AI Article Synopsis

  • The study indicates that ICU variables are poor predictors of long-term outcomes for patients with moderate to severe traumatic brain injury (msTBI), primarily correlating with mortality risk.
  • Researchers analyzed data from a large clinical trial using machine learning to develop predictive models for functional outcomes at 6 months post-injury, comparing these outcomes with mortality.
  • Findings show that commonly used ICU metrics did not effectively predict outcomes for survivors, creating a bias when assessing the combined outcome of mortality and severe disability.

Article Abstract

Background: The prognostication of long-term functional outcomes remains challenging in patients with traumatic brain injury (TBI). Our aim was to demonstrate that intensive care unit (ICU) variables are not efficient to predict 6-month functional outcome in survivors with moderate to severe TBI (msTBI) but are mostly associated with mortality, which leads to a mortality bias for models predicting a composite outcome of mortality and severe disability.

Methods: We analyzed the data from the multicenter randomized controlled Continuous Hyperosmolar Therapy in Traumatic Brain-Injured Patients trial and developed predictive models using machine learning methods and baseline characteristics and predictors collected during ICU stay. We compared our models' predictions of 6-month binary Glasgow Outcome Scale extended (GOS-E) score in all patients with msTBI (unfavorable GOS-E 1-4 vs. favorable GOS-E 5-8) with mortality (GOS-E 1 vs. GOS-E 2-8) and binary functional outcome in survivors with msTBI (severe disability GOS-E 2-4 vs. moderate to no disability GOS-E 5-8). We investigated the link between ICU variables and long-term functional outcomes in survivors with msTBI using predictive modeling and factor analysis of mixed data and validated our hypotheses on the International Mission for Prognosis and Analysis of Clinical Trials in TBI (IMPACT) model.

Results: Based on data from 370 patients with msTBI and classically used ICU variables, the prediction of the 6-month outcome in survivors was inefficient (mean area under the receiver operating characteristic 0.52). Using factor analysis of mixed data graph, we demonstrated that high-variance ICU variables were not associated with outcome in survivors with msTBI (p = 0.15 for dimension 1, p = 0.53 for dimension 2) but mostly with mortality (p < 0.001 for dimension 1), leading to a mortality bias for models predicting a composite outcome of mortality and severe disability. We finally identified this mortality bias in the IMPACT model.

Conclusions: We demonstrated using machine learning-based predictive models that classically used ICU variables are strongly associated with mortality but not with 6-month outcome in survivors with msTBI, leading to a mortality bias when predicting a composite outcome of mortality and severe disability.

Download full-text PDF

Source
http://dx.doi.org/10.1007/s12028-024-02082-3DOI Listing

Publication Analysis

Top Keywords

icu variables
16
outcome survivors
16
survivors mstbi
12
predictive models
8
moderate severe
8
traumatic brain
8
brain injury
8
long-term functional
8
functional outcomes
8
functional outcome
8

Similar Publications

Objectives: To evaluate the impact of Artificial Intelligence Assisted Prevention and Management for Delirium (AI-AntiDelirium) on improving adherence to delirium guidelines among nurses in the intensive care unit (ICU).

Research Methodology/design: Between November 2022 and June 2023, A cluster randomized controlled trial was undertaken.

Setting: A total of 38 nurses were enrolled in the interventional arm, whereas 42 nurses were recruited for the control arm in six ICUs across two hospitals in Beijing, comparing nurses' adherence and cognitive load in units that use AI-AntiDelirium or the control group.

View Article and Find Full Text PDF

Background: This study aims to identify the factors influencing the risk of lactic acidosis (LA) in patients with ischemic stroke (IS) and to develop a predictive model for assessing the risk of LA in IS patients during their stay in the intensive care unit (ICU).

Methods: A retrospective cohort design was employed, with data collected from the Medical Information Mart for Intensive Care (MIMIC)-III and MIMIC-IV databases spanning from 2001 to 2019. LA was defined as pH < 7.

View Article and Find Full Text PDF

Outcomes of internal rib fixation through complete video-assisted thoracoscopic surgery for multiple rib fractures and flail chest in severe chest trauma.

Eur J Trauma Emerg Surg

January 2025

Department of Thoracic Surgery, Zhangjiagang Third People's Hospital, Renmin Middle No. 8 Road, Zhangjiagang, 215600, People's Republic of China.

Background: Surgical stabilization of rib fractures (SSRF) is a standard treatment for multiple rib fractures and flail chest. The aim of this study is to evaluate the outcomes of internal rib fixation through complete video-assisted thoracoscopic surgery (VATS) for multiple rib fractures and flail chest in patients with severe chest trauma.

Methods: Thirty-nine patients with multiple rib fractures caused by severe chest trauma were divided into two groups according to the surgical approach used.

View Article and Find Full Text PDF

Machine Learning Approach for Sepsis Risk Assessment in Ischemic Stroke Patients.

J Intensive Care Med

January 2025

Department of Pediatrics and Adolescent Gynecology, Children's Hospital, Zhejiang University School of Medicine, National Clinical Research Center for Child Health, Hangzhou, China.

Background: Ischemic stroke is a critical neurological condition, with infection representing a significant aspect of its clinical management. Sepsis, a life-threatening organ dysfunction resulting from infection, is among the most dangerous complications in the intensive care unit (ICU). Currently, no model exists to predict the onset of sepsis in ischemic stroke patients.

View Article and Find Full Text PDF

Objective: Knowledge of intensive care unit (ICU) acquired hypernatremia (ICU-AH) has been hampered by the absence of granular data and confounded by variable definitions and inclusion criteria.

Design: Multicentre retrospective cohort study.

Setting: Twelve ICUs in Queensland (QLD), Australia.

View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!