Rinott Ruty, Carmeli Boaz, Kent Carmel, Landau Daphna, Maman Yonatan, Rubin Yoav, Slonim Noam
IBM Haifa Research Labs, 165 Aba Hushi st., Haifa 31905, Israel.
Stud Health Technol Inform. 2011;169:140-4.
Existing Clinical Decision Support Systems (CDSSs) typically rely on rule-based algorithms and focus on tasks like guidelines adherence and drug prescribing and monitoring. However, the increasing dominance of Electronic Health Record technologies and personalized medicine suggest great potential for prognostic data-driven CDSS. A major goal for such systems would be to accurately predict the outcome of patients' candidate treatments by statistical analysis of the clinical data stored at a Health Care Organization. We formally define the concepts involved in the development of such a system, highlight an inherent difficulty arising from bias in treatment allocation, and propose a general strategy to address this difficulty. Experiments over hypertension clinical data demonstrate the validity of our approach.
现有的临床决策支持系统(CDSS)通常依赖基于规则的算法,专注于如遵循指南、药物处方和监测等任务。然而,电子健康记录技术的日益主导地位和个性化医疗表明,基于预后数据驱动的CDSS具有巨大潜力。此类系统的一个主要目标是通过对存储在医疗保健机构的临床数据进行统计分析,准确预测患者候选治疗的结果。我们正式定义了开发此类系统所涉及的概念,突出了治疗分配偏差所带来的一个固有困难,并提出了一种解决这一困难的通用策略。对高血压临床数据的实验证明了我们方法的有效性。