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首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >Multidimensional texture characterization: On analysis for brain tumor tissues using MRS and MRI
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Multidimensional texture characterization: On analysis for brain tumor tissues using MRS and MRI

机译:多维纹理表征:使用MRS和MRI分析脑肿瘤组织

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This paper investigates the efficacy of automated pattern recognition methods on magnetic resonance data with the objective of assisting radiologists in the clinical diagnosis of brain tissue tumors. In this paper, the sciences of magnetic resonance imaging (MRI) and magnetic resonance spectroscopy (MRS) are combined to improve the accuracy of the classifier, based on the multidimensional co-occurrence matrices to assess the detection of pathological tissues (tumor and edema), normal tissues (white matter - WM and gray matter - GM), and fluid (cerebrospinal fluid - CSF). The results show the ability of the classifier with iterative training to automatically and simultaneously recover tissue-specific spectral and structural patterns and achieve segmentation of tumor and edema and grading of high and low glioma tumor. Here, extreme learning machine - improved particle swarm optimization (ELM-IPSO) neural network classifier is trained with the feature descriptions in brain magnetic resonance (MR) spectra. This has the characteristics of varying the normal spectral pattern associated with tumor patterns along with imaging features. Validation was performed considering 35 clinical studies. The volumetric features extracted from the vectors of this matrix articulate some important elementary structures, which along with spectroscopic metabolite ratios discriminate the tumor grades and tissue classes. The quantitative 3D analysis reveals significant improvement in terms of global accuracy rate for automatic classification in brain tissues and discriminating pathological tumor tissue from structural healthy brain tissue.
机译:本文研究自动模式识别方法对磁共振数据的功效,目的是协助放射科医生进行脑组织肿瘤的临床诊断。本文将磁共振成像(MRI)和磁共振波谱学(MRS)的科学相结合,以提高分类器的准确性,并基于多维共现矩阵评估病理组织(肿瘤和水肿)的检测,正常组织(白质-WM和灰质-GM)和体液(脑脊液-CSF)。结果表明,经过反复训练的分类器能够自动并同时恢复组织特定的光谱和结构模式,实现肿瘤和水肿的分割以及高低胶质瘤肿瘤的分级。在这里,极限学习机-改进的粒子群优化(ELM-IPSO)神经网络分类器通过大脑磁共振(MR)光谱中的特征描述进行训练。这具有改变与肿瘤模式相关的正常光谱模式以及成像特征的特征。考虑35项临床研究进行了验证。从此矩阵的向量中提取的体积特征清楚地表达了一些重要的基本结构,这些结构与光谱代谢物比率一起区分了肿瘤的级别和组织类型。定量3D分析揭示了在脑组织中自动分类以及将病理性肿瘤组织与健康结构脑组织区分开的全局准确率方面的显着改善。

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