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Feature selection based on hybrid optimization for magnetic resonance imaging brain tumor classification and segmentation

机译:基于混合优化的磁共振成像脑肿瘤分类与分割特征选择

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Abstract With the health information technology being infused into clinical health, e-health is becoming a key factor in delivering improvements in the health sector. Brain tumor data feature selection is crucial for the development of a viable cancer detection system based on brain tumor data. Our study aimed to obtain an optimal feature subset through a hybrid algorithm of Simulated Annealing-Genetic Algorithms (SA-GA). Two real datasets of brain tumor Magnetic Resonance Images are used to assess the performances of the proposed approach. The first dataset was freely downloaded from the Harvard Medical School brain atlas. The second brain tumor dataset was created from Nanfang Hospital, Guangzhou, China, and General Hospital, Tianjing Medical University, China from 2005 to 2012. The proposed approach is compared to the methods of simulated annealing, genetic algorithm and with the state-of-the-art methods used separately. The obtained results show that SA-GA exceeds simulated annealing and genetic algorithms when they are applied in isolation, in terms of accuracy and computing time. The evaluation shows that our method overtakes the state-of-the-art methods with a segmentation accuracy rate of 97.82%±0.74 for glioma tumor and 95.12% ±3.21for pituitary tumor.
机译:摘要随着将健康信息技术注入临床健康中,电子医疗正成为改善卫生领域的关键因素。脑肿瘤数据特征选择对于基于脑肿瘤数据的可行的癌症检测系统的开发至关重要。我们的研究旨在通过模拟退火遗传算法(SA-GA)的混合算法获得最佳特征子集。脑肿瘤磁共振图像的两个真实数据集用于评估所提出方法的性能。第一个数据集是从哈佛医学院脑图免费下载的。第二个脑肿瘤数据集是从中国广州市南方医院和天津医科大学总医院于2005年至2012年创建的。该方法与模拟退火方法,遗传算法以及状态现有技术分别使用。所得结果表明,SA-GA在准确性和计算时间上孤立应用时,超过了模拟退火和遗传算法。评估显示,我们的方法超越了最新方法,对神经胶质瘤的分割准确率达到97.82%±0.74,对于垂体肿瘤的分割准确率达到95.12%±3.21。

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