医学
乌斯特基努马
维多利祖马布
免疫系统
托法替尼
炎症性肠病
精密医学
免疫学
个性化医疗
溃疡性结肠炎
生物信息学
疾病
英夫利昔单抗
肿瘤坏死因子α
生物
内科学
病理
类风湿性关节炎
作者
Jonathan Digby‐Bell,Raja Atreya,Giovanni Monteleone,Nick Powell
标识
DOI:10.1038/s41575-019-0228-5
摘要
IBD treatment is undergoing a transformation with an expanding repertoire of drugs targeting different aspects of the immune response. Three novel classes of drugs have emerged in the past decade that target leukocyte trafficking to the gut (vedolizumab), neutralize key cytokines with antibodies (ustekinumab) and inhibit cytokine signalling pathways (tofacitinib). In advanced development are other drugs for IBD, including therapies targeting other cytokines such as IL-23 and IL-6. However, all agents tested so far are hampered by primary and secondary loss of response, so it is desirable to develop personalized strategies to identify which patients should be treated with which drugs. Stratification of patients with IBD by clinical parameters alone lacks sensitivity, and alternative modalities are now needed to deliver precision medicine in IBD. High-resolution profiling of immune response networks in individual patients is a promising approach and different technical platforms, including in vivo real-time molecular endoscopy, tissue transcriptomics and germline genetics, are promising tools to help predict responses to specific therapies. However, important challenges remain regarding the clinical utility of these technologies, including their scalability and accessibility. This Review focuses on unravelling some of the complexity of mucosal immune responses in IBD pathogenesis and how current and emerging analytical platforms might be harnessed to effectively stratify and individualise IBD therapy. IBD treatment has an expanding repertoire of drugs targeting different aspects of the immune response. This Review focuses on unravelling the complexity of mucosal immune responses in IBD pathogenesis and how analytical assays might be harnessed to effectively stratify and individualise IBD therapy.
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