Abstract

Brain is the most complicated and delicate anatomical structure in human body. Statistics proves that, among various brain ailments, brain tumor is most fatal and in many cases they become carcinogenic. Brain tumor is characterized by abnormal and uncontrolled growth of brain cells, and takes up space within the cranial cavity and varies in shape, size, position and characteristics viz., can be benign or malignant, which makes the detection of brain tumor very critical and challenging. The vital information a neurologist or neurosurgeon needs to have is the precise size and location of tumor in the brain and whether it is causing any swelling or compression of the brain that may need urgent attention. This paper exploits ensemble strategy based Machine Learning (ML) algorithms for reveling brain tumors. NGBoost algorithm along with 5-fold stratified cross-validation scheme is proposed as classifier model that automatically detects patients with brain tumors. The proposed method is implemented with necessary fine-tuning of parameters which is compared against ensemble based baseline classifiers such as AdaBoost, Gradient Boost, Random Forest and Extra Trees Classifier. Experimental study implies that proposed method outperforms baseline models with significantly improved efficiency. The interfering features those have impact on brain tumor classification are ranked and this ranking is retrieved from the best classifier model.

Highlights

  • In every sphere of human life ranging from communication, smart systems, and even medical diagnosis, the computer-aided technology plays a crucial role in the designing order for analysis of problems/new ideas in different areas

  • An automated tool is approached in this paper for analyzing brain Magnetic resonance imaging (MRI) image features, and the probability of brain tumor occurrences is detected

  • The use of ensemble Machine Learning (ML) techniques was utilized in this paper that identifies patients with brain abnormalities

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Summary

Objective

It is challenging to detect a brain tumor, which is very crucial and challenging. Neurologist or Neurosurgeon needs to know the size and actual location of the tumor in the brain. It is required to know whether there is any swelling in the patient or compression of the brain. If it happens immediate attention is needed for the surgeon. Brain Tumor; 5-fold CrossValidation; NGBoost; Ensemble Technique, Patient. Method: Ensemble a strategy based Machine Learning (ML) algorithm that is exploited for revealing brain tumors. NGBoost algorithm is proposed to detect brain tumors of patients. Classifier is based on 5-fold stratified cross-validation method. It is compared with ensemble based other existing Classifiers

Results
Conclusion
Introduction
Literature Survey
Proposed System and Methodology
Baseline Machine learning Classifiers
Implementation of Baseline models
Dataset and Pre-processing
Experimental Results
Conclusion and Enhancement in the Future
Full Text
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