Artificial neural networks can predict trauma volume and acuity regardless of center size and geography: A multicenter study

被引:17
作者
Dennis, Bradley M. [1 ]
Stonko, David P. [2 ]
Callcut, Rachael A. [3 ]
Sidwell, Richard A. [4 ]
Stassen, Nicole A. [5 ]
Cohen, Mitchell J. [6 ]
Cotton, Bryan A. [7 ]
Guillamondegui, Oscar D. [1 ]
机构
[1] Vanderbilt Univ, Med Ctr, Div Trauma & Surg Crit Care, 1211 21st Ave S,404 Med Arts Bldg, Nashville, TN 37212 USA
[2] Johns Hopkins Univ Hosp, Dept Surg, Baltimore, MD 21287 USA
[3] Univ Calif San Francisco, Dept Surg, San Francisco, CA 94143 USA
[4] Iowa Methodist Med Ctr, Dept Gen Surg, Des Moines, IA USA
[5] Univ Rochester, Med Ctr, Dept Surg, Div Acute Care Surg, Rochester, NY 14642 USA
[6] Denver Hlth Med Ctr, Dept Surg, Denver, CO USA
[7] Mem Hermann Hosp, Texas Med Ctr, Ctr Translat Injury Res, Dept Surg,Div Acute Care Surg, Houston, TX USA
关键词
Artificial intelligence; trauma; weather; prediction; machine learning; LENGTH-OF-STAY; WEATHER; ADMISSIONS; DIAGNOSIS; SEASON; IMPACT; TIME;
D O I
10.1097/TA.0000000000002320
中图分类号
R4 [临床医学];
学科分类号
1002 ; 100602 ;
摘要
BACKGROUND Trauma has long been considered unpredictable. Artificial neural networks (ANN) have recently shown the ability to predict admission volume, acuity, and operative needs at a single trauma center with very high reliability. This model has not been tested in a multicenter model with differing climate and geography. We hypothesize that an ANN can accurately predict trauma admission volume, penetrating trauma admissions, and mean Injury Severity Score (ISS) with a high degree of reliability across multiple trauma centers. METHODS Three years of admission data were collected from five geographically distinct US Level I trauma centers. Patients with incomplete data, pediatric patients, and primary thermal injuries were excluded. Daily number of traumas, number of penetrating cases, and mean ISS were tabulated from each center along with National Oceanic and Atmospheric Administration data from local airports. We trained a single two-layer feed-forward ANN on a random majority (70%) partitioning of data from all centers using Bayesian Regularization and minimizing mean squared error. Pearson's product-moment correlation coefficient was calculated for each partition, each trauma center, and for high- and low-volume days (>1 standard deviation above or below mean total number of traumas). RESULTS There were 5,410 days included. There were 43,380 traumas, including 4,982 penetrating traumas. The mean ISS was 11.78 (SD = 6.12). On the training partition, we achieved R = 0.8733. On the testing partition (new data to the model), we achieved R = 0.8732, with a combined R = 0.8732. For high- and low-volume days, we achieved R = 0.8934 and R = 0.7963, respectively. CONCLUSION An ANN successfully predicted trauma volumes and acuity across multiple trauma centers with very high levels of reliability. The correlation was highest during periods of peak volume. This can potentially provide a framework for determining resource allocation at both the trauma system level and the individual hospital level. Copyright (c) 2019 Wolters Kluwer Health, Inc. All rights reserved.
引用
收藏
页码:181 / 187
页数:7
相关论文
共 33 条
[1]   Artificial neural networks for diagnosis and survival prediction in colon cancer [J].
Ahmed, Farid E. .
MOLECULAR CANCER, 2005, 4 (1)
[2]   What is the effect of the weather on trauma workload? A systematic review of the literature [J].
Ali, A. M. ;
Willett, K. .
INJURY-INTERNATIONAL JOURNAL OF THE CARE OF THE INJURED, 2015, 46 (06) :945-953
[3]   A year's trauma admissions and the effect of the weather [J].
Atherton, WG ;
Harper, WM ;
Abrams, KR .
INJURY-INTERNATIONAL JOURNAL OF THE CARE OF THE INJURED, 2005, 36 (01) :40-46
[4]   APPLICATION OF ARTIFICIAL NEURAL NETWORKS TO CLINICAL MEDICINE [J].
BAXT, WG .
LANCET, 1995, 346 (8983) :1135-1138
[5]  
Bundi M, 2018, UNFALLCHIRURG, V121, P10, DOI 10.1007/s00113-016-0267-0
[6]   Emergency department imaging: are weather and calendar factors associated with imaging volume? [J].
Burns, K. ;
Chernyak, V. ;
Scheinfeld, M. H. .
CLINICAL RADIOLOGY, 2016, 71 (12) :1312.e1-1312.e6
[7]  
Carmody IC, 2002, AM SURGEON, V68, P1048
[8]   Predicting patient survival after liver transplantation using evolutionary multi-objective artificial neural networks [J].
Cruz-Ramirez, Manuel ;
Hervas-Martinez, Cesar ;
Carlos Fernandez, Juan ;
Briceno, Javier ;
de la Mata, Manuel .
ARTIFICIAL INTELLIGENCE IN MEDICINE, 2013, 58 (01) :37-49
[9]  
Eftekhar Behzad, 2005, BMC Med Inform Decis Mak, V5, P3
[10]  
Egol Kenneth A, 2011, J Emerg Trauma Shock, V4, P178, DOI 10.4103/0974-2700.82202