Rasu Rafia S, Xavier Christy, Rianon Nahid
University of North Texas Health Science Center at Fort Worth.
Department of Internal Medicine, UT Health McGovern Medical School, Houston, TX.
J Manag Care Spec Pharm. 2025 Jan;31(1):96-100. doi: 10.18553/jmcp.2025.31.1.96.
The majority of a health plan's performance and designated Star Rating is related to medication-related behavior, eg, medication adherence, medication review, and reconciliation, that are intricately related to adverse drug events (ADEs). Altered pharmacodynamics and pharmacokinetics owing to aging make older adults more vulnerable to ADEs like falls, fractures, hospitalizations, and mortality. Prevention of avoidable risk factors such as medication burden can help maintain quality of life. Studies of multiple populations have established drug burden index (DBI), a dose-dependent measure of anticholinergic and sedative burden, to be strongly associated with worsening vertigo, dizziness, and balance, which all predicate falls. The mean difference in DBI greater than 0.1 provides greater predictive power for adverse events, such as falls and 30-day readmission rates. Inclusion of a DBI delta metric especially on an electronic medical record has the potential to reduce fall incidence and associated health outcomes such as hospitalizations and death; this presents an opportunity to improve Centers for Medicare & Medicaid Services Star Ratings by using meaningful tools to foster engagement among informed and active Medicare beneficiaries. We believe this information is extremely relevant in real-world decision-making for health care professionals, specifically when the changes are dynamic and happen very quickly. Moreover, managed care organizations are now dedicated to eliciting a deeper understanding and mitigation of social inequalities in medication use and consequences. Among the proposed solutions includes tailoring prescription utilization management tools with DBI to decrease avoidable incidences of complications and unintended costs. Understanding the dynamic relationship between medication exposures causing ADEs and associated health care utilization and costs to third-party payments remains vital because in the United States, approximately one-third of hospital admissions in older adults occur because of ADEs. This can be achieved by emphasizing equitable therapy and tailoring quality initiatives that minimize racial disparities and avoidable costs that affect the financial burden of these patients. Importantly, this approach becomes even more critical as health care systems increasingly emphasize star ratings, which reflect the quality of care delivered to patients. By prioritizing DBI metrics in these ratings, we can ensure that care is not only clinically effective but also equitable and focused on improving patients' overall well-being. Lastly, as the future directions, the timely application of advanced technologies like artificial intelligence and machine learning in analyzing DBI metrics could enhance our ability to predict the value of DBI adjustments and their correlation with falls and other unintended ADEs. These real-world technologies can process vast amounts of data quickly and accurately, identifying patterns and potential risks that might otherwise go unnoticed.
健康计划的大部分绩效和指定的星级评定都与药物相关行为有关,例如药物依从性、药物审查和药物核对,这些行为与药物不良事件(ADEs)密切相关。由于衰老导致的药效学和药代动力学改变,使老年人更容易受到ADEs的影响,如跌倒、骨折、住院和死亡。预防可避免的风险因素,如药物负担,有助于维持生活质量。对多人群的研究建立了药物负担指数(DBI),这是一种衡量抗胆碱能和镇静负担的剂量依赖性指标,与眩晕、头晕和平衡能力恶化密切相关,而这些都是跌倒的先兆。DBI的平均差异大于0.1对跌倒和30天再入院率等不良事件具有更强的预测能力。在电子病历中纳入DBI差值指标有可能降低跌倒发生率以及住院和死亡等相关健康结果;这为通过使用有意义的工具促进知情且积极的医疗保险受益人的参与来提高医疗保险和医疗补助服务中心的星级评定提供了机会。我们认为这些信息在医疗保健专业人员的实际决策中极其相关,特别是当变化动态且迅速发生时。此外,管理式医疗组织现在致力于更深入地理解和减轻药物使用及其后果方面的社会不平等现象。提出的解决方案之一包括使用DBI定制处方利用管理工具,以减少可避免的并发症发生率和意外成本。了解导致ADEs的药物暴露与相关医疗保健利用及第三方支付成本之间的动态关系仍然至关重要,因为在美国,老年人中约三分之一的住院是由ADEs引起的。这可以通过强调公平治疗和定制质量改进措施来实现,这些措施可尽量减少种族差异和影响这些患者经济负担的可避免成本。重要的是,随着医疗保健系统越来越强调星级评定,这种方法变得更加关键,星级评定反映了为患者提供的护理质量。通过在这些评定中优先考虑DBI指标,我们可以确保护理不仅在临床上有效,而且公平且专注于改善患者的整体福祉。最后,作为未来的方向,在分析DBI指标时及时应用人工智能和机器学习等先进技术可以增强我们预测DBI调整值及其与跌倒和其他意外ADEs相关性的能力。这些现实世界的技术可以快速准确地处理大量数据,识别可能被忽视的模式和潜在风险。