Jove
Visualize
联系我们
JoVE
x logofacebook logolinkedin logoyoutube logo
关于 JoVE
概览领导团队博客JoVE 帮助中心
作者
出版流程编辑委员会范围与政策同行评审常见问题投稿
图书馆员
用户评价订阅访问资源图书馆顾问委员会常见问题
研究
JoVE JournalMethods CollectionsJoVE Encyclopedia of Experiments存档
教育
JoVE CoreJoVE BusinessJoVE Science EducationJoVE Lab Manual教师资源中心教师网站
使用条款与条件
隐私政策
政策

相关概念视频

Traumatic Brain Injury l: Introduction01:28

Traumatic Brain Injury l: Introduction

39
DefinitionTraumatic brain injury, or TBI, is a disturbance of normal brain function induced by an external mechanical force, such as a direct blow to the head or a penetrating injury. It can affect both brain structure and function, producing a wide range of clinical outcomes. TBI is a heterogeneous condition, meaning its effects may differ based on the type, location, and severity of the injury.Basis of ClassificationTBI is classified based on severity, injury mechanism, or pathophysiology. In...
39

您也可能阅读

相关文章

通过共同作者、期刊和引用图与本文相关的文章。

排序
Same author

Prompt-Sensitive Decision Behavior of Large Language Models in Intensive Care Unit Mortality Prediction for Spontaneous Intracerebral Hemorrhage: Comparative Benchmarking Study.

Journal of medical Internet research·2026
Same author

Pre-injury hypercholesterolemia is associated with microbiota-associated neurobehavioral vulnerability following traumatic brain injury.

Brain, behavior, and immunity·2026
Same author

Systemic inflammation and dorsolateral striatal activity converge to drive repetitive and compulsive-like behaviors caused by chronic stress.

Brain, behavior, and immunity·2026
Same author

Correction to: Developing a high-performance AI model for spontaneous intracerebral hemorrhage mortality prediction using machine learning in ICU settings.

BMC medical informatics and decision making·2026
Same author

Predicting emergency mortality risk in traumatic brain injury: comparative analysis of machine learning and large language model GPT-5.

International journal of medical informatics·2026
Same author

Detecting Laterality Errors in Combined Radiographic Studies by Enhancing the Traditional Approach With GPT-4o: Algorithm Development and Multisite Internal Validation.

JMIR formative research·2025

相关实验视频

Updated: May 6, 2026

Automated Midline Shift and Intracranial Pressure Estimation based on Brain CT Images
14:08

Automated Midline Shift and Intracranial Pressure Estimation based on Brain CT Images

Published on: April 13, 2013

42.5K

用机器学习对创伤性脑损伤患者的长期护理需求进行预测建模.

Tee-Tau Eric Nyam1,2, Kuan-Chi Tu1, Nai-Ching Chen3

  • 1Department of Neurosurgery, Chi Mei Medical Center, Tainan 711, Taiwan.

Diagnostics (Basel, Switzerland)
|January 11, 2025
PubMed
概括

预测创伤性脑损伤 (TBI) 患者的长期护理需求至关重要. 机器学习模型,特别是随机森林模型,可以有效地预测TBI患者的预后,以便更好地分配资源.

关键词:
随机的森林 随机的森林在SHAP分析中,我们分析了SHAP.长期护理 长期护理机器学习模型机器学习模型预测分析 预测分析创伤性脑损伤是一种创伤性脑损伤

更多相关视频

Controlled Cortical Impact Model for Traumatic Brain Injury
05:30

Controlled Cortical Impact Model for Traumatic Brain Injury

Published on: August 5, 2014

28.5K
Systems Analysis of the Neuroinflammatory and Hemodynamic Response to Traumatic Brain Injury
07:21

Systems Analysis of the Neuroinflammatory and Hemodynamic Response to Traumatic Brain Injury

Published on: May 27, 2022

3.1K

相关实验视频

Last Updated: May 6, 2026

Automated Midline Shift and Intracranial Pressure Estimation based on Brain CT Images
14:08

Automated Midline Shift and Intracranial Pressure Estimation based on Brain CT Images

Published on: April 13, 2013

42.5K
Controlled Cortical Impact Model for Traumatic Brain Injury
05:30

Controlled Cortical Impact Model for Traumatic Brain Injury

Published on: August 5, 2014

28.5K
Systems Analysis of the Neuroinflammatory and Hemodynamic Response to Traumatic Brain Injury
07:21

Systems Analysis of the Neuroinflammatory and Hemodynamic Response to Traumatic Brain Injury

Published on: May 27, 2022

3.1K

科学领域:

  • 神经学 神经学
  • 医疗信息学 医疗信息学
  • 医疗保健中的机器学习

背景情况:

  • 创伤性脑损伤 (TBI) 研究往往忽视了长期护理需求.
  • 需要机构或呼吸护理病房 (RCW) 支持的TBI后患者是一个关键的,研究不足的群体.

研究的目的:

  • 开发和验证机器学习模型,用于预测TBI患者的长期护理预后.
  • 为了解决对TBI幸存者的长期护理要求的理解差距.

主要方法:

  • 对2020年TBI患者电子病历的回顾性分析.
  • 利用了44个功能和四个机器学习模型 (XGBoost,随机森林,LightGBM).
  • 使用AUC-ROC,DeLong测试和SHAP分析评估预测性能.

主要成果:

  • 236名患者 (11.68%) 转移到长期护理.
  • XGBoost (27个特征) 实现了最高的AUC (0.823),其次是随机森林 (11个特征,AUC 0.817).
  • SHAP分析证实了顶级模型中特征重要性的一致性.

结论:

  • 随机森林具有11个特征,提供长期护理需求的临床有意义的预测.
  • 该模型有助于为TBI患者提供机构和RCW资源的积极规划.