An automated detection and classification of brain tumor from MRIs using Water Chaotic Fruitfly Optimization (WChFO) based Deep Recurrent Neural Network (DRNN)

IF 0.7 Q3 MEDICINE, GENERAL & INTERNAL
Imaging Pub Date : 2023-09-11 DOI:10.1556/1647.2023.00122
Rama Mohan Pasupuleti, Sarvade Pedda Venkata Subba Rao, Prema Kothandan, Samarthi Swapna Rani, Sathees Babu Shanmuganathan, Vijayaprabhu Arumugam
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引用次数: 0

Abstract

Abstract Due to the complexity of the images and dearth of anatomical models, it is highly difficult to accurately represent the various deformations in each component of the medical images. In recent years, a significant number of children and adults have affected from brain tumors, which is one of the most terrible types of disease affects the people around the world. Moreover, the Magnetic Resonance Imaging (MRI) based brain tumor detection is one of a significant study area in the field of medical imaging. Since, the use of computerized methods aids in the detection and treatment of disease by the medical professionals. The development of an automated method for the accurate detection and classification of tumors from brain MRIs. In this framework, a tanh normalization process is used to smooth out the input brain MRIs with less noise artefacts and improved quality. Then, a group feature extraction model is used to extract the relevant features from the normalized image, which includes both Speeded Up Robust Features (SURF) and Grey Level Co-occurrence Matrix (GLCM) features. The Water Chaotic Fruitfly Optimization (WChFO) method is used to identify the best features for increasing the speed of classifier training and testing processes with less time. Moreover, a Deep Recurrent Neural Network (DRNN) model is used to classify the type of brain tumor for accurate early diagnosis and treatment. The most well-known benchmarking datasets, like BRATS and Kaggle, employed for analysis in order to assess the effectiveness and results of the proposed brain tumor diagnosis system. By using the proposed WChFO-DRNN technique, the accuracy of the tumor detection system is increased to 99.2% with the sensitivity, specificity of 99% and time consumption of 0.2s.
基于水混沌果蝇优化(WChFO)的深度递归神经网络(DRNN)在mri中自动检测和分类脑肿瘤
摘要由于医学图像的复杂性和解剖模型的缺乏,准确表征医学图像各分量中的各种形变是非常困难的。近年来,有相当数量的儿童和成人受到脑瘤的影响,这是影响全世界人民的最可怕的疾病之一。此外,基于磁共振成像(MRI)的脑肿瘤检测是医学影像领域的重要研究领域之一。因此,使用计算机化方法有助于医疗专业人员发现和治疗疾病。开发一种从脑核磁共振成像中准确检测和分类肿瘤的自动化方法。在该框架中,使用tanh归一化过程平滑输入的脑mri,减少噪声伪影,提高质量。然后,利用一组特征提取模型从归一化图像中提取相关特征,该模型包括加速鲁棒特征(SURF)和灰度共生矩阵特征(GLCM);采用水混沌果蝇优化(Water Chaotic Fruitfly Optimization, WChFO)方法识别最佳特征,以更短的时间提高分类器训练和测试过程的速度。此外,采用深度递归神经网络(Deep Recurrent Neural Network, DRNN)模型对脑肿瘤进行类型分类,实现准确的早期诊断和治疗。最著名的基准数据集,如BRATS和Kaggle,用于分析,以评估所提出的脑肿瘤诊断系统的有效性和结果。采用所提出的WChFO-DRNN技术,肿瘤检测系统的准确率提高到99.2%,灵敏度为99%,特异性为99%,耗时为0.2s。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Imaging
Imaging MEDICINE, GENERAL & INTERNAL-
CiteScore
0.70
自引率
25.00%
发文量
6
审稿时长
7 weeks
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