Utilising VGG-16 of Convolutional Neural Network for Medical Image Classification

Amelia Ritahani Ismail, Syed Qamrun Nisa, Shahida Adila Shaharuddin, Syahmi Irdina Masni, Syaza Athirah Suharudin Amin
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Abstract

Medical image classification, which involves accurately classifying anomalies or abnormalities within images, is an important area of attention in healthcare domain. It requires a fast and exact classification to ensure appropriate and timely treatment to the patients. This paper introduces a model based on Convolutional Neural Network (CNN) that utilises the VGG16 architecture for medical image classification, specifically in brain tumour and Alzheimer dataset. The VGG16 architecture, is known for its remarkable ability to extract important features, that is crucial in medical image classification. To enhance the precision of diagnosis, a detailed experimental setup is conducted, which includes the careful selection and organisation of a collection of medical images that cover different illnesses and anomalies to the dataset. The architecture of the model is then adjusted to achieve optimal performance in for image classification. The results show the model's efficiency in identifying anomalies in medical images especially for brain tumour dataset. The sensitivity, specificity, and F1-score evaluation metrics are presented, emphasising the model's ability to accurately differentiate between various medical image diseases.
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利用卷积神经网络的 VGG-16 进行医学图像分类
医学图像分类涉及对图像中的异常或异常现象进行准确分类,是医疗保健领域的一个重要关注领域。它需要快速、准确的分类,以确保为患者提供适当、及时的治疗。本文介绍了一种基于卷积神经网络(CNN)的模型,该模型利用 VGG16 架构进行医学图像分类,特别是在脑肿瘤和老年痴呆症数据集中。VGG16 架构以其提取重要特征的卓越能力而著称,这在医学图像分类中至关重要。为了提高诊断的精确度,我们进行了详细的实验设置,包括精心选择和组织涵盖不同疾病和异常数据集的医学图像集合。然后对模型的架构进行调整,以实现图像分类的最佳性能。结果表明,该模型能有效识别医学图像中的异常情况,尤其是脑肿瘤数据集。灵敏度、特异性和 F1 分数等评价指标都得到了展示,强调了该模型准确区分各种医学影像疾病的能力。
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