The importance of SNOMED CT concept specificity in healthcare analytics.

Luke Roberts, Sadie Lanes, Oliver Peatman, Phil Assheton
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Abstract

Background: Healthcare data frequently lack the specificity level needed to achieve clinical and operational objectives such as optimising bed management. Pneumonia is a disease of importance as it accounts for more bed days than any other lung disease and has a varied aetiology. The condition has a range of SNOMED CT concepts with different levels of specificity.

Objective: This study aimed to quantify the importance of the specificity of an SNOMED CT concept, against well-established predictors, for forecasting length of stay for pneumonia patients.

Method: A retrospective data analysis was conducted of pneumonia admissions to a tertiary hospital between 2011 and 2021. For inclusion, the primary diagnosis was a subtype of bacterial or viral pneumonia, as identified by SNOMED CT concepts. Three linear mixed models were constructed. Model One included known predictors of length of stay. Model Two included the predictors in Model One and SNOMED CT concepts of lower specificity. Model Three included the Model Two predictors and the concepts with higher specificity. Model performances were compared.

Results: Sex, ethnicity, deprivation rank and Charlson Comorbidity Index scores (age-adjusted) were meaningful predictors of length of stay in all models. Inclusion of lower specificity SNOMED CT concepts did not significantly improve performance (ΔR2 = 0.41%, p = .058). SNOMED CT concepts with higher specificity explained more variance than each of the individual predictors (ΔR2 = 4.31%, p < .001).

Conclusion: SNOMED CT concepts with higher specificity explained more variance in length of stay than a range of well-studied predictors.

Implications: Accurate and specific clinical documentation using SNOMED CT can improve predictive modelling and the generation of actionable insights. Resources should be dedicated to optimising and assuring clinical documentation quality at the point of recording.

SNOMED CT 概念特异性在医疗分析中的重要性。
背景:医疗数据往往缺乏实现临床和运营目标(如优化病床管理)所需的特异性。肺炎是一种重要的疾病,因为它比其他任何肺部疾病的住院天数都多,而且病因多样。该疾病有一系列 SNOMED CT 概念,其特异性各不相同:本研究旨在量化 SNOMED CT 概念的特异性对预测肺炎患者住院时间的重要性,并将其与成熟的预测指标进行对比:方法:对一家三甲医院 2011 年至 2021 年的肺炎入院病例进行了回顾性数据分析。根据 SNOMED CT 概念,主要诊断为细菌性或病毒性肺炎亚型。我们构建了三个线性混合模型。模型一包括已知的住院时间预测因素。模型二包括模型一中的预测因子和特异性较低的 SNOMED CT 概念。模型三包括模型二的预测因子和特异性较高的概念。对模型的性能进行了比较:结果:在所有模型中,性别、种族、贫困等级和 Charlson 生病指数评分(年龄调整后)都是有意义的住院时间预测因素。纳入特异性较低的 SNOMED CT 概念并没有明显改善性能(ΔR2 = 0.41%,p = .058)。特异性较高的 SNOMED CT 概念比每个单独的预测因子能解释更多的方差(ΔR2 = 4.31%,p < .001):结论:具有较高特异性的 SNOMED CT 概念比一系列经过充分研究的预测因子更能解释住院时间的差异:启示:使用 SNOMED CT 进行准确而具体的临床记录可以改善预测建模并产生可操作的见解。应投入专门资源,优化并确保记录时的临床文档质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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