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A machine learning based approach for identifying traumatic brain injury patients for whom a head CT scan can be avoided

机译:一种基于机器学习方法,用于识别用于校正头CT扫描的创伤性脑损伤患者

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Head CT scan is more often used to evaluate patients with suspected traumatic brain injury (TBI). However, the use of head CT scans in evaluating TBI is costly with low value endeavor. In this paper, we propose a new algorithm and a set of features to help clinicians determine which patients evaluated for TBI need a head CT scan using cost sensitive random forest (CSRF) classifier. We show that random forest (RF) and CSRF are useful methods for identifying patients likely to have a positive head CT scan. The proposed algorithm has superior diagnostic accuracy in comparison to the Canadian head CT algorithm, which is currently the most accurate and widely used algorithm for determining which TBI patients need a head CT scan. In the highest sensitivity (i.e. 100%), our method outperforms the Canadian rule in terms of specificity, accuracy and area under ROC curve using cost sensitive classifier. Clinical implementation of this algorithm can help decrease financial costs associated with Emergency Department evaluations for traumatic brain injury, while decreasing patient exposure to avoidable ionizing radiation.
机译:头CT扫描更常用于评估有疑似创伤性脑损伤(TBI)的患者。然而,在评估TBI时,使用头CT扫描的使用昂贵与低价值努力。在本文中,我们提出了一种新的算法和一组特征,帮助临床医生确定使用成本敏感随机林(CSRF)分类器的TBI评估的患者需要头CT扫描。我们表明随机森林(RF)和CSRF是识别可能具有正极头CT扫描的患者的有用方法。该算法与加拿大头CT算法相比具有卓越的诊断精度,目前是最准确和广泛使用的算法,用于确定哪种TBI患者需要头CT扫描。在最高的灵敏度(即100%)中,我们的方法使用成本敏感分类器在ROC曲线下的特异性,准确性和面积方面优于加拿大规则。该算法的临床实施可以帮助降低与创伤性脑损伤的应急部门评估相关的财务成本,同时降低患者暴露于避免的电离辐射。

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