Carey Business School and School of Medicine, Johns Hopkins University , Baltimore, MD.
Appl Clin Inform. 2012 Jun 13;3(2):210-20. doi: 10.4338/ACI-2012-02-R-0004. Print 2012.
Just as researchers and clinicians struggle to pin down the benefits attendant to health information technology (IT), management scholars have long labored to identify the performance effects arising from new technologies and from other organizational innovations, namely the reorganization of work and the devolution of decision-making authority. This paper applies lessons from that literature to theorize the likely sources of measurement error that yield the weak statistical relationship between measures of health IT and various performance outcomes. In so doing, it complements the evaluation literature's more conceptual examination of health IT's limited performance impact. The paper focuses on seven issues, in particular, that likely bias downward the estimated performance effects of health IT. They are 1.) negative self-selection, 2.) omitted or unobserved variables, 3.) mis-measured contextual variables, 4.) mismeasured health IT variables, 5.) lack of attention to the specific stage of the adoption-to-use continuum being examined, 6.) too short of a time horizon, and 7.) inappropriate units-of-analysis. The authors offer ways to counter these challenges. Looking forward more broadly, they suggest that researchers take an organizationally-grounded approach that privileges internal validity over generalizability. This focus on statistical and empirical issues in health IT-performance studies should be complemented by a focus on theoretical issues, in particular, the ways that health IT creates value and apportions it to various stakeholders.
正如研究人员和临床医生努力确定健康信息技术 (IT) 的益处一样,管理学者长期以来一直在努力确定新技术和其他组织创新(即工作重组和决策权下放)所带来的绩效影响。本文借鉴了该文献中的经验教训,从理论上探讨了可能导致健康 IT 测量与各种绩效结果之间统计关系较弱的测量误差来源。这样做,它补充了评估文献中对健康 IT 绩效影响有限的更具概念性的考察。本文特别关注七个可能向下偏差健康 IT 估计绩效影响的问题。它们是 1.) 负向自我选择,2.) 遗漏或未观察到的变量,3.) 错误衡量的上下文变量,4.) 错误衡量的健康 IT 变量,5.) 不关注正在检查的采用到使用连续体的特定阶段,6.) 时间范围太短,以及 7.) 分析单位不合适。作者提供了克服这些挑战的方法。更广泛地展望未来,他们建议研究人员采取以组织为基础的方法,优先考虑内部有效性而不是普遍性。这种对健康 IT-绩效研究中统计和经验问题的关注,应辅以对理论问题的关注,特别是健康 IT 创造价值和将其分配给不同利益相关者的方式。