Angiogenesis, Inflammation & Therapeutics | Online ISSN  2207-872X
RESEARCH ARTICLE   (Open Access)

Advancing Heart Disease Forecasting: Integrating CNN-LSTM Models with Feature Enhancement for Improved Predictive Accuracy

Nidhi Mishra 1*, Ghorpade Bipin Shivaji 1

+ Author Affiliations

Journal of Angiotherapy 8(9) 1-6 https://doi.org/10.25163/angiotherapy.899871

Submitted: 12 July 2024  Revised: 27 August 2024  Published: 03 September 2024 

Abstract

Background: Heart failure (HF) is the leading cause of death worldwide, with accurate early diagnosis being challenging due to the disease's subtle symptoms and the requirement for extensive medical expertise. The development of predictive models is crucial for early intervention. Objective: This study proposes a method for Dynamic Forecasting (DF) of Heart Diseases (HD) using a Deep Learning (DL) model that integrates Convolutional Neural Networks (CNN) and Long Short-Term Memory (LSTM) networks. The aim is to create an automatic, accurate, and cost-effective system for predicting cardiac valve failure. Methods: The study introduces a Hybrid DL model combining CNN and LSTM with Feature Enhancement (FE) and Comprehensible Artificial Intelligence (CAI) techniques. The CNN extracts features from clinical data, which are then processed by the LSTM model to handle temporal dependencies. The model's effectiveness was evaluated using a freely available cardiovascular disease dataset. Accuracy was assessed with and without FE. Results: The CNN-LSTM model achieved an accuracy of 83.5% with FE and 88.2% without FE. The model demonstrated superior performance in terms of sensitivity (80.04% with FE), specificity (87.11% with FE), and overall accuracy compared to other methods including Support Vector Machines (SVM), Decision Trees (DT), and Random Forests (RF). Conclusion: The proposed CNN-LSTM model offers a significant improvement in forecasting heart disease dynamics by effectively integrating CNN for feature extraction and LSTM for temporal analysis. This hybrid approach, combined with advanced feature enhancement and explainable AI techniques, provides a more accurate and comprehensible prediction tool for early heart disease detection.

Keywords: Heart Diseases, Dynamic Forecasting, Deep Learning, CNN, LSTM, Artificial Intelligence

References

Agga, A., Abbou, A., Labbadi, M., El Houm, Y., & Ali, I. H. O. (2022). CNN-LSTM: An efficient hybrid deep learning architecture for predicting short-term photovoltaic power production. Electric Power Systems Research, 208, 107908.

Amin, S., Uddin, M. I., AlSaeed, D. H., Khan, A., & Adnan, M. (2021). Early detection of seasonal outbreaks from twitter data using machine learning approaches. Complexity, 2021(1), 5520366.

Bobir, A. O., Askariy, M., Otabek, Y. Y., Nodir, R. K., Rakhima, A., Zukhra, Z. Y., & Sherzod, A. A. (2024). Utilizing deep learning and the Internet of Things to monitor the health of aquatic ecosystems to conserve biodiversity. Natural and Engineering Sciences, 9(1), 72-83.

Bobir, A. O., Askariy, M., Otabek, Y. Y., Nodir, R. K., Rakhima, A., Zukhra, Z. Y., & Sherzod, A. A. (2024). Utilizing deep learning and the Internet of Things to monitor the health of aquatic ecosystems to conserve biodiversity. Natural and Engineering Sciences, 9(1), 72-83.

cardiovascular-disease-dataset. https://www.kaggle.com/datasets/sulianova/cardiovascular-disease-dataset

Choi, J., & Zhang, X. (2022). Classifications of restricted web streaming contents based on convolutional neural network and long short-term memory (CNN-LSTM). Journal of Internet Services and Information Security, 12(3), 49-62.

Huang, M., Tian, D., Liu, H., Zhang, C., Yi, X., Cai, J., ... & Ying, G. (2018). A hybrid fuzzy wavelet neural network model with self-adapted fuzzy c-means clustering and genetic algorithm for water quality prediction in rivers. Complexity, 2018(1), 8241342.

Huang, X., Li, Q., Tai, Y., Chen, Z., Liu, J., Shi, J., & Liu, W. (2022). Time series forecasting for hourly photovoltaic power using conditional generative adversarial network and Bi-LSTM. Energy, 246, 123403.

Kim, T. Y., & Cho, S. B. (2019). Predicting residential energy consumption using CNN-LSTM neural networks. Energy, 182, 72-81.

Krishnan, S., Magalingam, P., & Ibrahim, R. (2021). Hybrid deep learning model using recurrent neural network and gated recurrent unit for heart disease prediction. International Journal of Electrical & Computer Engineering, 11(6).

Li, P., Hu, Y., & Liu, Z. P. (2021). Prediction of cardiovascular diseases by integrating multi-modal features with machine learning methods. Biomedical Signal Processing and Control, 66, 102474.

Mendis, S., Puska, P., Norrving, B. E., & World Health Organization. (2011). Global atlas on cardiovascular disease prevention and control. World Health Organization.

Nancy, A. A., Ravindran, D., Raj Vincent, P. D., Srinivasan, K., & Gutierrez Reina, D. (2022). IoT-cloud-based smart healthcare monitoring system for heart disease prediction via deep learning. Electronics, 11(15), 2292.

Neelima, S., Govindaraj, M., Subramani, K., ALkhayyat, A., & Mohan, C. (2024). Factors influencing data utilization and performance of health management information systems: A case study. Indian Journal of Information Sources and Services, 14(2), 146–152. https://doi.org/10.51983/ijiss-2024.14.2.21

Nilson, E. A. F., Metlzer, A. B., Labonté, M. E., & Jaime, P. C. (2020). Modelling the effect of compliance with WHO salt recommendations on cardiovascular disease mortality and costs in Brazil. PLoS One, 15(7), e0235514.

Rost, S., Freuer, D., Peters, A., Thorand, B., Holle, R., Linseisen, J., & Meisinger, C. (2018). New indexes of body fat distribution and sex-specific risk of total and cause-specific mortality: A prospective cohort study. BMC Public Health, 18, 1-12.

Sathyanarayanan, S., & Srikanta, M. K. (2024). Heart sound analysis using SAINet incorporating CNN and transfer learning for detecting heart diseases. Journal of Wireless Mobile Networks, Ubiquitous Computing, and Dependable Applications, 15(2), 152-169. https://doi.org/10.58346/JOWUA.2024.I2.011

Satish, S., & Herald, A. R. (2024). Fuzzy attention U-Net architecture based localization and YOLOv5 detection for fetal cardiac ultrasound images. Journal of Wireless Mobile Networks, Ubiquitous Computing, and Dependable Applications, 15(1), 01-16.

Sumiati, Penny, H., Agung, T., Afrasim, Y., & Achmad, S. (2024). Classification of heart disorders using an artificial neural network approach. Journal of Internet Services and Information Security, 14(2), 189-201.

Surendar, A., Veerappan, S., Sadulla, S., & Arvinth, N. (2024). Lung cancer segmentation and detection using KMP algorithm. Onkologia i Radioterapia, 18(4).

PDF
Full Text
Export Citation

View Dimensions


View Plumx



View Altmetric



6
Save
0
Citation
232
View
0
Share