Luo Gang, Nkoy Flory L, Gesteland Per H, Glasgow Tiffany S, Stone Bryan L
Department of Biomedical Informatics, University of Utah, Suite 140, 421 Wakara Way, Salt Lake City, UT 84108, USA.
Department of Pediatrics, University of Utah, 100 N Mario Capecchi Drive, Salt Lake City, UT 84113, USA.
Int J Med Inform. 2014 Oct;83(10):691-714. doi: 10.1016/j.ijmedinf.2014.07.005. Epub 2014 Jul 24.
Bronchiolitis is the most common cause of illness leading to hospitalization in young children. At present, many bronchiolitis management decisions are made subjectively, leading to significant practice variation among hospitals and physicians caring for children with bronchiolitis. To standardize care for bronchiolitis, researchers have proposed various models to predict the disease course to help determine a proper management plan. This paper reviews the existing state of the art of predictive modeling for bronchiolitis. Predictive modeling for respiratory syncytial virus (RSV) infection is covered whenever appropriate, as RSV accounts for about 70% of bronchiolitis cases.
A systematic review was conducted through a PubMed search up to April 25, 2014. The literature on predictive modeling for bronchiolitis was retrieved using a comprehensive search query, which was developed through an iterative process. Search results were limited to human subjects, the English language, and children (birth to 18 years).
The literature search returned 2312 references in total. After manual review, 168 of these references were determined to be relevant and are discussed in this paper. We identify several limitations and open problems in predictive modeling for bronchiolitis, and provide some preliminary thoughts on how to address them, with the hope to stimulate future research in this domain.
Many problems remain open in predictive modeling for bronchiolitis. Future studies will need to address them to achieve optimal predictive models.
细支气管炎是导致幼儿住院的最常见病因。目前,许多细支气管炎的治疗决策是主观做出的,这导致在治疗细支气管炎患儿的医院和医生之间存在显著的实践差异。为了规范细支气管炎的治疗,研究人员提出了各种模型来预测疾病进程,以帮助确定合适的治疗方案。本文综述了细支气管炎预测模型的现有技术水平。只要合适,就会涵盖呼吸道合胞病毒(RSV)感染的预测模型,因为RSV约占细支气管炎病例的70%。
通过截至2014年4月25日的PubMed搜索进行系统综述。使用通过迭代过程开发的综合搜索查询检索关于细支气管炎预测模型的文献。搜索结果限于人类受试者、英语和儿童(出生至18岁)。
文献检索总共返回2312条参考文献。经过人工筛选,确定其中168条参考文献相关,并在本文中进行讨论。我们识别出细支气管炎预测模型中的几个局限性和未解决的问题,并就如何解决这些问题提供了一些初步想法,希望能激发该领域未来的研究。
细支气管炎预测模型中仍存在许多未解决的问题。未来的研究需要解决这些问题,以实现最佳的预测模型。