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首页> 外文期刊>The journal of trauma and acute care surgery >Artificial neural networks can predict trauma volume and acuity regardless of center size and geography: A multicenter study
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Artificial neural networks can predict trauma volume and acuity regardless of center size and geography: A multicenter study

机译:无论中心大小和地理位置如何,人工神经网络都可以预测创伤体积和敏锐度:多中心的研究

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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.
机译:背景创伤长期以来一直被认为是不可预测的。最近,人工神经网络(ANN)最近显示了在单个创伤中心预测入院体积,敏锐度和手术需求的能力,其具有非常高的可靠性。该模型尚未在具有不同气候和地理的多中心模型中进行测试。我们假设ANN可以准确地预测创伤录取体积,穿透创伤录取和平均伤害严重程度(ISS),在多个创伤中心的高度可靠性。方法从五个地理上独特的美国I级创伤中心收集三年的入学数据。排除了数据,儿科患者和初级热损伤的患者。每日创伤,穿透案件数量和平均值的人数与当地机场的国家海洋和大气管理数据一起列出。我们在随机大多数(70%)分区中,使用贝叶斯正规化和最小化平均方差误差,培训了一个双层前馈安的随机大多数(70%)划分。针对每个分区,每个创伤中心和高卷天(> 1标准偏差在上方或低于创伤的总数上,计算Pearson的产矩相关系数。结果包括5,410天。有43,380个创伤,包括4,982个穿透性创伤。平均值是11.78(SD = 6.12)。在训练分区上,我们实现了r = 0.8733。在测试分区(模型的新数据)上,我们实现了r = 0.8732,r = 0.8732。对于高卷和低卷,我们分别实现了r = 0.8934和r = 0.7963。结论ANN成功地预测了在多个创伤中心的创伤体积和敏锐度,具有非常高的可靠性。在峰值体积期间的相关性是最高的。这可能提供用于在创伤系统级别和各个医院级别确定资源分配的框架。版权所有(c)2019 Wolters Kluwer Health,Inc。保留所有权利。

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