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Early Identification of Acute Traumatic Coagulopathy Using Clinical Prediction Tools: A Systematic Review

机译:使用临床预测工具及早发现急性创伤性凝固性疾病:系统评价

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摘要

Prompt identification of patients with acute traumatic coagulopathy (ATC) is necessary to expedite appropriate treatment. An early clinical prediction tool that does not require laboratory testing is a convenient way to estimate risk. Prediction models have been developed, but none are in widespread use. This systematic review aimed to identify and assess accuracy of prediction tools for ATC. A search of OVID Medline and Embase was performed for articles published between January 1998 and February 2018. We searched for prognostic and predictive studies of coagulopathy in adult trauma patients. Studies that described stand-alone predictive or associated factors were excluded. Studies describing prediction of laboratory-diagnosed ATC were extracted. Performance of these tools was described. : Six studies were identified describing four different ATC prediction tools. The COAST score uses five prehospital variables (blood pressure, temperature, chest decompression, vehicular entrapment and abdominal injury) and performed with 60% sensitivity and 96% specificity to identify an International Normalised Ratio (INR) of >1.5 on an Australian single centre cohort. TICCS predicted an INR of >1.3 in a small Belgian cohort with 100% sensitivity and 96% specificity based on admissions to resuscitation rooms, blood pressure and injury distribution but performed with an Area under the Receiver Operating Characteristic (AUROC) curve of 0.700 on a German trauma registry validation. Prediction of Acute Coagulopathy of Trauma (PACT) was developed in USA using six weighted variables (shock index, age, mechanism of injury, Glasgow Coma Scale, cardiopulmonary resuscitation, intubation) and predicted an INR of >1.5 with 73.1% sensitivity and 73.8% specificity. The Bayesian network model is an artificial intelligence system that predicted a prothrombin time ratio of >1.2 based on 14 clinical variables with 90% sensitivity and 92% specificity. : The search for ATC prediction models yielded four scoring systems. While there is some potential to be implemented effectively in clinical practice, none have been sufficiently externally validated to demonstrate associations with patient outcomes. These tools remain useful for research purposes to identify populations at risk of ATC.
机译:及时识别急性创伤性凝血病(ATC)的患者对于加快适当的治疗十分必要。不需要实验室测试的早期临床预测工具是估算风险的便捷方法。已经开发了预测模型,但是没有一个被广泛使用。这项系统的审查旨在确定和评估ATC预测工具的准确性。对1998年1月至2018年2月之间发表的文章进行了OVID Medline和Embase搜索。我们搜索了成人创伤患者凝血病的预后和预测研究。描述独立预测因素或相关因素的研究被排除在外。提取描述实验室诊断的ATC预测的研究。描述了这些工具的性能。 :确定了六项研究,描述了四种不同的ATC预测工具。 COAST评分使用院前五个变量(血压,体温,胸部减压,车辆压迫和腹部损伤)并以60%的敏感性和96%的特异性进行分析,以识别澳大利亚单中心队列的国际标准化比率(INR)> 1.5 。 TICCS根据复苏室的入院率,血压和伤害的分布预测,在一个小型比利时人群中INR> 1.3,具有100%的敏感性和96%的特异性,但在接受者操作特征(AUROC)曲线下面积为0.700的情况下,德国创伤登记簿验证。美国使用六个加权变量(休克指数,年龄,损伤机制,格拉斯哥昏迷量表,心肺复苏,插管)预测了急性创伤性凝集性病变(PACT),并预测INR> 1.5,敏感性为73.1%,预测值为73.8%。特异性。贝叶斯网络模型是一种人工智能系统,可基于14种临床变量预测凝血酶原时间比率> 1.2,敏感性为90%,特异性为92%。 :对ATC预测模型的搜索产生了四个评分系统。尽管在临床实践中可能有一些有效实施的潜力,但尚未通过外部充分验证以证明与患者预后的关联。这些工具仍可用于研究目的,以识别有发生ATC风险的人群。

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