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BMC Bioinformatics. 2013 Jul 10;14:221. doi: 10.1186/1471-2105-14-221.
Mechanistic biosimulation can be used in drug development to form testable hypotheses, develop predictions of efficacy before clinical trial results are available, and elucidate clinical response to therapy. However, there is a lack of tools to simultaneously (1) calibrate the prevalence of mechanistically distinct, large sets of virtual patients so their simulated responses statistically match phenotypic variability reported in published clinical trial outcomes, and (2) explore alternate hypotheses of those prevalence weightings to reflect underlying uncertainty in population biology. Here, we report the development of an algorithm, MAPEL (Mechanistic Axes Population Ensemble Linkage), which utilizes a mechanistically-based weighting method to match clinical trial statistics. MAPEL is the first algorithm for developing weighted virtual populations based on biosimulation results that enables the rapid development of an ensemble of alternate virtual population hypotheses, each validated by a composite goodness-of-fit criterion.
Virtual patient cohort mechanistic biosimulation results were successfully calibrated with an acceptable composite goodness-of-fit to clinical populations across multiple therapeutic interventions. The resulting virtual populations were employed to investigate the mechanistic underpinnings of variations in the response to rituximab. A comparison between virtual populations with a strong or weak American College of Rheumatology (ACR) score in response to rituximab suggested that interferon β (IFNβ) was an important mechanistic contributor to the disease state, a signature that has previously been identified though the underlying mechanisms remain unclear. Sensitivity analysis elucidated key anti-inflammatory properties of IFNβ that modulated the pathophysiologic state, consistent with the observed prognostic correlation of baseline type I interferon measurements with clinical response. Specifically, the effects of IFNβ on proliferation of fibroblast-like synoviocytes and interleukin-10 synthesis in macrophages each partially counteract reductions in synovial inflammation imparted by rituximab. A multianalyte biomarker panel predictive for virtual population therapeutic responses suggested population dependencies on B cell-dependent mediators as well as additional markers implicating fibroblast-like synoviocytes.
The results illustrate how the MAPEL algorithm can leverage knowledge of cellular and molecular function through biosimulation to propose clear mechanistic hypotheses for differences in clinical populations. Furthermore, MAPEL facilitates the development of multianalyte biomarkers prognostic of patient responses in silico.
机制生物仿真可用于药物开发,以形成可检验的假设,在临床试验结果可用之前预测疗效,并阐明对治疗的临床反应。然而,目前缺乏同时(1)校准具有机制差异的大型虚拟患者群体的流行率,以使他们的模拟反应在统计学上与已发表的临床试验结果中报告的表型变异性相匹配,以及(2)探索这些流行率权重的替代假设,以反映群体生物学中的潜在不确定性的工具。在这里,我们报告了一种算法的开发,即 MAPEL(机制轴人群集合链接),该算法利用基于机制的加权方法来匹配临床试验统计数据。MAPEL 是第一个用于根据生物仿真结果开发加权虚拟人群的算法,它能够快速开发一组替代的虚拟人群假设,每个假设都通过综合拟合优度标准进行验证。
成功地将虚拟患者队列的机制生物仿真结果与多个治疗干预的临床人群的可接受综合拟合优度进行了校准。所得到的虚拟人群被用于研究利妥昔单抗反应变化的机制基础。对利妥昔单抗反应中具有较强或较弱美国风湿病学会(ACR)评分的虚拟人群进行比较表明,干扰素β(IFNβ)是疾病状态的一个重要机制贡献者,这一特征以前通过潜在机制仍然不清楚。敏感性分析阐明了 IFNβ 的关键抗炎特性,这些特性调节了病理生理状态,与观察到的基线 I 型干扰素测量与临床反应的预后相关性一致。具体而言,IFNβ 对成纤维样滑膜细胞增殖和巨噬细胞中白细胞介素-10 合成的影响部分抵消了利妥昔单抗引起的滑膜炎症减少。一个多分析物生物标志物预测虚拟人群治疗反应的面板表明,人群对 B 细胞依赖性介质以及另外暗示成纤维样滑膜细胞的标志物存在依赖性。
这些结果说明了 MAPEL 算法如何通过生物仿真利用细胞和分子功能的知识来提出临床人群差异的明确机制假设。此外,MAPEL 促进了多分析物生物标志物在计算机模拟中预测患者反应的开发。