Histopathological image analysis is the gold standard to diagnose cancer. Carcinoma is a subtype of cancer that constitutes more than 80% of all cancer cases. Squamous cell carcinoma and adenocarcinoma are two major subtypes of carcinoma, diagnosed by microscopic study of biopsy slides. However, manual microscopic evaluation is a subjective and time-consuming process. Many researchers have reported methods to automate carcinoma detection and classification. The increasing use of artificial intelligence (AI) in the automation of carcinoma diagnosis also reveals a significant rise in the use of deep network models. In this systematic literature review, we present a comprehensive review of the state-of-the-art approaches reported in carcinoma diagnosis using histopathological images. Studies are selected from well-known databases with strict inclusion/exclusion criteria. We have categorized the articles and recapitulated their methods based on specific organs of carcinoma origin. Further, we have summarized pertinent literature on AI methods, highlighted critical challenges and limitations, and provided insights on future research direction in automated carcinoma diagnosis. Out of 101 articles selected, most of the studies experimented on private datasets with varied image sizes, obtaining accuracy between 63% and 100%. Overall, this review highlights the need for a generalized AI-based carcinoma diagnostic system. Additionally, it is desirable to have accountable approaches to extract microscopic features from images of multiple magnifications that should mimic pathologists' evaluations.
翻译:病理学图像分析是诊断癌症的黄金标准。癌症是一种亚型癌症,占所有癌症病例的80%以上。细胞细胞癌和肿瘤瘤是癌症的两大亚型,通过对生物心理学幻灯片的微镜研究诊断出。然而,人工微观评估是一个主观和耗时的过程。许多研究人员报告了将癌症检测和分类自动化的方法。在肿瘤诊断自动化中越来越多地使用人工智能(AI)也表明使用深层网络模型的情况显著增加。在系统化的文献审查中,我们全面审查了在癌症诊断中报告的最先进的癌症方法,使用病理学图象。研究是从著名的数据库中挑选的,具有严格的包容/排入标准。我们对这些文章进行了分类,并根据特定癌源器官进行了分类。此外,我们总结了有关人工诊断方法的相关文献,强调了关键的挑战和局限性,并提供了对未来研究方向的深入网络模型的深入了解。在101种文章中,我们用直截面图解图解分析中,最精确的样本是100种。我们所选取的直观性图象学研究中,需要从100种图谱和直观性图像的精确度。