利用迁移学习模型进行脑肿瘤检测和分类

CC 2023 Pub Date : 2024-02-28 DOI:10.3390/engproc2024062001
Vinod Kumar Dhakshnamurthy, Murali Govindan, Kannan Sreerangan, Manikanda Devarajan Nagarajan, Abhijith Thomas
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引用次数: 0

摘要

:诊断脑肿瘤是一个耗时的过程,需要放射科医生的专业知识。随着患者人数的增加和数据量的增大,传统程序变得昂贵而无效。学者们探索了检测和分类脑肿瘤的算法,重点关注精确度和效率。深度学习方法正被用于创建自动系统,以精确高效地诊断或分割脑肿瘤,尤其是在脑癌分类方面。这种方法有助于医学成像中的迁移学习模型。本研究评估了计算机视觉领域的三个基础模型,即 AlexNet、VGG16 和 ResNet-50。VGG16 和 ResNet-50 模型的性能值得称赞,因此将这些模型合并为一个开创性的 VGG16-ResNet-50 混合模型。随后,在数据集上实施了混合模型,其准确率达到 99.98%,灵敏度达到 99.98%,特异度达到 99.98%,F1 分数达到 99.98%。根据与其他模型的比较分析,可以推断出所建议的框架在促进及时识别各种脑肿瘤方面表现出了值得称赞的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Brain Tumor Detection and Classification Using Transfer Learning Models
: Diagnosing brain tumors is a time-consuming process requiring radiologist expertise. With the growing patient population and increased data volume, conventional procedures have become expensive and ineffective. Scholars have explored algorithms for detecting and classifying brain tumors, focusing on precision and efficiency. Deep learning methodologies are being used to create automated systems that can diagnose or segment brain tumors with precision and efficiency, particularly in brain cancer classification. This approach facilitates transfer learning models in medical imaging. The present study undertakes an evaluation of three foundational models in the domain of computer vision, namely AlexNet, VGG16, and ResNet-50. The VGG16 and ResNet-50 models demonstrated praiseworthy performance, thereby instigating the amalgamation of these models into a groundbreaking hybrid VGG16–ResNet-50 model. The amalgamated model was subsequently implemented on the dataset, yielding a remarkable accuracy of 99.98%, sensitivity of 99.98%, and specificity of 99.98% with an F1 score of 99.98%. Based on a comparative analysis with alternative models, it can be deduced that the suggested framework exhibits a commendable level of dependability in facilitating the timely identification of diverse cerebral neoplasms.
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