4.7 Review

Hardware Implementation of Deep Network Accelerators Towards Healthcare and Biomedical Applications

Journal

IEEE TRANSACTIONS ON BIOMEDICAL CIRCUITS AND SYSTEMS
Volume 14, Issue 6, Pages 1138-1159

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TBCAS.2020.3036081

Keywords

Medical services; Hardware; Medical diagnostic imaging; Neural networks; Computer architecture; Microprocessors; CMOS; deep neural networks; FPGA; healthcare; medical IoT; memristor; neuromorphic hardware; point-of-care; RRAM; spiking neural networks

Funding

  1. European Union's Horizon 2020 ERC project NeuroAgents [724295]
  2. EU [824164, 871371, PCI2019-111826-2]
  3. Ministry of Science and Innovation of Spain [PID2019-105556GB-C31]
  4. European Regional Development Fund

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The advent of dedicated Deep Learning (DL) accelerators and neuromorphic processors has brought on new opportunities for applying both Deep and Spiking Neural Network (SNN) algorithms to healthcare and biomedical applications at the edge. This can facilitate the advancement of medical Internet of Things (IoT) systems and Point of Care (PoC) devices. In this paper, we provide a tutorial describing how various technologies including emerging memristive devices, Field Programmable Gate Arrays (FPGAs), and Complementary Metal Oxide Semiconductor (CMOS) can be used to develop efficient DL accelerators to solve a wide variety of diagnostic, pattern recognition, and signal processing problems in healthcare. Furthermore, we explore how spiking neuromorphic processors can complement their DL counterparts for processing biomedical signals. The tutorial is augmented with case studies of the vast literature on neural network and neuromorphic hardware as applied to the healthcare domain. We benchmark various hardware platforms by performing a sensor fusion signal processing task combining electromyography (EMG) signals with computer vision. Comparisons are made between dedicated neuromorphic processors and embedded AI accelerators in terms of inference latency and energy. Finally, we provide our analysis of the field and share a perspective on the advantages, disadvantages, challenges, and opportunities that various accelerators and neuromorphic processors introduce to healthcare and biomedical domains.

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