集体经验:数据库驱动、跨学科团队领导的学习系统。

Leo A Celi, Roger G Mark, Joon Lee, Daniel J Scott, Trishan Panch
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引用次数: 6

摘要

我们描述了一个数据驱动的、跨学科团队领导的学习系统的框架。其想法是利用来自自己机构的患者建立模型,这些患者的特征与感兴趣的结果相似,以便预测诊断测试和干预措施的效用,并告知预后。麻省理工学院计算生理学实验室开发并维护了MIMIC-II,这是一个公开的高分辨率数据库,记录了贝斯以色列女执事医疗中心收治的患者。它拥有由临床医生(护士、医生、药剂师)和科学家(数据库工程师、建模师、流行病学家)组成的团队,他们将查房期间在当前医学文献中没有明确答案的日常问题转化为研究设计,进行建模和分析,并发表他们的发现。这些研究可分为以下几大类:对实践差异的识别和调查,对患者亚群临床结果的预测建模,以及对诊断测试和治疗干预的比较有效性研究。像MIMIC-II这样的临床数据库,记录了医疗保健交易——与患者结果相关联的临床决策——不断被上传,成为学习系统的核心。
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Collective Experience: A Database-Fuelled, Inter-Disciplinary Team-Led Learning System.
We describe the framework of a data-fuelled, interdisciplinary team-led learning system. The idea is to build models using patients from one's own institution whose features are similar to an index patient as regards an outcome of interest, in order to predict the utility of diagnostic tests and interventions, as well as inform prognosis. The Laboratory of Computational Physiology at the Massachusetts Institute of Technology developed and maintains MIMIC-II, a public deidentified high- resolution database of patients admitted to Beth Israel Deaconess Medical Center. It hosts of teams of clinicians (nurses, doctors, pharmacists) and scientists (database engineers, modelers, epidemiologists) who translate the day-to-day questions during rounds that have no clear answers in the current medical literature into study designs, perform the modeling and the analysis and publish their findings. The studies fall into the following broad categories: identification and interrogation of practice variation, predictive modeling of clinical outcomes within patient subsets and comparative effectiveness research on diagnostic tests and therapeutic interventions. Clinical databases such as MIMIC-II, where recorded health care transactions - clinical decisions linked with patient outcomes - are constantly uploaded, become the centerpiece of a learning system.
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来源期刊
Journal of Computing Science and Engineering
Journal of Computing Science and Engineering Engineering-Engineering (all)
CiteScore
1.00
自引率
0.00%
发文量
11
期刊介绍: Journal of Computing Science and Engineering (JCSE) is a peer-reviewed quarterly journal that publishes high-quality papers on all aspects of computing science and engineering. The primary objective of JCSE is to be an authoritative international forum for delivering both theoretical and innovative applied researches in the field. JCSE publishes original research contributions, surveys, and experimental studies with scientific advances. The scope of JCSE covers all topics related to computing science and engineering, with a special emphasis on the following areas: Embedded Computing, Ubiquitous Computing, Convergence Computing, Green Computing, Smart and Intelligent Computing, Human Computing.
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