Gradient-based adaptive wavelet de-noising method for photoacoustic
imaging in vivo
Abstract
Photoacoustic imaging (PAI) has been applied to many biomedical
applications over the past decades. However, the received PA signal
usually suffers from poor signal-to-noise ratio (SNR). Conventional
solution of employing higher-power laser, or doing long-time signal
averaging, may raise the system cost, time consumption, and tissue
damage. Another strategy is de-noising algorithm design. In this paper,
we propose a new de-noising method, termed gradient-based adaptive
wavelet de-noising, which sets the energy gradient mutation point of
low-frequency wavelet components as the threshold. We conducted
simulation, ex vivo and in vivo experiments to validate the performance
of the algorithm. The quality of de-noised PA image/signal by our
proposed algorithm has improved by 20%-40%, in comparison to the
traditional signal denoising algorithms, which produces better contrast
and clearer details. The proposed de-noising method provides potential
to improve the SNR of PA signal under single-shot low-power laser
illumination for biomedical applications in vivo.