基于残差网络深度学习架构的液体衰减反转恢复脑MRI脑肿瘤分割

M. Mahyoub, F. Natalia, S. Sudirman, A. Al-Jumaily, P. Liatsis
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引用次数: 0

摘要

早期准确的发现脑肿瘤对挽救患者的生命至关重要。脑肿瘤通常由放射科医生通过分析患者的脑部MRI扫描来手动诊断,这是一个耗时的过程。这导致了我们对这一研究领域的研究,以寻找一种自动化诊断的解决方案,以提高其速度和准确性。在这项研究中,我们研究了使用残差网络深度学习架构来诊断和分割脑肿瘤。我们提出了一种采用ResNet50架构的肿瘤检测阶段和采用ResNet50架构的肿瘤区域分割阶段的两步方法。我们在预训练的模型上采用迁移学习的方法来获得最佳的性能,通过数据增强来减少数据人口不平衡的影响,通过超参数优化来获得最佳的训练参数值集。使用一个公开可用的数据集作为测试平台,我们表明我们的方法达到了84.3%的性能,使用Dice Coefficient指标比使用U-Net的最先进技术高出2%。
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Brain Tumor Segmentation in Fluid-Attenuated Inversion Recovery Brain MRI using Residual Network Deep Learning Architectures
Early and accurate detection of brain tumors is very important to save the patient's life. Brain tumors are generally diagnosed manually by a radiologist by analyzing the patient”s brain MRI scans which is a time-consuming process. This led to our study of this research area for finding out a solution to automate the diagnosis to increase its speed and accuracy. In this study, we investigate the use of Residual Network deep learning architecture to diagnose and segment brain tumors. We proposed a two-step method involving a tumor detection stage, using ResNet50 architecture, and a tumor area segmentation stage using ResU-Net architecture. We adopt transfer learning on pre-trained models to help get the best performance out of the approach, as well as data augmentation to lessen the effect of data population imbalance and hyperparameter optimization to get the best set of training parameter values. Using a publicly available dataset as a testbed we show that our approach achieves 84.3 % performance outperforming the state-of-the-art using U-Net by 2% using the Dice Coefficient metric.
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