Enhanced Deep Learning Models for Efficient Stroke Detection Using MRI Brain Imagery

Main Article Content

Anitha Patil
Suresh Kumar Govindaraj

Abstract

Deep learning models are widely used for solving problems in different applications. Especially Convolutional Neural Network (CNN) based models are found suitable for medical image analysis. As brain stroke is increasing in alarming rate, it is essential to have better approaches to detect it in time. Brain MRI is one of the medical imaging technologies widely used for brain imaging.we proposed certain advancements to well-known deep learning models like VGG16, ResNet50 and DenseNet121 for enhancing brain stroke detection performance. These models are optimized based on the brain stroke detection problem in hand as they are not specialized for a specific problem. We proposed an algorithm, named Deep Efficient Stroke Detection (ESD), that exploids enhanced deep learning models in pipeline. The experimental results revealed that there is performance improvement with optimized models. Highest accuracy is achieved by ResNet50 with 95.67%.

Article Details

How to Cite
Patil, A. ., & Govindaraj, S. K. . (2023). Enhanced Deep Learning Models for Efficient Stroke Detection Using MRI Brain Imagery. International Journal on Recent and Innovation Trends in Computing and Communication, 11(3), 191–198. https://doi.org/10.17762/ijritcc.v11i3.6335
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Articles

References

Stier, Noah; Vincent, Nicholas; Liebeskind, David and Scalzo, Fabien (2015). IEEE International Conference on Bioinformatics and Biomedicine (BIBM) - Deep learning of tissue fate features in acute ischemic stroke. , p1316–1321.

Subudhi, Asit; Acharya, U. Rajendra; Dash, Manasa; Jena, Subhransu and Sabut, Sukanta (2018). Automated approach for detection of ischemic stroke using Delaunay Triangulation in brain MRI images. Computers in Biology and Medicine, p1-35.

Ramos-Murguialday, Ander; Broetz, Doris; Rea, Massimiliano; Läer, Leonhard; Yilmaz, Özge; Brasil, Fabricio L.; Liberati, Giulia; Curado, Marco R.; Garcia-Cossio, Eliana; Vyziotis, Alexandros; Cho, Woosang; Agostini, Manuel; Soares, Ernesto; Soekadar, Surjo; Caria, Andrea; Cohen, Leonardo G. And Birbaumer, Niels (2013). Brain-machine interface in chronic stroke rehabilitation: A controlled study. Annals of Neurology, 74(1), p100–108.

Soekadar, Surjo R.; Birbaumer, Niels; Slutzky, Marc W. and Cohen, Leonardo G. (2014). Brain–machine interfaces in neurorehabilitation of stroke. Neurobiology of Disease, p1-8.

C, B. (2021). Machine Learning for Interpretation of Brain Images: A Detailed Analysis through survey. 2021 International Conference on Computing, Communication, and Intelligent Systems (ICCCIS). P1-6.

Selvikvåg Lundervold, Alexander and Lundervold, Arvid (2018). An overview of deep learning in medical imaging focusing on MRI. Zeitschrift für Medizinische Physik, p1-26.

Caria, Andrea; da Rocha, Josué Luiz Dalboni; Gallitto, Giuseppe; Birbaumer, Niels; Sitaram, Ranganatha and Murguialday, Ander Ramos (2019). Brain–Machine Interface Induced Morpho-Functional Remodeling of the Neural Motor System in Severe Chronic Stroke. Neurotherapeutics, p1-16.

Chauhan, Sucheta; Vig, Lovekesh; De Filippo De Grazia, Michele; Corbetta, Maurizio; Ahmad, Shandar and Zorzi, Marco (2019). A Comparison of Shallow and Deep Learning Methods for Predicting Cognitive Performance of Stroke Patients From MRI Lesion Images. Frontiers in Neuroinformatics, 13, p1-12.

Akkus, Zeynettin; Galimzianova, Alfiia; Hoogi, Assaf; Rubin, Daniel L. and Erickson, Bradley J. (2017). Deep Learning for Brain MRI Segmentation: State of the Art and Future Directions. Journal of Digital Imaging, p1-11.

Myung, M. J., Lee, K. M., Kim, H.-G., Oh, J., Lee, J. Y., Shin, I. And Lee, J. S. (2021). Novel Approaches to Detection of Cerebral Microbleeds: Single Deep Learning Model to Achieve a Balanced Performance. Journal of Stroke and Cerebrovascular Diseases, 30(9), 105886. P1-19.

Karthik, R.; Menaka, R.; Johnson, Annie and Anand, Sundar (2020). Neuroimaging and deep learning for brain stroke detection - A review of recent advancements and future prospects. Computer Methods and Programs in Biomedicine, 197,p1-17.

Suk, Heung-Il; Lee, Seong-Whan and Shen, Dinggang (2017). Deep ensemble learning of sparse regression models for brain disease diagnosis. Medical Image Analysis, 37, p101–113.

Sabaa Ahmed Yahya Al Galal, Imad Fakhri Taha Alshaikhli and M. M. Abdulrazzaq (2021). MRI brain tumor medical images analysis using deep learning techniques: a systematic review. Springer, p1-16.

Saba, Tanzila; Sameh Mohamed, Ahmed; El-Affendi, Mohammad; Amin, Javeria and Sharif, Muhammad (2020). Brain tumor detection using fusion of hand crafted and deep learning features. Cognitive Systems Research, 59, p221–230.

Wood, D. A., Kafiabadi, S., Al Busaidi, A., Guilhem, E. L., Lynch, J., Townend, M. K. and Booth, T. C. (2021). Deep learning to automate the labelling of head MRI datasets for computer vision applications. European Radiology. P1-12.

Liu, Saifeng; Utriainen, David; Chai, Chao; Chen, Yongsheng; Wang, Lin; Sethi, Sean K.; Xia, Shuang and Haacke, E. Mark (2019). Cerebral microbleed detection using Susceptibility Weighted Imaging and deep learning. NeuroImage, 198, p271–282.

Wang, Kai; Shou, Qinyang; Ma, Samantha J.; Liebeskind, David; Qiao, Xin J.; Saver, Jeffrey; Salamon, Noriko; Kim, Hosung; Yu, Yannan; Xie, Yuan; Zaharchuk, Greg; Scalzo, Fabien and Wang, Danny J.J. (2019). Deep Learning Detection of Penumbral Tissue on Arterial Spin Labeling in Stroke. Stroke, p1-9.

Holzinger, Andreas (2016). Machine Learning for Health Informatics Volume 9605 || Deep Learning Trends for Focal Brain Pathology Segmentation in MRI. , 10.1007/978-3-319-50478-0(Chapter 6), p125–148.

Kim, Chulho; Zhu, Vivienne; Obeid, Jihad; Lenert, Leslie; Shawe-Taylor, John (2019). Natural language processing and machine learning algorithm to identify brain MRI reports with acute ischemic stroke. PLOS ONE, 14(2), p1-13.

Ashwini Kadam1. (2020). Detection and Classification of Brain Hemorrhage Using Ensemble Learning. International Journal of Research and Analytical Reviews (IJRAR). 7 (1), p520-521.

Anupama, C. S. S.; Sivaram, M.; Lydia, E. Laxmi; Gupta, Deepak and Shankar, K. (2020). Synergic deep learning modelâ?“based automated detection and classification of brain intracranial hemorrhage images in wearable networks. Personal and Ubiquitous Computing, p1-10.

Talo, Muhammed; Baran Baloglu, Ulas; Y?ld?r?m, Özal and Rajendra Acharya, U (2018). Application Of Deep Transfer Learning For Automated Brain Abnormality Classification Using Mr Images. Cognitive Systems Research, p1-27.

Rajendra Acharya, U.; Meiburger, Kristen M.; Faust, Oliver; En Wei Koh, Joel; Lih Oh, Shu; Ciaccio, Edward J.; Subudhi, Asit; Jahmunah, V. and Sabut, Sukanta (2019). Automatic detection of ischemic stroke using higher order spectra features in brain MRI images. Cognitive Systems Research,p1-19.

Kaggle Datasets. Retrieved from https://www.kaggle.com/datasets