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Multivariate discriminant analysis of multiparametric brain MRI to differentiate high grade and low grade gliomas — A computer-aided diagnosis development study

机译:多参数脑MRI的多因素判别分析,以区分高级别和低级别神经胶质瘤—计算机辅助诊断开发研究

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The aim of this study is to investigate the predictive capacity of multiparametric magnetic resonance imaging (MRI) findings using multivariate discriminant analysis. Preoperative clinical findings and multiparametric MRI, including diffusion weighted MR imaging, diffusion tensor imaging, perfusion MR imaging and MR spectroscopic imaging, were used as predictors to distinguish high grade from low grade gliomas. Principal component analysis was performed prior to discriminant analysis for dimensional reduction. Linear and quadratic discriminant analysis were performed and compared based on sensitivity and specificity analysis. The sensitivities of linear and quadratic discriminant analysis were 76.5% and 83.5%, respectively. Their specificities were 68.5% and 46.5%, respectively. Quadratic discriminant analysis provided a better discrimination than linear discriminant analysis for this dataset. This study is a model for a computer aided diagnosis system for glioma grading.
机译:这项研究的目的是使用多元判别分析研究多参数磁共振成像(MRI)结果的预测能力。术前临床表现和多参数MRI(包括弥散加权MR成像,弥散张量成像,灌注MR成像和MR光谱成像)被用作区分高等级和低等级胶质瘤的预测指标。在进行判别分析以进行尺寸缩减之前,先进行主成分分析。进行线性和二次判别分析,并根据敏感性和特异性分析进行比较。线性和二次判别分析的灵敏度分别为76.5%和83.5%。它们的特异性分别为68.5%和46.5%。对于该数据集,二次判别分析提供了比线性判别分析更好的判别能力。这项研究是用于神经胶质瘤分级的计算机辅助诊断系统的模型。

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