Modification of the TRISS: simple and practical mortality prediction after trauma in an all-inclusive registry.

Mitchell L S Driessen, David van Klaveren, Mariska A C de Jongh, Luke P H Leenen, Leontien M Sturms
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引用次数: 3

Abstract

Purpose: Numerous studies have modified the Trauma Injury and Severity Score (TRISS) to improve its predictive accuracy for specific trauma populations. The aim of this study was to develop and validate a simple and practical prediction model that accurately predicts mortality for all acute trauma admissions.

Methods: This retrospective study used Dutch National Trauma Registry data recorded between 2015 and 2018. New models were developed based on nonlinear transformations of TRISS variables (age, systolic blood pressure (SBP), Glasgow Coma Score (GCS) and Injury Severity Score (ISS)), the New Injury Severity Score (NISS), the sex-age interaction, the best motor response (BMR) and the American Society of Anesthesiologists (ASA) physical status classification. The models were validated in 2018 data and for specific patient subgroups. The models' performance was assessed based on discrimination (areas under the curve (AUCs)) and by calibration plots. Multiple imputation was applied to account for missing values.

Results: The mortality rates in the development and validation datasets were 2.3% (5709/245363) and 2.5% (1959/77343), respectively. A model with sex, ASA class, and nonlinear transformations of age, SBP, the ISS and the BMR showed significantly better discrimination than the TRISS (AUC 0.915 vs. 0.861). This model was well calibrated and demonstrated good discrimination in different subsets of patients, including isolated hip fractures patients (AUC: 0.796), elderly (AUC: 0.835), less severely injured (ISS16) (AUC: 878), severely injured (ISS ≥ 16) (AUC: 0.889), traumatic brain injury (AUC: 0.910). Moreover, discrimination for patients admitted to the intensive care (AUC: s0.846), and for both non-major and major trauma center patients was excellent, with AUCs of 0.940 and 0.895, respectively.

Conclusion: This study presents a simple and practical mortality prediction model that performed well for important subgroups of patients as well as for the heterogeneous population of all acute trauma admissions in the Netherlands. Because this model includes widely available predictors, it can also be used for international evaluations of trauma care within institutions and trauma systems.

对TRISS的修改:在全包登记中简单实用的创伤后死亡率预测。
目的:许多研究修改了创伤损伤和严重程度评分(TRISS),以提高其对特定创伤人群的预测准确性。本研究的目的是开发和验证一个简单实用的预测模型,准确预测所有急性创伤入院的死亡率。方法:本回顾性研究使用了荷兰国家创伤登记处2015年至2018年记录的数据。基于TRISS变量(年龄、收缩压(SBP)、格拉斯哥昏迷评分(GCS)和损伤严重程度评分(ISS))、新损伤严重程度评分(NISS)、性别年龄相互作用、最佳运动反应(BMR)和美国麻醉医师协会(ASA)身体状态分类)的非线性变换,开发了新的模型。这些模型在2018年的数据和特定的患者亚组中得到了验证。通过判别(曲线下面积)和标定图来评估模型的性能。采用多重输入来解释缺失值。结果:开发和验证数据集的死亡率分别为2.3%(5709/245363)和2.5%(1959/77343)。具有性别、ASA类别和年龄、收缩压、ISS和BMR非线性转换的模型的识别率显著优于TRISS (AUC 0.915比0.861)。该模型经过了良好的校准,并对不同亚群的患者具有良好的区分能力,包括孤立性髋部骨折患者(AUC: 0.796)、老年患者(AUC: 0.835)、轻度损伤患者(AUC: 878)、重度损伤患者(ISS≥16)(AUC: 0.889)、创伤性脑损伤患者(AUC: 0.910)。此外,重症监护室住院患者(AUC: s0.846)、非重大和重大创伤中心患者的AUC均极好,分别为0.940和0.895。结论:本研究提出了一个简单实用的死亡率预测模型,该模型对荷兰所有急性创伤入院的重要亚组患者以及异质人群都表现良好。由于该模型包括广泛可用的预测因子,它也可用于机构和创伤系统内的创伤护理的国际评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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