Abstract
Photoacoustic (PA) imaging is hybrid imaging modality with good optical
contrast and spatial resolution. Portable, cost-effective, smaller
footprint LEDs are rapidly becoming important PA optical sources.
However, the key challenge faced by the LED-based systems is the low
fluence that is generally compensated by high frame averaging;
consequently reducing acquisition frame-rate. In this study, we present
a simple deep learning U-Net framework that enhances the signal-to-noise
ratio (SNR) and contrast of the low number of frame-averaged PA images.
The SNR increased by approximately 4-fold for both in-class in vitro
phantoms (4.39 ± 2.55) and out-of-class in vivo models (4.27 ± 0.87). We
also demonstrate the noise invariancy of the network and discuss the
downsides (blurry outcome and fails to reduce the salt & pepper noise).
Overall, the developed U-Net framework can provide a real-time image
enhancement platform for clinically translatable low-cost and low-energy
light source-based PA imaging systems.