Walsh Rachael, Moore Robert F, Doyle Jamie Mihoko
Office of Extramural Research, Statistical Analysis and Reporting Branch, National Institutes of Health, 6705 Rockledge Drive, Rm 4186, Bethesda, MD, USA.
Res Eval. 2018 Oct;27(4):380-387. doi: 10.1093/reseval/rvy012. Epub 2018 May 9.
To assist new scientists in the transition to independent research careers, the National Institutes of Health (NIH) implemented an Early Stage Investigator (ESI) policy beginning with applications submitted in 2009. During the review process, the ESI designation segregates applications submitted by investigators who are within 10 years of completing their terminal degree or medical residency from applications submitted by more experienced investigators. Institutes/centers can then give special consideration to ESI applications when making funding decisions. One goal of this policy is to increase the probability of newly emergent investigators receiving research support. Using optimal matching to generate comparable groups pre- and post-policy implementation, generalized linear models were used to evaluate the ESI policy. Due to a lack of control group, existing data from 2004 to 2008 were leveraged to infer causality of the ESI policy effects on the probability of funding applications from 2011 to 2015. This article addresses the statistical necessities of public policy evaluation, finding administrative data can serve as a control group when proper steps are taken to match the samples. Not only did the ESI policy stabilize the proportion of NIH funded newly emergent investigators but also, in the absence of the ESI policy, 54% of newly emergent investigators would not have received funding. This manuscript is important to as a demonstration of ways in which existing data can be modeled to evaluate new policy, in the absence of a control group, forming a quasi-experimental design to infer causality when evaluating federal policy.
为帮助新科学家向独立研究职业生涯过渡,美国国立卫生研究院(NIH)从2009年提交的申请开始实施早期研究者(ESI)政策。在评审过程中,ESI指定将在完成最终学位或医学住院医师培训10年内的研究者提交的申请与经验更丰富的研究者提交的申请区分开来。各研究所/中心在做出资助决定时可对ESI申请给予特殊考虑。该政策的一个目标是提高新出现的研究者获得研究支持的可能性。使用最优匹配来生成政策实施前后的可比组,采用广义线性模型来评估ESI政策。由于缺乏对照组,利用2004年至2008年的现有数据来推断ESI政策对2011年至2015年资助申请概率的影响的因果关系。本文阐述了公共政策评估的统计必要性,发现当采取适当步骤匹配样本时,行政数据可作为对照组。ESI政策不仅稳定了NIH资助的新出现研究者的比例,而且在没有ESI政策的情况下,54%的新出现研究者将不会获得资助。作为在没有对照组的情况下对现有数据进行建模以评估新政策从而形成准实验设计来推断评估联邦政策时的因果关系的方法的示范,本文具有重要意义。