Result: Leveraging multithreading on edge computing for smart healthcare based on intelligent multimodal classification approach.

Title:
Leveraging multithreading on edge computing for smart healthcare based on intelligent multimodal classification approach.
Authors:
Alghareb FS; Department of Computer and Informatics Engineering, Ninevah University, Mosul, 41002, Iraq. Electronic address: faris.alghareb@uoninevah.edu.iq., Hasan BT; Department of Computer Networks and Internet, College of Information Technology, Ninevah University, Mosul, 41002, Iraq. Electronic address: balqees.hasan@uoninevah.edu.iq.
Source:
Computerized medical imaging and graphics : the official journal of the Computerized Medical Imaging Society [Comput Med Imaging Graph] 2025 Sep; Vol. 124, pp. 102594. Date of Electronic Publication: 2025 Jul 01.
Publication Type:
Journal Article
Language:
English
Journal Info:
Publisher: Elsevier Science Country of Publication: United States NLM ID: 8806104 Publication Model: Print-Electronic Cited Medium: Internet ISSN: 1879-0771 (Electronic) Linking ISSN: 08956111 NLM ISO Abbreviation: Comput Med Imaging Graph Subsets: MEDLINE
Imprint Name(s):
Publication: Tarrytown Ny : Elsevier Science
Original Publication: New York : Pergamon Press, c1988-
Contributed Indexing:
Keywords: Clinical Decision Support System (CDSS); Database management; Deep learning; Edge computing; Machine learning; Multimodal; Multithreading; Optimization algorithms; Parallel processing; Smart healthcare
Entry Date(s):
Date Created: 20250704 Date Completed: 20250831 Latest Revision: 20250831
Update Code:
20250903
DOI:
10.1016/j.compmedimag.2025.102594
PMID:
40614479
Database:
MEDLINE

Further Information

Medical digitization has been intensively developed in the last decade, leading to paving the path for computer-aided medical diagnosis research. Thus, anomaly detection based on machine and deep learning techniques has been extensively employed in healthcare applications, such as medical imaging classification and monitoring of patients' vital signs. To effectively leverage digitized medical records for identifying challenges in healthcare, this manuscript presents a smart Clinical Decision Support System (CDSS) dedicated for medical multimodal data automated diagnosis. A smart healthcare system necessitating medical data management and decision-making is proposed. To deliver timely rapid diagnosis, thread-level parallelism (TLP) is utilized for parallel distribution of classification tasks on three edge computing devices, each employing an AI module for on-device AI classifications. In comparison to existing machine and deep learning classification techniques, the proposed multithreaded architecture realizes a hybrid (ML and DL) processing module on each edge node. In this context, the presented edge computing-based parallel architecture captures a high level of parallelism, tailored for dealing with multiple categories of medical records. The cluster of the proposed architecture encompasses three edge computing Raspberry Pi devices and an edge server. Furthermore, lightweight neural networks, such as MobileNet, EfficientNet, and ResNet18, are trained and optimized based on genetic algorithms to provide classification of brain tumor, pneumonia, and colon cancer. Model deployment was conducted based on Python programming, where PyCharm is run on the edge server whereas Thonny is installed on edge nodes. In terms of accuracy, the proposed GA-based optimized ResNet18 for pneumonia diagnosis achieves 93.59% predictive accuracy and reduces the classifier computation complexity by 33.59%, whereas an outstanding accuracy of 99.78% and 100% were achieved with EfficientNet-v2 for brain tumor and colon cancer prediction, respectively, while both models preserving a reduction of 25% in the model's classifier. More importantly, an inference speedup of 28.61% and 29.08% was obtained by implementing parallel 2 DL and 3 DL threads configurations compared to the sequential implementation, respectively. Thus, the proposed multimodal-multithreaded architecture offers promising prospects for comprehensive and accurate anomaly detection of patients' medical imaging and vital signs. To summarize, our proposed architecture contributes to the advancement of healthcare services, aiming to improve patient medical diagnosis and therapy outcomes.
(Copyright © 2025 Elsevier Ltd. All rights reserved.)

Declaration of competing interest The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.