Orsulic Sandra, John Joshi, Walts Ann E, Gertych Arkadiusz
Veterans Affairs Greater Los Angeles Healthcare System, Los Angeles, CA, United States.
Department of Obstetrics and Gynecology, David Geffen School of Medicine, University of California Los Angeles, Los Angeles, CA, United States.
Front Oncol. 2022 Jul 29;12:924945. doi: 10.3389/fonc.2022.924945. eCollection 2022.
Histopathologic evaluations of tissue sections are key to diagnosing and managing ovarian cancer. Pathologists empirically assess and integrate visual information, such as cellular density, nuclear atypia, mitotic figures, architectural growth patterns, and higher-order patterns, to determine the tumor type and grade, which guides oncologists in selecting appropriate treatment options. Latent data embedded in pathology slides can be extracted using computational imaging. Computers can analyze digital slide images to simultaneously quantify thousands of features, some of which are visible with a manual microscope, such as nuclear size and shape, while others, such as entropy, eccentricity, and fractal dimensions, are quantitatively beyond the grasp of the human mind. Applications of artificial intelligence and machine learning tools to interpret digital image data provide new opportunities to explore and quantify the spatial organization of tissues, cells, and subcellular structures. In comparison to genomic, epigenomic, transcriptomic, and proteomic patterns, morphologic and spatial patterns are expected to be more informative as quantitative biomarkers of complex and dynamic tumor biology. As computational pathology is not limited to visual data, nuanced subvisual alterations that occur in the seemingly "normal" pre-cancer microenvironment could facilitate research in early cancer detection and prevention. Currently, efforts to maximize the utility of computational pathology are focused on integrating image data with other -omics platforms that lack spatial information, thereby providing a new way to relate the molecular, spatial, and microenvironmental characteristics of cancer. Despite a dire need for improvements in ovarian cancer prevention, early detection, and treatment, the ovarian cancer field has lagged behind other cancers in the application of computational pathology. The intent of this review is to encourage ovarian cancer research teams to apply existing and/or develop additional tools in computational pathology for ovarian cancer and actively contribute to advancing this important field.
组织切片的组织病理学评估是诊断和管理卵巢癌的关键。病理学家通过经验评估并整合视觉信息,如细胞密度、核异型性、有丝分裂象、结构生长模式和高阶模式,以确定肿瘤类型和分级,从而指导肿瘤学家选择合适的治疗方案。病理切片中嵌入的潜在数据可通过计算成像提取。计算机可以分析数字玻片图像,同时量化数千个特征,其中一些特征用手动显微镜可以看到,如细胞核大小和形状,而其他特征,如熵、偏心率和分形维数,则超出了人类的定量理解范围。应用人工智能和机器学习工具来解释数字图像数据,为探索和量化组织、细胞及亚细胞结构的空间组织提供了新机会。与基因组、表观基因组、转录组和蛋白质组模式相比,形态学和空间模式有望作为复杂动态肿瘤生物学的定量生物标志物提供更多信息。由于计算病理学不限于视觉数据,看似“正常”的癌前微环境中发生的细微亚视觉改变可能有助于早期癌症检测和预防研究。目前,最大化计算病理学效用的努力集中于将图像数据与缺乏空间信息的其他组学平台整合,从而提供一种关联癌症分子、空间和微环境特征的新方法。尽管迫切需要改进卵巢癌的预防、早期检测和治疗,但卵巢癌领域在计算病理学的应用方面落后于其他癌症。本综述的目的是鼓励卵巢癌研究团队应用现有的和/或开发更多用于卵巢癌的计算病理学工具,并积极推动这一重要领域的发展。