Hierarchical Rank Aggregation with Applications to Nanotoxicology

被引:0
|
作者
Trina Patel
Donatello Telesca
Robert Rallo
Saji George
Tian Xia
André E. Nel
机构
[1] UCLA Fielding School of Public Health,Department of Biostatistics
[2] UC Center for Environmental Implications of Nanotechnology (UC CEIN),Dep. d’Enginyeria Informàtica i Matemàtiques
[3] Universitat Rovira I Virgili,undefined
[4] UCLA School of Medicine,undefined
关键词
Bayesian hierarchical models; Hazard ranking; Loss functions; Nanotoxicology;
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摘要
The development of high throughput screening (HTS) assays in the field of nanotoxicology provide new opportunities for the hazard assessment and ranking of engineered nanomaterials (ENMs). It is often necessary to rank lists of materials based on multiple risk assessment parameters, often aggregated across several measures of toxicity and possibly spanning an array of experimental platforms. Bayesian models coupled with the optimization of loss functions have been shown to provide an effective framework for conducting inference on ranks. In this article we present various loss-function-based ranking approaches for comparing ENM within experiments and toxicity parameters. Additionally, we propose a framework for the aggregation of ranks across different sources of evidence while allowing for differential weighting of this evidence based on its reliability and importance in risk ranking. We apply these methods to high throughput toxicity data on two human cell-lines, exposed to eight different nanomaterials, and measured in relation to four cytotoxicity outcomes. This article has supplementary material online.
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页码:159 / 177
页数:18
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