Literature DB >> 24060439

Prediction of thoracic injury severity in frontal impacts by selected anatomical morphomic variables through model-averaged logistic regression approach.

Peng Zhang1, Chantal Parenteau, Lu Wang, Sven Holcombe, Carla Kohoyda-Inglis, June Sullivan, Stewart Wang.   

Abstract

This study resulted in a model-averaging methodology that predicts crash injury risk using vehicle, demographic, and morphomic variables and assesses the importance of individual predictors. The effectiveness of this methodology was illustrated through analysis of occupant chest injuries in frontal vehicle crashes. The crash data were obtained from the International Center for Automotive Medicine (ICAM) database for calendar year 1996 to 2012. The morphomic data are quantitative measurements of variations in human body 3-dimensional anatomy. Morphomics are obtained from imaging records. In this study, morphomics were obtained from chest, abdomen, and spine CT using novel patented algorithms. A NASS-trained crash investigator with over thirty years of experience collected the in-depth crash data. There were 226 cases available with occupants involved in frontal crashes and morphomic measurements. Only cases with complete recorded data were retained for statistical analysis. Logistic regression models were fitted using all possible configurations of vehicle, demographic, and morphomic variables. Different models were ranked by the Akaike Information Criteria (AIC). An averaged logistic regression model approach was used due to the limited sample size relative to the number of variables. This approach is helpful when addressing variable selection, building prediction models, and assessing the importance of individual variables. The final predictive results were developed using this approach, based on the top 100 models in the AIC ranking. Model-averaging minimized model uncertainty, decreased the overall prediction variance, and provided an approach to evaluating the importance of individual variables. There were 17 variables investigated: four vehicle, four demographic, and nine morphomic. More than 130,000 logistic models were investigated in total. The models were characterized into four scenarios to assess individual variable contribution to injury risk. Scenario 1 used vehicle variables; Scenario 2, vehicle and demographic variables; Scenario 3, vehicle and morphomic variables; and Scenario 4 used all variables. AIC was used to rank the models and to address over-fitting. In each scenario, the results based on the top three models and the averages of the top 100 models were presented. The AIC and the area under the receiver operating characteristic curve (AUC) were reported in each model. The models were re-fitted after removing each variable one at a time. The increases of AIC and the decreases of AUC were then assessed to measure the contribution and importance of the individual variables in each model. The importance of the individual variables was also determined by their weighted frequencies of appearance in the top 100 selected models. Overall, the AUC was 0.58 in Scenario 1, 0.78 in Scenario 2, 0.76 in Scenario 3 and 0.82 in Scenario 4. The results showed that morphomic variables are as accurate at predicting injury risk as demographic variables. The results of this study emphasize the importance of including morphomic variables when assessing injury risk. The results also highlight the need for morphomic data in the development of human mathematical models when assessing restraint performance in frontal crashes, since morphomic variables are more "tangible" measurements compared to demographic variables such as age and gender.
Copyright © 2013 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Anatomical morphomics; Injury risk prediction; Model averaging; Thoracic injuries; Variable selection

Mesh:

Year:  2013        PMID: 24060439     DOI: 10.1016/j.aap.2013.08.020

Source DB:  PubMed          Journal:  Accid Anal Prev        ISSN: 0001-4575


  7 in total

1.  Greater Adipose Tissue Distribution and Diminished Spinal Musculoskeletal Density in Adults With Cerebral Palsy.

Authors:  Mark D Peterson; Peng Zhang; Heidi J Haapala; Stewart C Wang; Edward A Hurvitz
Journal:  Arch Phys Med Rehabil       Date:  2015-07-02       Impact factor: 3.966

2.  Morphometric analysis of variation in the ribs with age and sex.

Authors:  Ashley A Weaver; Samantha L Schoell; Joel D Stitzel
Journal:  J Anat       Date:  2014-06-10       Impact factor: 2.610

3.  Body Composition Predicts Survival in Patients with Hepatocellular Carcinoma Treated with Transarterial Chemoembolization.

Authors:  Neehar D Parikh; Peng Zhang; Amit G Singal; Brian A Derstine; Venkat Krishnamurthy; Pranab Barman; Akbar K Waljee; Grace L Su
Journal:  Cancer Res Treat       Date:  2017-06-01       Impact factor: 4.679

4.  Comparisons of Manual Tape Measurement and Morphomics Measurement of Patients with Upper Extremity Lymphedema.

Authors:  Steven R Horbal; Sung-Yu Chu; Nicholas C Wang; Wen-Hui Chan; Yen-Ling Huang; Edward Brown; Sven A Holcombe; Paul S Cederna; Stewart C Wang; Ming-Huei Cheng
Journal:  Plast Reconstr Surg Glob Open       Date:  2019-10-29

5.  Automated Measurements of Body Composition in Abdominal CT Scans Using Artificial Intelligence Can Predict Mortality in Patients With Cirrhosis.

Authors:  Winnie Y Zou; Binu E Enchakalody; Peng Zhang; Nidhi Shah; Sameer D Saini; Nicholas C Wang; Stewart C Wang; Grace L Su
Journal:  Hepatol Commun       Date:  2021-07-07

6.  Automated Measurements of Muscle Mass Using Deep Learning Can Predict Clinical Outcomes in Patients With Liver Disease.

Authors:  Nicholas C Wang; Peng Zhang; Elliot B Tapper; Sameer Saini; Stewart C Wang; Grace L Su
Journal:  Am J Gastroenterol       Date:  2020-08       Impact factor: 12.045

7.  Body Composition Features Predict Overall Survival in Patients With Hepatocellular Carcinoma.

Authors:  Amit G Singal; Peng Zhang; Akbar K Waljee; Lakshmi Ananthakrishnan; Neehar D Parikh; Pratima Sharma; Pranab Barman; Venkataramu Krishnamurthy; Lu Wang; Stewart C Wang; Grace L Su
Journal:  Clin Transl Gastroenterol       Date:  2016-05-26       Impact factor: 4.488

  7 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.