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Automatic tumor lesion detection and segmentation using histogram-based gravitational optimization algorithm

机译:使用基于直方图的重力优化算法自动进行肿瘤病变检测和分割

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In this paper, an automated and customized brain tumor segmentation method is presented and validated against ground truth applying simulated T1-weighted magnetic resonance images in 25 subjects. A new intensity-based segmentation technique called histogram based gravitational optimization algorithm is developed to segment the brain image into discriminative sections (segments) with high accuracy. While the mathematical foundation of this algorithm is presented in details, the application of the proposed algorithm in the segmentation of single T1-weighted images (T1-w) modality of healthy and lesion MR images is also presented. The results show that the tumor lesion is segmented from the detected lesion slice with 89.6% accuracy.
机译:在本文中,提出了一种自动的和定制的脑肿瘤分割方法,并通过在25位受试者中使用模拟的T1加权磁共振图像针对地面真实性进行了验证。开发了一种新的基于强度的分割技术,称为基于直方图的重力优化算法,可以将脑图像高精度地分割为可辨别的部分(段)。在详细介绍该算法的数学基础的同时,还介绍了该算法在健康和病变MR图像的单个T1加权图像(T1-w)模态分割中的应用。结果表明,从检测到的病灶切片中切出肿瘤病灶,准确度为89.6%。

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