Enhanced AI-Based Diagnostic Framework: Ensemble Modeling for Multi-Orientation MRI Classification of Brain Tumors and Multiple Sclerosis
- Authors
-
-
Muthuramalingam Sivakumar
Thiagarjar College of Engineering, Madurai, Tamilnadu, India -
Padmapriya Thiyagarajan
Thiagarjar College of Engineering, Madurai, Tamilnadu, India
-
- Keywords:
- Brain tumors, multiple sclerosis, Convolutional Neural Networks, attention mechanism, ensemble modeling, multi-orientation analysis, medical image classification, diagnostic precision
- Abstract
-
Brain tumors and multiple sclerosis (MS) are complex medical conditions characterized by overlapping clinical and imaging features, posing significant challenges in accurate diagnosis. Building upon our previous work, which utilized axial MRI images for classification into three categories—normal, brain tumor, and MS—this study extends the methodology to incorporate sagittal and coronal orientations. Individual convolutional neural network (CNN) models are trained for each orientation, and their outputs are integrated using an ensemble framework with a voting mechanism. This approach leverages the complementary spatial information provided by multi-orientation analysis to enhance diagnostic precision. Experimental evaluations demonstrate that the ensemble model achieves superior classification accuracy and robustness in contrast to the single-orientation approach. This piece emphasizes the vital role that multi-orientation MRI analysis plays in mitigating diagnostic ambiguities and advancing the reliability of AI-driven medical imaging frameworks.
- Downloads
-
Download data is not yet available.
- References
-
[1] Thompson AJ, Banwell BL, Barkhof F, Carroll WM, Coetzee T, Comi G, et al. Diagnosis of multiple sclerosis: 2017 revisions of the McDonald criteria. The Lancet Neurology 2018; 17(2): 162-173.
[2] Lee DY. Roles of mTOR signaling in brain development. Experimental Neurobiology 2015; 24(3): 177-185.
[3] Rudick RA, Cohen JA, Weinstock-Guttman B, Kinkel RP, Ransohoff RM. Management of multiple sclerosis. New England Journal of Medicine 1997; 337(22): 1604-1611.
[4] Sirko AH, Dzyak LA, Chekha EV. Coexistence of multiple sclerosis and brain tumors: A Literature Review 2020; 25(2): 30-36.
[5] Iwamoto K, Oka H, Utsuki S, Ozawa T, Fujii K. Late-onset multiple sclerosis mimicking brain tumor: a case report. Brain Tumor Pathology 2004; 21: 83-86.
[6] Narmatha C, Eljack SM, Tuka AARM, Manimurugan S, Mustafa M. A hybrid fuzzy brain-storm optimization algorithm for the classification of brain tumor MRI images. Journal of Ambient Intelligence and Humanized Computing 2020; 1-9.
[7] Lamrani D, Cherradi B, El Gannour O, Bouqentar MA, Ba Hatti L. Brain tumor detection using MRI images and convolutional neural network. International Journal of Advanced Computer Science and Applications 2022; 13(7).
[8] Toğaçar M, Ergen B, Cömert Z. BrainMRNet: Brain tumor detection using magnetic resonance images with a novel convolutional neural network model. Medical Hypotheses 2020; 134: 109531.
[9] Shah HA, Saeed F, Yun S, Park JH, Paul A, Kang JM. A robust approach for brain tumor detection in magnetic resonance images using finetuned EfficientNet. IEEE Access 2022; 10: 65426-65438.
[10] Dipu NM, Shohan SA, Salam KMA. Deep learning based brain tumor detection and classification. In 2021 International Conference on Intelligent Technologies (CONIT) 2021; 1-6.
[11] Abdusalomov AB, Mukhiddinov M, Whangbo TK. Brain tumor detection based on deep learning approaches and magnetic resonance imaging. Cancers 2023; 15(16): 4172.
[12] Amin J, Sharif M, Yasmin M, Fernandes SL. A distinct approach in brain tumor detection and classification using MRI. Pattern Recognition Letters 2020; 139: 118-127.
[13] Deb D, Roy S. Brain tumor detection based on a hybrid deep neural network in MRI by adaptive squirrel search optimization. Multimedia Tools and Applications 2021; 80(2): 2621-2645.
[14] Sadad T, Rehman A, Munir A, Saba T, Tariq U, Ayesha N, Abbasi R. Brain tumor detection and multi-classification using advanced deep learning techniques. Microscopy Research and Technique 2021; 84(6): 1296-1308.
[15] Menze BH, Jakab A, Bauer S, Kalpathy-Cramer J, Farahani K, Kirby J, et al. The Multimodal Brain Tumor Image Segmentation Benchmark (BRATS). IEEE Transactions on Medical Imaging 2015; 34(10): 1993-2024.
- Downloads
- Published
- 30-12-2025
- Issue
- Vol. 14 (2025)
- Section
- Articles
- License
-

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.
How to Cite
Similar Articles
- Jenny L. Smith, Albert Kheradpour, Craig W. Zuppan, Jun Wang, Rhett P. Ketterling, Edward H. Rowsell, Secondary Precursor T-Cell Lymphoblastic Lymphoma Following Precursor B-cell Acute Lymphoblastic Leukemia: A Case Report and Review of the Literature , Journal of Cancer Research Updates: Vol. 3 No. 2 (2014)
- Sh.R. Kzyrgalin, R.S. Yamidanov, A.A. Rizvanov, Sh.Kh. Gantsev, Antitumor Activity of Dehydroxymethylepoxyquinomicin (DHMEQ) in Monotherapy and Combination with Cisplatin in the SKOV-3 Ovarian Cancer Model , Journal of Cancer Research Updates: Vol. 13 (2024)
- Bruno Costa do Prado, Claudia Marquez Simões, Flávio Guilherme Moreira Arêas, Alexandre Crippa, Marcos Francisco Dall’Oglio, Radical Retropubic Prostatectomy on Outpatient Basis , Journal of Cancer Research Updates: Vol. 3 No. 3 (2014)
- Willy Ramos, Víctor Juan Vera-Ponce, Rubén Espinoza, Nadia Guerrero, Zoila Moreno Garrido, Fiorella E. Zuzunaga-Montoya, Ericson L. Gutierrez, Non-Performance of Cancer Screening in Peru: A Comparative Analysis between Regions Exposed and Unexposed to Ozone Layer Mini-Hole , Journal of Cancer Research Updates: Vol. 14 (2025)
- Hossein Mozdarani, Zainab Kouchak Mashkdouz, The Potent Regulatory Role of Circular RNAs in Breast Cancer Development, Diagnosis and Treatment: An Update , Journal of Cancer Research Updates: Vol. 11 (2022)
- Julia E. Stokes, Michael S. Bobola, Marc C. Chamberlain, John R. Silber, Low Leukocyte MGMT Accompanies Temozolomide-Induced Myelotoxicity in Brain Tumor Patients , Journal of Cancer Research Updates: Vol. 1 No. 1 (2012)
- Vito Lorusso, Ilaria Marech, Marianna Giampaglia, Andrea Tinelli, Vincenzo Emanuele Chiuri, Present and Emerging Targeted Therapy for Metastatic Breast Cancer , Journal of Cancer Research Updates: Vol. 1 No. 1 (2012)
- Tahereh Dadfarnia, Jason Koshy, Jianli Dong, You-Wen Qian, Retrospective Study of Hepatitis C Virus Genotypes and its Association with Lymphoma , Journal of Cancer Research Updates: Vol. 3 No. 3 (2014)
- Mark Ferretti, Akhil Saji, Roopali Mittal, Amit K. Tiwari, Infectious Complications Following Prostate Biopsy: A Single Institution Review , Journal of Cancer Research Updates: Vol. 5 No. 4 (2016)
- A.E. Anichkova, Sh.R. Kzyrgalin, R.Sh. Khasanov, Sh.Kh. Gantsev, Factors Associated with Breast Cancer Risk in Women: A Literature Review , Journal of Cancer Research Updates: Vol. 15 No. 1 (2026)
You may also start an advanced similarity search for this article.
