Department of Histopathology, Leeds Teaching Hospitals NHS Trust, Leeds, UK.
Division of Pathology and Data Analytics, Leeds Institute of Cancer and Pathology, University of Leeds, Beckett Street, Leeds, LS9 7TF, UK.
Sci Rep. 2023 Mar 23;13(1):4774. doi: 10.1038/s41598-023-31526-7.
The current subjective histopathological assessment of cutaneous melanoma is challenging. The application of image analysis algorithms to histological images may facilitate improvements in workflow and prognostication. To date, several individual algorithms applied to melanoma histological images have been reported with variations in approach and reported accuracies. Histological digital images can be created using a camera mounted on a light microscope, or through whole slide image (WSI) generation using a whole slide scanner. Before any such tool could be integrated into clinical workflow, the accuracy of the technology should be carefully evaluated and summarised. Therefore, the objective of this review was to evaluate the accuracy of existing image analysis algorithms applied to digital histological images of cutaneous melanoma. Database searching of PubMed and Embase from inception to 11th March 2022 was conducted alongside citation checking and examining reports from organisations. All studies reporting accuracy of any image analysis applied to histological images of cutaneous melanoma, were included. The reference standard was any histological assessment of haematoxylin and eosin-stained slides and/or immunohistochemical staining. Citations were independently deduplicated and screened by two review authors and disagreements were resolved through discussion. The data was extracted concerning study demographics; type of image analysis; type of reference standard; conditions included and test statistics to construct 2 × 2 tables. Data was extracted in accordance with our protocol and the Preferred Reporting Items for Systematic Reviews and Meta-Analyses-Diagnostic Test Accuracy (PRISMA-DTA) Statement. A bivariate random-effects meta-analysis was used to estimate summary sensitivities and specificities with 95% confidence intervals (CI). Assessment of methodological quality was conducted using a tailored version of the Quality Assessment of Diagnostic Accuracy Studies (QUADAS-2) tool. The primary outcome was the pooled sensitivity and specificity of image analysis applied to cutaneous melanoma histological images. Sixteen studies were included in the systematic review, representing 4,888 specimens. Six studies were included in the meta-analysis. The mean sensitivity and specificity of automated image analysis algorithms applied to melanoma histological images was 90% (CI 82%, 95%) and 92% (CI 79%, 97%), respectively. Based on limited and heterogeneous data, image analysis appears to offer high accuracy when applied to histological images of cutaneous melanoma. However, given the early exploratory nature of these studies, further development work is necessary to improve their performance.
目前,对皮肤黑色素瘤的主观组织病理学评估具有挑战性。将图像分析算法应用于组织学图像可能有助于提高工作流程和预测的效率。迄今为止,已经报道了几种应用于黑色素瘤组织学图像的单独算法,其方法和报告的准确性各不相同。组织学数字图像可以使用安装在光学显微镜上的相机创建,也可以通过使用全玻片扫描仪生成全玻片图像 (WSI)。在将任何此类工具集成到临床工作流程之前,应仔细评估和总结该技术的准确性。因此,本综述的目的是评估应用于皮肤黑色素瘤数字组织学图像的现有图像分析算法的准确性。从 2022 年 3 月 11 日开始,通过数据库搜索 PubMed 和 Embase,并进行引文检查和检查组织的报告。所有报告应用于皮肤黑色素瘤组织学图像的任何图像分析准确性的研究都包括在内。参考标准是对苏木精和伊红染色载玻片和/或免疫组织化学染色的任何组织学评估。引文由两名综述作者独立重复筛选,通过讨论解决分歧。从研究人口统计学; 图像分析类型; 参考标准类型; 包含的条件和构建 2×2 表的检验统计数据中提取数据。按照我们的方案和系统评价和荟萃分析诊断测试准确性 (PRISMA-DTA) 报告的首选报告项目 (PRISMA-DTA) 提取数据。使用二元随机效应荟萃分析估计汇总敏感性和特异性及其 95%置信区间 (CI)。使用诊断准确性研究质量评估 (QUADAS-2) 工具的定制版本评估方法学质量。主要结果是应用于皮肤黑色素瘤组织学图像的图像分析的汇总敏感性和特异性。系统评价包括 16 项研究,代表 4888 个标本。Meta 分析包括 6 项研究。应用于黑色素瘤组织学图像的自动化图像分析算法的平均敏感性和特异性分别为 90%(CI 82%,95%)和 92%(CI 79%,97%)。基于有限且异质的数据,图像分析在应用于皮肤黑色素瘤的组织学图像时似乎具有很高的准确性。然而,鉴于这些研究的早期探索性质,需要进一步的开发工作来提高其性能。