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数字病理学中用于膀胱癌的人工智能:炒作还是希望?一项系统综述。

Artificial Intelligence in Digital Pathology for Bladder Cancer: Hype or Hope? A Systematic Review.

作者信息

Khoraminia Farbod, Fuster Saul, Kanwal Neel, Olislagers Mitchell, Engan Kjersti, van Leenders Geert J L H, Stubbs Andrew P, Akram Farhan, Zuiverloon Tahlita C M

机构信息

Department of Urology, Erasmus MC Cancer Institute, University Medical Center Rotterdam, 3015 GD Rotterdam, The Netherlands.

Department of Electrical Engineering and Computer Science, University of Stavanger, 4021 Stavanger, Norway.

出版信息

Cancers (Basel). 2023 Sep 12;15(18):4518. doi: 10.3390/cancers15184518.

Abstract

Bladder cancer (BC) diagnosis and prediction of prognosis are hindered by subjective pathological evaluation, which may cause misdiagnosis and under-/over-treatment. Computational pathology (CPATH) can identify clinical outcome predictors, offering an objective approach to improve prognosis. However, a systematic review of CPATH in BC literature is lacking. Therefore, we present a comprehensive overview of studies that used CPATH in BC, analyzing 33 out of 2285 identified studies. Most studies analyzed regions of interest to distinguish normal versus tumor tissue and identify tumor grade/stage and tissue types (e.g., urothelium, stroma, and muscle). The cell's nuclear area, shape irregularity, and roundness were the most promising markers to predict recurrence and survival based on selected regions of interest, with >80% accuracy. CPATH identified molecular subtypes by detecting features, e.g., papillary structures, hyperchromatic, and pleomorphic nuclei. Combining clinicopathological and image-derived features improved recurrence and survival prediction. However, due to the lack of outcome interpretability and independent test datasets, robustness and clinical applicability could not be ensured. The current literature demonstrates that CPATH holds the potential to improve BC diagnosis and prediction of prognosis. However, more robust, interpretable, accurate models and larger datasets-representative of clinical scenarios-are needed to address artificial intelligence's reliability, robustness, and black box challenge.

摘要

膀胱癌(BC)的诊断和预后预测受到主观病理评估的阻碍,这可能导致误诊和治疗不足/过度。计算病理学(CPATH)可以识别临床结果预测因子,提供一种改善预后的客观方法。然而,目前缺乏对BC文献中CPATH的系统综述。因此,我们对BC中使用CPATH的研究进行了全面概述,分析了2285项已识别研究中的33项。大多数研究分析了感兴趣区域,以区分正常组织与肿瘤组织,并确定肿瘤分级/分期和组织类型(如尿路上皮、基质和肌肉)。基于选定的感兴趣区域,细胞的核面积、形状不规则性和圆度是预测复发和生存最有前景的标志物,准确率>80%。CPATH通过检测特征(如乳头结构、核深染和核多形性)来识别分子亚型。结合临床病理特征和图像衍生特征可改善复发和生存预测。然而,由于缺乏结果可解释性和独立测试数据集,无法确保其稳健性和临床适用性。当前文献表明,CPATH有潜力改善BC的诊断和预后预测。然而,需要更稳健、可解释、准确的模型以及代表临床场景的更大数据集,以应对人工智能的可靠性、稳健性和黑箱挑战。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d07e/10526515/60b2e7d42fdb/cancers-15-04518-g001.jpg

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