3D blob based brain tumor detection and segmentation in MR images

Chen-Ping Yu, Guilherme C. S. Ruppert, R. Collins, D. Nguyen, A. Falcão, Yanxi Liu
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引用次数: 26

Abstract

Automatic detection and segmentation of brain tumors in 3D MR neuroimages can significantly aid early diagnosis, surgical planning, and follow-up assessment. However, due to diverse location and varying size, primary and metastatic tumors present substantial challenges for detection. We present a fully automatic, unsupervised algorithm that can detect single and multiple tumors from 3 to 28,079 mm3 in volume. Using 20 clinical 3D MR scans containing from 1 to 15 tumors per scan, the proposed approach achieves between 87.84% and 95.30% detection rate and an average end-to-end running time of under 3 minutes. In addition, 5 normal clinical 3D MR scans are evaluated quantitatively to demonstrate that the approach has the potential to discriminate between abnormal and normal brains.
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基于3D blob的MR图像脑肿瘤检测与分割
在3D MR神经图像中自动检测和分割脑肿瘤可以显着帮助早期诊断,手术计划和随访评估。然而,由于不同的位置和不同的大小,原发性和转移性肿瘤对检测提出了实质性的挑战。我们提出了一种全自动、无监督的算法,可以检测体积从3到28,079 mm3的单个和多个肿瘤。使用20次临床3D MR扫描,每次扫描包含1至15个肿瘤,该方法的检测率在87.84%至95.30%之间,端到端平均运行时间在3分钟以下。此外,对5个正常的临床3D MR扫描进行了定量评估,以证明该方法具有区分异常和正常大脑的潜力。
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