Litcius/Paper detail

A Deep Learning-Based Model That Reduces Speed of Sound Aberrations for Improved <i>In Vivo</i> Photoacoustic Imaging

Seungwan Jeon, Wonseok Choi, Byullee Park, Chulhong Kim

2021IEEE Transactions on Image Processing88 citationsDOIOpen Access PDF

Abstract

Photoacoustic imaging (PAI) has attracted great attention as a medical imaging method. Typically, photoacoustic (PA) images are reconstructed via beamforming, but many factors still hinder the beamforming techniques in reconstructing optimal images in terms of image resolution, imaging depth, or processing speed. Here, we demonstrate a novel deep learning PAI that uses multiple speed of sound (SoS) inputs. With this novel method, we achieved SoS aberration mitigation, streak artifact removal, and temporal resolution improvement all at once in structural and functional in vivo PA images of healthy human limbs and melanoma patients. The presented method produces high-contrast PA images in vivo with reduced distortion, even in adverse conditions where the medium is heterogeneous and/or the data sampling is sparse. Thus, we believe that this new method can achieve high image quality with fast data acquisition and can contribute to the advance of clinical PAI.

Topics & Concepts

Photoacoustic imaging in biomedicineComputer scienceArtificial intelligenceIterative reconstructionComputer visionBeamformingImage qualityCurveletDeep learningPreclinical imagingStreakMedical imagingArtifact (error)Distortion (music)AutoencoderIn vivoImage (mathematics)OpticsPhysicsComputer networkWavelet transformAmplifierWaveletBiologyBiotechnologyBandwidth (computing)TelecommunicationsPhotoacoustic and Ultrasonic ImagingThermography and Photoacoustic TechniquesOptical Imaging and Spectroscopy Techniques