Murthy Mantripragada Yaswanth Bhanu, Koteswararao Anne, Babu Melingi Sunil
Electronics and Communication Engineering, Vasireddy Venkatadri Institute of Technology, Guntur, India.
Computer Science Engineering, Kalasalingam Academy of Research and Education, Krishnankoil, India.
Biomed Eng Lett. 2021 Nov 7;12(1):37-58. doi: 10.1007/s13534-021-00209-5. eCollection 2022 Feb.
Automatic classification of brain tumor plays a vital role to speed up the treatment procedure, plan and boost the survival rate of patients. Nowadays, Magnetic Resonance Imaging (MRI) is employed for determining brain tumor. However, manual identification of brain tumor is purely based on the sensitivity and experience of medical professionals. Thus, more research works towards brain tumor classification have been implemented for minimizing the human factor. Different imaging approaches are employed for detecting brain tumors. Though, MRI is mainly employed owing to the better quality of images due to the non ionizing radiation of images. One of the major categories of machine learning is called deep learning, which shows an outstanding performance, mainly on solving the segmentation and classification issues. The aim of this paper to introduce a new brain tumor classification model based on the intelligent segmentation and classification approaches. The main phases of the proposed model are (a) Data collection, (b) Pre-processing, (c) Tumor segmentation, and (d) Tumor Classification. Initially, the datasets related to the brain tumor are gathered from several benchmark sources and subjected to the pre-processing step. Here, it is performed by the median filtering and contrast enhancement techniques. The first contribution of this paper is the development of an enhanced segmentation approach termed as Adaptive Fuzzy Deformable Fusion (AFDF)-based Segmentation, which merges the two concepts of Fuzzy C-Means Clustering (FCM) and snake deformable approach. Here, the significant parameters of the AFDF are optimized by the improved Deer Hunting Optimization Algorithm (DHOA) termed Adaptive Coefficient Vector-based DHOA (ACV-DHOA). The classification of images is performed by the Optimized Convolutional Neural Network with Ensemble Classification (OCNN-EC) after segmenting the tumor. In the proposed deep learning classification, the number of convolutional layers and hidden neurons of CNN is optimized by the ACV-DHOA, and the fully connected layer is replaced by the ensemble classifier with Deep Neural Network (DNN), autoencoder, and Support Vector Machine (SVM). The classifier which is getting high rank is considered as the optimal one. The experimentation results are performed on the standard database that shows the high classification accuracy of the developed model by evaluating with other conventional methods.
脑肿瘤的自动分类对于加快治疗过程、制定治疗计划以及提高患者生存率起着至关重要的作用。如今,磁共振成像(MRI)被用于确定脑肿瘤。然而,脑肿瘤的人工识别完全依赖于医学专业人员的敏感度和经验。因此,为了尽量减少人为因素,已经开展了更多关于脑肿瘤分类的研究工作。检测脑肿瘤采用了不同的成像方法。不过,由于MRI图像的非电离辐射使其具有更好的图像质量,所以它是主要采用的方法。机器学习的一个主要类别是深度学习,它表现出卓越的性能,尤其在解决分割和分类问题方面。本文的目的是基于智能分割和分类方法引入一种新的脑肿瘤分类模型。所提出模型的主要阶段包括:(a)数据收集,(b)预处理,(c)肿瘤分割,以及(d)肿瘤分类。首先,从多个基准来源收集与脑肿瘤相关的数据集,并进行预处理步骤。在此,通过中值滤波和对比度增强技术来完成。本文的第一个贡献是开发了一种增强的分割方法,即基于自适应模糊可变形融合(AFDF)的分割,它融合了模糊C均值聚类(FCM)和蛇形可变形方法这两个概念。在此,AFDF的重要参数通过改进的鹿群优化算法(DHOA),即基于自适应系数向量的DHOA(ACV - DHOA)进行优化。在对肿瘤进行分割后,通过具有集成分类的优化卷积神经网络(OCNN - EC)对图像进行分类。在所提出的深度学习分类中,CNN的卷积层数和隐藏神经元数量通过ACV - DHOA进行优化,并且全连接层被由深度神经网络(DNN)、自动编码器和支持向量机(SVM)组成的集成分类器所取代。获得高排名的分类器被视为最优分类器。实验结果在标准数据库上进行,通过与其他传统方法进行评估,结果表明所开发模型具有很高的分类准确率。