TY - UNPB
T1 - Toward TinyDPFL Systems for Real-Time Cardiac Healthcare: Trends, Challenges, and System-Level Perspectives on AI Algorithms, Hardware, and Edge Intelligence
AU - Akram, Muhammad Shakeel
AU - Varma, Bogaraju Sharatchandra
AU - Javed, Aqib
AU - Harkin, Jim
AU - Finlay, Dewar
PY - 2025/6/11
Y1 - 2025/6/11
N2 - Despite rapid advances in medical technology, cardiac diseases (CDs) remain the leading cause of global mortality, with arrhythmias that pose significant diagnostic and treatment challenges. This survey presents a comprehensive review of 176 state-of-theart contributions in machine learning (ML), federated learning (FL), TinyML, and hardware acceleration for efficient, real-time, and privacy-preserving cardiac diagnosis and care. Explores both software and hardware advancements, including differential privacy, quantized neural networks, and FPGA-based implementations optimized for edge devices and wearable devices. Key challenges, such as latency, energy constraints, adversarial robustness, and personalization, are systematically examined. The survey synthesizes solutions across algorithmic innovations, secure and adaptive FL frameworks, and neuromorphic and sparse architectures, especially FPGA-based solutions, for resource-aware inference and training. Informed by original research, it highlights emerging directions: AI-driven data mining, differential privacy for quantized models, continual learning on the edge, FPGA-accelerators including quantized DNN, SNN, and Sparse architectures, tuneable/reconfigurable FPGA-based Tiny DPFL, Multimodal heterogeneous FL, real-time adversarial detection via model watermarking. This work offers a unified system-level perspective bridging ML algorithms and edge AI hardware, guiding the development of scalable, adaptive, and trustworthy cardiac healthcare systems. Beyond surveying existing literature, it proposes forward-looking design principles to advance intelligent, secure, and practical digital cardiology.
AB - Despite rapid advances in medical technology, cardiac diseases (CDs) remain the leading cause of global mortality, with arrhythmias that pose significant diagnostic and treatment challenges. This survey presents a comprehensive review of 176 state-of-theart contributions in machine learning (ML), federated learning (FL), TinyML, and hardware acceleration for efficient, real-time, and privacy-preserving cardiac diagnosis and care. Explores both software and hardware advancements, including differential privacy, quantized neural networks, and FPGA-based implementations optimized for edge devices and wearable devices. Key challenges, such as latency, energy constraints, adversarial robustness, and personalization, are systematically examined. The survey synthesizes solutions across algorithmic innovations, secure and adaptive FL frameworks, and neuromorphic and sparse architectures, especially FPGA-based solutions, for resource-aware inference and training. Informed by original research, it highlights emerging directions: AI-driven data mining, differential privacy for quantized models, continual learning on the edge, FPGA-accelerators including quantized DNN, SNN, and Sparse architectures, tuneable/reconfigurable FPGA-based Tiny DPFL, Multimodal heterogeneous FL, real-time adversarial detection via model watermarking. This work offers a unified system-level perspective bridging ML algorithms and edge AI hardware, guiding the development of scalable, adaptive, and trustworthy cardiac healthcare systems. Beyond surveying existing literature, it proposes forward-looking design principles to advance intelligent, secure, and practical digital cardiology.
KW - Cardiac Diseases
KW - Diagnosis and Treatment
KW - Machine Learning Federated Learning
KW - TinyML
KW - Hardware
KW - Accelerators
KW - FPGA
KW - Differential Privacy
U2 - 10.36227/techrxiv.174962004.42977112/v1
DO - 10.36227/techrxiv.174962004.42977112/v1
M3 - Preprint
BT - Toward TinyDPFL Systems for Real-Time Cardiac Healthcare: Trends, Challenges, and System-Level Perspectives on AI Algorithms, Hardware, and Edge Intelligence
ER -