Civil, Architectural, and Environmental Engineering, University of Miami, Coral Gables, Florida, United States of America.
Veterinary Integrative Biosciences, Texas A&M University, College Station, Texas, United States of America.
PLoS One. 2019 Feb 15;14(2):e0211780. doi: 10.1371/journal.pone.0211780. eCollection 2019.
Current efforts to assess human health response to chemicals based on high-throughput in vitro assay data on intra-cellular changes have been hindered for some illnesses by lack of information on higher-level extracellular, inter-organ, and organism-level interactions. However, a dose-response function (DRF), informed by various levels of information including apical health response, can represent a template for convergent top-down, bottom-up analysis. In this paper, a general DRF for chronic chemical and other health stressors and mixtures is derived based on a general first-order model previously derived and demonstrated for illness progression. The derivation accounts for essential autocorrelation among initiating event magnitudes along a toxicological mode of action, typical of complex processes in general, and reveals the inverse relationship between the minimum illness-inducing dose, and the illness severity per unit dose (both variable across a population). The resulting emergent DRF is theoretically scale-inclusive and amenable to low-dose extrapolation. The two-parameter single-toxicant version can be monotonic or sigmoidal, and is demonstrated preferable to traditional models (multistage, lognormal, generalized linear) for the published cancer and non-cancer datasets analyzed: chloroform (induced liver necrosis in female mice); bromate (induced dysplastic focia in male inbred rats); and 2-acetylaminofluorene (induced liver neoplasms and bladder carcinomas in 20,328 female mice). Common- and dissimilar-mode mixture models are demonstrated versus orthogonal data on toluene/benzene mixtures (mortality in Japanese medaka, Oryzias latipes, following embryonic exposure). Findings support previous empirical demonstration, and also reveal how a chemical with a typical monotonically-increasing DRF can display a J-shaped DRF when a second, antagonistic common-mode chemical is present. Overall, the general DRF derived here based on an autocorrelated first-order model appears to provide both a strong theoretical/biological basis for, as well as an accurate statistical description of, a diverse, albeit small, sample of observed dose-response data. The further generalizability of this conclusion can be tested in future analyses comparing with traditional modeling approaches across a broader range of datasets.
目前,基于细胞内变化的高通量体外检测数据评估人类健康对化学物质的反应的努力,由于缺乏关于细胞外、器官间和生物体水平相互作用的更高层次的信息,对于某些疾病受到了阻碍。然而,基于包括顶线健康反应在内的各种信息的剂量反应函数 (DRF) 可以代表收敛自上而下、自下而上分析的模板。在本文中,基于先前推导并证明用于疾病进展的一般一阶模型,为慢性化学物质和其他健康胁迫物及混合物推导了一个通用的 DRF。该推导考虑了毒性作用模式中起始事件幅度之间的基本自相关,这是一般复杂过程的典型特征,并揭示了最小致病剂量与单位剂量的疾病严重程度之间的反比关系(在人群中变化)。由此产生的新兴 DRF 在理论上是包罗万象的,并且可以进行低剂量外推。两参数单毒物版本可以是单调的或 S 形的,并且对于分析的已发表癌症和非癌症数据集,优于传统模型(多阶段、对数正态、广义线性):三氯甲烷(诱导雌性小鼠肝坏死);溴酸盐(诱导雄性近交系大鼠的发育不良灶);2-乙酰氨基芴(诱导 20328 只雌性小鼠的肝肿瘤和膀胱癌)。还展示了常见和不同模式混合物模型与甲苯/苯混合物的正交数据(日本青鳉,Oryzias latipes,胚胎暴露后的死亡率)。研究结果支持以前的经验证明,还揭示了当存在第二种拮抗共同模式化学物质时,具有典型单调递增 DRF 的化学物质如何显示 J 形 DRF。总的来说,基于自相关一阶模型推导的通用 DRF 似乎为观察到的剂量反应数据的多样化样本提供了强有力的理论/生物学基础,以及准确的统计描述,尽管样本很小。这一结论的进一步普遍性可以在未来的分析中通过与更广泛的数据集的传统建模方法进行比较来测试。