316 Machine Learning to Predict Fluid Responsiveness in Hypotensive Children

Sarah B. Walker, Kyle Honegger, Michael S. Carroll, Debra E. Weese-Mayer, L. N. Sanchez-Pinto
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Abstract

OBJECTIVES/GOALS: Fluid boluses are administered to hypotensive, critically ill children but may not reverse hypotension, leading to delay of vasoactive infusion, end-organ damage, and mortality. We hypothesize that a machine learning-based model will predict which children will have sustained response to fluid bolus. METHODS/STUDY POPULATION: We will conduct a single-center retrospective observational cohort study of hypotensive critically ill children who received intravenous isotonic fluid of at least 10 ml/kg within 72 hours of pediatric intensive care unit admission between 2013 and 2023. We will extract physiologic variables from stored bedside monitors data and clinical variables from the EHR. Fluid responsive (FR) will be defined as a MAP increase by 310%. We will construct elastic net, random forest, and a long short-term memory models to predict FR. We will compare complicated course (multiple organ dysfunction on day 7 or death by day 28) between: 1) FRs and non-FRs, 2) predicted FRs and non-FRs, 3), FRs and non-FRs stratified by race/ethnicity, and 4) FRs and non-FRs stratified by sex as a biologic variable. RESULTS/ANTICIPATED RESULTS: We anticipate approximately 800 critically ill children will receive 2,000 intravenous isotonic fluid boluses, with a 60% rate of FR. We anticipate being able to complete all three models. We hypothesize that the model with the best performance will be the long short-term memory model and the easiest to interpret will be the tree-based random forest model. We hypothesize non-FRs will have a higher complicated course than FRs and that predicted non-FRs will have a higher rate of complicated course than FRs. Based on previous adult studies, we hypothesize that there will be a higher rate of complicated course in patients of black race and/or Hispanic ethnicity when compared to non-Hispanic white patients. We also hypothesize that there will be no difference in complicated course when comparing sex as a biologic variable. DISCUSSION/SIGNIFICANCE: We have a critical need for easily-deployed, real-time prediction of fluid response to personalize and improve resuscitation for children in shock. We anticipate the clinical application of such a model will decrease time with hypotension for critically ill children, leading to decreased morbidity and mortality.
316 通过机器学习预测低血压儿童对液体的反应性
目的/目标:为低血压危重症患儿注射液体栓,但可能无法逆转低血压,导致血管活性输注延迟、内脏器官损伤和死亡。我们假设,基于机器学习的模型可以预测哪些儿童会对补液产生持续反应。方法/研究对象:我们将开展一项单中心回顾性观察队列研究,研究对象是 2013 年至 2023 年期间在儿科重症监护病房入院 72 小时内接受至少 10 毫升/千克等渗液体静脉注射的低血压重症患儿。我们将从存储的床旁监护仪数据中提取生理变量,并从电子病历中提取临床变量。液体反应性 (FR) 将被定义为 MAP 增加 310%。我们将构建弹性网、随机森林和长短期记忆模型来预测 FR。我们将比较以下两种患者的复杂病程(第 7 天出现多器官功能障碍或第 28 天死亡):1)FR 患者和非 FR 患者:1)FRs 和非 FRs;2)预测 FRs 和非 FRs;3)按种族/族裔分层的 FRs 和非 FRs;4)按性别这一生物变量分层的 FRs 和非 FRs。结果/预期结果:我们预计约有 800 名重症患儿将接受 2000 次静脉等渗液体注射,FR 率为 60%。我们预计能够完成所有三种模型。我们假设性能最好的模型是长短期记忆模型,而最容易解释的模型是基于树的随机森林模型。我们假设非前沿记忆的复杂过程将高于前沿记忆,而预测的非前沿记忆的复杂过程率将高于前沿记忆。根据以往的成人研究,我们假设黑人和/或西班牙裔患者的复杂病程率将高于非西班牙裔白人患者。我们还假设,将性别作为生物变量进行比较时,复杂病程不会有差异。讨论/意义:我们急需一种易于使用的实时液体反应预测方法,以个性化和改善休克儿童的复苏。我们预计这种模型的临床应用将缩短重症儿童低血压的时间,从而降低发病率和死亡率。
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