Litcius/Paper detail

Deep learning-based reconstruction of ultrasound images from raw channel data

Hannah Strohm, Sven Rothlübbers, Klaus Eickel, Matthias Günther

2020International Journal of Computer Assisted Radiology and Surgery17 citationsDOIOpen Access PDF

Abstract

PURPOSE: We investigate the feasibility of reconstructing ultrasound images directly from raw channel data using a deep learning network. Starting from the raw data, we present the network the full measurement information, allowing for a more generic reconstruction to form, as compared to common reconstructions constrained by physical models using fixed speed of sound assumptions. METHODS: We propose a U-Net-like architecture for the given task. Additional layers with strided convolutions downsample the raw data. Hyperparameter optimization was used to find a suitable learning rate. We train and test our deep learning approach on plane wave ultrasound images with a single insonification angle. The dataset includes phantom as well as in vivo data. RESULTS: The images produced by our method are visually comparable to ones reconstructed with the conventional delay and sum algorithm. Deviations between prediction and ground truth are likely to be related to speckle noise. For the test set, the mean absolute error is [Formula: see text] for the phantom images and [Formula: see text] for the in vivo data. CONCLUSION: The result shows the feasibility of our approach and opens up new research directions regarding information retrieval from raw channel data. As the networks reconstruction performance is limited by the quality of the ground truth images, using other ultrasound reconstruction technique or image types as target data would be of interest.

Topics & Concepts

Ground truthArtificial intelligenceComputer scienceImaging phantomAlgorithmDeep learningHyperparameterRaw dataUltrasoundData setMachine learningPhysicsOpticsAcousticsProgramming languageUltrasound Imaging and ElastographyUltrasonics and Acoustic Wave PropagationPhotoacoustic and Ultrasonic Imaging