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- Title
Machine Learning-Based Models for Magnetic Resonance Imaging (MRI)-Based Brain Tumor Classification.
- Authors
Asiri, Abdullah A.; Khan, Bilal; Muhammad, Fazal; ur Rahman, Shams; Alshamrani, Hassan A.; Alshamrani, Khalaf A.; Irfan, Muhammad; Alqhtani, Fawaz F.
- Abstract
In the medical profession, recent technological advancements play an essential role in the early detection and categorization of many diseases that cause mortality. The technique rising on daily basis for detecting illness in magnetic resonance through pictures is the inspection of humans. Automatic (computerized) illness detection in medical imaging has found you the emergent region in several medical diagnostic applications. Various diseases that cause death need to be identified through such techniques and technologies to overcome the mortality ratio. The brain tumor is one of the most common causes of death. Researchers have already proposed various models for the classification and detection of tumors, each with its strengths and weaknesses, but there is still a need to improve the classification process with improved efficiency. However, in this study, we give an in-depth analysis of six distinct machine learning (ML) algorithms, including Random Forest (RF), Naïve Bayes (NB), Neural Networks (NN), CN2 Rule Induction (CN2), Support Vector Machine (SVM), and Decision Tree (Tree), to address this gap in improving accuracy. On the Kaggle dataset, these strategies are tested using classification accuracy, the area under the Receiver Operating Characteristic (ROC) curve, precision, recall, and F1 Score (F1). The training and testing process is strengthened by using a 10-fold crossvalidation technique. The results show that SVM outperforms other algorithms, with 95.3% accuracy.
- Subjects
MAGNETIC resonance imaging; BRAIN tumors; TUMOR classification; RECEIVER operating characteristic curves; TECHNOLOGICAL innovations
- Publication
Intelligent Automation & Soft Computing, 2023, Vol 36, Issue 1, p299
- ISSN
1079-8587
- Publication type
Article
- DOI
10.32604/iasc.2023.032426