Selective block based approach for neoplasm detection from T2-weighted brain MRIs

N. Gupta, A. Seal, P. Bhatele, P. Khanna
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引用次数: 2

Abstract

A realistic challenge in neuroanatomy is to assist radiologists to detect the brain neoplasm at an early stage. This paper presents a fast and accurate Computer Aided Diagnosis (CAD) system based on selective block based approach for neoplasm (tumor) detection from T2-weighted brain MR images. The salient contribution of the presented work lies in a fast discrimination using selective block based approach. Local binary patterns are considered as features, which are trained by support vector machine. The experiments are performed on the dataset of 100 patients, in which 55 patients reported with brain tumor and rest as normal. The proposed CAD system achieves 99.67% accuracy with 100% sensitivity. The comparative studies on the same dataset report the outperformance of proposed CAD system by comparison with some of the existing system.
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基于选择性块的t2加权脑mri肿瘤检测方法
在神经解剖学中,一个现实的挑战是协助放射科医生在早期发现脑肿瘤。本文提出了一种基于选择性块的快速、准确的脑MR t2加权肿瘤检测计算机辅助诊断系统。所提出的工作的突出贡献在于使用基于选择性块的方法进行快速识别。以局部二值模式为特征,用支持向量机训练特征。实验是在100名患者的数据集上进行的,其中55名患者报告患有脑肿瘤,休息正常。该系统的精度为99.67%,灵敏度为100%。在同一数据集上的比较研究,通过与一些现有系统的比较,报告了所提出的CAD系统的优越性能。
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