Hybrid Manta Ray Foraging Optimization for Novel Brain Tumor Detection

Dr. P. Karuppusamy
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引用次数: 23

Abstract

In medical image processing, segmentation and extraction of tumor portion from brain MRI is a complex task. It consumes more time and human effort to differentiate the normal and abnormal tissue. Clinical experts need more time to provide accurate results, recent technology developments in image processing reduces the human effort and provides more accurate results which reduces time and death rates by identifying the issues in early stage itself. Machine learning based algorithms occupies a major role in bio medical image processing applications. The performance of machine learning models is in satisfactory levels, but it could be improved by introducing optimization in feature selection stage itself. The research work provides a hybrid manta ray foraging optimization for feature selection from brain tumor MRI images. Convolution neural network is used to test the optimized features and detects the early stage brain tumors. The experimental model is compared with existing artificial neural network, particle swarm optimization algorithm and acquires a better detection and classification accuracy.
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新型脑肿瘤检测的混合蝠鲼觅食优化
在医学图像处理中,脑MRI中肿瘤部分的分割和提取是一项复杂的任务。区分正常组织和异常组织需要耗费更多的时间和人力。临床专家需要更多的时间来提供准确的结果,最近图像处理技术的发展减少了人类的努力,并提供了更准确的结果,通过在早期阶段本身识别问题,减少了时间和死亡率。基于机器学习的算法在生物医学图像处理应用中占有重要地位。机器学习模型的性能处于令人满意的水平,但可以通过在特征选择阶段本身引入优化来改进。该研究为脑肿瘤MRI图像的特征选择提供了一种混合蝠鲼觅食优化方法。利用卷积神经网络对优化后的特征进行测试,检测早期脑肿瘤。实验模型与现有的人工神经网络、粒子群优化算法进行了比较,获得了更好的检测和分类精度。
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