Title :
A DSP for Sensing the Bladder Volume Through Afferent Neural Pathways
Author :
Mendez, Arnaldo ; Belghith, Akram ; Sawan, Mohamad
Author_Institution :
Electr. Eng. Dept., Ecole Polytech., Montreal, QC, Canada
Abstract :
In this paper, we present a digital signal processor (DSP) capable of monitoring the urinary bladder volume through afferent neural pathways. The DSP carries out real-time detection and can discriminate extracellular action potentials, also known as on-the-fly spike sorting. Next, the DSP performs a decoding method to estimate either three qualitative levels of fullness or the bladder volume value, depending on the selected output mode. The proposed DSP was tested using both realistic synthetic signals with a known ground-truth, and real signals from bladder afferent nerves recorded during acute experiments with animal models. The spike sorting processing circuit yielded an average accuracy of 92% using signals with highly correlated spike waveforms and low signal-to-noise ratios. The volume estimation circuits, tested with real signals, reproduced accuracies achieved by offline simulations in Matlab, i.e., 94% and 97% for quantitative and qualitative estimations, respectively. To assess feasibility, the DSP was deployed in the Actel FPGA Igloo AGL1000V2, which showed a power consumption of 0.5 mW and a latency of 2.1 ms at a 333 kHz core frequency. These performance results demonstrate that an implantable bladder sensor that perform the detection, discrimination and decoding of afferent neural activity is feasible.
Keywords :
bioelectric potentials; biological organs; biomedical electronics; biomedical equipment; biomedical measurement; correlation methods; digital signal processing chips; estimation theory; medical signal detection; medical signal processing; neurophysiology; patient monitoring; prosthetics; sorting; waveform analysis; Actel FPGA Igloo AGL1000V2; DSP deployment; DSP testing; Matlab; acute animal model experiments; afferent neural activity decoding; afferent neural activity detection; afferent neural activity discrimination; afferent neural pathways; bladder afferent nerve recording; bladder volume sensing; bladder volume value estimation; decoding method; digital signal processor; extracellular action potential discrimination; frequency 333 kHz; implantable bladder sensor; offline simulations; on-the-fly spike sorting; output mode dependence; output mode selection; power 0.5 mW; qualitative estimations; qualitative fullness level estimation; quantitative estimations; real-time detection; signal-to-noise ratios; spike sorting processing circuit accuracy; spike waveform correlation; time 2.1 ms; urinary bladder volume monitoring; volume estimation circuit accuracy; volume estimation circuit testing; Bladder; Decoding; Digital signal processing; Noise measurement; Real-time systems; Sorting; Training; Biomedical signal processing; biomedical transducers; bladder volume; neural prosthesis; spike sorting;
Journal_Title :
Biomedical Circuits and Systems, IEEE Transactions on
DOI :
10.1109/TBCAS.2013.2282087