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Related Experiment Video

Updated: Sep 10, 2025

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Improved brain tumor classification through DenseNet121 based transfer learning.

Mehwish Rasheed1, Muhammad Arfan Jaffar1, Arslan Akram1,2,3

  • 1Faculty of Computer Science and Information Technology, The Superior University, Lahore, 54600, Pakistan.

Discover Oncology
|August 27, 2025
PubMed
Summary
This summary is machine-generated.

This study introduces an automated method for brain tumor classification using DenseNet121 and MRI scans. The approach achieves 96.90% accuracy, improving diagnostic speed and precision for various tumor types.

Keywords:
Deep learningDenseNet121Multiclass brain tumor classificationTransfer learning

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Area of Science:

  • Medical Imaging
  • Artificial Intelligence
  • Oncology

Background:

  • Early and accurate brain tumor diagnosis is critical for effective treatment.
  • Current diagnostic methods are often time-consuming and rely on manual interpretation.
  • Limitations in existing methods necessitate advanced automated solutions.

Purpose of the Study:

  • To develop an automated system for brain tumor classification using MRI data.
  • To leverage DenseNet121 architecture with transfer learning for improved diagnostic accuracy.
  • To enhance the speed and precision of brain tumor detection and classification.

Main Methods:

  • Utilized the DenseNet121 architecture with transfer learning for brain tumor detection.
  • Trained the model on a Kaggle dataset of MRI scans.
  • Preprocessed MRI images, including resizing, to minimize noise and improve model performance.
  • Classified brain tissues into four categories: benign tumors, gliomas, meningiomas, and pituitary gland malignancies.

Main Results:

  • Achieved an average accuracy of 96.90% in multi-class brain tumor classification.
  • Demonstrated superior performance compared to manual interpretation and other machine learning models.
  • The DenseNet121 approach offers increased accuracy, reduced analysis time, and minimal human input.

Conclusions:

  • The proposed automated method significantly improves the accuracy and speed of brain tumor diagnosis from MRI scans.
  • This approach offers a consistent and predictable alternative to conventional diagnostic techniques, reducing the impact of human error.
  • The developed deep learning model holds promise for advancing MRI-based classification research and clinical applications in neuro-oncology.