Spatially Informed Gene Signatures for Response to Immunotherapy in Melanoma.

IF 10 1区 医学 Q1 ONCOLOGY Clinical Cancer Research Pub Date : 2024-08-15 DOI:10.1158/1078-0432.CCR-23-3932
Thazin N Aung, Jonathan Warrell, Sandra Martinez-Morilla, Niki Gavrielatou, Ioannis Vathiotis, Vesal Yaghoobi, Harriet M Kluger, Mark Gerstein, David L Rimm
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Abstract

Purpose: We aim to improve the prediction of response or resistance to immunotherapies in patients with melanoma. This goal is based on the hypothesis that current gene signatures predicting immunotherapy outcomes show only modest accuracy due to the lack of spatial information about cellular functions and molecular processes within tumors and their microenvironment.

Experimental design: We collected gene expression data spatially from three cellular compartments defined by CD68+ macrophages, CD45+ leukocytes, and S100B+ tumor cells in 55 immunotherapy-treated melanoma specimens using Digital Spatial Profiling-Whole Transcriptome Atlas. We developed a computational pipeline to discover compartment-specific gene signatures and determine if adding spatial information can improve patient stratification.

Results: We achieved robust performance of compartment-specific signatures in predicting the outcome of immune checkpoint inhibitors in the discovery cohort. Of the three signatures, the S100B signature showed the best performance in the validation cohort (N = 45). We also compared our compartment-specific signatures with published bulk signatures and found the S100B tumor spatial signature outperformed previous signatures. Within the eight-gene S100B signature, five genes (PSMB8, TAX1BP3, NOTCH3, LCP2, and NQO1) with positive coefficients predict the response, and three genes (KMT2C, OVCA2, and MGRN1) with negative coefficients predict the resistance to treatment.

Conclusions: We conclude that the spatially defined compartment signatures utilize tumor and tumor microenvironment-specific information, leading to more accurate prediction of treatment outcome, and thus merit prospective clinical assessment.

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黑色素瘤免疫疗法反应的空间基因特征。
目的:我们的目标是改善黑色素瘤患者对免疫疗法的反应或耐药性预测。这一目标基于以下假设:由于缺乏肿瘤及其微环境中细胞功能和分子过程的空间信息,目前预测免疫疗法结果的基因特征只能显示出适度的准确性:我们使用数字空间剖析-全转录组图谱(DSP-WTA)从55个免疫治疗黑色素瘤标本中的CD68+巨噬细胞、CD45+白细胞和S100B+肿瘤细胞定义的三个细胞区收集了基因表达空间数据。我们开发了一个计算管道来发现分区特异性基因特征,并确定添加空间信息是否能改善患者分层:结果:在发现队列中,我们发现的特异性区组基因特征在预测 ICI 治疗结果方面表现出色。在三个特征中,S100B 特征在验证队列(N=45)中表现最佳。我们还将我们的分区特异性特征与已发表的批量特征进行了比较,发现S100B肿瘤空间特征优于之前的特征。在8个基因的S100B特征中,5个基因(PSMB8, TAX1BP3, NOTCH3, LCP2, NQO1)的正系数可预测反应,3个基因(KMT2C, OVCA2, MGRN1)的负系数可预测耐药性:我们的结论是,空间定义的分区特征利用了肿瘤和 TME 的特异性信息,能更准确地预测治疗结果,因此值得进行前瞻性临床评估。
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来源期刊
Clinical Cancer Research
Clinical Cancer Research 医学-肿瘤学
CiteScore
20.10
自引率
1.70%
发文量
1207
审稿时长
2.1 months
期刊介绍: Clinical Cancer Research is a journal focusing on groundbreaking research in cancer, specifically in the areas where the laboratory and the clinic intersect. Our primary interest lies in clinical trials that investigate novel treatments, accompanied by research on pharmacology, molecular alterations, and biomarkers that can predict response or resistance to these treatments. Furthermore, we prioritize laboratory and animal studies that explore new drugs and targeted agents with the potential to advance to clinical trials. We also encourage research on targetable mechanisms of cancer development, progression, and metastasis.
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