Faurot Keturah R, Jonsson Funk Michele, Pate Virginia, Brookhart M Alan, Patrick Amanda, Hanson Laura C, Castillo Wendy Camelo, Stürmer Til
Department of Physical Medicine and Rehabilitation, School of Medicine, University of North Carolina, Chapel Hill, NC, USA; Department of Epidemiology, Gillings School of Global Public Health, University of North Carolina, Chapel Hill, NC, USA.
Pharmacoepidemiol Drug Saf. 2015 Jan;24(1):59-66. doi: 10.1002/pds.3719. Epub 2014 Oct 21.
Estimating drug effectiveness and safety among older adults in population-based studies using administrative health care claims can be hampered by unmeasured confounding as a result of frailty. A claims-based algorithm that identifies patients likely to be dependent, a proxy for frailty, may improve confounding control. Our objective was to develop an algorithm to predict dependency in activities of daily living (ADL) in a sample of Medicare beneficiaries.
Community-dwelling respondents to the 2006 Medicare Current Beneficiary Survey, >65 years old, with Medicare Part A, B, home health, and hospice claims were included. ADL dependency was defined as needing help with bathing, eating, walking, dressing, toileting, or transferring. Potential predictors were demographics, International Classification of Diseases, Ninth Revision Clinical Modification diagnosis/procedure and durable medical equipment codes for frailty-associated conditions. Multivariable logistic regression was used to predict ADL dependency. Cox models estimated hazard ratios for death as a function of observed and predicted ADL dependency.
Of 6391 respondents, 57% were female, 88% white, and 38% were ≥80. The prevalence of ADL dependency was 9.5%. Strong predictors of ADL dependency were charges for a home hospital bed (OR = 5.44, 95%CI = 3.28-9.03) and wheelchair (OR = 3.91, 95%CI = 2.78-5.51). The c-statistic of the final model was 0.845. Model-predicted ADL dependency of 20% or greater was associated with a hazard ratio for death of 3.19 (95%CI: 2.78, 3.68).
An algorithm for predicting ADL dependency using health care claims was developed to measure some aspects of frailty. Accounting for variation in frailty among older adults could lead to more valid conclusions about treatment use, safety, and effectiveness.
在基于人群的研究中,使用行政医疗保健索赔来评估老年人的药物有效性和安全性可能会因虚弱导致的未测量混杂因素而受到阻碍。一种基于索赔的算法可以识别可能存在依赖的患者,这是虚弱的一个替代指标,可能会改善混杂因素的控制。我们的目标是开发一种算法,以预测医疗保险受益人群样本中日常生活活动(ADL)的依赖性。
纳入2006年医疗保险当前受益人调查中年龄大于65岁、拥有医疗保险A、B部分、家庭健康和临终关怀索赔的社区居住受访者。ADL依赖性定义为在洗澡、进食、行走、穿衣、如厕或转移方面需要帮助。潜在预测因素包括人口统计学特征、国际疾病分类第九版临床修订版诊断/程序以及与虚弱相关疾病的耐用医疗设备代码。使用多变量逻辑回归来预测ADL依赖性。Cox模型估计死亡风险比作为观察到的和预测的ADL依赖性的函数。
在6391名受访者中,57%为女性,88%为白人,38%年龄≥80岁。ADL依赖性的患病率为9.5%。ADL依赖性的强预测因素是家庭病床费用(OR = 5.44,95%CI = 3.28 - 9.03)和轮椅费用(OR = 3.91,95%CI = 2.78 - 5.51)。最终模型的c统计量为0.845。模型预测的ADL依赖性为20%或更高与死亡风险比3.19相关(95%CI:2.78,3.68)。
开发了一种使用医疗保健索赔来预测ADL依赖性的算法,以衡量虚弱的某些方面。考虑到老年人虚弱程度的差异可能会得出关于治疗使用、安全性和有效性的更有效结论。