Variational autoencoders for generative modeling of drug dosing determinants in renal, hepatic, metabolic, and cardiac disease states

IF 3.1 3区 医学 Q2 MEDICINE, RESEARCH & EXPERIMENTAL Cts-Clinical and Translational Science Pub Date : 2024-07-01 DOI:10.1111/cts.13872
Raginee R. Titar, Murali Ramanathan
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Abstract

Physiological determinants of drug dosing (PDODD) are a promising approach for precision dosing. This study investigates the alterations of PDODD in diseases and evaluates a variational autoencoder (VAE) artificial intelligence model for PDODD. The PDODD panel contained 20 biomarkers, and 13 renal, hepatic, diabetes, and cardiac disease status variables. Demographic characteristics, anthropometric measurements (body weight, body surface area, waist circumference), blood (plasma volume, albumin), renal (creatinine, glomerular filtration rate, urine flow, and urine albumin to creatinine ratio), and hepatic (R-value, hepatic steatosis index, drug-induced liver injury index), blood cell (systemic inflammation index, red cell, lymphocyte, neutrophils, and platelet counts) biomarkers, and medical questionnaire responses from the National Health and Nutrition Examination Survey (NHANES) were included. The tabular VAE (TVAE) generative model was implemented with the Synthetic Data Vault Python library. The joint distributions of the generated data vs. test data were compared using graphical univariate, bivariate, and multidimensional projection methods and distribution proximity measures. The PDODD biomarkers related to disease progression were altered as expected in renal, hepatic, diabetes, and cardiac diseases. The continuous PDODD panel variables generated by the TVAE satisfactorily approximated the distribution in the test data. The TVAE-generated distributions of some discrete variables deviated from the test data distribution. The age distribution of TVAE-generated continuous variables was similar to the test data. The TVAE algorithm demonstrated potential as an AI model for continuous PDODD and could be useful for generating virtual populations for clinical trial simulations.

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用于肾脏、肝脏、代谢和心脏疾病状态下药物剂量决定因素生成模型的变异自动编码器。
药物剂量的生理决定因素(PDODD)是一种很有前景的精确用药方法。本研究调查了生理剂量决定因素在疾病中的变化,并评估了针对生理剂量决定因素的变异自动编码器(VAE)人工智能模型。PDODD 面板包含 20 个生物标记物和 13 个肾脏、肝脏、糖尿病和心脏疾病状态变量。还包括血细胞(全身炎症指数、红细胞、淋巴细胞、中性粒细胞和血小板计数)生物标志物,以及美国国家健康与营养调查(NHANES)的医疗问卷答复。使用 Synthetic Data Vault Python 库实现了表格 VAE(TVAE)生成模型。使用图形单变量、双变量和多维投影方法以及分布接近度量对生成数据与测试数据的联合分布进行了比较。在肾病、肝病、糖尿病和心脏病中,与疾病进展相关的 PDODD 生物标志物发生了预期的改变。由 TVAE 生成的连续 PDODD 面板变量令人满意地接近了测试数据的分布。TVAE 生成的某些离散变量的分布偏离了测试数据的分布。TVAE 生成的连续变量的年龄分布与测试数据相似。TVAE 算法展示了作为连续 PDODD 人工智能模型的潜力,可用于生成临床试验模拟的虚拟人群。
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来源期刊
Cts-Clinical and Translational Science
Cts-Clinical and Translational Science 医学-医学:研究与实验
CiteScore
6.70
自引率
2.60%
发文量
234
审稿时长
6-12 weeks
期刊介绍: Clinical and Translational Science (CTS), an official journal of the American Society for Clinical Pharmacology and Therapeutics, highlights original translational medicine research that helps bridge laboratory discoveries with the diagnosis and treatment of human disease. Translational medicine is a multi-faceted discipline with a focus on translational therapeutics. In a broad sense, translational medicine bridges across the discovery, development, regulation, and utilization spectrum. Research may appear as Full Articles, Brief Reports, Commentaries, Phase Forwards (clinical trials), Reviews, or Tutorials. CTS also includes invited didactic content that covers the connections between clinical pharmacology and translational medicine. Best-in-class methodologies and best practices are also welcomed as Tutorials. These additional features provide context for research articles and facilitate understanding for a wide array of individuals interested in clinical and translational science. CTS welcomes high quality, scientifically sound, original manuscripts focused on clinical pharmacology and translational science, including animal, in vitro, in silico, and clinical studies supporting the breadth of drug discovery, development, regulation and clinical use of both traditional drugs and innovative modalities.
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