Lowery Julie, Fagerlin Angela, Larkin Angela R, Wiener Renda S, Skurla Sarah E, Caverly Tanner J
Center for Clinical Management Research, Ann Arbor VA Healthcare System, Ann Arbor, MI, United States.
Department of Population Health Sciences, University of Utah School of Medicine, Salt Lake City, UT, United States.
JMIR Hum Factors. 2022 Apr 1;9(2):e32399. doi: 10.2196/32399.
Lung cancer risk and life expectancy vary substantially across patients eligible for low-dose computed tomography lung cancer screening (LCS), which has important consequences for optimizing LCS decisions for different patients. To account for this heterogeneity during decision-making, web-based decision support tools are needed to enable quick calculations and streamline the process of obtaining individualized information that more accurately informs patient-clinician LCS discussions. We created DecisionPrecision, a clinician-facing web-based decision support tool, to help tailor the LCS discussion to a patient's individualized lung cancer risk and estimated net benefit.
The objective of our study is to test two strategies for implementing DecisionPrecision in primary care at eight Veterans Affairs medical centers: a quality improvement (QI) training approach and academic detailing (AD).
Phase 1 comprised a multisite, cluster randomized trial comparing the effectiveness of standard implementation (adding a link to DecisionPrecision in the electronic health record vs standard implementation plus the Learn, Engage, Act, and Process [LEAP] QI training program). The primary outcome measure was the use of DecisionPrecision at each site before versus after LEAP QI training. The second phase of the study examined the potential effectiveness of AD as an implementation strategy for DecisionPrecision at all 8 medical centers. Outcomes were assessed by comparing absolute tool use before and after AD visits and conducting semistructured interviews with a subset of primary care physicians (PCPs) following the AD visits.
Phase 1 findings showed that sites that participated in the LEAP QI training program used DecisionPrecision significantly more often than the standard implementation sites (tool used 190.3, SD 174.8 times on average over 6 months at LEAP sites vs 3.5 SD 3.7 at standard sites; P<.001). However, this finding was confounded by the lack of screening coordinators at standard implementation sites. In phase 2, there was no difference in the 6-month tool use between before and after AD (95% CI -5.06 to 6.40; P=.82). Follow-up interviews with PCPs indicated that the AD strategy increased provider awareness and appreciation for the benefits of the tool. However, other priorities and limited time prevented PCPs from using them during routine clinical visits.
The phase 1 findings did not provide conclusive evidence of the benefit of a QI training approach for implementing a decision support tool for LCS among PCPs. In addition, phase 2 findings showed that our light-touch, single-visit AD strategy did not increase tool use. To enable tool use by PCPs, prediction-based tools must be fully automated and integrated into electronic health records, thereby helping providers personalize LCS discussions among their many competing demands. PCPs also need more time to engage in shared decision-making discussions with their patients.
ClinicalTrials.gov NCT02765412; https://clinicaltrials.gov/ct2/show/NCT02765412.
对于符合低剂量计算机断层扫描肺癌筛查(LCS)条件的患者,肺癌风险和预期寿命差异很大,这对为不同患者优化LCS决策具有重要影响。为了在决策过程中考虑到这种异质性,需要基于网络的决策支持工具来实现快速计算,并简化获取个性化信息的过程,以便更准确地为患者与临床医生之间的LCS讨论提供参考。我们创建了DecisionPrecision,这是一个面向临床医生的基于网络的决策支持工具,以帮助根据患者的个性化肺癌风险和估计净效益来调整LCS讨论。
我们研究的目的是在八个退伍军人事务医疗中心测试在初级保健中实施DecisionPrecision的两种策略:质量改进(QI)培训方法和学术推广(AD)。
第一阶段包括一项多中心、整群随机试验,比较标准实施(在电子健康记录中添加DecisionPrecision链接与标准实施加学习、参与、行动和流程[LEAP]QI培训计划)的有效性。主要结局指标是LEAP QI培训前后各站点对DecisionPrecision的使用情况。研究的第二阶段考察了AD作为在所有8个医疗中心实施DecisionPrecision的策略的潜在有效性。通过比较AD访问前后的绝对工具使用情况,并在AD访问后对一部分初级保健医生(PCP)进行半结构化访谈来评估结局。
第一阶段的结果表明,参与LEAP QI培训计划的站点比标准实施站点更频繁地使用DecisionPrecision(LEAP站点在6个月内平均使用该工具190.3次,标准差为174.8次,而标准站点为3.5次,标准差为3.7次;P<0.001)。然而,这一发现因标准实施站点缺乏筛查协调员而受到混淆。在第二阶段,AD前后6个月的工具使用情况没有差异(95%CI -5.06至6.40;P = 0.82)。对PCP的后续访谈表明,AD策略提高了提供者对该工具益处的认识和重视。然而,其他优先事项和有限的时间使PCP在常规临床就诊时无法使用这些工具。
第一阶段的结果没有提供确凿证据证明QI培训方法对在PCP中实施LCS决策支持工具有益。此外,第二阶段的结果表明,我们的轻触式、单次访问AD策略并没有增加工具的使用。为了使PCP能够使用这些工具,基于预测的工具必须完全自动化并集成到电子健康记录中,从而帮助提供者在众多相互竞争的需求中实现LCS讨论的个性化。PCP也需要更多时间与患者进行共同决策讨论。
ClinicalTrials.gov NCT02765412;https://clinicaltrials.gov/ct2/show/NCT02765412