强化阿片类药物识别和共存障碍算法的验证。

Amy M Brown, Donielle G White, Nikki B Adams, Rihem Rihem PharmD, Salah Shaikh, Lello Guluma
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引用次数: 0

摘要

目的 本报告记录了一项验证研究的结果,该研究旨在评估应用于 2016 年全国医院护理调查的两种算法的可靠性。一种算法可识别涉及阿片类药物和阿片类药物过量的医院就诊情况,另一种算法可识别患有药物使用障碍和特定精神健康问题的患者的就诊情况。这些算法使用医疗代码和自然语言处理来识别就诊情况。方法 为了验证这些算法,我们对 2016 年全国医院护理调查中的 900 个医院就诊病例进行了分层抽样。摘要员在标准表格上记录了他们对阿片类药物参与、阿片类药物过量、药物使用障碍和精神健康问题的判断。摘要员的判断结果与算法输出结果进行比较,使用 F 分数和马修斯相关系数评估总体性能。后者是衡量性能的次要指标。2016 年全国医院护理调查数据未经加权,不具有全国代表性。结果 算法的总体性能因主题和指标而异。阿片类药物介入算法的性能最高,F 值为 0.95,表现良好,其次是药物使用障碍算法(F 值为 0.79)、心理健康问题算法(F 值为 0.68)和阿片类药物过量算法(F 值为 0.48)。通过马修斯相关系数进行的评估表明,总体性能水平较差,精神健康问题算法的最高值为 0.57,而阿片类药物过量算法的最低值为 0.33。造成假阳性和假阴性的原因同样各不相同,包括代码和关键词包含范围过广,以及提交给全国医院护理调查的数据不完整。结论 验证研究说明了所开发算法的哪些方面表现良好,哪些方面应在今后的迭代中进行修改或摒弃。它进一步强调了数据完整性的重要性,从而为改进未来的调查分析奠定了基础。
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Validation of the Enhanced Opioid Identification and Co-occurring Disorders Algorithms.

Objectives This report documents the results of a validation study conducted to assess the reliability of two algorithms applied to the 2016 National Hospital Care Survey. One algorithm identifies opioid-involved and opioid overdose hospital encounters, and the other identifies encounters with patients that have substance use disorders and selected mental health issues. These algorithms use both medical codes and natural language processing to identify encounters. Methods To validate the algorithms, medical record abstraction was performed on a stratified sample of 900 hospital encounters from the 2016 National Hospital Care Survey. The abstractors recorded their determinations of opioid involvement, opioid overdose, substance use disorder, and mental health issues on a standard form. Abstractors' determinations were compared with algorithm output to assess the overall performance using F-score and Matthews correlation coefficient. The latter provided a secondary measure of performance. The 2016 National Hospital Care Survey data are unweighted and not nationally representative. Results Overall algorithm performance varied by topic and by metric. The opioid-involvement algorithm achieved the highest performance, performing well with an F-score of 0.95, followed by the substance use disorder algorithm (F-score of 0.79), the mental health issues algorithm (F-score of 0.68), and the opioid overdose algorithm (F-score of 0.48). Assessment by Matthews correlation coefficient indicated an overall poorer level of performance, ranging from a high of 0.57 for the mental health issues algorithm to a low of 0.33 for the opioid-involvement algorithm. The causes of false positives and false negatives likewise varied, including both overly broad code and keyword inclusions as well as incompleteness of data submitted to the National Hospital Care Survey. Conclusion The validation study illustrates which aspects of the developed algorithms performed well and which aspects should be altered or discarded in future iterations. It further emphasizes the importance of data completeness, therefore laying the groundwork for improvements to future survey analyses.

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来源期刊
CiteScore
2.50
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0.00%
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期刊介绍: Reports describing the general programs of the National Center for Health Statistics and its offices and divisions and the data collection methods used. Series 1 reports also include definitions and other material necessary for understanding the data.
期刊最新文献
Plan and Operations of the National Health and Nutrition Examination Survey, August 2021-August 2023. Assessing Laboratory Method Validations for Informing Inference Across Survey Cycles in the National Health and Nutrition Examination Survey. Developing Sampling Weights for Statistical Analysis of Parent-Child Pair Data From the National Health Interview Survey. Validation of the Enhanced Opioid Identification and Co-occurring Disorders Algorithms. National Center for Health Statistics' 2019 Research and Development Survey, RANDS 3.
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