Title :
Implementation Study of an Analog Spiking Neural Network for Assisting Cardiac Delay Prediction in a Cardiac Resynchronization Therapy Device
Author :
Sun, Qing ; Schwartz, François ; Michel, Jacques ; Herve, Yannick ; Dalmolin, Renzo
Author_Institution :
Heterogeneous Syst. & Microsyst., Univ. of Strasbourg, Strasbourg, France
fDate :
6/1/2011 12:00:00 AM
Abstract :
In this paper, we aim at developing an analog spiking neural network (SNN) for reinforcing the performance of conventional cardiac resynchronization therapy (CRT) devices (also called biventricular pacemakers). Targeting an alternative analog solution in 0.13-μm CMOS technology, this paper proposes an approach to improve cardiac delay predictions in every cardiac period in order to assist the CRT device to provide real-time optimal heartbeats. The primary analog SNN architecture is proposed and its implementation is studied to fulfill the requirement of very low energy consumption. By using the Hebbian learning and reinforcement learning algorithms, the intended adaptive CRT device works with different functional modes. The simulations of both learning algorithms have been carried out, and they were shown to demonstrate the global functionalities. To improve the realism of the system, we introduce various heart behavior models (with constant/variable heart rates) that allow pathologic simulations with/without noise on the signals of the input sensors. The simulations of the global system (pacemaker models coupled with heart models) have been investigated and used to validate the analog spiking neural network implementation.
Keywords :
CMOS analogue integrated circuits; Hebbian learning; cardiology; neural chips; neural net architecture; pacemakers; patient treatment; real-time systems; CMOS technology; CRT devices; Hebbian learning; alternative analog solution; analog spiking neural network; biventricular pacemakers; cardiac delay predictions; cardiac period; constant heart rates; conventional cardiac resynchronization therapy devices; energy consumption; functional modes; global functionality; global system; heart behavior models; intended adaptive CRT device; pacemaker models; pathologic simulations; primary analog SNN architecture; real-time optimal heartbeats; reinforcement learning algorithms; variable heart rates; Artificial neural networks; Cathode ray tubes; Delay; Neurons; Sensors; Silicon; Cardiac resynchronization therapy device; Hebbian learning; reinforcement learning; spiking neural network; Arrhythmias, Cardiac; Cardiac Resynchronization Therapy; Diagnosis, Computer-Assisted; Electrocardiography; Humans; Neural Networks (Computer); Therapy, Computer-Assisted;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2011.2125986