Department of Vascular Surgery, Catharina Hospital, Eindhoven, the Netherlands.
CAPHRI Research School, Maastricht University Medical Centre, Maastricht, the Netherlands.
PLoS One. 2023 Jul 31;18(7):e0288511. doi: 10.1371/journal.pone.0288511. eCollection 2023.
Shared decision-making is the cornerstone of patient-centered care. However, evidence suggests that the application of shared decision-making in physical therapy practice is limited. To elicit shared decision-making and thereby potentially improve patient outcomes for patients with intermittent claudication, we developed a decision support system. This decision support system provides personalized outcomes forecasts that visualize the estimated walking distance of an individual patient. We hypothesize that personalized outcomes forecasts can support physical therapists in personalizing care to the needs and priorities of the individual patient to improve therapy outcomes.
The primary aim is to evaluate the impact of personalized outcomes forecasts for patients with intermittent claudication to optimize personalized treatment. Second, this study aims to evaluate the process of implementation.
This study uses a prospective interrupted time series (ITS) design. Participating physical therapists are divided into four clusters. Every month of the study period, a new cluster will be invited to begin using the decision support system. We aim to include data of 11,250 newly referred patients for physical therapy treatment. All therapists associated with a network of specialized therapists (Chronic CareNet) and patients treated by these therapists are eligible to participate. The decision support system, called the KomPas, makes use of personalized outcomes forecasts, which visualize the estimated outcome of supervised exercise therapy for an individual patient with intermittent claudication. Personalized outcomes forecasts are developed using a neighbors-based approach that selects patients similar to the index patient (a.k.a. neighbors) from a large database. Outcomes to evaluate impact of implementation are patients' functional and maximal walking distance, quality of life and shared decision-making. Process evaluation will be measured in terms of utilization efficacy, including the outcomes dropout rate and reasons to (not) use the personalized outcomes forecasts. Data will be routinely collected through two online systems: the Chronic CareNet Quality system, and the website logs of the decision support system. Additionally, observations and semi-structured interviews will be conducted with a small subset of therapists.
Formal medical ethical approval by the Medical Research Ethics Committees United 'MEC-U' was not required for this study under Dutch law (reference number 2020-6250).
共同决策是以患者为中心的护理的基石。然而,有证据表明,共同决策在物理治疗实践中的应用是有限的。为了引出共同决策,并有可能改善间歇性跛行患者的治疗效果,我们开发了一个决策支持系统。该决策支持系统提供个性化的结果预测,可视化个体患者的估计步行距离。我们假设个性化的结果预测可以帮助物理治疗师根据个体患者的需求和优先事项来个性化护理,从而改善治疗效果。
主要目的是评估个性化结果预测对间歇性跛行患者的影响,以优化个性化治疗。其次,本研究旨在评估实施过程。
本研究采用前瞻性中断时间序列(ITS)设计。参与的物理治疗师分为四组。在研究期间的每个月,一组新的治疗师将被邀请开始使用决策支持系统。我们的目标是纳入 11250 名新转诊接受物理治疗的患者的数据。所有与慢性护理网络(Chronic CareNet)相关的治疗师以及由这些治疗师治疗的患者都有资格参与。该决策支持系统名为 KomPas,它利用个性化结果预测,可视化个体间歇性跛行患者监督运动治疗的估计结果。个性化结果预测是使用基于邻居的方法开发的,该方法从一个大型数据库中选择与索引患者(即邻居)相似的患者。评估实施影响的结果是患者的功能和最大步行距离、生活质量和共同决策。过程评估将根据利用效果来衡量,包括结果辍学率和使用个性化结果预测的原因。数据将通过两个在线系统定期收集:慢性护理网络质量系统和决策支持系统的网站日志。此外,还将对一小部分治疗师进行观察和半结构化访谈。
根据荷兰法律,本研究不需要向联合医疗研究伦理委员会(Medical Research Ethics Committees United 'MEC-U')正式申请医学伦理批准(参考号 2020-6250)。