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Design and evaluation of a decision support system for pain management based on data imputation and statistical models

机译:基于数据插补和统计模型的疼痛管理决策支持系统的设计与评估

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摘要

The self-reporting of pain complaints is considered the most accurate pain assessment method and represents a valuable source of data to computerised clinical decision support systems (CCDSS) for pain management. However, the subjectivity and variability of pain conditions, combined with missing data, are constraints on the usefulness and accuracy of CCDSS. Based on data imputation principles, together with several mathematical models, this paper presents a CCDSS, the Patient Oriented Method of Pain Evaluation System (POMPES), that produces tailored alarms, reports, and clinical guidance based on collected patient-reported data. This system was tested using clinical data collected during a six-week randomised controlled trial involving thirty-two volunteers recruited from an ambulatory surgery department. The decisions resulting from the POMPES were fully accurate when compared with clinical advice, which proves the ability of the system to cope with missing data and detect either stability or changes in the self-reporting of pain. (C) 2016 Published by Elsevier Ltd.
机译:自我报告疼痛投诉被认为是最准确的疼痛评估方法,并且代表了用于疼痛管理的计算机临床决策支持系统(CCDSS)的宝贵数据来源。但是,疼痛状况的主观性和可变性以及缺少的数据限制了CCDSS的有效性和准确性。基于数据归因原理以及几种数学模型,本文提出了一种CCDSS,即以患者为中心的疼痛评估系统(POMPES),它可以根据收集的患者报告数据生成量身定制的警报,报告和临床指导。该系统使用在为期六周的随机对照试验中收集的临床数据进行了测试,该试验涉及从门诊外科部门招募的32名志愿者。与临床建议相比,由POMPES得出的决定是完全准确的,这证明了系统具有处理丢失数据并检测疼痛的自我报告稳定性或变化的能力。 (C)2016由Elsevier Ltd.出版

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