Building of Informatics, Technology and Science
Vol 6 No 4 (2025): March 2025

Perbandingan Performa Arsitektur CNN Terhadap Klasifikasi Tumor Otak Menggunakan Data MRI

Saputri, Sekar Dewi Harnum (Unknown)
Lukman, Achmad (Unknown)
Irsan, Muhamad (Unknown)



Article Info

Publish Date
27 Mar 2025

Abstract

This study discusses the performance comparison of four Convolutional Neural Network (CNN) architectures in brain tumor classification using histopathology images. CNN has proven its effectiveness in improving the accuracy and efficiency of image-based medical diagnosis. This study compares four popular architectures, namely ResNet, AlexNet, InceptionNet, and VGG12, using a histopathology image dataset with a total of 2,145 images divided into training (70%), validation (15%), and testing (15%) subsets. The results show that the VGG12 model achieves the best accuracy of 98.0%, followed by InceptionNet with an accuracy of 97.3%. The ResNet model achieves an accuracy of 94.3%, while AlexNet has an accuracy of 93.2%. In addition, the VGG12 model shows consistent performance with high precision, recall, and F1-Score values, making it a superior choice for medical applications. This study provides in-depth insights into the advantages and limitations of each CNN architecture, as well as implementation guidelines to support the development of image-based medical diagnosis applications efficiently and accurately.

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Journal Info

Abbrev

bits

Publisher

Subject

Computer Science & IT

Description

Building of Informatics, Technology and Science (BITS) is an open access media in publishing scientific articles that contain the results of research in information technology and computers. Paper that enters this journal will be checked for plagiarism and peer-rewiew first to maintain its quality. ...