Department of Pathology and Diagnostics, University and Hospital Trust of Verona, Verona, Italy.
Department of Pathology, UPMC Shadyside Hospital, University of Pittsburgh, Pittsburgh, PA, USA.
Cytopathology. 2020 Sep;31(5):432-444. doi: 10.1111/cyt.12828. Epub 2020 May 7.
Thyroid pathology has great potential for automated/artificial intelligence algorithm application as the incidence of thyroid nodules is increasing and the indeterminate interpretation rate of fine-needle aspiration remains relatively high. The aim of the study is to review the published literature on automated image analysis and artificial intelligence applications to thyroid pathology with whole-slide imaging.
Systematic search was carried out in electronic databases. Studies dealing with thyroid pathology and use of automated algorithms applied to whole-slide imaging were included. Quality of studies was assessed with a modified QUADAS-2 tool.
Of 919 retrieved articles, 19 were included. The main themes addressed were the comparison of automated assessment of immunohistochemical staining with manual pathologist's assessment, quantification of differences in cellular and nuclear parameters among tumour entities, and discrimination between benign and malignant nodules. Correlation coefficients with manual assessment were higher than 0.76 and diagnostic performance of automated models was comparable with an expert pathologist diagnosis. Computational difficulties were related to the large size of whole-slide images.
Overall, the results are promising and it is likely that, with the resolution of technical issues, the application of automated algorithms in thyroid pathology will increase and be adopted following suitable validation studies.
随着甲状腺结节的发病率不断增加,细针穿刺的不确定解释率仍然相对较高,甲状腺病理学具有很大的自动化/人工智能算法应用潜力。本研究旨在回顾发表的关于使用全切片成像的自动化图像分析和人工智能在甲状腺病理学中的应用的文献。
在电子数据库中进行了系统搜索。纳入了涉及甲状腺病理学和应用于全切片成像的自动化算法的研究。使用改良的 QUADAS-2 工具评估研究质量。
在检索到的 919 篇文章中,有 19 篇被纳入。主要探讨的主题包括自动化评估免疫组织化学染色与病理学家手动评估的比较、肿瘤实体之间细胞和核参数差异的定量、以及良性和恶性结节的区分。与手动评估的相关系数高于 0.76,自动化模型的诊断性能与专家病理学家的诊断相当。计算上的困难与全切片图像的尺寸较大有关。
总的来说,结果是有希望的,随着技术问题的解决,自动化算法在甲状腺病理学中的应用将会增加,并在经过适当的验证研究后被采用。