Abstract

This work delivers a novel technique to detect brain tumor with the help of enhanced watershed modeling integrated with a modified ResNet50 architecture. It also involves stochastic approaches to help in developing enhanced watershed modeling. Cancer diseases, primarily the brain tumor, have been exponentially raised which has alarmed researchers from academia and industry. Nowadays, researchers need to attain a more effective, accurate, and trustworthy brain tumor tissue detection and classification approach. Different from traditional machine learning methods that are just targeting to enhance classification efficiency, this work highlights the process to extract several deep features to diagnose brain tumor effectively. This paper explains the modeling of a novel technique by integrating the modified ResNet50 with the Enhanced Watershed Segmentation (EWS) algorithm for brain tumor classification and deep feature extraction. The proposed model uses the ResNet50 model with a modified layer architecture including five convolutional layers and three fully connected layers. The proposed method can retain the optimal computational efficiency with high-dimensional deep features. This work obtains a comprised feature set by retrieving the diverse deep features from the ResNet50 deep learning model and feeds them as input to the classifier. The good performing capability of the proposed model is achieved by using hybrid features of ResNet50. The brain tumor tissue images were extracted by the suggested hybrid deep feature-based modified ResNet50 model and the EWS-based modified ResNet50 model with a high classification accuracy of 92% and 90%, respectively.

Highlights

  • The last few years witnessed the great emergence of cancer as the major and deadly threat to humanity globally

  • The image augmentation technique is applied to all images and loaded into the modified ResNet50 model, and the results are obtained in the form of a ROC graph, model loss, accuracy, precision, specification, and sensitivity of the model

  • It is observed that the best result is obtained from the Enhanced Watershed Segmentation (EWS) algorithm-based modified ResNet50 model

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Summary

Introduction

The last few years witnessed the great emergence of cancer as the major and deadly threat to humanity globally. The Indian populace registration data [1] shows that nearly 8 lacs patients lose their lives every year because of cancer, becoming the second-largest chronic disease to claim human life in India. India is amongst the top three nations involving the USA and China that have the greater cancer diagnosis. It highlights the key states of India as Delhi, Tamil Nadu, and Kerala involving nearly 2000 brain tumor cases every day. The US as one of the most advanced nations with the best healthcare infrastructure too witnessed nearly 2.5 lacs of brain tumor patients and forty thousand deaths in 2017 [2]

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