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使用共病统计模型预测住院患者死亡率:洞察住院患者负担

Using Comorbidity Statistical Modeling to Predict Inpatient Mortality: Insights Into the Burden on Hospitalized Patients.

作者信息

Magacha Hezborn M, Strasser Sheryl M, Zheng Shimini, Vedantam Venkata, Adenusi Adedeji O, Emmanuel Adegbile Oluwatobi

机构信息

Internal Medicine, Quillen College of Medicine, East Tennessee State University, Johnson City, USA.

Public Health, Georgia State University, Atlanta, USA.

出版信息

Cureus. 2023 Sep 25;15(9):e45899. doi: 10.7759/cureus.45899. eCollection 2023 Sep.

DOI:10.7759/cureus.45899
PMID:37885487
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10599093/
Abstract

Background The expenditures of the United States for healthcare are the highest in the world. Assessment of inpatient disease classifications associated with death can provide useful information for risk stratification, outcome prediction, and comparative analyses to understand the most resource-intensive chronic illnesses. This project aims to adapt a comorbidity index model to the National Inpatient Sample (NIS) database of 2020 to predict one-year mortality for patients admitted with select International Classification of Diseases, 10th Edition (ICD-10) codes of diagnoses. Methodology A retrospective cohort study analyzed mortality with comorbidity using the Charlson comorbidity index model (CCI) in a sample population of an estimated 5,533,477 adult inpatients (individuals aged ≥18 years) obtained from the National Inpatient Database for 2020. A multivariate logistic regression model was constructed with in-hospital mortality as the outcome variable and identifying predictor variables as defined by the Clinical Classifications Software Refined Variables (CCSR) codes for selected ICD-10 diagnoses. Descriptive statistics and the base logistic regression analyses were conducted using SAS statistical software version 9.4 (SAS Institute, Cary, NC, USA). To avoid overpowering, a subsample (= 100,000) was randomly selected from the original dataset. The initial CCI assigned weights to ICD-10 diagnoses based on the associated risk of death, and conditions with the greatest collective weights were included in a subsequent backward stepwise logistic regression model. Results The results of the base CCI regression analysis revealed 16 chronic conditions with -values <0.20. Anemia (1,567,081, 28.32%), pulmonary disease (asthma, chronic obstructive pulmonary disease [COPD], pneumoconiosis; 1,210,892, 21.88%), and diabetes without complications (1,077,239, 19.47%) were the three most prevalent conditions associated with inpatient mortality. Results of the backward stepwise regression analysis revealed that severe liver disease/hepatic failure (adjusted odds ratio [aOR] 10.50; 95% confidence interval [CI] 10.40-10.59), acute myocardial infarction (aOR 2.85; 95% CI 2.83-2.87) and malnutrition (aOR 2.15, 95% CI 2.14-2.16) were three most important risk factors and had the highest impact on inpatient mortality (-value <0.0001). The concordance statistic (c-statistic) or the area under the curve (AUC) for the final model was 0.752. Conclusions The CCI model proved to be a valuable approach in categorizing morbidity classifications associated with the greatest risk of death using a national sample of hospitalized patients in 2020. Study findings provide an objective approach to compare patient populations that bear important implications for healthcare system improvements, clinician treatment approaches, and ultimately decision decision-makers poised to influence advanced models of care and prevention strategies that limit disease progression and improve patient outcomes.

摘要

背景 美国的医疗保健支出位居世界之首。评估与死亡相关的住院疾病分类可为风险分层、预后预测以及比较分析提供有用信息,以了解最耗费资源的慢性疾病。本项目旨在使一种合并症指数模型适用于2020年的国家住院样本(NIS)数据库,以预测因选定的第十版国际疾病分类(ICD-10)诊断编码入院患者的一年死亡率。

方法 一项回顾性队列研究在从2020年国家住院数据库获取的估计5533477名成年住院患者(年龄≥18岁)样本中,使用查尔森合并症指数模型(CCI)分析合并症与死亡率的关系。构建了一个多变量逻辑回归模型,以住院死亡率为结果变量,并将由选定ICD-10诊断的临床分类软件细化变量(CCSR)编码定义的预测变量作为识别变量。使用SAS统计软件9.4版(美国北卡罗来纳州卡里市SAS研究所)进行描述性统计和基础逻辑回归分析。为避免过度拟合,从原始数据集中随机抽取一个子样本(=100000)。初始CCI根据相关死亡风险为ICD-10诊断赋予权重,具有最大集体权重的疾病被纳入随后的向后逐步逻辑回归模型。

结果 基础CCI回归分析结果显示有16种慢性病的P值<0.20。贫血(1567081例,28.32%)、肺部疾病(哮喘、慢性阻塞性肺疾病[COPD]、尘肺病;1210892例,21.88%)和无并发症的糖尿病(1077239例,19.47%)是与住院死亡率相关的三种最常见疾病。向后逐步回归分析结果显示,严重肝病/肝衰竭(调整优势比[aOR]10.50;95%置信区间[CI]10.40-10.59)、急性心肌梗死(aOR 2.85;95%CI 2.83-2.87)和营养不良(aOR 2.15,95%CI 2.14-2.16)是三个最重要的风险因素,对住院死亡率影响最大(P值<0.0001)。最终模型的一致性统计量(c统计量)或曲线下面积(AUC)为0.752。

结论 CCI模型被证明是一种有价值的方法,可利用2020年住院患者的全国样本对与最高死亡风险相关的发病分类进行分类。研究结果提供了一种客观方法来比较患者群体,这对医疗保健系统改进、临床医生治疗方法以及最终对准备影响高级护理模式和预防策略以限制疾病进展并改善患者预后的决策者具有重要意义。

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Cureus. 2021 Dec 14;13(12):e20407. doi: 10.7759/cureus.20407. eCollection 2021 Dec.
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