A Model for Liver Homeostasis Using Modified Mean-Reverting Ornstein-Uhlenbeck Process

D. C. Trost, E. Overman, J. Ostroff, W. Xiong, Peter March
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引用次数: 13

Abstract

Short of a liver biopsy, hepatic disease and drug-induced liver injury are diagnosed and classified from clinical findings, especially laboratory results. It was hypothesized that a healthy hepatic dynamic equilibrium might be modelled by an Ornstein–Uhlenbeck (OU) stochastic process, which might lead to more sensitive and specific diagnostic criteria. Using pooled data from healthy volunteers in pharmaceutical clinical trials, this model was applied using maximum likelihood (ML) methods. It was found that the exponent of the autocorrelation function was proportional to the square root of time rather than time itself, as predicted by the OU model. This finding suggests a stronger autocorrelation than expected and may have important implications regarding the use of laboratory testing in clinical diagnosis, in clinical trial design, and in monitoring drug safety. Besides rejecting the OU hypothesis for liver test homeostasis, this paper presents ML estimates for the multivariate Gaussian distribution for healthy adult males. This work forms the basis for a new approach to mathematical modelling to improve both the sensitivity and specificity of clinical measurements over time.
基于改进均值回归的Ornstein-Uhlenbeck过程的肝脏稳态模型
缺乏肝活检,肝脏疾病和药物性肝损伤的诊断和分类是根据临床表现,特别是实验室结果。假设健康的肝脏动态平衡可能由Ornstein-Uhlenbeck (OU)随机过程建模,这可能导致更敏感和特定的诊断标准。利用药物临床试验中健康志愿者的汇总数据,采用最大似然(ML)方法应用该模型。发现自相关函数的指数与时间的平方根成正比,而不是与时间本身成正比,正如OU模型所预测的那样。这一发现表明了比预期更强的自相关性,并且可能对在临床诊断、临床试验设计和药物安全监测中使用实验室检测具有重要意义。除了拒绝肝脏测试稳态的OU假设外,本文还提出了健康成年男性多变量高斯分布的ML估计。随着时间的推移,这项工作形成了一种新的数学建模方法的基础,以提高临床测量的敏感性和特异性。
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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