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Multi-parametric Classification of Traumatic Brain Injury Patients Using Automatic Analysis of Quantitative MRI Scans

机译:使用定量MRI扫描自动分析对创伤性脑损伤患者进行多参数分类

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Traumatic brain injury (TBI) is ranked as the fourth highest cause of death in the developed world. The majority of patients sustain mild TBI, and a significant number suffer persistent neuropsychological problems. Conventional neuroimaging methods (CT, MRI) do not reveal abnormalities consistent with the cognitive symptoms. Imaging methods offering prognostic information in acutely injured patients are therefore required. Here we applied advanced quantitative MRI techniques (T_1,T_2 mapping and diffusion tensor MRI) in 24 mild TBI patients and 20 matched controls. We applied a support vector machine (SVM) to classify the quantitative MRI data. Univariate classification was ineffective due to overlap between patient and control values, however multi-parametric classification achieved sensitivity of 88% and specificity of 75%. Future work incorporating neuropsychological outcome into SVM training is expected to improve performance. These results indicate that SVM analysis of multi-parametric MRI data is a promising approach for predicting prognosis following mild TBI.
机译:脑外伤(TBI)被列为发达国家的第四大死亡原因。大多数患者患有轻度TBI,并且相当多的患者持续存在神经心理学问题。常规的神经影像学方法(CT,MRI)不能显示与认知症状一致的异常。因此需要在严重受伤的患者中提供预后信息的影像学方法。在这里,我们在24例轻度TBI患者和20个匹配的对照中应用了先进的定量MRI技术(T_1,T_2映射和扩散张量MRI)。我们应用了支持向量机(SVM)对MRI定量数据进行分类。由于患者和对照值之间存在重叠,因此单变量分类无效,但是多参数分类的敏感性为88%,特异性为75%。将神经心理学成果纳入SVM培训的未来工作有望改善性能。这些结果表明,多参数MRI数据的SVM分析是预测轻度TBI后预后的有前途的方法。

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