使用机器学习算法推导和验证肯尼亚儿科患者长期腹泻的临床预测模型。

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS
Billy Ogwel, Vincent H Mzazi, Alex O Awuor, Caleb Okonji, Raphael O Anyango, Caren Oreso, John B Ochieng, Stephen Munga, Dilruba Nasrin, Kirkby D Tickell, Patricia B Pavlinac, Karen L Kotloff, Richard Omore
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引用次数: 0

摘要

背景:尽管与持续时间较长的腹泻(LDD)相关的不良健康结果,目前还没有临床决策工具来及时识别和更好地管理风险增加的儿童。本研究利用机器学习(ML)推导并验证了在卫生机构就诊的腹泻儿童中LDD的预测模型。方法:LDD定义为持续≥7天的腹泻发作。我们使用7 ML算法建立预测儿童LDD的预后模型结果:发育组和时间验证组之间LDD患病率有显著差异(478 [32.3%]vs 69 [10.1%];结论:我们的研究表明,ML衍生算法可用于快速识别LDD风险增加的儿童。将ML衍生模型整合到临床决策中可以使临床医生更密切地观察和加强管理这些儿童。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Derivation and validation of a clinical predictive model for longer duration diarrhea among pediatric patients in Kenya using machine learning algorithms.

Background: Despite the adverse health outcomes associated with longer duration diarrhea (LDD), there are currently no clinical decision tools for timely identification and better management of children with increased risk. This study utilizes machine learning (ML) to derive and validate a predictive model for LDD among children presenting with diarrhea to health facilities.

Methods: LDD was defined as a diarrhea episode lasting ≥ 7 days. We used 7 ML algorithms to build prognostic models for the prediction of LDD among children < 5 years using de-identified data from Vaccine Impact on Diarrhea in Africa study (N = 1,482) in model development and data from Enterics for Global Health Shigella study (N = 682) in temporal validation of the champion model. Features included demographic, medical history and clinical examination data collected at enrolment in both studies. We conducted split-sampling and employed K-fold cross-validation with over-sampling technique in the model development. Moreover, critical predictors of LDD and their impact on prediction were obtained using an explainable model agnostic approach. The champion model was determined based on the area under the curve (AUC) metric. Model calibrations were assessed using Brier, Spiegelhalter's z-test and its accompanying p-value.

Results: There was a significant difference in prevalence of LDD between the development and temporal validation cohorts (478 [32.3%] vs 69 [10.1%]; p < 0.001). The following variables were associated with LDD in decreasing order: pre-enrolment diarrhea days (55.1%), modified Vesikari score(18.2%), age group (10.7%), vomit days (8.8%), respiratory rate (6.5%), vomiting (6.4%), vomit frequency (6.2%), rotavirus vaccination (6.1%), skin pinch (2.4%) and stool frequency (2.4%). While all models showed good prediction capability, the random forest model achieved the best performance (AUC [95% Confidence Interval]: 83.0 [78.6-87.5] and 71.0 [62.5-79.4]) on the development and temporal validation datasets, respectively. While the random forest model showed slight deviations from perfect calibration, these deviations were not statistically significant (Brier score = 0.17, Spiegelhalter p-value = 0.219).

Conclusions: Our study suggests ML derived algorithms could be used to rapidly identify children at increased risk of LDD. Integrating ML derived models into clinical decision-making may allow clinicians to target these children with closer observation and enhanced management.

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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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