首页> 外文期刊>Journal of neurotrauma >Prognosis of Six-Month Glasgow Outcome Scale in Severe Traumatic Brain Injury Using Hospital Admission Characteristics, Injury Severity Characteristics, and Physiological Monitoring during the First Day Post-Injury
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Prognosis of Six-Month Glasgow Outcome Scale in Severe Traumatic Brain Injury Using Hospital Admission Characteristics, Injury Severity Characteristics, and Physiological Monitoring during the First Day Post-Injury

机译:六个月Glasgow成果规模的预后使用医院入院特征,损伤严重程度特征,损伤后的生理监测率严重创伤性脑损伤

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Gold standard prognostic models for long-term outcome in patients with severe traumatic brain injury (TBI) use admission characteristics and are considered useful in some areas but not for clinical practice. In this study, we aimed to build prognostic models for 6-month Glasgow Outcome Score (GOS) in patients with severe TBI, combining baseline characteristics with physiological, treatment, and injury severity data collected during the first 24 h after injury. We used a training dataset of 472 TBI subjects and several data mining algorithms to predict the long-term neurological outcome. Performance of these algorithms was assessed in an independent (test) sample of 158 subjects. The least absolute shrinkage and selection operator (LASSO) led to the highest prediction accuracy (area under the receiving operating characteristic curve = 0.86) in the test set. The most important post-baseline predictor of GOS was the best motor Glasgow Coma Scale (GCS) recorded in the first day post-injury. The LASSO model containing the best motor GCS and baseline variables as predictors outperformed a model with baseline data only. TBI patient physiology of the first day-post-injury did not have a major contribution to patient prognosis six months after injury. In conclusion, 6-month GOS in patients with TBI can be predicted with good accuracy by the end of the first day post-injury, using hospital admission data and information on the best motor GCS achieved during those first 24 h post-injury. Passed the first day after injury, important physiological predictors could emerge from landmark analyses, leading to prediction models of higher accuracy than the one proposed in the current research.
机译:严重创伤性脑损伤(TBI)使用录取特性的患者长期结果的金标准预后模型,并且在某些地区被认为是有用的,但不适用于临床实践。在本研究中,我们旨在为严重TBI患者进行6个月Glasgow结果评分(GOS)的预后模型,将基线特征与生理,治疗和损伤后的损伤后的前24小时收集的损伤严重程度数据相结合。我们使用了472个TBI受试者的训练数据集和几种数据挖掘算法,以预测长期神经系统结果。在158个受试者的独立(测试)样本中评估这些算法的性能。在测试集中,最低绝对收缩和选择操作员(套索)导致了最高的预测精度(接收操作特性曲线下的区域)。 GOS最重要的基准后预测因子是在损伤后第一天记录的最佳马达格拉斯哥昏迷(GCS)。包含最佳电机GCS和基线变量作为预测器的套索模型优于基线数据的模型。第一次损伤后的TBI患者生理学对伤病后六个月的患者预后没有主要贡献。总之,在损伤后的第一天后,可以预测6个月的TBI患者的GOS,通过医院入场数据和关于在损伤后的前24小时内实现的最佳电机GCS的信息,可以预测良好的准确性。在伤害后的第一天通过,重要的生理预测因子可以从地标分析中出现,导致比目前研究中提出的预测模型更高的准确性。

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