Samantha Subramaniam, Shahzad Hassan, Ozan Unlu, Sanjay Kumar, David Zelle, John W Ostrominski, Hunter Nichols, Jacqueline Chasse, Marian McPartlin, Megan Twining, Emma Collins, Echo Fridley, Christian Figueroa, Ryan Ruggiero, Matthew Varugheese, Michael Oates, Christopher P Cannon, Akshay S Desai, Samuel Aronson, Alexander J Blood, Benjamin Scirica, Kavishwar B Wagholikar
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引用次数: 0
Abstract
A majority of patients with heart failure (HF) do not receive adequate medical therapy as recommended by clinical guidelines. One major obstacle encountered by population health management (PHM) programs to improve medication usage is the substantial burden placed on clinical staff who must manually sift through electronic health records (EHRs) to ascertain patients' eligibility for the guidelines. As a potential solution, the study team developed a rule-based system (RBS) that automatically parses the EHR for identifying patients with HF who may be eligible for guideline-directed therapy. The RBS was deployed to streamline a PHM program at Brigham and Women's Hospital wherein the RBS was executed every other month to identify potentially eligible patients for further screening by the program staff. The study team evaluated the performance of the system and performed an error analysis to identify areas for improving the system. Of approximately 161,000 patients who have an echocardiogram in the health system, each execution of the RBS typically identified around 4200 patients. A total 5460 patients were manually screened, of which 1754 were found to be truly eligible with an accuracy of 32.1%. An analysis of the false-positive cases showed that over 38% of the false positives were due to incorrect determination of symptomatic HF and medication history of the patients. The system's performance can be potentially improved by integrating information from clinical notes. The RBS provided a systematic way to narrow down the patient population to a subset that is enriched for eligible patients. However, there is a need to further optimize the system by integrating processing of clinical notes. This study highlights the practical challenges of implementing automated tools to facilitate guideline-directed care.
大多数心力衰竭(HF)患者没有按照临床指南的建议接受足够的药物治疗。人口健康管理(PHM)项目在改善药物使用方面遇到的一个主要障碍是,临床工作人员必须手动筛选电子健康记录(EHRs),以确定患者是否符合指南的要求,这给他们带来了沉重的负担。作为一种潜在的解决方案,研究小组开发了一种基于规则的系统(RBS),该系统可以自动解析EHR,以识别可能有资格接受指导治疗的心衰患者。在布里格姆妇女医院(Brigham and Women's Hospital),每隔一个月执行一次RBS,以确定潜在的合格患者,由项目工作人员进行进一步筛查。研究小组评估了系统的性能,并进行了错误分析,以确定需要改进系统的地方。在医疗系统中接受超声心动图检查的约16.1万名患者中,每次执行RBS通常会识别出约4200名患者。人工筛选5460例患者,其中1754例发现真正符合条件,准确率为32.1%。对假阳性病例的分析表明,超过38%的假阳性是由于对症状性心衰和患者用药史的判断错误造成的。通过整合来自临床记录的信息,系统的性能可以得到潜在的改善。RBS提供了一种系统的方法,将患者人群缩小到一个子集,丰富了符合条件的患者。然而,还需要通过整合临床记录的处理来进一步优化系统。本研究强调了实施自动化工具以促进指导护理的实际挑战。
期刊介绍:
Population Health Management provides comprehensive, authoritative strategies for improving the systems and policies that affect health care quality, access, and outcomes, ultimately improving the health of an entire population. The Journal delivers essential research on a broad range of topics including the impact of social, cultural, economic, and environmental factors on health care systems and practices.
Population Health Management coverage includes:
Clinical case reports and studies on managing major public health conditions
Compliance programs
Health economics
Outcomes assessment
Provider incentives
Health care reform
Resource management
Return on investment (ROI)
Health care quality
Care coordination.