A System for Diagnosing Alzheimer’s Disease from Brain MRI Images Using Deep Learning Algorithm

Authors

  • S. Neelavthi  Department of ECE, Sir ISAAC Newton college of Engineering and Technology, Papakovil, Nagapattinam, India
  • P. Arunkumar  Department of ECE, Sir ISAAC Newton college of Engineering and Technology, Papakovil, Nagapattinam, India

DOI:

https://doi.org/10.32628/CSEIT2390530

Keywords:

Alzheimer's condition, Magnetic Reasoning imaging, Deep learning, Brain disorder

Abstract

In addition to their vulnerability, the complexity of the operations, and the high expenses, disorders of the brain are one of the most challenging diseases to treat. However, because the outcome is unpredictable, the procedure itself does not need to be successful. One of the most prevalent brain diseases in adults, hypertension, can cause varying degrees of memory loss and forgetfulness. Depending on each patient's situation. For these reasons, it's crucial to define memory loss, determine the patient's level of decline, and determine his brain MRI scans are used to identify Alzheimer's disease. In this thesis, we discuss methods and approaches for diagnosing Alzheimer's disease using deep learning. The suggested approach is utilized to enhance patient care, lower expenses, and enable quick and accurate analysis in sizable investigations. Modern deep learning techniques have lately successfully demonstrated performance at the level of a human in various domains, including medical image processing. We propose a deep convolutional network for diagnosing Alzheimer's disease based on the analysis of brain MRI data. Our model outperforms other models for early detection of current techniques because it can distinguish between different stages of Alzheimer's disease.

References

  1. Chen, Gang, et al. "Classification of Alzheimer disease, mild cognitive impairment, and normal cognitive status with large-scale network analysis based on resting-state functional MR imaging." Radiology 259.1 (2011): 213-221.
  2. Jo, Taeho, Kwangsik Nho, and Andrew J. Saykin. "Deep learning in Alzheimer’s disease: diagnostic classification and prognostic prediction using neuroimaging data." Frontiers in aging neuroscience 11 (2019): 220.
  3. Basaia, Silvia, et al. "Automated classification of Alzheimer's disease and mild cognitive impairment using a single MRI and deep neural networks." NeuroImage: Clinical 21 (2019): 101645.
  4. Kwon, Goo-Rak, Yubraj Gupta, and Ramesh Kumar Lama. "Prediction and classification of Alzheimer’s disease based on combined features from apolipoprotein-E genotype, cerebrospinal fluid, MR, and FDG-PET imaging biomarkers." Frontiers in computational neuroscience 13 (2019): 72.
  5. Bryan, R. Nick. "Machine learning applied to Alzheimer disease." (2016): 665-668.
  6. Shelke, Sanjay M., and Sharad W. Mohod. "A Survey on Automated Brain Tumor Detection and Segmentation from MRI." International Research Journal of Engineering and Technology (IRJET) 5.04 (2018).
  7. Pereira, Sérgio, Victor Alves, and Carlos A. Silva. "Adaptive feature recombination and recalibration for semantic segmentation: application to brain tumor segmentation in MRI." International Conference on Medical Image Computing and Computer-Assisted Intervention. Springer, Cham, 2018.
  8. Pereira, Sérgio, et al. "Brain tumor segmentation using convolutional neural networks in MRI images." IEEE transactions on medical imaging 35.5 (2016): 1240-1251.
  9. Işın, Ali, Cem Direkoğlu, and Melike Şah. "Review of MRI-based brain tumor image segmentation using deep learning methods." Procedia Computer Science 102 (2016): 317-324.
  10. El-Dahshan, El-Sayed Ahmed, Tamer Hosny, and Abdel-Badeeh M. Salem. "Hybrid intelligent techniques for MRI brain images classification." Digital Signal Processing 20.2 (2010): 433-441.

Downloads

Published

2023-10-30

Issue

Section

Research Articles

How to Cite

[1]
S. Neelavthi, P. Arunkumar, " A System for Diagnosing Alzheimer’s Disease from Brain MRI Images Using Deep Learning Algorithm" International Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 9, Issue 5, pp.244-254, September-October-2023. Available at doi : https://doi.org/10.32628/CSEIT2390530