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机器学习在白血病诊断中的应用:现状与未来方向。

Machine learning applications in the diagnosis of leukemia: Current trends and future directions.

机构信息

College of Medicine, Alfaisal University, Riyadh, Saudi Arabia.

Department of Medicine, Houston Methodist Hospital, Houston, TX, USA.

出版信息

Int J Lab Hematol. 2019 Dec;41(6):717-725. doi: 10.1111/ijlh.13089. Epub 2019 Sep 9.

Abstract

Machine learning (ML) offers opportunities to advance pathological diagnosis, especially with increasing trends in digitalizing microscopic images. Diagnosing leukemia is time-consuming and challenging in many areas globally and there is a growing trend in utilizing ML techniques for its diagnosis. In this review, we aimed to describe the literature of ML utilization in the diagnosis of the four common types of leukemia: acute lymphocytic leukemia (ALL), chronic lymphocytic leukemia (CLL), acute myeloid leukemia (AML), and chronic myelogenous leukemia (CML). Using a strict selection criterion, utilizing MeSH terminology and Boolean logic, an electronic search of MEDLINE and IEEE Xplore Digital Library was performed. The electronic search was complemented by handsearching of references of related studies and the top results of Google Scholar. The full texts of 58 articles were reviewed, out of which, 22 studies were included. The number of studies discussing ALL, AML, CLL, and CML was 12, 8, 3, and 1, respectively. No studies were prospectively applying algorithms in real-world scenarios. Majority of studies had small and homogenous samples and used supervised learning for classification tasks. 91% of the studies were performed after 2010, and 74% of the included studies applied ML algorithms to microscopic diagnosis of leukemia. The included studies illustrated the need to develop the field of ML research, including the transformation from solely designing algorithms to practically applying them clinically.

摘要

机器学习 (ML) 提供了推进病理学诊断的机会,特别是在数字化显微镜图像的趋势不断增加的情况下。在全球许多地区,诊断白血病既耗时又具有挑战性,并且利用 ML 技术进行诊断的趋势也在不断增加。在这篇综述中,我们旨在描述 ML 在诊断四种常见类型白血病中的应用文献:急性淋巴细胞白血病 (ALL)、慢性淋巴细胞白血病 (CLL)、急性髓细胞白血病 (AML) 和慢性髓细胞白血病 (CML)。使用严格的选择标准,利用 MeSH 术语和布尔逻辑,对 MEDLINE 和 IEEE Xplore 数字图书馆进行了电子搜索。通过对相关研究的参考文献和 Google Scholar 的热门结果进行手工搜索,对电子搜索进行了补充。共查阅了 58 篇文章的全文,其中 22 篇研究被纳入。讨论 ALL、AML、CLL 和 CML 的研究数量分别为 12、8、3 和 1。没有研究前瞻性地将算法应用于实际场景。大多数研究的样本量小且同质,并且使用监督学习进行分类任务。91%的研究是在 2010 年后进行的,74%的纳入研究将 ML 算法应用于白血病的显微镜诊断。纳入的研究表明需要发展 ML 研究领域,包括从单纯设计算法到实际临床应用的转变。

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