通过临床决策支持和知识管理促进医疗保健决策。

David Lobach, Gillian D Sanders, Tiffani J Bright, Anthony Wong, Ravi Dhurjati, Erin Bristow, Lori Bastian, Remy Coeytaux, Gregory Samsa, Vic Hasselblad, John W Williams, Liz Wing, Michael Musty, Amy S Kendrick
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引用次数: 0

摘要

目的:对用于评估cdss和KMSs临床有效性的研究设计进行分类,确定影响cdss /KMSs成功的特征,记录cdss /KMSs对结果的影响,并确定可整合到cdss /KMSs的知识类型。数据来源:MEDLINE(®),CINAHL(®),PsycINFO(®),Web of Science(®)。回顾方法:我们纳入了从1976年1月至2010年12月用英文发表的研究。在筛选标题和摘要后,文章的全文版本由两名独立审稿人审查。纳入的文章由两位审稿人摘录到证据表中。对七个领域进行荟萃分析,其中包括具有共同结果的足够研究。结果:我们确定了15176篇文章,其中323篇文章描述了311项独特的研究,其中包括160篇148项随机对照试验(rct)的报告。rct占cdss / kms比较研究的47.5%。商业和地方开发的cdss都有效地改善了与提供预防服务有关的保健过程措施(n = 25;OR 1.42, 95%可信区间[CI] 1.27 ~ 1.58),订购临床研究(n = 20;OR 1.72, 95% CI 1.47 - 2.00)和处方疗法(n = 46;OR 1.57, 95% CI 1.35 - 1.82)。评估了14个CDSS/KMS特征与所有终点CDSS/KMS成功的相关性。元分析确定了六个新的成功特征:与图表或订单输入系统集成。提倡行动而不是不作为。不需要额外的临床医生数据输入。通过研究证据证明决策支持的正当性。本地用户参与。为患者和提供者提供决策支持结果。三个先前确定的成功特征得到确认:作为临床医生工作流程的一部分,自动提供决策支持。在决策的时间和地点提供决策支持。提供建议,而不仅仅是评估。只有29项(19.6%)随机对照试验评估了cdss对临床结果的影响,22项(14.9%)评估了成本,3项评估了kms对任何结果的影响。cdss中使用的主要知识来源来自结构化护理协议。结论:强有力的证据表明,cdss /KMSs在使用商业和地方开发的系统改善不同环境下的卫生保健过程措施方面是有效的。关于cdss对临床结果和成本的有效性以及kms对任何结果的有效性的证据很少。与临床决策支持的成功影响相关的cdss /KMSs的九个特征已被新发现或证实。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enabling health care decisionmaking through clinical decision support and knowledge management.

Objectives: To catalogue study designs used to assess the clinical effectiveness of CDSSs and KMSs, to identify features that impact the success of CDSSs/KMSs, to document the impact of CDSSs/KMSs on outcomes, and to identify knowledge types that can be integrated into CDSSs/KMSs.

Data sources: MEDLINE(®), CINAHL(®), PsycINFO(®), and Web of Science(®).

Review methods: We included studies published in English from January 1976 through December 2010. After screening titles and abstracts, full-text versions of articles were reviewed by two independent reviewers. Included articles were abstracted to evidence tables by two reviewers. Meta-analyses were performed for seven domains in which sufficient studies with common outcomes were included.

Results: We identified 15,176 articles, from which 323 articles describing 311 unique studies including 160 reports on 148 randomized control trials (RCTs) were selected for inclusion. RCTs comprised 47.5 percent of the comparative studies on CDSSs/KMSs. Both commercially and locally developed CDSSs effectively improved health care process measures related to performing preventive services (n = 25; OR 1.42, 95% confidence interval [CI] 1.27 to 1.58), ordering clinical studies (n = 20; OR 1.72, 95% CI 1.47 to 2.00), and prescribing therapies (n = 46; OR 1.57, 95% CI 1.35 to 1.82). Fourteen CDSS/KMS features were assessed for correlation with success of CDSSs/KMSs across all endpoints. Meta-analyses identified six new success features: Integration with charting or order entry system. Promotion of action rather than inaction. No need for additional clinician data entry. Justification of decision support via research evidence. Local user involvement. Provision of decision support results to patients as well as providers. Three previously identified success features were confirmed: Automatic provision of decision support as part of clinician workflow. Provision of decision support at time and location of decisionmaking. Provision of a recommendation, not just an assessment. Only 29 (19.6%) RCTs assessed the impact of CDSSs on clinical outcomes, 22 (14.9%) assessed costs, and 3 assessed KMSs on any outcomes. The primary source of knowledge used in CDSSs was derived from structured care protocols.

Conclusions: Strong evidence shows that CDSSs/KMSs are effective in improving health care process measures across diverse settings using both commercially and locally developed systems. Evidence for the effectiveness of CDSSs on clinical outcomes and costs and KMSs on any outcomes is minimal. Nine features of CDSSs/KMSs that correlate with a successful impact of clinical decision support have been newly identified or confirmed.

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