Optimizing Disease Prediction with Artificial Intelligence Driven Feature Selection and Attention Networks

Main Article Content

D. Dhinakaran, S. Edwin Raja, M. Thiyagarajan, J. Jeno Jasmine, P. Raghavan

Abstract

The rapid integration of machine learning methodologies in healthcare has ignited innovative strategies for disease prediction, particularly with the vast repositories of Electronic Health Records (EHR) data. This article delves into the realm of multi-disease prediction, presenting a comprehensive study that introduces a pioneering ensemble feature selection model. This model, designed to optimize learning systems, combines statistical, deep, and optimally selected features through the innovative Stabilized Energy Valley Optimization with Enhanced Bounds (SEV-EB) algorithm. The objective is to achieve unparalleled accuracy and stability in predicting various disorders. This work proposes an advanced ensemble model that synergistically integrates statistical, deep, and optimally selected features. This combination aims to enhance the predictive power of the model by capturing diverse aspects of the health data. At the heart of the proposed model lies the SEV-EB algorithm, a novel approach to optimal feature selection. The algorithm introduces enhanced bounds and stabilization techniques, contributing to the robustness and accuracy of the overall prediction model. To further elevate the predictive capabilities, an HSC-AttentionNet is introduced. This network architecture combines deep temporal convolution capabilities with LSTM, allowing the model to capture both short-term patterns and long-term dependencies in health data. Rigorous evaluations showcase the remarkable performance of the proposed model. Achieving a 95% accuracy and 94% F1-score in predicting various disorders, the model surpasses traditional methods, signifying a significant advancement in disease prediction accuracy. The implications of this research extend beyond the confines of academia. By harnessing the wealth of information embedded in EHR data, the proposed model presents a paradigm shift in healthcare interventions. The optimized diagnosis and treatment pathways facilitated by this approach hold promise for more accurate and personalized healthcare, potentially revolutionizing patient outcomes

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Author Biography

D. Dhinakaran, S. Edwin Raja, M. Thiyagarajan, J. Jeno Jasmine, P. Raghavan

[1]D. Dhinakaran

2S. Edwin Raja

3M. Thiyagarajan

4J. Jeno Jasmine

5P. Raghavan

1,2,3Department of Computer Science and Engineering, Vel Tech Rangarajan Dr. Sagunthala R&D Institute of Science and Technology, Chennai, India

4Department of Computer Science and Engineering, R.M.K. Engineering College, Tamil Nadu, India

5Department of Computer Science and Engineering, P.S.R. Engineering College, Sivakasi, India

drdhinakarand@veltech.edu.in, edwinrajas@gmail.com, thiyaga1647@gmail.com, jenojasmine@gmail.com,

raghavan.ramesh1988@gmail.com

Copyright © JES 2024 on-line : journal.esrgroups.org

 

References

B.J.D. Kalyani et al., “Analysis of MRI Brain Tumor Images Using Deep Learning Techniques,” Soft Computing, vol. 27, pp. 7535-7542, 2023.

Aniekan Essien, and Cinzia Giannetti, “A Deep Learning Framework for Univariate Time Series Prediction Using Convolutional LSTM Stacked Autoencoders,” 2019 IEEE International Symposium on Innovations in Intelligent Systems and Applications (INISTA), Sofia, Bulgaria, pp. 1-6, 2019.

T. Kalaiselvi, T. Anitha, and Sriramakrishnan, “A Rician Noise Prediction and Removal Model for MRI Head Scans Using Wavelet Based Non-Local Median Filter,” Journal of Scientific Research of The Banaras Hindu University, vol. 66, no. 5, pp. 75-87, 2022.

L. Srinivasan, D. Selvaraj, T. P. Anish, "IoT-Based Solution for Paraplegic Sufferer to Send Signals to Physician via Internet," SSRG International Journal of Electrical and Electronics Engineering, vol. 10, no. 1, pp. 41-52, 2023.

Rahmeh Ibrahim, Rawan Ghnemat, and Qasem Abu Al-Haija, “Improving Alzheimer’s Disease and Brain Tumor Detection Using Deep Learning with Particle Swarm Optimization,” AI, vol. 4, no. 3, pp. 551-573, 2023.

S. M. Udhaya Sankar, N. J. Kumar, D. Dhinakaran, S. S. Kamalesh and R. Abenesh, "Machine Learning System for Indolence Perception," 2023 International Conference on Innovative Data Communication Technologies and Application (ICIDCA), Uttarakhand, India, 2023, pp. 55-60.

Rania Khaskhoussy, and Yassine Ben Ayed, “Improving Parkinson’s Disease Recognition through Voice Analysis Using Deep Learning,” Pattern Recognition Letters, vol. 168, pp. 64-70, 2023.

Dhinakaran, D., Selvaraj, D., Udhaya Sankar, S.M., Pavithra, S., Boomika, R. (2023). Assistive System for the Blind with Voice Output Based on Optical Character Recognition. In: Gupta, D., Khanna, A., Hassanien, A.E., Anand, S., Jaiswal, A. (eds) International Conference on Innovative Computing and Communications. Lecture Notes in Networks and Systems, vol 492. Springer, Singapore.

Kathiresan, S.; Sait, A.R.W.; Gupta, D.; Lakshmanaprabu, S.K.; Khanna, A.; Pandey, H.M, “Automated detection and classification of fundus diabetic retinopathy images using synergic deep learning model,” Pattern Recognit Leter, 2020, 133, 210–216.

S. M. U. Sankar, T. Kavya, S. Priyanka and P. P. Oviya, "A Way for Smart Home Technology for Disabled and Elderly People," 2023 International Conference on Innovative Data Communication Technologies and Application (ICIDCA), Uttarakhand, India, 2023, pp. 369-373

G. K. Monica, K. Haritha, K. Kohila and U. Priyadharshini, "MEMS based Sensor Robot for Immobilized Persons," 2023 International Conference on Innovative Data Communication Technologies and Application (ICIDCA), Uttarakhand, India, 2023, pp. 924-929

Dhinakaran, D., Udhaya Sankar, S.M., Ananya, J., Roshnee, S.A., “IOT-Based Whip-Smart Trash Bin Using LoRa WAN,” Lecture Notes in Networks and Systems, vol 673. Springer, Singapore, 2023.

Maqsood S, Damaševičius R, Maskeliūnas R, “Hemorrhage Detection Based on 3D CNN Deep Learning Framework and Feature Fusion for Evaluating Retinal Abnormality in Diabetic Patients,” Sensors (Basel). 2021 Jun 3;21(11):3865.

M. F. Fraz, P. Remagnino, A. Hoppe et al., “An ensemble classification-based approach applied to retinal blood vessel segmentation,” IEEE Transactions on Biomedical Engineering, vol. 59, no. 9, pp. 2538–2548, 2012.

Dhinakaran D, Joe Prathap P. M, "Protection of data privacy from vulnerability using two-fish technique with Apriori algorithm in data mining," The Journal of Supercomputing, 78(16), 17559–17593 (2022).

R.G. Babukarthik, V.A.K. Adiga, G. Sambasivam, D. Chandramohan, J. Amudhavel, Prediction of COVID-19 using genetic deep learning convolutional neural network (GDCNN), IEEE Access 8 (2020) 177647–177666.

Shreshth Tuli, Shikhar Tuli, Rakesh Tuli, Sukhpal Singh Gill, Predicting the growth and trend of COVID-19 pandemic using machine learning and cloud computing, Internet of Things, Volume 11, 2020, 100222.

Zoabi, Y., Deri-Rozov, S. & Shomron, N. Machine learning-based prediction of COVID-19 diagnosis based on symptoms. npj Digital Medicine, 4, 3 (2021). https://doi.org/10.1038/s41746-020-00372-6

Sanzida Solayman, Sk. Azmiara Aumi, Chand Sultana Mery, Muktadir Mubassir, Riasat Khan, Automatic COVID-19 prediction using explainable machine learning techniques, International Journal of Cognitive Computing in Engineering, Volume 4, 2023, Pages 36-46, https://doi.org/10.1016/j.ijcce.2023.01.003.

Painuli D, Mishra D, Bhardwaj S, Aggarwal M. Forecast and prediction of COVID-19 using machine learning. Data Science for COVID-19. 2021:381–97. Epub 2021 May 21. PMCID: PMC8138040.

Alanazi EM, Abdou A, Luo J. Predicting Risk of Stroke From Lab Tests Using Machine Learning Algorithms: Development and Evaluation of Prediction Models. JMIR Form Res. 2021 Dec 2;5(12):e23440. doi: 10.2196/23440. PMID: 34860663; PMCID: PMC8686476.

Tahia Tazin, Md Nur Alam, Nahian Nakiba Dola, Mohammad Sajibul Bari, Sami Bourouis, Mohammad Monirujjaman Khan, "Stroke Disease Detection and Prediction Using Robust Learning Approaches", Journal of Healthcare Engineering, vol. 2021, Article ID 7633381, 12 pages, 2021.

D Dhinakaran, S. M. Udhaya Sankar, S. Edwin Raja and J. Jeno Jasmine, “Optimizing Mobile Ad Hoc Network Routing using Biomimicry Buzz and a Hybrid Forest Boost Regression - ANNs” International Journal of Advanced Computer Science and Applications (IJACSA), 14(12), 2023.

Soumyabrata Dev, Hewei Wang, Chidozie Shamrock Nwosu, Nishtha Jain, Bharadwaj Veeravalli, Deepu John, "A predictive analytics approach for stroke prediction using machine learning and neural networks," Healthcare Analytics, Volume 2, 2022, 100032.

D. Dhinakaran, L. Srinivasan, D. Selvaraj, S. M. Udhaya Sankar, "Leveraging Semi-Supervised Graph Learning for Enhanced Diabetic Retinopathy Detection," SSRG International Journal of Electronics and Communication Engineering, vol. 10, no. 8, pp. 9-21, 2023.

S. Gupta and S. Raheja, "Stroke Prediction using Machine Learning Methods," 2022 12th International Conference on Cloud Computing, Data Science & Engineering (Confluence), Noida, India, 2022, pp. 553-558.

Wondimu Lambamo, Ramasamy Srinivasagan, and Worku Jifara, “Analyzing Noise Robustness of Cochleogram and Mel Spectrogram Features in Deep Learning Based Speaker Recognition,” Applied Sciences, vol. 13, no. 1, pp. 1-12, 2023.

D. Dhinakaran and P. M. Joe Prathap, “Preserving data confidentiality in association rule mining using data share allocator algorithm,” Intelligent Automation & Soft Computing, vol. 33, no.3, pp. 1877–1892, 2022.

Md. Asadur Rahman et al., “Employing PCA and T-Statistical Approach for Feature Extraction and Classification of Emotion from Multichannel EEG Signal,” Egyptian Informatics Journal, vol. 21, no. 1, pp. 23-35, 2020.

V. Gulshan, L. Peng, M. Coram et al., “Development and validation of a deep learning algorithm for detection of diabetic retinopathy in retinal fundus photographs,” JAMA, vol. 316, no. 22, pp. 2402–2410, 2016.

G. Prabaharan, D. Dhinakaran, P. Raghavan, S. Gopalakrishnan and G. Elumalai, “AI-Enhanced Comprehensive Liver Tumor Prediction using Convolutional Autoencoder and Genomic Signatures” International Journal of Advanced Computer Science and Applications (IJACSA), 15(2), 2024.

P. Kavitha, D. Dhinakaran, G. Prabaharan, M. D. Manigandan, "Brain Tumor Detection for Efficient Adaptation and Superior Diagnostic Precision by Utilizing MBConv-Finetuned-B0 and Advanced Deep Learning," The International Journal of Intelligent Engineering and Systems, Vol.17, No.2, pp. 632-644, 2023.