Sloan School of Management, Massachusetts Institute of Technology, Cambridge, Massachusetts, United States of America.
PLoS One. 2012;7(5):e34569. doi: 10.1371/journal.pone.0034569. Epub 2012 May 2.
The National Institutes of Health (NIH) is among the world's largest investors in biomedical research, with a mandate to: "…lengthen life, and reduce the burdens of illness and disability." Its funding decisions have been criticized as insufficiently focused on disease burden. We hypothesize that modern portfolio theory can create a closer link between basic research and outcome, and offer insight into basic-science related improvements in public health. We propose portfolio theory as a systematic framework for making biomedical funding allocation decisions-one that is directly tied to the risk/reward trade-off of burden-of-disease outcomes.
Using data from 1965 to 2007, we provide estimates of the NIH "efficient frontier", the set of funding allocations across 7 groups of disease-oriented NIH institutes that yield the greatest expected return on investment for a given level of risk, where return on investment is measured by subsequent impact on U.S. years of life lost (YLL). The results suggest that NIH may be actively managing its research risk, given that the volatility of its current allocation is 17% less than that of an equal-allocation portfolio with similar expected returns. The estimated efficient frontier suggests that further improvements in expected return (89% to 119% vs. current) or reduction in risk (22% to 35% vs. current) are available holding risk or expected return, respectively, constant, and that 28% to 89% greater decrease in average years-of-life-lost per unit risk may be achievable. However, these results also reflect the imprecision of YLL as a measure of disease burden, the noisy statistical link between basic research and YLL, and other known limitations of portfolio theory itself.
Our analysis is intended to serve as a proof-of-concept and starting point for applying quantitative methods to allocating biomedical research funding that are objective, systematic, transparent, repeatable, and expressly designed to reduce the burden of disease. By approaching funding decisions in a more analytical fashion, it may be possible to improve their ultimate outcomes while reducing unintended consequences.
美国国立卫生研究院(NIH)是世界上最大的生物医学研究投资者之一,其任务是:“……延长生命,减轻疾病和残疾的负担。” 其资助决策被批评为对疾病负担的关注不足。我们假设现代投资组合理论可以在基础研究和结果之间建立更紧密的联系,并为基础科学相关的公共卫生改善提供深入的了解。我们提出投资组合理论作为一种系统的框架,用于做出生物医学资助分配决策——这种决策直接与疾病负担结果的风险/回报权衡相关。
使用 1965 年至 2007 年的数据,我们提供了 NIH“有效边界”的估计,这是一组针对疾病的 NIH 研究所的资金分配,它们在给定的风险水平下产生最大的投资回报,其中投资回报是通过随后对美国生命年损失(YLL)的影响来衡量的。结果表明,鉴于 NIH 当前分配的波动性比具有类似预期回报的等额分配组合低 17%,NIH 可能正在积极管理其研究风险。有效边界的估计表明,在保持风险或预期回报不变的情况下,进一步提高预期回报(当前为 89%至 119%)或降低风险(当前为 22%至 35%)是可行的,并且每单位风险的平均生命年损失可能降低 28%至 89%。然而,这些结果还反映了 YLL 作为疾病负担衡量标准的不准确性、基础研究与 YLL 之间的统计联系的不准确性,以及投资组合理论本身的其他已知局限性。
我们的分析旨在作为应用定量方法分配生物医学研究资金的概念验证和起点,这些方法是客观的、系统的、透明的、可重复的,并且专门旨在减轻疾病负担。通过以更具分析性的方式处理资助决策,有可能在改善最终结果的同时减少意外后果。