» Articles » PMID: 37050561

A Hybrid Stacked CNN and Residual Feedback GMDH-LSTM Deep Learning Model for Stroke Prediction Applied on Mobile AI Smart Hospital Platform

Overview
Journal Sensors (Basel)
Publisher MDPI
Specialty Biotechnology
Date 2023 Apr 13
PMID 37050561
Authors
Affiliations
Soon will be listed here.
Abstract

Artificial intelligence (AI) techniques for intelligent mobile computing in healthcare has opened up new opportunities in healthcare systems. Combining AI techniques with the existing Internet of Medical Things (IoMT) will enhance the quality of care that patients receive at home remotely and the successful establishment of smart living environments. Building a real AI for mobile AI in an integrated smart hospital environment is a challenging problem due to the complexities of receiving IoT medical sensors data, data analysis, and deep learning algorithm complexity programming for mobile AI engine implementation AI-based cloud computing complexities, especially when we tackle real-time environments of AI technologies. In this paper, we propose a new mobile AI smart hospital platform architecture for stroke prediction and emergencies. In addition, this research is focused on developing and testing different modules of integrated AI software based on XAI architecture, this is for the mobile health app as an independent expert system or as connected with a simulated environment of an AI-cloud-based solution. The novelty is in the integrated architecture and results obtained in our previous works and this extended research on hybrid GMDH and LSTM deep learning models for the proposed artificial intelligence and IoMT engine for mobile health edge computing technology. Its main goal is to predict heart-stroke disease. Current research is still missing a mobile AI system for heart/brain stroke prediction during patient emergency cases. This research work implements AI algorithms for stroke prediction and diagnosis. The hybrid AI in connected health is based on a stacked CNN and group handling method (GMDH) predictive analytics model, enhanced with an LSTM deep learning module for biomedical signals prediction. The techniques developed depend on the dataset of electromyography (EMG) signals, which provides a significant source of information for the identification of normal and abnormal motions in a stroke scenario. The resulting artificial intelligence mHealth app is an innovation beyond the state of the art and the proposed techniques achieve high accuracy as stacked CNN reaches almost 98% for stroke diagnosis. The GMDH neural network proves to be a good technique for monitoring the EMG signal of the same patient case with an average accuracy of 98.60% to an average of 96.68% of the signal prediction. Moreover, extending the GMDH model and a hybrid LSTM with dense layers deep learning model has improved significantly the prediction results that reach an average of 99%.

Citing Articles

Reviewing Mobile Apps for Teaching Human Anatomy: Search and Quality Evaluation Study.

Rivera Garcia G, Cervantes Lopez M, Ramirez Vazquez J, Llanes Castillo A, Cruz Casados J JMIR Med Educ. 2025; 11:e64550.

PMID: 39951706 PMC: 11888001. DOI: 10.2196/64550.


Optimization of Radiology Diagnostic Services for Patients with Stroke in Multidisciplinary Hospitals.

Adenova G, Kausova G, Saliev T, Zhukov Y, Ospanova D, Dushimova Z Mater Sociomed. 2024; 36(2):160-172.

PMID: 39712327 PMC: 11663002. DOI: 10.5455/msm.2024.36.160-172.


Hybrid Ensemble Deep Learning Model for Advancing Ischemic Brain Stroke Detection and Classification in Clinical Application.

Qasrawi R, Qdaih I, Daraghmeh O, Thwib S, Polo S, Atari S J Imaging. 2024; 10(7).

PMID: 39057731 PMC: 11278187. DOI: 10.3390/jimaging10070160.


A Deep Auto-Optimized Collaborative Learning (DACL) model for disease prognosis using AI-IoMT systems.

Nandagopal M, Seerangan K, Govindaraju T, Abi N, Balusamy B, Selvarajan S Sci Rep. 2024; 14(1):10280.

PMID: 38704423 PMC: 11069552. DOI: 10.1038/s41598-024-59846-2.


Advanced Intelligent Control in Robots.

Vladareanu L, Yu H, Wang H, Feng Y Sensors (Basel). 2023; 23(12).

PMID: 37420865 PMC: 10300857. DOI: 10.3390/s23125699.


References
1.
Tsopra R, Fernandez X, Luchinat C, Alberghina L, Lehrach H, Vanoni M . A framework for validating AI in precision medicine: considerations from the European ITFoC consortium. BMC Med Inform Decis Mak. 2021; 21(1):274. PMC: 8487519. DOI: 10.1186/s12911-021-01634-3. View

2.
Jeong J, Shim K, Kim D, Lee S . Brain-Controlled Robotic Arm System Based on Multi-Directional CNN-BiLSTM Network Using EEG Signals. IEEE Trans Neural Syst Rehabil Eng. 2020; 28(5):1226-1238. DOI: 10.1109/TNSRE.2020.2981659. View

3.
Hu S, Wei H, Chen Y, Tan J . A real-time cardiac arrhythmia classification system with wearable sensor networks. Sensors (Basel). 2012; 12(9):12844-69. PMC: 3478873. DOI: 10.3390/s120912844. View

4.
Haluza D, Jungwirth D . ICT and the future of health care: aspects of health promotion. Int J Med Inform. 2014; 84(1):48-57. DOI: 10.1016/j.ijmedinf.2014.09.005. View

5.
Bates D, Saria S, Ohno-Machado L, Shah A, Escobar G . Big data in health care: using analytics to identify and manage high-risk and high-cost patients. Health Aff (Millwood). 2014; 33(7):1123-31. DOI: 10.1377/hlthaff.2014.0041. View