Literature DB >> 28498299

Machine Learning for Predicting Outcomes in Trauma.

Nehemiah T Liu1, Jose Salinas.   

Abstract

To date, there are no reviews on machine learning (ML) for predicting outcomes in trauma. Consequently, it remains unclear as to how ML-based prediction models compare in the triage and assessment of trauma patients. The objective of this review was to survey and identify studies involving ML for predicting outcomes in trauma, with the hypothesis that models predicting similar outcomes may share common features but the performance of ML in these studies will differ greatly. MEDLINE and other databases were searched for studies involving trauma and ML. Sixty-five observational studies involving ML for the prediction of trauma outcomes met inclusion criteria. In total 2,433,180 patients were included in the studies. The studies focused on prediction of the following outcome measures: survival/mortality (n = 34), morbidity/shock/hemorrhage (n = 12), hospital length of stay (n = 7), hospital admission/triage (n = 6), traumatic brain injury (n = 4), life-saving interventions (n = 5), post-traumatic stress disorder (n = 4), and transfusion (n = 1). Six studies were prospective observational studies. Of the 65 studies, 33 used artificial neural networks for prediction. Importantly, most studies demonstrated the benefits of ML models. However, algorithm performance was assessed differently by different authors. Sensitivity-specificity gap values varied greatly from 0.035 to 0.927. Notably, studies shared many features for model development. A common ML feature base may be determined for predicting outcomes in trauma. However, the impact of ML will require further validation in prospective observational studies and randomized clinical trials, establishment of common performance criteria, and high-quality evidence about clinical and economic impacts before ML can be widely accepted in practice.

Entities:  

Mesh:

Year:  2017        PMID: 28498299     DOI: 10.1097/SHK.0000000000000898

Source DB:  PubMed          Journal:  Shock        ISSN: 1073-2322            Impact factor:   3.454


  23 in total

1.  Identifying intentional injuries among children and adolescents based on Machine Learning.

Authors:  Xiling Yin; Dan Ma; Kejing Zhu; Deyun Li
Journal:  PLoS One       Date:  2021-01-20       Impact factor: 3.240

2.  Electronic health record machine learning model predicts trauma inpatient mortality in real time: A validation study.

Authors:  Zongyang Mou; Laura N Godat; Robert El-Kareh; Allison E Berndtson; Jay J Doucet; Todd W Costantini
Journal:  J Trauma Acute Care Surg       Date:  2022-01-01       Impact factor: 3.697

3.  Machine Learning Can be Used to Predict Function but Not Pain After Surgery for Thumb Carpometacarpal Osteoarthritis.

Authors:  Nina L Loos; Lisa Hoogendam; J Sebastiaan Souer; Harm P Slijper; Eleni-Rosalina Andrinopoulou; Michel W Coppieters; Ruud W Selles
Journal:  Clin Orthop Relat Res       Date:  2022-01-18       Impact factor: 4.755

4.  Use of machine-learning algorithms to determine features of systolic blood pressure variability that predict poor outcomes in hypertensive patients.

Authors:  Ronilda C Lacson; Bowen Baker; Harini Suresh; Katherine Andriole; Peter Szolovits; Eduardo Lacson
Journal:  Clin Kidney J       Date:  2018-07-03

5.  Cytokines and Chemokines in Pediatric Appendicitis: A Multiplex Analysis of Inflammatory Protein Mediators.

Authors:  S Ali Naqvi; Graham C Thompson; Ari R Joffe; Jaime Blackwood; Dori-Ann Martin; Mary Brindle; Herman W Barkema; Craig N Jenne
Journal:  Mediators Inflamm       Date:  2019-02-21       Impact factor: 4.711

6.  A Machine Learning Prediction Model of Respiratory Failure Within 48 Hours of Patient Admission for COVID-19: Model Development and Validation.

Authors:  Douglas Barnaby; Theodoros P Zanos; Siavash Bolourani; Max Brenner; Ping Wang; Thomas McGinn; Jamie S Hirsch
Journal:  J Med Internet Res       Date:  2021-02-10       Impact factor: 5.428

7.  Do clinical and paraclinical findings have the power to predict critical conditions of injured patients after traumatic injury resuscitation? Using data mining artificial intelligence.

Authors:  Shahram Paydar; Elahe Parva; Zahra Ghahramani; Saeedeh Pourahmad; Leila Shayan; Vahid Mohammadkarimi; Golnar Sabetian
Journal:  Chin J Traumatol       Date:  2020-11-24

8.  Validation of a Visual-Based Analytics Tool for Outcome Prediction in Polytrauma Patients (WATSON Trauma Pathway Explorer) and Comparison with the Predictive Values of TRISS.

Authors:  Cédric Niggli; Hans-Christoph Pape; Philipp Niggli; Ladislav Mica
Journal:  J Clin Med       Date:  2021-05-14       Impact factor: 4.241

9.  Using the National Trauma Data Bank (NTDB) and machine learning to predict trauma patient mortality at admission.

Authors:  Evan J Tsiklidis; Carrie Sims; Talid Sinno; Scott L Diamond
Journal:  PLoS One       Date:  2020-11-17       Impact factor: 3.240

10.  Is Artificial Intelligence Better Than Human Clinicians in Predicting Patient Outcomes?

Authors:  Joon Lee
Journal:  J Med Internet Res       Date:  2020-08-26       Impact factor: 5.428

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