Hybridized Deep Neural Network Using Adaptive Rain Optimizer Algorithm for Multi-Grade Brain Tumor Classification of MRI Images

V. Sasank, S. Venkateswarlu
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Abstract

Classification of brain tumor is highly significant in the medical field in real-world to improve the progress of treatments. The seriousness behind the tumors are normally graded based on the size into grade I, grade II, grade III and grade IV. This is where the process of multi-grade brain tumor classification gains attention. Thus, the article focusses on classifying the brain MRI images into four different grades by proposing a novel and a very efficient classification strategy with high accuracy. The acquired images are pre-processed with the help of an Extended Adaptive Wiener Filter (EAWF) and then segmented using the piecewise Fuzzy C- means Clustering (piFCM) technique. Then the most ideal features such as the texture, intensity and shape features that can best explain the growth of tumors are extracted using the Local Binary Pattern (LBP) and the Hybrid Local Directional Pattern with Gabor Filter (HLDP-GF) techniques. After extracting the ideal features, the Manta Ray Foraging Optimization (MRFO) method has been introduced to optimally select the most relevant features. Finally, a Hybrid Deep Neural Network with Adaptive Rain Optimizer Algorithm (HDNN- AROA) is proposed to classify the grades of brain tumors with high accuracy and efficiency. The proposed technique has been compared with the existing state-of-the-art techniques relevant to brain tumor classification in terms of accuracy, precision, recall and dice similarity coefficient to prove the overall efficiency of the system.
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基于自适应Rain优化算法的杂交深度神经网络在MRI图像多级别脑肿瘤分类中的应用
脑肿瘤的分类在现实世界的医学领域具有重要意义,对提高治疗进展具有重要意义。肿瘤背后的严重程度通常根据大小分为I级、II级、III级和IV级。这就是多级别脑肿瘤分类过程受到关注的地方。因此,本文的重点是通过提出一种新颖、高效、准确率高的脑MRI图像分类策略,将脑MRI图像分为四个不同的等级。利用扩展自适应维纳滤波(EAWF)对采集到的图像进行预处理,然后利用分段模糊C均值聚类(piFCM)技术对图像进行分割。然后利用局部二值模式(LBP)和Gabor滤波混合局部方向模式(HLDP-GF)技术提取出最能解释肿瘤生长的纹理、强度和形状等最理想的特征。在提取理想特征后,引入蝠鲼觅食优化(MRFO)方法,以最优选择最相关的特征。最后,提出了一种具有自适应Rain优化算法的混合深度神经网络(HDNN- AROA),以高精度和高效率地对脑肿瘤的等级进行分类。将所提出的方法与现有的脑肿瘤分类相关技术在准确率、精密度、召回率和骰子相似系数方面进行了比较,以证明系统的整体效率。
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