Harel Michal, Dahan Nili, Lahav Coren, Jacob Eyal, Elon Yehonatan, Puzanov Igor, Kelly Ronan J, Shaked Yuval, Leibowitz Raya, Carbone David P, Gandara David R, Dicker Adam P
OncoHost Ltd, Binyamina, Israel
OncoHost Ltd, Binyamina, Israel.
J Immunother Cancer. 2025 May 22;13(5):e011427. doi: 10.1136/jitc-2024-011427.
Immune checkpoint inhibitors (ICIs) have shown substantial benefit for patients with advanced non-small cell lung cancer (NSCLC). However, resistance to ICIs remains a major clinical challenge. Here, we perform a comprehensive bioinformatic analysis of plasma proteomic profiles to explore the underlying biology of treatment resistance in NSCLC.
The analysis was performed on 388 "resistance-associated proteins" (RAPs) that were previously described as pretreatment plasma proteomic predictors within the PROphet computational model designed to predict ICI clinical benefit in NSCLC. Putative tissue origins of the RAPs were explored using publicly available datasets. Enrichment analyses were performed to investigate RAP-related biological processes. Plasma proteomic data from 50 healthy subjects and 272 patients with NSCLC were compared, where patients were classified as displaying clinical benefit (CB; n=76) or no CB (NCB; n=196). Therapeutic agents targeting RAPs were identified in drug and clinical trial databases.
The RAP set was significantly enriched with proteins associated with lung cancer, liver tissue, cell proliferation, extracellular matrix, invasion, and metastasis. Comparison of RAP expression in healthy subjects and patients with NSCLC revealed five distinct RAP subsets that provide mechanistic insights. The RAP subset displaying a pattern of high expression in the healthy population relative to the NSCLC population included multiple proteins associated with antitumor activities, while the subset displaying a pattern of highest expression in the NCB population included proteins associated with various hallmarks of treatment resistance. Analysis of patient-specific RAP profiles revealed inter-patient diversity of potential resistance mechanisms, suggesting that RAPs may aid in developing personalized therapeutic strategies. Furthermore, examination of drug and clinical trial databases revealed that 17.5% of the RAPs are drug targets, highlighting the RAP set as a valuable resource for drug development.
The study provides insight into the underlying biology of ICI resistance in NSCLC and highlights the potential clinical value of RAP profiles for developing personalized therapies.
免疫检查点抑制剂(ICIs)已显示出对晚期非小细胞肺癌(NSCLC)患者有显著益处。然而,对ICIs的耐药性仍然是一个主要的临床挑战。在此,我们对血浆蛋白质组学图谱进行了全面的生物信息学分析,以探索NSCLC治疗耐药性的潜在生物学机制。
对388种“耐药相关蛋白”(RAPs)进行分析,这些蛋白先前在旨在预测NSCLC中ICI临床获益的PROphet计算模型中被描述为治疗前血浆蛋白质组学预测因子。使用公开可用的数据集探索RAPs的假定组织来源。进行富集分析以研究与RAP相关的生物学过程。比较了50名健康受试者和272名NSCLC患者的血浆蛋白质组学数据,其中患者被分类为显示临床获益(CB;n = 76)或无临床获益(NCB;n = 196)。在药物和临床试验数据库中确定了靶向RAPs的治疗药物。
RAP集显著富集了与肺癌、肝组织、细胞增殖、细胞外基质、侵袭和转移相关的蛋白质。比较健康受试者和NSCLC患者中RAP的表达,发现了五个不同的RAP亚组,这些亚组提供了机制上的见解。在健康人群中相对于NSCLC人群表现出高表达模式的RAP亚组包括多种与抗肿瘤活性相关的蛋白质,而在NCB人群中表现出最高表达模式的亚组包括与各种治疗耐药特征相关的蛋白质。对患者特异性RAP图谱的分析揭示了患者间潜在耐药机制的多样性,表明RAPs可能有助于制定个性化治疗策略。此外,对药物和临床试验数据库的检查显示,17.5%的RAPs是药物靶点,突出了RAP集作为药物开发宝贵资源的价值。
该研究深入了解了NSCLC中ICI耐药性的潜在生物学机制,并强调了RAP图谱在开发个性化治疗中的潜在临床价值。