Suppr超能文献

存在协变量缺失的分层常规数据的分析:审核与反馈对肯尼亚医院临床医生开具的小儿肺炎护理的影响

Analysis of Hierarchical Routine Data With Covariate Missingness: Effects of Audit & Feedback on Clinicians' Prescribed Pediatric Pneumonia Care in Kenyan Hospitals.

作者信息

Gachau Susan, Owuor Nelson, Njagi Edmund Njeru, Ayieko Philip, English Mike

机构信息

Health Services Unit, Kenya Medical Research Institute-Wellcome Trust Research Programme, Nairobi, Kenya.

School of Mathematics, University of Nairobi, Nairobi, Kenya.

出版信息

Front Public Health. 2019 Jul 16;7:198. doi: 10.3389/fpubh.2019.00198. eCollection 2019.

Abstract

Routine clinical data are widely used in many countries to monitor quality of care. A limitation of routine data is missing information which occurs due to lack of documentation of care processes by health care providers, poor record keeping, or limited health care technology at facility level. Our objective was to address missing covariates while properly accounting for hierarchical structure in routine pediatric pneumonia care. We analyzed routine data collected during a cluster randomized trial to investigating the effect of audit and feedback (A&F) over time on inpatient pneumonia care among children admitted in 12 Kenyan hospitals between March and November 2016. Six hospitals in the intervention arm received enhance A&F on classification and treatment of pneumonia cases in addition to a standard A&F report on general inpatient pediatric care. The remaining six in control arm received standard A&F alone. We derived and analyzed a composite outcome known as Pediatric Admission Quality of Care (PAQC) score. In our analysis, we adjusted for patients, clinician and hospital level factors. Missing data occurred in patient and clinician level variables. We did multiple imputation of missing covariates within the joint model imputation framework. We fitted proportion odds random effects model and generalized estimating equation (GEE) models to the data before and after multilevel multiple imputation. Overall, 2,299 children aged 2 to 59 months were admitted with childhood pneumonia in 12 hospitals during the trial period. 2,127 (92%) of the children (level 1) were admitted by 378 clinicians across the 12 hospitals. Enhanced A&F led to improved inpatient pediatric pneumonia care over time compared to standard A&F. Female clinicians and hospitals with low admission workload were associated with higher uptake of the new pneumonia guidelines during the trial period. In both random effects and marginal model, parameter estimates were biased and inefficient under complete case analysis. Enhanced A&F improved the uptake of WHO recommended pediatric pneumonia guidelines over time compared to standard audit and feedback. When imputing missing data, it is important to account for the hierarchical structure to ensure compatibility with analysis models of interest to alleviate bias.

摘要

在许多国家,常规临床数据被广泛用于监测医疗质量。常规数据的一个局限性是存在信息缺失,这是由于医疗服务提供者对护理过程记录不足、记录保存不善或医疗机构层面的医疗技术有限所致。我们的目标是解决协变量缺失问题,同时在常规儿科肺炎护理中妥善考虑层次结构。我们分析了在一项整群随机试验中收集的常规数据,以调查2016年3月至11月期间在12家肯尼亚医院住院的儿童中,随着时间推移审核与反馈(A&F)对住院肺炎护理的影响。干预组的6家医院除了收到一份关于普通儿科住院护理的标准A&F报告外,还收到了关于肺炎病例分类和治疗的强化A&F。对照组的其余6家医院仅收到标准A&F。我们得出并分析了一个称为儿科入院护理质量(PAQC)评分的综合结果。在我们的分析中,我们对患者、临床医生和医院层面的因素进行了调整。患者和临床医生层面的变量存在缺失数据。我们在联合模型插补框架内对缺失的协变量进行了多次插补。我们在多级多次插补前后对数据拟合了比例优势随机效应模型和广义估计方程(GEE)模型。总体而言,在试验期间,12家医院中有2299名2至59个月大的儿童因儿童肺炎入院。12家医院的378名临床医生收治了2127名(92%)儿童(第1级)。与标准A&F相比,强化A&F随着时间推移改善了住院儿科肺炎护理。在试验期间,女性临床医生和入院工作量低的医院与新肺炎指南的更高采用率相关。在完全病例分析中,无论是随机效应模型还是边际模型,参数估计都存在偏差且效率低下。与标准审核与反馈相比,强化A&F随着时间推移提高了世界卫生组织推荐的儿科肺炎指南的采用率。在插补缺失数据时,考虑层次结构以确保与感兴趣的分析模型兼容以减轻偏差很重要。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2f5c/6646705/cb94f1ae422c/fpubh-07-00198-g0001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验