AI Article Synopsis

  • Cardiac rhythm management devices treat arrhythmias but not heart failure, affecting millions globally; this study evaluates recent biophysics and engineering advances for improving heart disease therapies through dynamic cardiac pacing.
  • The research introduces silicon-based central pattern generators (hCPGs) designed to mimic natural biological networks and discusses the benefits of using analog circuits in bioelectronic medicine applications.
  • Experiments in rats showed that the hCPGs could restore respiratory sinus arrhythmia by adjusting vagus nerve stimulation based on breathing patterns, indicating potential for therapeutic use in heart disease management.

Article Abstract

Cardiac rhythm management devices provide therapies for both arrhythmias and resynchronisation but not heart failure, which affects millions of patients worldwide. This paper reviews recent advances in biophysics and mathematical engineering that provide a novel technological platform for addressing heart disease and enabling beat-to-beat adaptation of cardiac pacing in response to physiological feedback. The technology consists of silicon hardware central pattern generators (hCPGs) that may be trained to emulate accurately the dynamical response of biological central pattern generators (bCPGs). We discuss the limitations of present CPGs and appraise the advantages of analog over digital circuits for application in bioelectronic medicine. To test the system, we have focused on the cardio-respiratory oscillators in the medulla oblongata that modulate heart rate in phase with respiration to induce respiratory sinus arrhythmia (RSA). We describe here a novel, scalable hCPG comprising physiologically realistic (Hodgkin-Huxley type) neurones and synapses. Our hCPG comprises two neurones that antagonise each other to provide rhythmic motor drive to the vagus nerve to slow the heart. We show how recent advances in modelling allow the motor output to adapt to physiological feedback such as respiration. In rats, we report on the restoration of RSA using an hCPG that receives diaphragmatic electromyography input and use it to stimulate the vagus nerve at specific time points of the respiratory cycle to slow the heart rate. We have validated the adaptation of stimulation to alterations in respiratory rate. We demonstrate that the hCPG is tuneable in terms of the depth and timing of the RSA relative to respiratory phase. These pioneering studies will now permit an analysis of the physiological role of RSA as well as its any potential therapeutic use in cardiac disease.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC4398520PMC
http://dx.doi.org/10.1113/jphysiol.2014.282723DOI Listing

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