Classifying alzheimer's disease from SMRI data using a hybrid deep learning approaches
DOI:
https://doi.org/10.56294/sctconf2024651Keywords:
Alzheimer's Disease, sMRI, Deep Learning, SegNet; ResNetAbstract
The chance of developing "Alzheimer's Disease (AD)" increases every 5 years after 65 years of age, making it a particularly common form of neurodegenerative disorder among the older population. The use of "Magnetic Resonance Imaging (MRI)" to diagnose AD has grown in popularity in recent years. A further benefit of MRI is that it provides excellent contrast and exquisite structural detail. As a result, some studies have used biological markers backed by "structural MRI (sMRI)" to separate AD populations, which indicate differences in brain tissue size and degradation of the nervous system. The lack of properly segmented regions and essential features by the existing models might affect classification accuracy for AD. The categorization of AD in this study is based on sMRI. In this research, the hybrid Deep-Learning Models "SegNet and ResNet (SegResNet)" have been proposed for segmentation, feature extraction, and to classify the AD. SegNet network is used to identify and segment specific brain areas. Edges and circles are the SegNet's first levels, whereas the deeper layers acquire more nuanced and useful features. SegNet's last deconvolution layer produces a wide range of segmented images linked to the 3 categorization labels "Cognitive Normal (CN)", "Mild Cognitive Impairment (MCI)", and "AD" which the machine has earlier found out. To increase classification performance, the attributes of each segmented sMRI image serve as strong features of the labels. To enhance the feature information used for classification, a feature vector is built by combining the values of the pixel intensity of the segmented sMRI images. ResNet-101 classifiers are then used for characterizing vectors to identify the presence or absence of AD or MCI in each sMRI image. In terms of detection and classification accuracy, the proposed SegResNet Model is superior to the existing KNN, EFKNN, AANFIS, and ACS approaches
References
1. Abrol, M. Bhattarai, A. Fedorov, Y. Du, S. Plis, and V. Calhoun, ‘‘Deep residual learning for neuroimaging: An application to predict progression to Alzheimer’s disease,’’ J. Neurosci. Methods, vol. 339, 2020, Art. no. 108701.
2. Basher, B. C. Kim, K. H. Lee, and H. Y. Jung, ‘‘Volumetric feature-based Alzheimer’s disease diagnosis from sMRI data using a convolutional neural network and a deep neural network,’’ IEEE Access, vol. 9, pp. 29870–29882, 2021.
3. Amado DPA, Diaz FAC, Pantoja R del PC, Sanchez LMB. Benefits of Artificial Intelligence and its Innovation in Organizations. AG Multidisciplinar 2023;1:15-15. https://doi.org/10.62486/agmu202315.
4. Batista-Mariño Y, Gutiérrez-Cristo HG, Díaz-Vidal M, Peña-Marrero Y, Mulet-Labrada S, Díaz LE-R. Behavior of stomatological emergencies of dental origin. Mario Pozo Ochoa Stomatology Clinic. 2022-2023. AG Odontologia 2023;1:6-6. https://doi.org/10.62486/agodonto20236.
5. Bhatele KR, Bhadauria SS (2020) Brain structural disorders detection and classification approaches: a review. Artif Intell Rev 53(5):3349–3401.
6. Caero L, Libertelli J. Relationship between Vigorexia, steroid use, and recreational bodybuilding practice and the effects of the closure of training centers due to the Covid-19 pandemic in young people in Argentina. AG Salud 2023; 1:18. https://doi.org/10.62486/agsalud202318.
7. Cavalcante L de FB. Feminicide from the perspective of the cultural mediation of information. Advanced Notes in Information Science 2023;5:24-48. https://doi.org/10.47909/978-9916-9906-9-8.72.
8. Chalan SAL, Hinojosa BLA, Claudio BAM, Mendoza OAV. Quality of service and customer satisfaction in the beauty industry in the district of Los Olivos. SCT Proceedings in Interdisciplinary Insights and Innovations 2023;1:5-5. https://doi.org/10.56294/piii20235.
9. Chávez JJB, Trujillo REO, Hinojosa BLA, Claudio BAM, Mendoza OAV. Influencer marketing and the buying decision of generation «Z» consumers in beauty and personal care companies. SCT Proceedings in Interdisciplinary Insights and Innovations 2023;1:7-7. https://doi.org/10.56294/piii20237.
10. D. P. Veitch, M. W. Weiner, P. S. Aisen, L. A. Beckett, N. J. Cairns, R. C. Green, D. Harvey, C. R. Jack, W. Jagust, J. C. Morris, R. C. Petersen, A. J. Saykin, L. M. Shaw, A.W. Toga, and J. Q. Trojanowski, ``Understanding disease progression and improving Alzheimer's disease clinical trials: Recent highlights from the Alzheimer's disease neuroimaging initiative,'' Alzheimer's Dementia, vol. 15, no. 1, pp. 106-152, 2019.
11. Diaz DPM. Staff turnover in companies. AG Managment 2023;1:16-16. https://doi.org/10.62486/agma202316.
12. Espinosa JCG, Sánchez LML, Pereira MAF. Benefits of Artificial Intelligence in human talent management. AG Multidisciplinar 2023;1:14-14. https://doi.org/10.62486/agmu202314.
13. Figueredo-Rigores A, Blanco-Romero L, Llevat-Romero D. Systemic view of periodontal diseases. AG Odontologia 2023;1:14-14. https://doi.org/10.62486/agodonto202314.
14. G. Folego, M. Weiler, R. F. Casseb, R. Pires, and A. Rocha, ‘‘Alzheimer’s disease detection through whole-brain 3D-CNN MRI,’’ Frontiers Bioeng.Biotechnol., vol. 8, p. 1193, Oct. 2020.
15. Gonzalez-Argote J, Castillo-González W. Productivity and Impact of the Scientific Production on Human-Computer Interaction in Scopus from 2018 to 2022. AG Multidisciplinar 2023;1:10-10. https://doi.org/10.62486/agmu202310.
16. Hernández-Flórez N. Breaking stereotypes: “a philosophical reflection on women criminals from a gender perspective". AG Salud 2023;1:17-17. https://doi.org/10.62486/agsalud202317.
17. Hinojosa BLA, Mendoza OAV. Perceptions on the use of Digital Marketing of the micro-entrepreneurs of the textile sector of the Blue Gallery in the emporium of Gamarra. SCT Proceedings in Interdisciplinary Insights and Innovations 2023;1:9-9. https://doi.org/10.56294/piii20239.
18. J. Liu, M. Li, Y. Luo, S. Yang, W. Li, and Y. Bi, ‘‘Alzheimer’s disease detection using depthwise separable convolutional neural networks,’’ Comput. Methods Programs Biomed., vol. 203, May 2021, Art. no. 106032.
19. J. Zhang, B. Zheng, A. Gao, X. Feng, D. Liang, and X. Long, ``A 3D densely connected convolution neural network with connection-wise attention mechanism for Alzheimer's disease classification,'' Magn. Reson. Imag., vol. 78, pp. 119-126, May 2021.
20. Lamorú-Pardo AM, Álvarez-Romero Y, Rubio-Díaz D, González-Alvarez A, Pérez-Roque L, Vargas-Labrada LS. Dental caries, nutritional status and oral hygiene in schoolchildren, La Demajagua, 2022. AG Odontologia 2023;1:8-8. https://doi.org/10.62486/agodonto20238.
21. Ledesma-Céspedes N, Leyva-Samue L, Barrios-Ledesma L. Use of radiographs in endodontic treatments in pregnant women. AG Odontologia 2023;1:3-3. https://doi.org/10.62486/agodonto20233.
22. Lee, B.; Yamanakkanavar, N.; Choi, J.Y. Automatic segmentation of brain MRI using a novel patch-wise U-net deep architecture. PLoS ONE 2020, 15, e0236493.
23. Lopez ACA. Contributions of John Calvin to education. A systematic review. AG Multidisciplinar 2023;1:11-11. https://doi.org/10.62486/agmu202311.
24. M. A. DeTure and D. W. Dickson, ``The neuropathological diagnosis of Alzheimer's disease,'' Mol. Neurodegeneration, vol. 14, no. 1, pp. 1-18, Aug. 2019.
25. M. Emmanuel and J. Jabez, "An Advanced Adaptive Neuro-Fuzzy Inference System for Classifying Alzheimer's Disease Stages From SMRI Images," 2023 Advanced Computing and Communication Technologies for High-Performance Applications (ACCTHPA), Ernakulam, India, 2023, pp. 1-8, doi: 10.1109/ACCTHPA57160.2023.10083347.
26. M. Liu, F. Li, H. Yan, K. Wang, Y. Ma, L. Shen, and M. Xu, ‘‘A multi-model deep convolutional neural network for automatic hippocampus segmentation and classification in Alzheimer’s disease,’’ NeuroImage, vol. 208, Mar. 2020, Art. no. 116459.
27. Marcillí MI, Fernández AP, Marsillí YI, Drullet DI, Isalgué RF. Older adult victims of violence. Satisfaction with health services in primary care. SCT Proceedings in Interdisciplinary Insights and Innovations 2023;1:12-12. https://doi.org/10.56294/piii202312.
28. Marcillí MI, Fernández AP, Marsillí YI, Drullet DI, Isalgué VMF. Characterization of legal drug use in older adult caregivers who are victims of violence. SCT Proceedings in Interdisciplinary Insights and Innovations 2023;1:13-13. https://doi.org/10.56294/piii202313.
29. Mathews Emmanuel, & Jabez, J. (2022). An Enhanced Fuzzy Based KNN Classification Method for Alzheimer's Disease Identification from SMRI Images. JOURNAL OF ALGEBRAIC STATISTICS, 13(3), 89–103.
30. Moraes IB. Critical Analysis of Health Indicators in Primary Health Care: A Brazilian Perspective. AG Salud 2023;1:28-28. https://doi.org/10.62486/agsalud202328.
31. Ogolodom MP, Ochong AD, Egop EB, Jeremiah CU, Madume AK, Nyenke CU, et al. Knowledge and perception of healthcare workers towards the adoption of artificial intelligence in healthcare service delivery in Nigeria. AG Salud 2023;1:16-16. https://doi.org/10.62486/agsalud202316.
32. Peñaloza JEG, Bermúdez L marcela A, Calderón YMA. Perception of representativeness of the Assembly of Huila 2020-2023. AG Multidisciplinar 2023;1:13-13. https://doi.org/10.62486/agmu202313.
33. Pérez DQ, Palomo IQ, Santana YL, Rodríguez AC, Piñera YP. Predictive value of the neutrophil-lymphocyte index as a predictor of severity and death in patients treated for COVID-19. SCT Proceedings in Interdisciplinary Insights and Innovations 2023;1:14-14. https://doi.org/10.56294/piii202314.
34. Prado JMK do, Sena PMB. Information science based on FEBAB’s census of Brazilian library science: postgraduate data. Advanced Notes in Information Science 2023;5:1-23. https://doi.org/10.47909/978-9916-9906-9-8.73.
35. Pupo-Martínez Y, Dalmau-Ramírez E, Meriño-Collazo L, Céspedes-Proenza I, Cruz-Sánchez A, Blanco-Romero L. Occlusal changes in primary dentition after treatment of dental interferences. AG Odontologia 2023;1:10-10. https://doi.org/10.62486/agodonto202310.
36. Quiroz FJR, Oncoy AWE. Resilience and life satisfaction in migrant university students residing in Lima. AG Salud 2023;1:9-9. https://doi.org/10.62486/agsalud20239.
37. Roa BAV, Ortiz MAC, Cano CAG. Analysis of the simple tax regime in Colombia, case of night traders in the city of Florencia, Caquetá. AG Managment 2023;1:14-14. https://doi.org/10.62486/agma202314.
38. Rodríguez AL. Analysis of associative entrepreneurship as a territorial strategy in the municipality of Mesetas, Meta. AG Managment 2023;1:15-15. https://doi.org/10.62486/agma202315.
39. Rodríguez LPM, Sánchez PAS. Social appropriation of knowledge applying the knowledge management methodology. Case study: San Miguel de Sema, Boyacá. AG Managment 2023;1:13-13. https://doi.org/10.62486/agma202313.
40. S. Gauthier, P. Rosa-Neto, J. A. Morais, and C. Webster, ``World Alzheimer report 2021: Journey through the diagnosis of dementia,'' Alzheimer's Disease Int., London, U.K., 2021. [Online]. Available: https://www.alzint.org/u/World-Alzheimer-Report-2021.pdf
41. Serra S, Revez J. As bibliotecas públicas na inclusão social de migrantes forçados na Área Metropolitana de Lisboa. Advanced Notes in Information Science 2023;5:49-99. https://doi.org/10.47909/978-9916-9906-9-8.50.
42. Solano AVC, Arboleda LDC, García CCC, Dominguez CDC. Benefits of artificial intelligence in companies. AG Managment 2023;1:17-17. https://doi.org/10.62486/agma202317.
43. Tanveer M, Richhariya B, Khan R, Rashid A, Khanna P, Prasad M, Lin C (2020) Machine learning techniques for the diagnosis of Alzheimer’s disease: a review. ACM Transac Multimedia Comput Commun Appl (TOMM) 16(1S):1–35.
44. Yamanakkanavar, N.; Choi, J.Y.; Lee, B. MRI Segmentation and Classification of Human Brain Using Deep Learning for Diagnosis of Alzheimer’s disease: A Survey. Sensors 2020, 20, 3243
Published
Issue
Section
License
Copyright (c) 2024 Mathews Emmanuel, J. Jabez (Author)
This work is licensed under a Creative Commons Attribution 4.0 International License.
The article is distributed under the Creative Commons Attribution 4.0 License. Unless otherwise stated, associated published material is distributed under the same licence.