儿科人群感染性腹泻疾病的预测模型:一项系统综述

IF 2.6 Q2 HEALTH POLICY & SERVICES Learning Health Systems Pub Date : 2023-07-29 DOI:10.1002/lrh2.10382
Billy Ogwel, Vincent Mzazi, Bryan O. Nyawanda, Gabriel Otieno, Richard Omore
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引用次数: 0

摘要

导言 腹泻仍然是一个重大的全球公共卫生问题。目前还没有对预测腹泻疾病结果的建模领域和方法进行系统评估。本文回顾了现有的儿科感染性腹泻疾病预测建模研究工作。 方法 我们通过 PubMed 搜索对 1990-2021 年间的研究进行了系统性回顾。通过迭代过程开发了一个综合搜索查询,并检索了有关腹泻预测模型的文献。搜索结果采用了以下筛选条件:以人为研究对象、英语和儿童(出生至 18 岁)。我们对收录的文献进行了叙述性综述。 结果 我们的文献检索共检索到 2671 篇文章。经过人工评估,其中 38 篇文章被纳入本综述。这些研究中最常见的研究主题是疾病预测 14 篇(36.8%)、疫苗相关预测 9 篇(23.7%)和疾病/病原体检测 5 篇(13.2%)。这些研究大多发表于 2011 年至 2020 年之间,共 28 项(73.7%)。建模中最常用的技术是机器学习,有 12 项(31.6%),预测任务中使用了各种算法。轮状病毒疫苗问世后,腹泻病因学的格局发生了变化,在病原体特异性预测模型方面仍有许多开放领域(疾病预测、疾病检测和菌株动态),这些领域已成为重要的病因。此外,腹泻疾病的结果仍有待研究。我们还注意到,尽管有相关指南,但预测模型结果的报告缺乏一致性,这突出表明需要制定共同的数据标准,并遵守生物医学研究预测模型报告指南。 结论 我们的综述发现了腹泻疾病预测模型方面的知识差距和机遇,以及现有尝试的局限性,同时就如何解决这些问题提出了一些初步想法,旨在为该领域未来的研究工作注入活力。
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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Predictive modeling for infectious diarrheal disease in pediatric populations: A systematic review

Introduction

Diarrhea is still a significant global public health problem. There are currently no systematic evaluation of the modeling areas and approaches to predict diarrheal illness outcomes. This paper reviews existing research efforts in predictive modeling of infectious diarrheal illness in pediatric populations.

Methods

We conducted a systematic review via a PubMed search for the period 1990–2021. A comprehensive search query was developed through an iterative process and literature on predictive modeling of diarrhea was retrieved. The following filters were applied to the search results: human subjects, English language, and children (birth to 18 years). We carried out a narrative synthesis of the included publications.

Results

Our literature search returned 2671 articles. After manual evaluation, 38 of these articles were included in this review. The most common research topic among the studies were disease forecasts 14 (36.8%), vaccine-related predictions 9 (23.7%), and disease/pathogen detection 5 (13.2%). Majority of these studies were published between 2011 and 2020, 28 (73.7%). The most common technique used in the modeling was machine learning 12 (31.6%) with various algorithms used for the prediction tasks. With change in the landscape of diarrheal etiology after rotavirus vaccine introduction, many open areas (disease forecasts, disease detection, and strain dynamics) remain for pathogen-specific predictive models among etiological agents that have emerged as important. Additionally, the outcomes of diarrheal illness remain under researched. We also observed lack of consistency in the reporting of results of prediction models despite the available guidelines highlighting the need for common data standards and adherence to guidelines on reporting of predictive models for biomedical research.

Conclusions

Our review identified knowledge gaps and opportunities in predictive modeling for diarrheal illness, and limitations in existing attempts whilst advancing some precursory thoughts on how to address them, aiming to invigorate future research efforts in this sphere.

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来源期刊
Learning Health Systems
Learning Health Systems HEALTH POLICY & SERVICES-
CiteScore
5.60
自引率
22.60%
发文量
55
审稿时长
20 weeks
期刊最新文献
Issue Information Envisioning public health as a learning health system Thanks to our peer reviewers Learning health systems to implement chronic disease prevention programs: A novel framework and perspectives from an Australian health service The translation-to-policy learning cycle to improve public health
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