Klasifikasi Tumor Otak pada Citra MRI Menggunakan Transfer Learning EfficientNetB1 dan Visualisasi Grad-CAM

Authors

  • Suyanti UNAMA
  • Chandy Ophelia S Universitas Dinamika Bangsa
  • Lies Aryani Universitas Dinamika Bangsa
  • Chindra Saputra Universitas Dinamika Bangsa
  • Prayitno Universitas Dinamika Bangsa

DOI:

https://doi.org/10.33998/jms.2026.6.1.2782

Keywords:

tumor otak, MRI, EfficientNet, transfer learning, Grad-CAM, pipeline.

Abstract

Magnetic resonance imaging (MRI) provides rich anatomical contrast for brain tumor assessment, yet routine interpretation remains time-intensive and demands high precision. This work develops a pipeline for four-class brain MRI image classification (glioma, meningioma, pituitary tumor, and no tumor) by combining automated brain-region cropping, data augmentation, and transfer learning with EfficientNetB1. Experimental results demonstrate exceptional performance, achieving an overall accuracy of 0.99 (99%) on the test set. Specifically, the model reached an F1-score of 1.00 for the no tumor class, 0.99 for pituitary, and 0.98 for both glioma and meningioma classes. Beyond reporting numerical performance, the study utilizes Grad-CAM heatmaps to verify that predictions rely on clinically plausible regions rather than spurious background cues. These results indicate that an efficiency-oriented backbone, paired with systematic preprocessing, can achieve reliable and interpretable performance for brain tumor classification tasks.

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Published

2026-03-31

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DOI:

10.33998/jms.2026.6.1.2782

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How to Cite

Suyanti, Ophelia S, C., Aryani, L., Saputra, C., & Prayitno. (2026). Klasifikasi Tumor Otak pada Citra MRI Menggunakan Transfer Learning EfficientNetB1 dan Visualisasi Grad-CAM. Jurnal Manajemen Teknologi Dan Sistem Informasi (JMS), 6(1), 1307–1314. https://doi.org/10.33998/jms.2026.6.1.2782

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