开发一种个性化的可视化和分析工具,以提高对复杂多系统疾病的临床护理,并应用于硬皮病。

IF 3.3 2区 医学 Q1 RHEUMATOLOGY
Ji Soo Kim, John Scott, Lauren Fisher, Lauren N Smith, Willie Stewart, Adrianne Woods, Rob Smithwright, Diane Koher, Parastoo Aslanbeik, Aalok B Shah, Brad Tibbils, Samantha I Pitts, Ayse P Gurses, Yushi Yang, Ana-Maria Orbai, Antony Rosen, Laura K Hummers, Scott L Zeger, Ami A Shah
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引用次数: 0

摘要

背景:在复杂疾病中,在护理点同时、有效地评估患者的疾病状态、轨迹、治疗暴露和多种结局的风险是具有挑战性的。方法:我们开发了一种交互式患者级数据可视化和分析工具(VAT),该工具可以自动说明硬皮病患者跨多个器官的轨迹,并相对于参考人群(包括与指数患者共享危险因素的患者亚组)说明这一点,以改善疾病状态的估计。我们对患者和临床医生进行了VAT可用性测试。然后,我们从内部交叉验证的贝叶斯多变量混合模型中嵌入结果,该模型利用基线风险因素、多个维度的过去轨迹中的患者水平信息以及整个人群和相关亚组的已知结果,计算个体发生关键事件的风险。结果:基于网络的应用程序聚合了复杂的纵向数据,以说明患者,亚组和人群水平的多器官系统健康轨迹。暴露于VAT的患者(N=7)报告对其疾病的了解和对医疗决策的信心增加。风湿病学家(N=4)能够在81.5%的时间内访问8.6倍的数据,而使用VAT的点击次数比使用EMR少2/3。统计模型成功地嵌入到VAT中,能够实时估计患者多种并发症的风险。结论:对复杂疾病的个人和人群数据进行系统分析和可视化有可能改善医疗决策,值得进一步研究。在护理点传播的个体化风险评估可以使高危患者进行有针对性的筛查和早期干预。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of a personalized visualization and analysis tool to improve clinical care in complex multisystem diseases with application to scleroderma.

Background: In complex diseases, it is challenging to assess a patient's disease state, trajectory, treatment exposures, and risk of multiple outcomes simultaneously, efficiently and at the point of care.

Methods: We developed an interactive patient-level data visualization and analysis tool (VAT) that automates illustration of a scleroderma patient's trajectory across multiple organs and illustrates this relative to a reference population, including patient subgroups who share risk factors with the index patient, to improve estimation of disease state. We conducted VAT usability testing with patients and clinicians. We then embedded results from internally cross-validated, Bayesian multivariate mixed models that calculate an individual's risk of critical events, utilizing baseline risk factors, patient-level information in past trajectories in multiple dimensions, and known outcomes from the entire population and relevant subgroups.

Results: The web-based application aggregates complex, longitudinal data to illustrate patient-, subgroup- and population-level health trajectories across multiple organ systems. Patients (N=7) exposed to the VAT reported increased knowledge about their disease and confidence in medical decision-making. Rheumatologists (N=4) were able to access 8.6-times more data in 81.5% of the time using 2/3 fewer clicks using the VAT compared to the EMR. Statistical modeling was successfully embedded in the VAT, enabling real-time estimation of a patient's risks of multiple complications.

Conclusions: Systematic analysis and visualization of individual- and population-level data in a complex disease has potential to improve medical decision-making and warrants further study. Individualized risk estimation disseminated at the point of care may enable targeted screening and early intervention in high-risk patients.

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来源期刊
CiteScore
9.40
自引率
6.40%
发文量
368
审稿时长
3-6 weeks
期刊介绍: Arthritis Care & Research, an official journal of the American College of Rheumatology and the Association of Rheumatology Health Professionals (a division of the College), is a peer-reviewed publication that publishes original research, review articles, and editorials that promote excellence in the clinical practice of rheumatology. Relevant to the care of individuals with rheumatic diseases, major topics are evidence-based practice studies, clinical problems, practice guidelines, educational, social, and public health issues, health economics, health care policy, and future trends in rheumatology practice.
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