Identification and validation of a machine learning model of complete response to radiation in rectal cancer reveals immune infiltrate and TGFβ as key predictors.

IF 9.7 1区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL EBioMedicine Pub Date : 2024-08-01 Epub Date: 2024-07-16 DOI:10.1016/j.ebiom.2024.105228
Enric Domingo, Sanjay Rathee, Andrew Blake, Leslie Samuel, Graeme Murray, David Sebag-Montefiore, Simon Gollins, Nicholas West, Rubina Begum, Susan Richman, Phil Quirke, Keara Redmond, Aikaterini Chatzipli, Alessandro Barberis, Sylvana Hassanieh, Umair Mahmood, Michael Youdell, Ultan McDermott, Viktor Koelzer, Simon Leedham, Ian Tomlinson, Philip Dunne, Francesca M Buffa, Timothy S Maughan
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Abstract

Background: It is uncertain which biological features underpin the response of rectal cancer (RC) to radiotherapy. No biomarker is currently in clinical use to select patients for treatment modifications.

Methods: We identified two cohorts of patients (total N = 249) with RC treated with neoadjuvant radiotherapy (45Gy/25) plus fluoropyrimidine. This discovery set included 57 cases with pathological complete response (pCR) to chemoradiotherapy (23%). Pre-treatment cancer biopsies were assessed using transcriptome-wide mRNA expression and targeted DNA sequencing for copy number and driver mutations. Biological candidate and machine learning (ML) approaches were used to identify predictors of pCR to radiotherapy independent of tumour stage. Findings were assessed in 107 cases from an independent validation set (GSE87211).

Findings: Three gene expression sets showed significant independent associations with pCR: Fibroblast-TGFβ Response Signature (F-TBRS) with radioresistance; and cytotoxic lymphocyte (CL) expression signature and consensus molecular subtype CMS1 with radiosensitivity. These associations were replicated in the validation cohort. In parallel, a gradient boosting machine model comprising the expression of 33 genes generated in the discovery cohort showed high performance in GSE87211 with 90% sensitivity, 86% specificity. Biological and ML signatures indicated similar mechanisms underlying radiation response, and showed better AUC and p-values than published transcriptomic signatures of radiation response in RC.

Interpretation: RCs responding completely to chemoradiotherapy (CRT) have biological characteristics of immune response and absence of immune inhibitory TGFβ signalling. These tumours may be identified with a potential biomarker based on a 33 gene expression signature. This could help select patients likely to respond to treatment with a primary radiotherapy approach as for anal cancer. Conversely, those with predicted radioresistance may be candidates for clinical trials evaluating addition of immune-oncology agents and stromal TGFβ signalling inhibition.

Funding: The Stratification in Colorectal Cancer Consortium (S:CORT) was funded by the Medical Research Council and Cancer Research UK (MR/M016587/1).

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直肠癌放射治疗完全反应机器学习模型的鉴定和验证表明,免疫浸润和 TGFβ 是关键的预测因素。
背景:直肠癌(RC)对放疗反应的生物学特征尚不确定。目前临床上还没有生物标志物可用于选择患者进行治疗调整:我们发现了两组接受新辅助放疗(45Gy/25)加氟嘧啶治疗的 RC 患者(总人数 = 249)。该发现组包括57例对化疗放疗有病理完全反应(pCR)的患者(23%)。治疗前的癌症活检采用全转录组 mRNA 表达和靶向 DNA 测序评估拷贝数和驱动突变。生物候选方法和机器学习(ML)方法被用来识别放化疗pCR的预测因子,而与肿瘤分期无关。对独立验证集(GSE87211)中的 107 个病例进行了评估:三个基因表达集显示出与pCR显著的独立关联:成纤维细胞-TGFβ反应特征(F-TBRS)与放射抵抗有关;细胞毒性淋巴细胞(CL)表达特征和共识分子亚型CMS1与放射敏感性有关。这些关联在验证队列中得到了复制。与此同时,由发现队列中产生的 33 个基因表达组成的梯度提升机模型在 GSE87211 中表现出很高的灵敏度和特异性,灵敏度为 90%,特异性为 86%。生物特征和 ML 特征显示了类似的辐射反应机制,其 AUC 和 p 值优于已发表的 RC 辐射反应转录组特征:对化疗放疗(CRT)完全应答的RC具有免疫应答和缺乏免疫抑制TGFβ信号的生物学特征。这些肿瘤可通过基于 33 个基因表达特征的潜在生物标记物来识别。这有助于选择可能对肛门癌的原发性放疗方法产生反应的患者。相反,那些预测具有放射抗性的患者可能成为临床试验的候选者,这些临床试验将评估添加免疫肿瘤学药物和基质 TGFβ 信号抑制剂的效果:结直肠癌分层研究联合会(S:CORT)由英国医学研究委员会(MR/M016587/1)和英国癌症研究中心(MR/M016587/1)资助。
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来源期刊
EBioMedicine
EBioMedicine Biochemistry, Genetics and Molecular Biology-General Biochemistry,Genetics and Molecular Biology
CiteScore
17.70
自引率
0.90%
发文量
579
审稿时长
5 weeks
期刊介绍: eBioMedicine is a comprehensive biomedical research journal that covers a wide range of studies that are relevant to human health. Our focus is on original research that explores the fundamental factors influencing human health and disease, including the discovery of new therapeutic targets and treatments, the identification of biomarkers and diagnostic tools, and the investigation and modification of disease pathways and mechanisms. We welcome studies from any biomedical discipline that contribute to our understanding of disease and aim to improve human health.
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