二元或多类分类方法对其进行分类。从包含前列腺癌检测准确率、曲线下面积(AUC)或κ值的论文中提取数据。对结果进行了直观总结,以呈现不同分类能力之间的准确率趋势:结论:与二元任务相比,多重分类任务更难获得高准确度指标。能够为临床全切片图像(WSI)分配格里森分级的算法的临床实施仍然遥遥无期。机器学习技术目前还不能取代病理学家,但可以作为防止误诊的重要保障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Don't Fear the Artificial Intelligence: A Systematic Review of Machine Learning for Prostate Cancer Detection in Pathology.

Context: Automated prostate cancer detection using machine learning technology has led to speculation that pathologists will soon be replaced by algorithms. This review covers the development of machine learning algorithms and their reported effectiveness specific to prostate cancer detection and Gleason grading.

Objective: To examine current algorithms regarding their accuracy and classification abilities. We provide a general explanation of the technology and how it is being used in clinical practice. The challenges to the application of machine learning algorithms in clinical practice are also discussed.

Data sources: The literature for this review was identified and collected using a systematic search. Criteria were established prior to the sorting process to effectively direct the selection of studies. A 4-point system was implemented to rank the papers according to their relevancy. For papers accepted as relevant to our metrics, all cited and citing studies were also reviewed. Studies were then categorized based on whether they implemented binary or multi-class classification methods. Data were extracted from papers that contained accuracy, area under the curve (AUC), or κ values in the context of prostate cancer detection. The results were visually summarized to present accuracy trends between classification abilities.

Conclusions: It is more difficult to achieve high accuracy metrics for multiclassification tasks than for binary tasks. The clinical implementation of an algorithm that can assign a Gleason grade to clinical whole slide images (WSIs) remains elusive. Machine learning technology is currently not able to replace pathologists but can serve as an important safeguard against misdiagnosis.

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来源期刊
CiteScore
9.20
自引率
2.20%
发文量
369
审稿时长
3-8 weeks
期刊介绍: Welcome to the website of the Archives of Pathology & Laboratory Medicine (APLM). This monthly, peer-reviewed journal of the College of American Pathologists offers global reach and highest measured readership among pathology journals. Published since 1926, ARCHIVES was voted in 2009 the only pathology journal among the top 100 most influential journals of the past 100 years by the BioMedical and Life Sciences Division of the Special Libraries Association. Online access to the full-text and PDF files of APLM articles is free.
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