Development and validation of a machine learning algorithm and hybrid system to predict the need for life-saving interventions in trauma patients

被引:0
作者
Nehemiah T. Liu
John B. Holcomb
Charles E. Wade
Andriy I. Batchinsky
Leopoldo C. Cancio
Mark I. Darrah
José Salinas
机构
[1] US Army Institute of Surgical Research,Department of Surgery, Center for Translational Injury Research
[2] University of Texas Health Science Center at Houston,undefined
[3] Athena GTX,undefined
[4] Inc.,undefined
来源
Medical & Biological Engineering & Computing | 2014年 / 52卷
关键词
Machine learning; Artificial intelligence; Clinical decision support systems; Life-saving interventions; Trauma;
D O I
暂无
中图分类号
学科分类号
摘要
Accurate and effective diagnosis of actual injury severity can be problematic in trauma patients. Inherent physiologic compensatory mechanisms may prevent accurate diagnosis and mask true severity in many circumstances. The objective of this project was the development and validation of a multiparameter machine learning algorithm and system capable of predicting the need for life-saving interventions (LSIs) in trauma patients. Statistics based on means, slopes, and maxima of various vital sign measurements corresponding to 79 trauma patient records generated over 110,000 feature sets, which were used to develop, train, and implement the system. Comparisons among several machine learning models proved that a multilayer perceptron would best implement the algorithm in a hybrid system consisting of a machine learning component and basic detection rules. Additionally, 295,994 feature sets from 82 h of trauma patient data showed that the system can obtain 89.8 % accuracy within 5 min of recorded LSIs. Use of machine learning technologies combined with basic detection rules provides a potential approach for accurately assessing the need for LSIs in trauma patients. The performance of this system demonstrates that machine learning technology can be implemented in a real-time fashion and potentially used in a critical care environment.
引用
收藏
页码:193 / 203
页数:10
相关论文
共 51 条
  • [1] Batchinsky AI(2009)Predicting the need to perform life-saving interventions in trauma patients using new vital signs and artificial neural networks Lect Notes Comput Sc 5651 390-394
  • [2] Salinas J(1990)The trauma triage rule: a new, resource-based approach to the prehospital identification of major trauma victims Ann Emerg Med 19 1401-1406
  • [3] Jones JA(2005)A (very) brief history of artificial intelligence AI Magazine 26 53-60
  • [4] Necsoiu C(2009)Exploration of prehospital vital sign trends for the prediction of trauma outcomes Prehosp Emerg Care 13 286-294
  • [5] Cancio LC(2001)Comparative analysis of multiple-casualty incident triage algorithms Ann Emerg Med 38 541-548
  • [6] Baxt WG(2009)The WEKA data mining software: an update SIGKDD Explor 11 10-18
  • [7] Jones G(2005)Manual vital signs reliably predict need for life-saving interventions in trauma patients J Trauma 59 821-829
  • [8] Fortlage D(2008)Cardiorespiratory instability before and after implementing an integrated monitoring system Crit Care Med 177 A842-1308
  • [9] Buchanan BG(2008)Defining the incidence of cardio-respiratory instability in step-down unit patients using an electronic integrated monitoring system Arch Intern Med 168 1300-17
  • [10] Chen L(2009)The coming of age of artificial intelligence in medicine Artif Intell Med 46 5-68