Department of Pathology and Laboratory Medicine, Donald and Barbara Zucker School of Medicine at Hofstra/Northwell, Greenvale, NY, USA.
Department of Pathology and Laboratory Medicine, Warren Alpert Medical School of Brown University, Providence, RI, USA.
Virchows Arch. 2022 Sep;481(3):367-385. doi: 10.1007/s00428-022-03376-7. Epub 2022 Jul 12.
Breast cancer is the most diagnosed cancer in humans. In recent years, myxoid and proportionated stroma have been described as clinically significant in many cancer subtypes. Here computational portraits of tumor-associated stromata were created from a machine learning (ML) classifier using QuPath to evaluate proportionated stromal area (PSA), myxoid stromal ratio (MSR), and immune stroma proportion (ISP) from whole slide images (WSI). The ML classifier was validated in independent training (n = 40) and validation (n = 109) cohorts finding MSR, PSA, and ISP to be associated with tumor stage, lymph node status, Nottingham grade, stromal differentiation (SD), tumor size, estrogen receptor (ER), progesterone receptor (PR), and receptor tyrosine-protein kinase erbB-2 (HER-2). Overall, MSR correlated better with the clinicopathologic profile than PSA and ISP. High MSR was found to be associated with high tumor stage, low ISP, and high Nottingham histologic score. As a computational biomarker, high MSR was more likely to be associated with luminal B like, Her-2 enriched, and triple-negative biomarker status when compared to luminal A like. The supervised ML superpixel approach demonstrated here can be performed by a trained pathologist to provide a faster and more uniformed approach to the analysis to the tumoral microenvironment (TME). The TME may be relevant for clinical decision-making, determining chemotherapeutic efficacy, and guiding a more overall precision-based breast cancer care.
乳腺癌是人类最常见的癌症。近年来,黏液样和比例化的基质在许多癌症亚型中被描述为具有临床意义。在这里,我们使用 QuPath 从全切片图像(WSI)中创建了基于机器学习(ML)分类器的肿瘤相关基质的计算特征,以评估比例化的基质面积(PSA)、黏液样基质比(MSR)和免疫基质比例(ISP)。该 ML 分类器在独立的训练(n=40)和验证(n=109)队列中进行了验证,发现 MSR、PSA 和 ISP 与肿瘤分期、淋巴结状态、诺丁汉分级、基质分化(SD)、肿瘤大小、雌激素受体(ER)、孕激素受体(PR)和受体酪氨酸蛋白激酶 erbB-2(HER-2)有关。总体而言,MSR 与临床病理特征的相关性优于 PSA 和 ISP。高 MSR 与高肿瘤分期、低 ISP 和高诺丁汉组织学评分相关。作为一种计算生物标志物,与 luminal A 样相比,高 MSR 更可能与 luminal B 样、HER-2 富集和三阴性生物标志物状态相关。这里展示的有监督的 ML 超像素方法可以由经过培训的病理学家执行,为肿瘤微环境(TME)的分析提供更快和更统一的方法。TME 可能与临床决策、确定化疗疗效和指导更全面的基于精准的乳腺癌护理相关。