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Current Trends of Artificial Intelligence for Colorectal Cancer Pathology Image Analysis: A Systematic Review

机译:结直肠癌病理图像分析的人工智能目的趋势:系统评价

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摘要

Colorectal cancer (CRC) is one of the most common cancers requiring early pathologic diagnosis using colonoscopy biopsy samples. Recently, artificial intelligence (AI) has made significant progress and shown promising results in the field of medicine despite several limitations. We performed a systematic review of AI use in CRC pathology image analysis to visualize the state-of-the-art. Studies published between January 2000 and January 2020 were searched in major online databases including MEDLINE (PubMed, Cochrane Library, and EMBASE). Query terms included “colorectal neoplasm,” “histology,” and “artificial intelligence.” Of 9000 identified studies, only 30 studies consisting of 40 models were selected for review. The algorithm features of the models were gland segmentation ( = 25, 62%), tumor classification ( = 8, 20%), tumor microenvironment characterization ( = 4, 10%), and prognosis prediction ( = 3, 8%). Only 20 gland segmentation models met the criteria for quantitative analysis, and the model proposed by Ding et al. (2019) performed the best. Studies with other features were in the elementary stage, although most showed impressive results. Overall, the state-of-the-art is promising for CRC pathological analysis. However, datasets in most studies had relatively limited scale and quality for clinical application of this technique. Future studies with larger datasets and high-quality annotations are required for routine practice-level validation.
机译:结肠直肠癌(CRC)是使用结肠镜检查活检样品的早期病理诊断的最常见癌症之一。最近,人工智能(AI)尽管有几个限制,但仍然在医学领域取得了重大进展,并显示了有希望的结果。我们对CRC病理学图像分析进行了系统审查,可视化最先进的。 2000年1月至2020年1月在主要的在线数据库中出版的研究,包括Medline(PubMed,Cochrane图书馆和Embase)。查询条款包括“结肠直肠肿瘤,”“组织学”和“人工智能”。在9000个确定的研究中,选择了由40种型号组成的30项研究进行审查。模型的算法特征是腺体分割(= 25,62%),肿瘤分类(= 8,20%),肿瘤微环境表征(= 4,10%)和预后预测(= 3,8%)。只有20个腺体分割模型符合定量分析的标准,以及Ding等人提出的模型。 (2019)表现了最好的。与其他特征的研究在基本阶段,尽管大多数结果表现出令人印象深刻的结果。总体而言,最先进的是CRC病理分析的承诺。然而,大多数研究中的数据集具有相对有限的规模和质量对于这种技术的临床应用。常规实践级验证需要更大数据集和高质量注释的未来研究。

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