Highly multiplexed imaging reveals prognostic immune and stromal spatial biomarkers in breast cancer.

IF 6.3 1区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
Jennifer R Eng, Elmar Bucher, Zhi Hu, Cameron R Walker, Tyler Risom, Michael Angelo, Paula Gonzalez-Ericsson, Melinda E Sanders, A Bapsi Chakravarthy, Jennifer A Pietenpol, Summer L Gibbs, Rosalie C Sears, Koei Chin
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引用次数: 0

Abstract

Spatial profiling of tissues promises to elucidate tumor-microenvironment interactions and generate prognostic and predictive biomarkers. We analyzed single-cell spatial data from 3 multiplex imaging technologies: cyclic immunofluorescence (CycIF) data we generated from 102 patients with breast cancer with clinical follow-up as well as publicly available mass cytometry and multiplex ion-beam imaging datasets. Similar single-cell phenotyping results across imaging platforms enabled combined analysis of epithelial phenotypes to delineate prognostic subtypes among patients who are estrogen-receptor+ (ER+). We utilized discovery and validation cohorts to identify biomarkers with prognostic value. Increased lymphocyte infiltration was independently associated with longer survival in triple-negative (TN) and high-proliferation ER+ breast tumors. An assessment of 10 spatial analysis methods revealed robust spatial biomarkers. In ER+ disease, quiescent stromal cells close to tumor were abundant in tumors with good prognoses, while tumor cell neighborhoods containing mixed fibroblast phenotypes were enriched in poor-prognosis tumors. In TN disease, macrophage/tumor and B/T lymphocyte neighbors were enriched, and lymphocytes were dispersed in good-prognosis tumors, while tumor cell neighborhoods containing vimentin+ fibroblasts were enriched in poor-prognosis tumors. In conclusion, we generated comparable single-cell spatial proteomic data from several clinical cohorts to enable prognostic spatial biomarker identification and validation.

高复用成像揭示乳腺癌的预后免疫和基质空间生物标志物。
组织的空间分析有望阐明肿瘤与微环境的相互作用,并产生预后和预测性生物标志物。我们分析了来自三种多重成像技术的单细胞空间数据:循环免疫荧光(CycIF)数据,我们从102名乳腺癌患者的临床随访中获得的数据,以及公开可用的成像质量细胞术和多重离子束成像数据集。成像平台上类似的单细胞表型结果使得对上皮表型的联合分析能够描绘雌激素受体阳性(ER+)患者的预后亚型。我们利用发现和验证队列来确定具有预后价值的生物标志物。在三阴性(TN)和高增殖ER+乳腺肿瘤中,淋巴细胞浸润增加与存活时间延长独立相关。对十种空间分析方法的评估揭示了强大的空间生物标志物。在ER+疾病中,预后良好的肿瘤中富含靠近肿瘤的静止间质细胞,而在预后较差的肿瘤中富含含有混合成纤维细胞表型的肿瘤细胞邻区。在TN疾病中,预后良好的肿瘤中巨噬细胞/肿瘤和B/T淋巴细胞邻居富集,淋巴细胞分散,而预后不良的肿瘤中含有vimentin阳性成纤维细胞的肿瘤细胞邻居富集。总之,我们从几个临床队列中生成了可比较的单细胞空间蛋白质组学数据,以实现预后空间生物标志物的识别和验证。
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来源期刊
JCI insight
JCI insight Medicine-General Medicine
CiteScore
13.70
自引率
1.20%
发文量
543
审稿时长
6 weeks
期刊介绍: JCI Insight is a Gold Open Access journal with a 2022 Impact Factor of 8.0. It publishes high-quality studies in various biomedical specialties, such as autoimmunity, gastroenterology, immunology, metabolism, nephrology, neuroscience, oncology, pulmonology, and vascular biology. The journal focuses on clinically relevant basic and translational research that contributes to the understanding of disease biology and treatment. JCI Insight is self-published by the American Society for Clinical Investigation (ASCI), a nonprofit honor organization of physician-scientists founded in 1908, and it helps fulfill the ASCI's mission to advance medical science through the publication of clinically relevant research reports.
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