乙型肝炎的硅试验捕获功能性治愈,表明机制途径,并提示预后生物标志物特征。

IF 5.5 2区 医学 Q1 PHARMACOLOGY & PHARMACY
Javiera Cortés-Ríos, Tianjing Ren, Nathan Hanan, Anna Sher, Ahmed Nader, Mindy Magee, William J. Jusko, Rajat Desikan
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引用次数: 0

摘要

在计算机试验中,利用与临床数据校准的数学模型,提出了一种加速药物开发的变革性方法。我们提出了一个慢性乙型肝炎的虚拟试验框架,使用机械数学模型准确模拟临床方案,患者特征和终点。该模型的临床试验模拟成功地捕获了标准治疗方法(核苷类似物和聚乙二醇化干扰素)的功能性治愈,以及复杂的临床观察,促进了机制假设的产生,并提出了可能预测治疗结果的生物标志物特征。计算机试验显示,应答者表现出增强的细胞毒性免疫和显著的血清丙氨酸转氨酶升高,提示可能存在应答生物标志物。然而,较高的基线乙型肝炎表面抗原并没有成比例地增加细胞毒性抗病毒免疫反应,这表明潜在的免疫上限,但面对不断增加的全身抗原负担,因此最终导致较低的治疗反应。虚拟患者能够生成大型病毒学生物标志物合成数据集,从而使机器学习模型能够以95%的准确率预测虚拟患者的功能治愈。这强调了计算机试验在加强临床试验、产生机制假设和加速慢性乙型肝炎药物开发方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hepatitis B In Silico Trials Capture Functional Cure, Indicate Mechanistic Pathways, and Suggest Prognostic Biomarker Signatures

In silico trials, utilizing mathematical models calibrated with clinical data, present a transformative approach to expedite drug development. We propose a virtual trial framework for chronic Hepatitis B, accurately simulating clinical protocols, patient characteristics, and endpoints using a mechanistic mathematical model. Clinical trial simulations with this model successfully captured functional cure with standard-of-care therapies (nucleos(t)ide analogs and pegylated interferon) as well as complex clinical observations, facilitating mechanistic hypothesis generation and suggesting biomarker signatures that may predict treatment outcomes. In silico trials revealed that responders exhibited enhanced cytotoxic immunity and significant serum-alanine transaminase increases, suggesting a potential response biomarker. However, a higher baseline Hepatitis B surface antigen did not proportionately increase cytotoxic antiviral immune responses, indicating a potential immune ceiling but in the face of increasing systemic antigen burden, therefore culminating in a lower treatment response. Virtual patients enabled the generation of large virology biomarker synthetic datasets, which empowered a machine learning model to predict functional cure in virtual patients with ~ 95% accuracy. This underscores the potential of in silico trials in enhancing clinical trials, generating mechanistic hypotheses, and accelerating chronic Hepatitis B drug development.

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来源期刊
CiteScore
12.70
自引率
7.50%
发文量
290
审稿时长
2 months
期刊介绍: Clinical Pharmacology & Therapeutics (CPT) is the authoritative cross-disciplinary journal in experimental and clinical medicine devoted to publishing advances in the nature, action, efficacy, and evaluation of therapeutics. CPT welcomes original Articles in the emerging areas of translational, predictive and personalized medicine; new therapeutic modalities including gene and cell therapies; pharmacogenomics, proteomics and metabolomics; bioinformation and applied systems biology complementing areas of pharmacokinetics and pharmacodynamics, human investigation and clinical trials, pharmacovigilence, pharmacoepidemiology, pharmacometrics, and population pharmacology.
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