IMPROVING PREDICTION ACCURACY OF DEEP LEARNING FOR BRAIN CANCER DIAGNOSIS USING POLYAK-RUPPERT OPTIMIZATION

Authors

  • M Muthulekshmi
  • Azath Mubarakali
  • Y M Blessy

DOI:

https://doi.org/10.29284/ijasis.10.2.2024.1-11

Keywords:

Computer-aided diagnosis, brain cancer, deep learning, convolutional neural network, Polyak Ruppert optimization

Abstract

Accurate and reliable diagnosis is critical for effective treatment planning for brain cancer. Recent advancements in deep learning have significantly enhanced diagnostic capabilities, but challenges persist in optimizing model performance for diverse and complex datasets. This study investigates the application of Polyak-Ruppert Optimization (PRO) to improve the prediction accuracy of conventional deep learning models for brain cancer diagnosis. Utilizing the REpository of Molecular BRAin Neoplasia DaTa (REMBRANDT) database, the proposed framework incorporates the advanced PRO technique to stabilize training and enhance generalization. The PRO’s impacts on convergence rates, model robustness, and predictive accuracy across multiple cancer types are analyzed. Experimental results demonstrate that VGG and ResNet models employing the PRO technique outperform the conventional architectures such as VGG and ResNet in classification metrics such as accuracy, sensitivity, and specificity. The potential of advanced optimization strategies such as PRO to refine deep learning applications in oncology paves the way for more accurate, efficient, and interpretable diagnostic systems.

References

N. Salari, H. Ghasemi, R. Fatahian, K. Mansouri, S. Dokaneheifard, M.H. Shiri and M. Mohammadi, “The global prevalence of primary central nervous system tumors: a systematic review and meta-analysis,” European journal of medical research, vol. 28, no. 1, 2023, pp. 1-16.

S.V.S. Deo, J. Sharma and S. Kumar, “GLOBOCAN 2020 Report on Global Cancer Burden: Challenges and Opportunities for Surgical Oncologists,” Annals of Surgical Oncology, vol. 29, no.11, 2022, pp.6497-6500.

H. Sung, J. Ferlay, R.L. Siegel, M. Laversanne, I. Soerjomataram, A. Jemal and F. Bray, “Global Cancer Statistics 2020: GLOBOCAN Estimates of Incidence and Mortality Worldwide for 36 Cancers in 185 Countries,” CA: A Cancer Journal for Clinicians, vol. 71, no. 3, 2021, pp. 209–249.

A. B. Ramakrishnan, M. Sridevi, S. K. Vasudevan, R. Manikandan and A. H. Gandomi, “Optimizing brain tumor classification with hybrid CNN architecture: Balancing accuracy and efficiency through oneAPI optimization,” Informatics in Medicine Unlocked, vol. 44, 2024, pp. 1-8.

A.S. Musallam, A.S. Sherif and M.K. Hussein, “A New Convolutional Neural Network Architecture for Automatic Detection of Brain Tumors in Magnetic Resonance Imaging Images,” IEEE Access, vol. 10, 2022, pp. 2775–2782.

B. Liao, H. Zuo, Y. Yu and Y. Li, “GraphMriNet: a few-shot brain tumor MRI image classification model based on Prewitt operator and graph isomorphic network,” Complex & Intelligent Systems, vol. 10, 2024, pp. 6917-6930.

S.Y. Lu, S.H. Wang and Y.D. Zhang, “A classification method for brain MRI via MobileNet and feedforward network with random weights,” Pattern Recognition Letters, vol. 140, 2020, pp. 252–260.

A.M. Simo, A.T. Kouanou, V. Monthe, M.K. Nana and B.M. Lonla, “Introducing a deep learning method for brain tumor classification using MRI data towards better performance,” Informatics in Medicine Unlocked, vol. 44, 2024, pp. 1–24.

H.A. Shah, F. Saeed, S. Yun, J.H. Park, A. Paul and J.M. Kang, “A Robust Approach for Brain Tumor Detection in Magnetic Resonance Images Using Fine-Tuned EfficientNet,” IEEE Access, vol. 10, 2022, pp. 65426–65438.

M. Bourennane, H. Naimi and E. Mohamed, “Deep Feature Extraction with Cubic-SVM for Classification of Brain Tumor,” Studies in Engineering and Exact Sciences, vol. 5, no. 1, 2024, pp. 19–35.

T. Renukadevi, K. Saraswathi, P. Prabu and K. Venkatachalam, “Brain image classification using time-frequency extraction with histogram intensity similarity,” Computer Systems Science and Engineering, vol. 41, no. 2, 2022, pp. 645–460.

T. Rahman, M.S. Islam and J. Uddin, “MRI-Based Brain Tumor Classification Using a Dilated Parallel Deep Convolutional Neural Network,” Digital, vol. 4, no. 3, 2024, pp. 529–554.

N. Veni and J. Manjula, “Modified visual geometric group architecture for MRI brain image classification,” Computer Systems Science and Engineering, vol. 42, no. 2, 2022, pp. 825–835.

P.K. Mallick, S.H. Ryu, S.K. Satapathy, S. Mishra and G.N. Nguyen, “Brain MRI image classification for cancer detection using deep wavelet autoencoder-based deep neural network,” IEEE Access, vol. 7, 2019, pp. 46278–46287.

K.R. Reddy, K.N. Rajesh, R. Dhuli and V.R. Kumar, “BrainCDNet: a concatenated deep neural network for the detection of brain tumors from MRI images,” Frontiers in Human Neuroscience, vol. 18, 2024, pp. 1–11.

K. Simonyan and A. Zisserman, “Very Deep Convolutional Networks for Large-Scale Image Recognition,” 3rd International Conference on Learning Representations, 2015. pp. 1–14.

K. He, X. Zhang, S. Ren and J. Sun, “Deep residual learning for image recognition,” in Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, 2016, pp. 770–778

Scarpace, Lisa, Flanders, E. Adam, Jain et al., “Data from REMBRANDT”, The Cancer Imaging Archive. http://doi.org/10.7937/K9/TCIA.2015.588OZUZB.

K. Clark, B. Vendt, K. Smith, J. Freymann, J. Kirby, P. Koppel and F. Prior, “The Cancer Imaging Archive (TCIA): Maintaining and Operating a Public Information Repository,” Journal of Digital Imaging, vol. 26, no. 6, 2013, pp. 1045–1057.

Brain MRI images: https://www.cancerimagingarchive.net/collection/ rembrandt/

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Published

2024-12-31

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Section

Articles

How to Cite

[1]
M. Muthulekshmi, A. Mubarakali, and Y. M. Blessy, “IMPROVING PREDICTION ACCURACY OF DEEP LEARNING FOR BRAIN CANCER DIAGNOSIS USING POLYAK-RUPPERT OPTIMIZATION”, IJASIS, vol. 10, no. 2, pp. 1–11, Dec. 2024, doi: 10.29284/ijasis.10.2.2024.1-11.

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