Patel T, Telesca D, Low-Kam C, Ji Zx, Zhang Hy, Xia T, Zinc J I, Nel A E
Department of Biostatistics, UCLA.
Department of Biostatistics, UCLA ; California Nanosystems Institute, UCLA.
Environmetrics. 2014 Feb 1;25(1):57-68. doi: 10.1002/env.2246.
A fundamental goal in nano-toxicology is that of identifying particle physical and chemical properties, which are likely to explain biological hazard. The first line of screening for potentially adverse outcomes often consists of exposure escalation experiments, involving the exposure of micro-organisms or cell lines to a library of nanomaterials. We discuss a modeling strategy, that relates the outcome of an exposure escalation experiment to nanoparticle properties. Our approach makes use of a hierarchical decision process, where we jointly identify particles that initiate adverse biological outcomes and explain the probability of this event in terms of the particle physicochemical descriptors. The proposed inferential framework results in summaries that are easily interpretable as simple probability statements. We present the application of the proposed method to a data set on 24 metal oxides nanoparticles, characterized in relation to their electrical, crystal and dissolution properties.
纳米毒理学的一个基本目标是确定可能解释生物危害的颗粒物理和化学性质。对潜在不良后果进行初步筛选通常包括暴露递增实验,即将微生物或细胞系暴露于一系列纳米材料中。我们讨论了一种建模策略,该策略将暴露递增实验的结果与纳米颗粒性质联系起来。我们的方法利用了分层决策过程,在这个过程中,我们共同识别引发不良生物结果的颗粒,并根据颗粒的物理化学描述符解释该事件发生的概率。所提出的推理框架得出的总结很容易被解释为简单的概率陈述。我们展示了该方法在一个包含24种金属氧化物纳米颗粒的数据集上的应用,这些纳米颗粒根据其电学、晶体和溶解性质进行了表征。