P915 Multi-Omics Biomarkers for the Prediction of Response to Biologics in Patients with Inflammatory Bowel Disease

L Chen, C Zhang, R Niu, R Mao, Y Qiu, R Feng
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Abstract

Background The treatment concept for inflammatory bowel disease (IBD) has been transformed with biologics now recommended as the first-line therapy for moderate-to-severe patients. However, the significant heterogeneity among IBD patients has limited the efficacy of selected biologics based on traditional clinical factors. Therefore, it is imperative to molecularly stratify patients to match them with the most appropriate biologics. In this study, we systematically reviewed baseline omics biomarkers that have the potential to predict response to biological therapies, aiming to facilitate precision medicine in IBD. Methods We conducted a comprehensive literature search using PubMed by which we included studies that explore the role of omics biomarkers in predicting the efficacy of various biologics including anti-TNFα, anti-integrin, anti-IL-12/23P40 and anti-IL-23 P19 in patients with IBD. Results Our review included 110 studies. Of these, 86 studies focused on anti-TNFα, 17 focused on anti-integrin and 7 focused on anti-IL-12/23P40 and/or anti-IL-23P19. These studies investigated multi-levels baseline biomarkers, including genomics, transcriptomics (bulk RNA and sc-RNA sequence), proteomics, microbiome, and metabolomics (derived from serum, urine, or stool). Furthermore, recent studies already focused on integrating multiple omics analysis and showed that the predictive model based on multi-omics data could significantly enhance their performance. Among the available biomarkers, mucosal transcription of OSM (AUROC = 0.83), IL-13RA2 (AUROC = 0.90), and TREM-1 transcription in mucosal biopsy (AUROC = 0.77) as well as in PBMC ( AUROC varies between 0.78 and 0.94) could accurately predict the response to anti-TNFα. The mucosal IL-23A transcription could discriminate responders from non-responders to anti-IL-12/23P40 with an AUROC of 0.90. OSM, biomarkers of intestinal collagen turnover like C4M, IL-17, IL-22, and TNFα in serum also showed significant potential in predicting the response to anti-TNFα, anti-integrin and anti-IL-12/23P40. In addition, single-cell molecular signatures with sc-RNA sequencing provided more profound insights into predicting the response to biologics. The lack of reproducibility in results across different groups may be due to the disparity in patient selection, methodology, and study designs among different investigations. Conclusion Numerous omics markers have shown great potential in predicting the efficacy of biologics. However, it is crucial to explore and validate these novel biomarkers in larger cohorts using harmonized protocols to facilitate their evaluation into actual clinical practice, especially for newer biologics like anti-IL-12/23P40 and anti-IL-23P19.
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P915 预测炎症性肠病患者对生物制剂反应的多指标生物标记物
背景 炎症性肠病(IBD)的治疗理念已发生转变,目前建议将生物制剂作为中重度患者的一线疗法。然而,IBD 患者之间的显著异质性限制了基于传统临床因素的特定生物制剂的疗效。因此,对患者进行分子分层以匹配最合适的生物制剂势在必行。在本研究中,我们系统地回顾了有可能预测生物疗法反应的基线omics生物标记物,旨在促进IBD的精准医疗。方法 我们使用 PubMed 进行了全面的文献检索,纳入了探讨全局生物标志物在预测各种生物制剂(包括抗肿瘤坏死因子α、抗整合素、抗 IL-12/23P40 和抗 IL-23 P19)对 IBD 患者疗效的作用的研究。结果 我们的综述包括 110 项研究。其中,86 项研究关注抗肿瘤坏死因子α,17 项研究关注抗整合素,7 项研究关注抗 IL-12/23P40 和/或抗 IL-23P19。这些研究调查了多层次的基线生物标记物,包括基因组学、转录物组学(大量 RNA 和 sc-RNA 序列)、蛋白质组学、微生物组学和代谢组学(来自血清、尿液或粪便)。此外,最近的研究已经把重点放在整合多种组学分析上,并表明基于多组学数据的预测模型可以显著提高其性能。在现有的生物标志物中,粘膜活检中的 OSM(AUROC = 0.83)、IL-13RA2(AUROC = 0.90)和 TREM-1 转录(AUROC = 0.77)以及 PBMC(AUROC 在 0.78 和 0.94 之间)可以准确预测对抗 TNFα 的反应。粘膜 IL-23A 转录能区分抗 IL-12/23P40 的应答者和非应答者,AUROC 为 0.90。OSM、C4M、IL-17、IL-22和血清中的TNFα等肠道胶原周转生物标志物也显示出预测抗TNFα、抗整合素和抗IL-12/23P40反应的巨大潜力。此外,sc-RNA测序的单细胞分子特征为预测对生物制剂的反应提供了更深刻的见解。不同研究组的结果缺乏可重复性可能是由于不同研究在患者选择、方法和研究设计方面存在差异。结论 众多的全息标记物在预测生物制剂的疗效方面显示出巨大的潜力。然而,至关重要的是采用统一的方案在更大的队列中探索和验证这些新型生物标记物,以促进其在实际临床实践中的评估,尤其是对于抗IL-12/23P40和抗IL-23P19等较新的生物制剂。
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