一种基于体素统计的三维MRI数据检测脑肿瘤周围感兴趣区域的有效方案

Samee Azad, S. Fattah, N. S. Pathan, Md. Toky Foysal Talukdar, Farhin Ahmed, Projna Paromita
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引用次数: 4

摘要

从三维磁共振成像(MRI)数据中分割包含脑肿瘤的区域可以帮助医生准确诊断肿瘤的大小和恶性程度。然而,手动分割是耗时的,并且存在产生不准确结果的风险。本文提出了一种基于体素统计的自动分割感兴趣区域(ROI)的方法,即脑肿瘤及其邻域的区域。在所提出的方法中,首先利用MRI数据的FLAIR和T1图像中肿瘤区域的强度特征进行可能的候选选择。接下来,对整个体积数据进行立方形状的三维平均滤波运算,得到滤波后的体积,其中期望消除一些随机强度行为。最后,从得到的3D FLAIR数据中,基于强度的累积分布函数提取ROI。研究发现,提取的ROI在不丢失肿瘤数据的情况下显著减少了整体MRI体积。本文提出的ROI提取方案在一个广泛使用的数据库中获得的20个真实高级别肿瘤病例上进行了测试,在分割精度、总体体积缩减和计算时间方面都取得了令人满意的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient scheme for detecting region of interest encompassing the brain tumor from 3D MRI data based on voxel statistics
Segmentation of a region containing the brain tumor from 3D magnetic resonance imaging (MRI) data can help physicians to diagnose accurately the size and malignancy of the tumor. However, manual segmentation is time consuming and involves risk of having inaccurate result. In this paper, an automatic method of segmenting the region of interest (ROI), a region encompassing the brain tumor and its neighborhood, is proposed based on voxel statistics. In the proposed method, first possible candidate selection is performed utilizing intensity characteristics of tumor region in the FLAIR and T1 images of MRI data. Next, a cubic shaped 3D mean filtering operation is applied on the whole volumetric data to obtain filtered volume where some random intensity behavior is expected to be eliminated. Finally, from the resulting 3D FLAIR data, ROI is extracted based on cumulative distribution function of intensity. It is found that the extracted ROI offers significant reduction of the overall MRI volume without losing tumor data. The proposed ROI extraction scheme is tested on 20 real life high grade tumor cases obtained from a widely used database and a very satisfactory performance is obtained in terms of segmentation accuracy, overall volume reduction and computational time.
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