Sloane Richard, Pieper Carl F, Faldowski Richard, Wixted Douglas, Neighbors Coralei E, Woods Christopher W, Kristin Newby L
Center for the Study of Aging and Human Development, Duke University Medical Center, Durham, North Carolina, USA.
Department of Biostatistics and Bioinformatics, Duke University Medical Center, Durham, North Carolina, USA.
Health Serv Res Manag Epidemiol. 2023 Mar 27;10:23333928231154336. doi: 10.1177/23333928231154336. eCollection 2023 Jan-Dec.
Few models exist that incorporate measures from an array of individual characteristics to predict the risk of COVID-19 infection in the general population. The aim was to develop a prognostic model for COVID-19 using readily obtainable clinical variables.
Over 74 weeks surveys were periodically administered to a cohort of 1381 participants previously uninfected with COVID-19 (June 2020 to December 2021). Candidate predictors of incident infection during follow-up included demographics, living situation, financial status, physical activity, health conditions, flu vaccination history, COVID-19 vaccine intention, work/employment status, and use of COVID-19 mitigation behaviors. The final logistic regression model was created using a penalized regression method known as the least absolute shrinkage and selection operator. Model performance was assessed by discrimination and calibration. Internal validation was performed via bootstrapping, and results were adjusted for overoptimism.
Of the 1381 participants, 154 (11.2%) had an incident COVID-19 infection during the follow-up period. The final model included six variables: health insurance, race, household size, and the frequency of practicing three mitigation behavior (working at home, avoiding high-risk situations, and using facemasks). The c-statistic of the final model was 0.631 (0.617 after bootstrapped optimism-correction). A calibration plot suggested that with this sample the model shows modest concordance with incident infection at the lowest risk.
This prognostic model can help identify which community-dwelling older adults are at the highest risk for incident COVID-19 infection and may inform medical provider counseling of their patients about the risk of incident COVID-19 infection.
很少有模型能够综合一系列个体特征指标来预测普通人群感染新冠病毒的风险。本研究旨在利用易于获取的临床变量开发一种针对新冠病毒病的预后模型。
在74周的时间里,对1381名既往未感染新冠病毒的参与者(2020年6月至2021年12月)进行了定期调查。随访期间感染事件的候选预测因素包括人口统计学特征、生活状况、财务状况、身体活动、健康状况、流感疫苗接种史、新冠病毒疫苗接种意愿、工作/就业状况以及新冠病毒缓解措施的使用情况。最终的逻辑回归模型采用一种名为最小绝对收缩和选择算子的惩罚回归方法构建。通过区分度和校准来评估模型性能。通过自抽样法进行内部验证,并对结果进行过度乐观调整。
在1381名参与者中,154人(11.2%)在随访期间发生了新冠病毒感染。最终模型纳入了六个变量:医疗保险、种族、家庭规模以及三种缓解措施(在家工作、避免高风险情况和佩戴口罩)的实施频率。最终模型的c统计量为0.631(经自抽样法乐观校正后为0.617)。校准图显示,在该样本中,模型在最低风险水平下与感染事件的一致性一般。
该预后模型有助于识别哪些社区居住的老年人感染新冠病毒的风险最高,并可为医疗服务提供者为其患者提供关于感染新冠病毒风险的咨询提供参考。