Brain Tumor Classification From MRI Images Using Machine Learning
- URL: http://arxiv.org/abs/2407.10630v1
- Date: Mon, 15 Jul 2024 11:30:40 GMT
- Title: Brain Tumor Classification From MRI Images Using Machine Learning
- Authors: Vidhyapriya Ranganathan, Celshiya Udaiyar, Jaisree Jayanth, Meghaa P V, Srija B, Uthra S,
- Abstract summary: Brain tumor is a life-threatening problem and hampers the normal functioning of the human body.
The use of deep learning algorithms in medical imaging has resulted in significant improvements in the classification and diagnosis of brain tumors.
The objective of this project is to develop a predictive system for brain tumor detection using machine learning.
- Score: 0.24739484546803336
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Brain tumor is a life-threatening problem and hampers the normal functioning of the human body. The average five-year relative survival rate for malignant brain tumors is 35.6 percent. For proper diagnosis and efficient treatment planning, it is necessary to detect the brain tumor in early stages. Due to advancement in medical imaging technology, the brain images are taken in different modalities. The ability to extract relevant characteristics from magnetic resonance imaging (MRI) scans is a crucial step for brain tumor classifiers. Several studies have proposed various strategies to extract relevant features from different modalities of MRI to predict the growth of abnormal tumors. Most techniques used conventional methods of image processing for feature extraction and machine learning for classification. More recently, the use of deep learning algorithms in medical imaging has resulted in significant improvements in the classification and diagnosis of brain tumors. Since tumors are located at different regions of the brain, localizing the tumor and classifying it to a particular category is a challenging task. The objective of this project is to develop a predictive system for brain tumor detection using machine learning(ensembling).
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