基于注意力的高级预训练迁移学习模型用于MRI图像中脑肿瘤的准确检测和分类

IF 1 Q4 OPTICS
A. Priya, V. Vasudevan
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引用次数: 0

摘要

使用核磁共振成像识别脑肿瘤涉及对脑组织的详细检查,以检测和表征肿瘤。传统的ML和DL算法有时会因为缺乏标记数据而遇到困难,从而导致性能差和泛化差。为了解决这些问题,本研究引入了一种基于高级注意的预训练迁移学习(TL)模型,该模型可以提高使用MRI图像识别和分类脑肿瘤的准确性和弹性。该方法从预处理开始,其中包括图像缩放和自适应中值滤波器的降噪。经过预处理后,这些图像被输入到一个基于cnn的框架中,这个框架被称为“预训练的注意力融合图像频谱网”。该框架由5个卷积层组成,之后加入ReLU激活层和池化层,逐步学习更复杂的特征。实现了一种新的自注意层来捕获揭示异常组织模式的深层特征,从而提高了模型的可解释性和准确性。该方法采用全局平均池化层来降低计算复杂度,同时采用全连接层进行批归一化处理,以保证训练过程中的稳定性和收敛性。最后一层使用softmax对正常、垂体、胶质瘤和脑膜瘤进行分类。利用Adam优化器,建议的方法提高了性能,产生了出色的指标,如98.33%的准确率、98.35%的精度、98.28%的召回率和98.31%的f1分数。与现有的ML和DL方法相比,这些措施显示出相当大的提高,证明了该系统提高脑肿瘤检测准确性的能力。这些治疗方法的进步对及时识别脑肿瘤的医学专业人员具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Advanced Attention-Based Pre-Trained Transfer Learning Model for Accurate Brain Tumor Detection and Classification from MRI Images

Advanced Attention-Based Pre-Trained Transfer Learning Model for Accurate Brain Tumor Detection and Classification from MRI Images

Brain tumor identification using MRI images involves the detailed examination of brain tissues to detect and characterize tumors. Conventional ML and DL algorithms sometimes encounter difficulties due to a lack of labelled data, resulting in inferior performance and poor generalization. To address these issues, this study introduces an Advanced Attention-based Pre-trained Transfer Learning (TL) model that enhances accuracy and resilience in identifying and categorizing brain tumors using MRI images. The methodology starts with pre-processing, which includes image scaling and noise reduction with an adaptive median filter. After pre-processing, the images are fed into a CNN-based framework called Pre-trained Attention-fused Image SpectraNet. This framework comprises of five convolutional layers, after which Rectified Linear Unit (ReLU) activation and pooling layers are added to learn progressively more complex features. A novel self-attention layer is implemented to capture deep features that reveal aberrant tissue patterns, hence increasing model interpretability and accuracy. A globally average pooling layer is employed to reduce computational complexity, and it is accompanied by a fully connected layer with batch normalization to assure stability and convergence during training. The last layer uses softmax to categorize normal, pituitary, glioma, and meningioma. Utilizing the Adam optimizer, the suggested approach enhances performance, yielding excellent metrics such as 98.33% accuracy, 98.35% precision, 98.28% recall, and a 98.31% F1-score. These measures show considerable increases over existing ML and DL methods, demonstrating the system’s ability to improve brain tumor detection accuracy. The advancement of these treatments has significant implications for medical professionals who specialize in the timely identification of brain tumors.

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来源期刊
CiteScore
1.50
自引率
11.10%
发文量
25
期刊介绍: The journal covers a wide range of issues in information optics such as optical memory, mechanisms for optical data recording and processing, photosensitive materials, optical, optoelectronic and holographic nanostructures, and many other related topics. Papers on memory systems using holographic and biological structures and concepts of brain operation are also included. The journal pays particular attention to research in the field of neural net systems that may lead to a new generation of computional technologies by endowing them with intelligence.
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