首页> 外文期刊>Journal of magnetic resonance imaging: JMRI >Quantitative analysis in clinical applications of brain MRI using independent component analysis coupled with support vector machine.
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Quantitative analysis in clinical applications of brain MRI using independent component analysis coupled with support vector machine.

机译:使用独立成分分析和支持向量机对脑MRI的临床应用进行定量分析。

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PURPOSE: To effectively perform quantification of brain normal tissues and pathologies simultaneously, independent component analysis (ICA) coupled with support vector machine (SVM) is investigated and evaluated for effective volumetric measurements of normal and lesion tissues using multispectral MR images. MATERIALS AND METHODS: Synthetic and real MR data of normal brain and white matter lesion (WML) data were used to evaluate the accuracy and reproducibility of gray matter (GM), white matter (WM), and WML volume measurements by using the proposed ICA+SVM method to analyze three sets of MR images, T1-weighted, T2-weighted, and proton density/fluid-attenuated inversion recovery images. RESULTS: The Tanimoto indexes of GM/WM classification in the normal synthetic data calculated by the ICA+SVM method were 0.82/0.89 for data with 0% noise level. As for clinical MR data experiments, the ICA+SVM method clearly extracted the normal tissues and white matter hyperintensity lesions from the MR images, with low intra- and inter-operator coefficient of variations. CONCLUSION: The experiments conducted provide evidence that the ICA+SVM method has shown promise and potential in applications to classification of normal and pathological tissues in brain MRI.
机译:目的:为了有效地同时对大脑正常组织和病理进行定量,研究和评估了独立成分分析(ICA)和支持向量机(SVM),并使用多光谱MR图像评估了正常和病变组织的有效体积测量结果。材料与方法:使用正常的大脑和白质病变(WML)数据的合成和真实MR数据,通过使用拟议的ICA评估灰质(GM),白质(WM)和WML体积测量的准确性和可重复性+ SVM方法分析三组MR图像:T1加权,T2加权和质子密度/流体衰减的反演恢复图像。结果:对于噪声水平为0%的数据,通过ICA + SVM方法计算的常规合成数据中GM / WM分类的Tanimoto指数为0.82 / 0.89。对于临床MR数据实验,ICA + SVM方法可以从MR图像中清晰地提取正常组织和白质高信号病灶,且操作者内部和操作者之间的变异系数低。结论:进行的实验提供了证据,表明ICA + SVM方法在脑MRI正常和病理组织的分类中已显示出希望和潜力。

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