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个性化分布式患者指导系统的评估

Assessment of a personalized and distributed patient guidance system.

作者信息

Peleg Mor, Shahar Yuval, Quaglini Silvana, Broens Tom, Budasu Roxana, Fung Nick, Fux Adi, García-Sáez Gema, Goldstein Ayelet, González-Ferrer Arturo, Hermens Hermie, Hernando M Elena, Jones Val, Klebanov Guy, Klimov Denis, Knoppel Daniel, Larburu Nekane, Marcos Carlos, Martínez-Sarriegui Iñaki, Napolitano Carlo, Pallàs Àngels, Palomares Angel, Parimbelli Enea, Pons Belén, Rigla Mercedes, Sacchi Lucia, Shalom Erez, Soffer Pnina, van Schooten Boris

机构信息

Department of Information Systems, University of Haifa, Haifa, Israel.

Department of Information Systems Engineering, Ben Gurion University of the Negev, Beer-Sheva, Israel.

出版信息

Int J Med Inform. 2017 May;101:108-130. doi: 10.1016/j.ijmedinf.2017.02.010. Epub 2017 Feb 21.

DOI:10.1016/j.ijmedinf.2017.02.010
PMID:28347441
Abstract

OBJECTIVES

The MobiGuide project aimed to establish a ubiquitous, user-friendly, patient-centered mobile decision-support system for patients and for their care providers, based on the continuous application of clinical guidelines and on semantically integrated electronic health records. Patients would be empowered by the system, which would enable them to lead their normal daily lives in their regular environment, while feeling safe, because their health state would be continuously monitored using mobile sensors and self-reporting of symptoms. When conditions occur that require medical attention, patients would be notified as to what they need to do, based on evidence-based guidelines, while their medical team would be informed appropriately, in parallel. We wanted to assess the system's feasibility and potential effects on patients and care providers in two different clinical domains.

MATERIALS AND METHODS

We describe MobiGuide's architecture, which embodies these objectives. Our novel methodologies include a ubiquitous architecture, encompassing a knowledge elicitation process for parallel coordinated workflows for patients and care providers; the customization of computer-interpretable guidelines (CIGs) by secondary contexts affecting remote management and distributed decision-making; a mechanism for episodic, on demand projection of the relevant portions of CIGs from a centralized, backend decision-support system (DSS), to a local, mobile DSS, which continuously delivers the actual recommendations to the patient; shared decision-making that embodies patient preferences; semantic data integration; and patient and care provider notification services. MobiGuide has been implemented and assessed in a preliminary fashion in two domains: atrial fibrillation (AF), and gestational diabetes Mellitus (GDM). Ten AF patients used the AF MobiGuide system in Italy and 19 GDM patients used the GDM MobiGuide system in Spain. The evaluation of the MobiGuide system focused on patient and care providers' compliance to CIG recommendations and their satisfaction and quality of life.

RESULTS

Our evaluation has demonstrated the system's capability for supporting distributed decision-making and its use by patients and clinicians. The results show that compliance of GDM patients to the most important monitoring targets - blood glucose levels (performance of four measurements a day: 0.87±0.11; measurement according to the recommended frequency of every day or twice a week: 0.99±0.03), ketonuria (0.98±0.03), and blood pressure (0.82±0.24) - was high in most GDM patients, while compliance of AF patients to the most important targets was quite high, considering the required ECG measurements (0.65±0.28) and blood-pressure measurements (0.75±1.33). This outcome was viewed by the clinicians as a major potential benefit of the system, and the patients have demonstrated that they are capable of self-monitoring - something that they had not experienced before. In addition, the system caused the clinicians managing the AF patients to change their diagnosis and subsequent treatment for two of the ten AF patients, and caused the clinicians managing the GDM patients to start insulin therapy earlier in two of the 19 patients, based on system's recommendations. Based on the end-of-study questionnaires, the sense of safety that the system has provided to the patients was its greatest asset. Analysis of the patients' quality of life (QoL) questionnaires for the AF patients was inconclusive, because while most patients reported an improvement in their quality of life in the EuroQoL questionnaire, most AF patients reported a deterioration in the AFEQT questionnaire.

DISCUSSION

Feasibility and some of the potential benefits of an evidence-based distributed patient-guidance system were demonstrated in both clinical domains. The potential application of MobiGuide to other medical domains is supported by its standards-based patient health record with multiple electronic medical record linking capabilities, generic data insertion methods, generic medical knowledge representation and application methods, and the ability to communicate with a wide range of sensors. Future larger scale evaluations can assess the impact of such a system on clinical outcomes.

CONCLUSION

MobiGuide's feasibility was demonstrated by a working prototype for the AF and GDM domains, which is usable by patients and clinicians, achieving high compliance to self-measurement recommendations, while enhancing the satisfaction of patients and care providers.

摘要

目标

MobiGuide项目旨在基于临床指南的持续应用以及语义集成的电子健康记录,为患者及其护理人员建立一个无处不在、用户友好且以患者为中心的移动决策支持系统。该系统将使患者能够自主掌控,让他们在正常环境中过正常的日常生活,同时感到安全,因为其健康状况将通过移动传感器和症状自我报告得到持续监测。当出现需要医疗关注的情况时,系统将根据循证指南告知患者需要做什么,同时其医疗团队也会得到相应通知。我们希望评估该系统在两个不同临床领域对患者和护理人员的可行性及潜在影响。

材料与方法

我们描述了体现这些目标的MobiGuide架构。我们的新颖方法包括一个无处不在的架构,涵盖为患者和护理人员的并行协调工作流程进行知识获取的过程;通过影响远程管理和分布式决策的二级上下文对计算机可解释指南(CIG)进行定制;一种从集中式后端决策支持系统(DSS)将CIG的相关部分按需逐段投影到本地移动DSS的机制,该本地移动DSS会持续向患者提供实际建议;体现患者偏好的共享决策;语义数据集成;以及患者和护理人员通知服务。MobiGuide已在两个领域进行了初步实施和评估:心房颤动(AF)和妊娠期糖尿病(GDM)。10名AF患者在意大利使用了AF MobiGuide系统,19名GDM患者在西班牙使用了GDM MobiGuide系统。对MobiGuide系统的评估重点在于患者和护理人员对CIG建议的依从性以及他们的满意度和生活质量。

结果

我们的评估证明了该系统支持分布式决策的能力以及患者和临床医生对其的使用情况。结果表明,大多数GDM患者对最重要的监测指标——血糖水平(一天进行四次测量的执行情况:0.87±0.11;按照每天或每周两次的推荐频率进行测量:0.99±0.03)、尿酮体(0.98±0.03)和血压(0.82±0.24)——的依从性较高,而考虑到所需的心电图测量(0.65±0.28)和血压测量(0.75±1.33),AF患者对最重要指标的依从性也相当高。临床医生认为这一结果是该系统的一项主要潜在益处,并且患者已证明他们有能力进行自我监测——这是他们以前未曾经历过的。此外,该系统使管理AF患者的临床医生对10名AF患者中的两名改变了诊断和后续治疗方案,并使管理GDM患者的临床医生根据系统建议在19名患者中的两名中更早地开始了胰岛素治疗。根据研究结束时的问卷调查,该系统为患者提供的安全感是其最大优势。对AF患者生活质量(QoL)问卷的分析尚无定论,因为虽然大多数患者在欧洲生活质量问卷中报告生活质量有所改善,但大多数AF患者在AFEQT问卷中报告生活质量恶化。

讨论

在两个临床领域都证明了基于证据的分布式患者指导系统的可行性和一些潜在益处。MobiGuide基于标准的患者健康记录具有多种电子病历链接能力、通用数据插入方法、通用医学知识表示和应用方法,以及与多种传感器通信的能力,这支持了其在其他医学领域的潜在应用。未来更大规模的评估可以评估这样一个系统对临床结果的影响。

结论

AF和GDM领域的工作原型证明了MobiGuide的可行性,患者和临床医生都可以使用该原型,实现了对自我测量建议的高度依从性,同时提高了患者和护理人员的满意度。

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