Technical University of Denmark, Kongens Lyngby, Denmark.
Visiopharm A/S, Hørsholm, Denmark.
J Pathol. 2023 Aug;260(5):498-513. doi: 10.1002/path.6155. Epub 2023 Aug 23.
The clinical significance of the tumor-immune interaction in breast cancer is now established, and tumor-infiltrating lymphocytes (TILs) have emerged as predictive and prognostic biomarkers for patients with triple-negative (estrogen receptor, progesterone receptor, and HER2-negative) breast cancer and HER2-positive breast cancer. How computational assessments of TILs might complement manual TIL assessment in trial and daily practices is currently debated. Recent efforts to use machine learning (ML) to automatically evaluate TILs have shown promising results. We review state-of-the-art approaches and identify pitfalls and challenges of automated TIL evaluation by studying the root cause of ML discordances in comparison to manual TIL quantification. We categorize our findings into four main topics: (1) technical slide issues, (2) ML and image analysis aspects, (3) data challenges, and (4) validation issues. The main reason for discordant assessments is the inclusion of false-positive areas or cells identified by performance on certain tissue patterns or design choices in the computational implementation. To aid the adoption of ML for TIL assessment, we provide an in-depth discussion of ML and image analysis, including validation issues that need to be considered before reliable computational reporting of TILs can be incorporated into the trial and routine clinical management of patients with triple-negative breast cancer. © 2023 The Authors. The Journal of Pathology published by John Wiley & Sons Ltd on behalf of The Pathological Society of Great Britain and Ireland.
肿瘤-免疫相互作用在乳腺癌中的临床意义现已确立,肿瘤浸润淋巴细胞(TILs)已成为三阴性(雌激素受体、孕激素受体和 HER2 阴性)乳腺癌和 HER2 阳性乳腺癌患者的预测性和预后性生物标志物。计算评估 TILs 如何在临床试验和日常实践中补充手动 TIL 评估目前存在争议。最近,人们努力使用机器学习(ML)自动评估 TILs,已取得了有希望的结果。我们通过研究与手动 TIL 定量相比,ML 差异的根本原因,回顾了最先进的方法,并确定了自动 TIL 评估的陷阱和挑战。我们将发现分为四个主要主题:(1)技术幻灯片问题,(2)ML 和图像分析方面,(3)数据挑战,以及(4)验证问题。评估结果不一致的主要原因是在计算实施中包含了通过对某些组织模式或设计选择的性能识别的假阳性区域或细胞。为了帮助采用 ML 进行 TIL 评估,我们深入讨论了 ML 和图像分析,包括在将 TIL 的可靠计算报告纳入临床试验和三阴性乳腺癌患者的常规临床管理之前需要考虑的验证问题。© 2023 作者。《病理学杂志》由 John Wiley & Sons Ltd 代表英国和爱尔兰的病理学学会出版。