Characterization of the Breast Cancer Liver Metastasis Microenvironment via Machine Learning Analysis of the Primary Tumor Microenvironment.

IF 2 Q3 ONCOLOGY
Dylan A Goodin, Eric Chau, Junjun Zheng, Cailin O'Connell, Anjana Tiwari, Yitian Xu, Polly Niravath, Shu-Hsia Chen, Biana Godin, Hermann B Frieboes
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Abstract

Breast cancer liver metastases (BCLM) are hypovascular lesions that resist intravenously administered therapies and have grim prognosis. Immunotherapeutic strategies targeting BCLM critically depend on the tumor microenvironment (TME), including tumor-associated macrophages. However, a priori characterization of the BCLM TME to optimize therapy is challenging because BCLM tissue is rarely collected. In contrast to primary breast tumors for which tissue is usually obtained and histologic analysis performed, biopsies or resections of BCLM are generally discouraged due to potential complications. This study tested the novel hypothesis that BCLM TME characteristics could be inferred from the primary tumor tissue. Matched primary and metastatic human breast cancer samples were analyzed by imaging mass cytometry, identifying 20 shared marker clusters denoting macrophages (CD68, CD163, and CD206), monocytes (CD14), immune response (CD56, CD4, and CD8a), programmed cell death protein 1, PD-L1, tumor tissue (Ki-67 and phosphorylated ERK), cell adhesion (E-cadherin), hypoxia (hypoxia-inducible factor-1α), vascularity (CD31), and extracellular matrix (alpha smooth muscle actin, collagen, and matrix metalloproteinase 9). A machine learning workflow was implemented and trained on primary tumor clusters to classify each metastatic cluster density as being either above or below median values. The proposed approach achieved robust classification of BCLM marker data from matched primary tumor samples (AUROC ≥ 0.75, 95% confidence interval ≥ 0.7, on the validation subsets). Top clusters for prediction included CD68+, E-cad+, CD8a+PD1+, CD206+, and CD163+MMP9+. We conclude that the proposed workflow using primary breast tumor marker data offers the potential to predict BCLM TME characteristics, with the longer term goal to inform personalized immunotherapeutic strategies targeting BCLM.

Significance: BCLM tissue characterization to optimize immunotherapy is difficult because biopsies or resections are rarely performed. This study shows that a machine learning approach offers the potential to infer BCLM characteristics from the primary tumor tissue.

通过对原发肿瘤微环境的机器学习分析,确定乳腺癌肝转移微环境的特征。
乳腺癌肝转移瘤(BCLM)是一种低血管病变,对静脉注射疗法有抵抗力,预后较差。针对 BCLM 的免疫治疗策略关键取决于肿瘤微环境(TME),包括肿瘤相关巨噬细胞(TAM)。然而,由于很少收集 BCLM 组织,因此先验地确定 BCLM TME 的特征以优化治疗具有挑战性。原发性乳腺肿瘤通常需要获取组织并进行组织学分析,与之相比,由于潜在的并发症,一般不鼓励对BCLM进行活检或切除。本研究测试了从原发肿瘤组织推断 BCLM TME 特征的新假设。通过成像质谱仪(IMC)对匹配的原发性和转移性人类乳腺癌样本进行分析,确定了 20 个共同的标记群,分别表示巨噬细胞(CD68、CD163、CD206)、单核细胞(CD14)、免疫反应(CD56、CD4、CD8a)、程序性细胞死亡蛋白 1(PD1)、程序性死亡配体 1(PD-L1)、肿瘤组织(Ki-67、pERK)、细胞粘附(E-cad)、缺氧(HIF1α)、血管性(CD31)和 ECM(αSMA、胶原蛋白、MMP9)。在原发肿瘤簇上实施并训练了机器学习(ML)工作流程,将每个转移簇密度分为高于或低于中位值。所提出的方法对来自匹配原发肿瘤样本的 BCLM 标记数据进行了稳健分类(验证子集上的 AUROC ≥0.75,95% CI ≥0.7)。预测的顶级群组包括 CD68+、E-cad+、CD8a+PD1+、CD206+ 和 CD163+MMP9+。我们的结论是,利用原发性乳腺肿瘤标记物数据提出的工作流程为预测 BCLM TME 特征提供了可能,其长远目标是为针对 BCLM 的个性化免疫治疗策略提供依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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