Improving Pediatric Trauma Triage Using High Dimensional Data Analysis
使用高维数据分析改进儿科创伤分诊
基本信息
- 批准号:8292070
- 负责人:
- 金额:$ 23.28万
- 依托单位:
- 依托单位国家:美国
- 项目类别:
- 财政年份:2010
- 资助国家:美国
- 起止时间:2010-07-15 至 2015-06-30
- 项目状态:已结题
- 来源:
- 关键词:Accident and Emergency departmentAccountingAdolescentAffectAgeAnatomic SitesCaringCessation of lifeCharacteristicsChildChildhoodClassificationComplexDataData AnalysesData SetDatabasesGoalsHospitalsIndividualInfantInjuryLeadMethodsModelingMorbidity - disease rateOutcomePatientsPerformancePhysiologicalProbabilityRegression AnalysisResourcesRiskSample SizeSeveritiesSystemTestingTimeTraumaTriageVehicle crashbaseclinical practicecostdata acquisitionimprovedinjuredinnovationmortalitynovelnovel strategiespediatric traumapreclinical studypredictive modelingpublic health relevanceresponseresponse to injurytrauma caretrauma centers
项目摘要
DESCRIPTION (provided by applicant): Severely injured children achieve the best outcomes when treated at centers that provide specialized pediatric trauma care. Assessing the need for high-level trauma care is a complex classification problem that is affected by a very large number of potentially interacting factors (high-dimensional data), including age, mechanism of injury, known or suspected injuries and the physiological responses to injury. Despite this known complexity, approaches to pediatric trauma triage have been based on expert-derived rules, partly because of challenge of data acquisition in a prehospital setting. New approaches to data acquisition, however, are being rapidly introduced that allow access to increasing amounts of data at the injury scene and during transport, replacing the challenge of data capture with that of managing large numbers of explanatory variables. The overall goal of this project is to develop a triage system that increases the likelihood that injured children are treated at hospitals with the capability of optimizing outcome after injury. The purpose of this proposal is to develop more accurate methods for predicting the outcome and resource needs of injured children based on data available in prehospital and emergency department settings. We hypothesize that the relationship between observable prehospital and early hospital features (patient characteristics, physiologic status, anatomic sites of injury, mechanism of injury and prehospital treatments) and the need for and level of care required for injured children is highly complex, requiring approaches for modeling high-dimensional data to achieve accurate prediction. This hypothesis will be tested in two aims: 1. compare the impact of low- and high-dimensional data on the performance of models predicting time-dependent outcomes and resource utilization after pediatric injury; 2. build high-dimensional multivariate probability models that predict outcomes after pediatric injury using data from individual injury datasets and integrated data from heterogeneous injury datasets. The hypothesis to be tested under Aim 1 is that prediction of time-dependent outcomes and resource utilization after pediatric injury will be improved by modeling high-dimensional data. Aim 1 will be pursued using data obtained from two national trauma databases to develop and compare models based on low- and high-dimensional data. This aim will require extending our innovative approach to high-dimensional regression analysis to handle time- dependent response variables and competing risks. The hypothesis to be tested under Aim 2 is that prediction of outcomes after pediatric injury will be improved using integrated data obtained from heterogeneous injury datasets. Aim 2 will be pursued using a motor vehicle crash dataset and a trauma database to develop multivariate probability models based on data from each dataset and integrated data from both datasets. This aim will require developing novel approaches for building Bayesian graphical models from distributed high- dimensional data. This proposal will bridge gaps in our understanding of the impact of domain complexity on the accuracy of prediction in prehospital and emergency department settings.
PUBLIC HEALTH RELEVANCE: Severely injured children achieve the best outcomes when treated at hospitals that provide specialized pediatric trauma care. Determining the need for high-level pediatric trauma care is a complex classification problem that is influenced by a very large number of potentially interacting factors, including age, mechanism of injury, known or suspected injuries and the physiological responses to injury. In this proposal, novel statistical approaches that account for this complexity will be developed for more accurately predicting the need for high-level pediatric trauma care among injured children.
描述(由申请人提供):严重受伤的儿童在提供专业儿科创伤护理的中心接受治疗时,效果最好。评估对高水平创伤护理的需求是一个复杂的分类问题,受到大量潜在相互作用因素(高维数据)的影响,包括年龄、损伤机制、已知或疑似损伤以及对损伤的生理反应。尽管有这种已知的复杂性,儿科创伤分诊的方法一直是基于专家得出的规则,部分原因是在院前设置的数据采集的挑战。然而,新的数据采集方法正在迅速引入,允许在受伤现场和运输过程中访问越来越多的数据,用管理大量解释变量的挑战取代数据采集的挑战。该项目的总体目标是开发一个分诊系统,增加受伤儿童在医院接受治疗的可能性,并有能力优化受伤后的结果。本提案的目的是根据院前和急诊科的现有数据,制定更准确的方法来预测受伤儿童的结局和资源需求。我们假设,可观察到的院前和早期住院特征(患者特征,生理状态,损伤的解剖部位,损伤机制和院前治疗)和受伤儿童所需的护理需求和水平之间的关系非常复杂,需要对高维数据进行建模以实现准确的预测。这一假设将在两个目标进行测试:1。比较低维和高维数据对预测儿科损伤后时间依赖性结局和资源利用的模型性能的影响; 2.建立高维多变量概率模型,使用来自个体损伤数据集的数据和来自异质损伤数据集的综合数据预测儿科损伤后的结果。在目标1下待检验的假设是,通过对高维数据建模,将改善对儿科损伤后时间依赖性结局和资源利用的预测。目标1将使用从两个国家创伤数据库获得的数据来开发和比较基于低维和高维数据的模型。这一目标将需要将我们的创新方法扩展到高维回归分析,以处理时间依赖的响应变量和竞争风险。目标2下待检验的假设是,使用从异质损伤数据集获得的综合数据,将改善儿科损伤后结局的预测。目标2将使用机动车碰撞数据集和创伤数据库,根据每个数据集的数据和两个数据集的综合数据,开发多变量概率模型。这一目标将需要开发新的方法来建立贝叶斯图形模型从分布式高维数据。这个建议将弥合差距,在我们的理解领域的复杂性的影响,预测在院前和急诊室设置的准确性。
公共卫生相关性:严重受伤的儿童在提供专业儿科创伤护理的医院接受治疗时,效果最好。确定是否需要高水平的儿科创伤护理是一个复杂的分类问题,受到大量潜在相互作用因素的影响,包括年龄、损伤机制、已知或疑似损伤以及对损伤的生理反应。在这项提案中,将开发新的统计方法,解释这种复杂性,以更准确地预测受伤儿童对高水平儿科创伤护理的需求。
项目成果
期刊论文数量(5)
专著数量(0)
科研奖励数量(0)
会议论文数量(0)
专利数量(0)
Reassessing mechanism as a predictor of pediatric injury mortality.
重新评估作为儿科伤害死亡率预测因子的机制。
- DOI:10.1016/j.jss.2015.06.043
- 发表时间:2015
- 期刊:
- 影响因子:0
- 作者:Beck,HaleyE;Mittal,Sushil;Madigan,David;Burd,RandallS
- 通讯作者:Burd,RandallS
Large-scale parametric survival analysis.
- DOI:10.1002/sim.5817
- 发表时间:2013-10-15
- 期刊:
- 影响因子:2
- 作者:Mittal, Sushil;Madigan, David;Cheng, Jerry Q.;Burd, Randall S.
- 通讯作者:Burd, Randall S.
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RANDALL S. BURD其他文献
RANDALL S. BURD的其他文献
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