An Optimized Deep Learning Model with Feature Fusion for Brain Tumor Detection

IF 0.3
Suraj Patil, Dnyaneshwar Kirange
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引用次数: 0

Abstract

The automatic detection of brain tumor from large volumes of MRI images using deep learning is a issue that necessitates substantial computing resources. So,in this study, a brain tumor detection framework using feature fusion from optimized shallow and deep learning models is proposed that efficiently detects different types of tumors. The human brain is a 3D object and the intensity of abnormal tissue varies as per location. As a result, incorporating surrounding tissue into tumor region can help to discriminate between the type of tumor and its severity. To extract deep characteristics from tumor region and adjacent tissues, deep models such as Inception-V3 is employed using transfer learning. Deep features are especially important in tumour detection, however as the network size grows, certain low-level insights about tumor are lost. As a result, a novel optimized shallow model is designed to extract low-level features. To overcome this limitation of information loss, deep and shallow features are fused. Our extensive simulation and experiment done on a publicly available benchmark dataset shows that an optimized hybrid deep learning model with ROI expansion improves tumor detection accuracy by 9\%. These findings support the theory that the tissues adjacent to the tumor contain unique information and feature fusion compensates for information loss.
基于特征融合的脑肿瘤检测优化深度学习模型
利用深度学习从大量MRI图像中自动检测脑肿瘤是一个需要大量计算资源的问题。因此,本研究提出了一种基于优化的浅学习和深度学习模型特征融合的脑肿瘤检测框架,可以有效地检测不同类型的肿瘤。人脑是一个三维物体,异常组织的强度随位置的不同而变化。因此,将肿瘤周围组织纳入肿瘤区域有助于区分肿瘤类型及其严重程度。为了从肿瘤区域和邻近组织中提取深度特征,采用了迁移学习的Inception-V3等深度模型。深度特征在肿瘤检测中尤为重要,然而随着网络规模的增长,一些关于肿瘤的低层次信息会丢失。因此,设计了一种新的优化浅层模型来提取底层特征。为了克服这种信息丢失的限制,将深特征和浅特征融合在一起。我们在公开可用的基准数据集上进行的广泛模拟和实验表明,具有ROI扩展的优化混合深度学习模型将肿瘤检测准确率提高了9%。这些发现支持了肿瘤附近组织包含独特信息和特征融合补偿信息丢失的理论。
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
International Journal of Next-Generation Computing
International Journal of Next-Generation Computing COMPUTER SCIENCE, THEORY & METHODS-
自引率
66.70%
发文量
60
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