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Improving brain tumor characterization on MRI by probabilistic neural networks and non-linear transformation of textural features.

机译:通过概率神经网络和纹理特征的非线性变换改善MRI上的脑肿瘤特征。

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摘要

The aim of the present study was to design, implement and evaluate a software system for discriminating between metastatic and primary brain tumors (gliomas and meningiomas) on MRI, employing textural features from routinely taken T1 post-contrast images. The proposed classifier is a modified probabilistic neural network (PNN), incorporating a non-linear least squares features transformation (LSFT) into the PNN classifier. Thirty-six textural features were extracted from each one of 67 T1-weighted post-contrast MR images (21 metastases, 19 meningiomas and 27 gliomas). LSFT enhanced the performance of the PNN, achieving classification accuracies of 95.24% for discriminating between metastatic and primary tumors and 93.48% for distinguishing gliomas from meningiomas. To improve the generalization of the proposed classification system, the external cross-validation method was also used, resulting in 71.43% and 81.25% accuracies in distinguishing metastatic from primary tumors and gliomas from meningiomas,respectively. LSFT improved PNN performance, increased class separability and resulted in dimensionality reduction.
机译:本研究的目的是设计,实施和评估用于在MRI上区分转移性和原发性脑肿瘤(神经胶质瘤和脑膜瘤)的软件系统,并采用常规拍摄的T1造影后图像的纹理特征。拟议的分类器是一种改进的概率神经网络(PNN),将非线性最小二乘特征变换(LSFT)纳入了PNN分类器。从67张T1加权对比后MR图像(21处转移,19例脑膜瘤和27例脑胶质瘤)中每幅提取了36个纹理特征。 LSFT增强了PNN的性能,在区分转移性和原发性肿瘤方面达到95.24%的分类准确度,在区分脑胶质瘤和脑膜瘤方面达到93.48%的分类准确度。为了提高建议分类系统的通用性,还使用了外部交叉验证方法,在区分转移性原发性肿瘤和脑胶质瘤与脑膜瘤方面分别获得71.43%和81.25%的准确性。 LSFT改善了PNN性能,增加了类可分离性,并导致尺寸减小。

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