Computational models in inflammatory bowel disease.

Clinical and Translational Science Pub Date : 2022-04-01 Epub Date: 2022-02-05 DOI:10.1111/cts.13228
Philippe Pinton
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引用次数: 3

Abstract

Inflammatory bowel disease (IBD) is a chronic and relapsing disease with multiple underlying influences and notable heterogeneity among its clinical and response-to-treatment phenotypes. There is no cure for IBD, and none of the currently available therapies have demonstrated clinical efficacies beyond 40%-60%. Data collected about its omics, pathogenesis, and treatment strategies have grown exponentially with time making IBD a prime candidate for artificial intelligence (AI) mediated discovery support. AI can be leveraged to further understand or identify IBD features to improve clinical outcomes. Various treatment candidates are currently under evaluation in clinical trials, offering further approaches and opportunities for increasing the efficacies of treatments. However, currently, therapeutic plans are largely determined using clinical features due to the lack of specific biomarkers, and it has become necessary to step into precision medicine to predict therapeutic responses to guarantee optimal treatment efficacy. This is accompanied by the application of AI and the development of multiscale hybrid models combining mechanistic approaches and machine learning. These models ultimately lead to the creation of digital twins of given patients delivering on the promise of precision dosing and tailored treatment. Interleukin-6 (IL-6) is a prominent cytokine in cell-to-cell communication in the inflammatory responses' regulation. Dysregulated IL-6-induced signaling leads to severe immunological or proliferative pathologies, such as IBD and colon cancer. This mini-review explores multiscale models with the aim of predicting the response to therapy in IBD. Modeling IL-6 biology and generating digital twins enhance the credibility of their prediction.

Abstract Image

Abstract Image

炎症性肠病的计算模型。
炎症性肠病(IBD)是一种慢性复发性疾病,具有多种潜在影响,其临床和治疗反应表型具有显著的异质性。目前还没有治愈IBD的方法,目前可用的治疗方法都没有显示出超过40%-60%的临床疗效。随着时间的推移,收集到的有关IBD组学、发病机制和治疗策略的数据呈指数级增长,这使得IBD成为人工智能(AI)介导的发现支持的主要候选者。人工智能可用于进一步了解或识别IBD特征,以改善临床结果。各种治疗方案目前正在临床试验中进行评估,为提高治疗效果提供了进一步的方法和机会。然而,由于缺乏特异性的生物标志物,目前的治疗计划在很大程度上是根据临床特征来确定的,因此有必要进入精准医学来预测治疗反应,以保证最佳的治疗效果。这伴随着人工智能的应用和结合机械方法和机器学习的多尺度混合模型的发展。这些模型最终会创造出特定患者的数字双胞胎,实现精确剂量和量身定制治疗的承诺。白细胞介素-6 (Interleukin-6, IL-6)是调节炎症反应中细胞间通讯的重要细胞因子。il -6诱导的信号传导失调可导致严重的免疫或增生性病变,如IBD和结肠癌。这篇小型综述探讨了预测IBD治疗反应的多尺度模型。模拟IL-6生物学和生成数字双胞胎提高了他们预测的可信度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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