Causal inference framework for generalizable safety effect estimates

被引:25
|
作者
Wood, Jonathan S. [1 ]
Donnell, Eric T. [2 ]
机构
[1] South Dakota State Univ, Dept Civil & Environm Engn, Crothers Engn Hall 132,Box 2219, Brookings, SD 57007 USA
[2] Penn State Univ, Dept Civil & Environm Engn, 231 Sackett Bldg, University Pk, PA 16802 USA
来源
关键词
Empirical Bayes; Causal inference; Potential outcomes; Study design; Rubin's causal model; Average treatment effect; POTENTIAL OUTCOMES FRAMEWORK; BEFORE-AFTER SAFETY; RED-LIGHT CAMERAS; PROPENSITY SCORES; TRAFFIC SAFETY; ROAD SAFETY; RUMBLE STRIPS; CRASH DATA; MODEL; COUNTERMEASURES;
D O I
10.1016/j.aap.2017.05.001
中图分类号
TB18 [人体工程学];
学科分类号
1201 ;
摘要
This study integrates a causal inference framework to the Empirical Bayes (EB) before-after method to develop generalizable safety effect estimates (i.e., crash modification factor (CMF)). The method considers approaches to estimate the average treatment effect for the treated (ATT), average treatment effect for the untreated (ATU), and average treatment effect (ATE). The current EB method is shown to estimate ATT while ATE is what is typically desired in traffic safety research. Modifications to the current ER method to estimate ATU and ATE are provided. The method is then applied to a dataset with a "no-treatment" scenario where the treatments were: 1) randomly selected and 2) selected based on crash history. Given the "no-treatment" outcome, it is known that the CMFs should have a value of 1 in order to be considered accurate. The standard negative binomial and mixed effects negative binomial regression models were applied in the analysis. It was found that, of the two regression methods, the ATE CMFs developed using the standard negative binomial were the most accurate. Finally, potential sources of bias in the EB method are discussed.
引用
收藏
页码:74 / 87
页数:14
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