Ensemble XMOB Approach for Brain Tumor Detection Based on Feature Extraction

Q3 Engineering
Neeru Saxena, Ajeet Singh, Sps Chauhan
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Abstract

Brain tumors are a serious health threat in adults. These fast-growing abnormal cell masses disrupt normal brain function. Doctors use various imaging techniques to identify the specific type, size, and location of brain tumors in patients. Accurately identifying and classifying brain tumors is crucial for understanding how they develop and progress. Magnetic Resonance Imaging (MRI), a well-established medical imaging technique, plays a vital role in this process by assisting radiologists in investigating the location of the tumor. Previous models frequently encounter a compromise between accuracy and computational efficiency, lacking an approach that successfully integrates both aspects.This study introduces an innovative ensemble model termed as “XMob Approach” that combines the deep features extraction abilities of Xception with computational efficiency of MobleNet for binary classification of brain Tumor. The Xmob Approach leverages the strengths of both architectures : Xception depthwise seperable convolutions allow for detailed feature extraction whereas MobileNet’s lightweight structure ensures efficient computation making it suitable for real life application. This combination aims to enhance in medical diagnostics, promising enhanced accuracy and efficiency. This study explores the potential of integrating these pre-trained architectures to provide real-time, automated diagnostic assistance, improving the speed and precision of brain tumor detection. In our methodology pre-processed MRI scans undergo feature extraction through Xception model, capturing complicated patterns indicative of tumor presence. Simultaneously MobileNet processed these images emphasizing computational efficiency without compromising on performance.The output of both the modesl are then integrated using ensemble technique to improve overall classification accuracy. By integrating the complementary strengths of Xception and MobileNet , the XMob Approach represent a significant step towards the field of medical diagnostic promising improved outcomes for patients through advanced technology. DOI: https://doi.org/10.52783/tjjpt.v45.i03.7253
基于特征提取的脑肿瘤检测集合 XMOB 方法
脑肿瘤对成年人的健康构成严重威胁。这些快速生长的异常细胞团会破坏大脑的正常功能。医生使用各种成像技术来确定患者脑肿瘤的具体类型、大小和位置。准确识别脑肿瘤并对其进行分类,对于了解脑肿瘤的发展和进程至关重要。磁共振成像(MRI)是一种成熟的医学成像技术,通过协助放射科医生调查肿瘤位置,在这一过程中发挥着至关重要的作用。本研究介绍了一种被称为 "XMob 方法 "的创新集合模型,它结合了 Xception 的深度特征提取能力和 MobleNet 的计算效率,用于脑肿瘤的二元分类。Xmob 方法充分利用了这两种架构的优势:Xception 的深度可分离卷积允许进行详细的特征提取,而 MobileNet 的轻量级结构确保了高效的计算,使其适用于现实生活中的应用。这种组合旨在提高医疗诊断的准确性和效率。本研究探索了整合这些预训练架构的潜力,以提供实时、自动的诊断帮助,提高脑肿瘤检测的速度和精度。在我们的方法中,经过预处理的核磁共振扫描图像通过 Xception 模型进行特征提取,捕捉表明肿瘤存在的复杂模式。同时,MobileNet 对这些图像进行处理,在不影响性能的前提下强调计算效率。然后,使用集合技术对两种模式的输出进行整合,以提高整体分类准确性。通过整合 Xception 和 MobileNet 的互补优势,XMob 方法向医疗诊断领域迈出了重要一步,有望通过先进技术改善患者的治疗效果。DOI: https://doi.org/10.52783/tjjpt.v45.i03.7253
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来源期刊
推进技术
推进技术 Engineering-Aerospace Engineering
CiteScore
1.40
自引率
0.00%
发文量
6610
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