TY - DATA T1 - Dataset underlying the study: Waveform-Specific Performance of Deep Learning-Based Super-Resolution for Ultrasound Contrast Imaging PY - 2025/01/21 AU - Rienk Zorgdrager AU - Nathan Blanken AU - Jelmer Wolterink AU - Michel Versluis AU - Guillaume Lajoinie UR - DO - 10.4121/cc1c073d-23bf-4a1e-b9f4-9f878c95722d.v1 KW - Chirp KW - Deep Learning KW - Flow Imaging KW - Microbubbles KW - Super-resolution KW - Ultrasound Contrast Imaging N2 -

This dataset contains the data used for the study ‘Waveform-Specific Performance of Deep Learning-Based Super-Resolution for Ultrasound Contrast Imaging’ (link will be added after publication). Contents: It consists of radiofrequency (RF) signals acquired during simulations and experiments, weights and biases of networks trained, and images reconstructed using delay-and-sum (DAS) beamforming. In addition to that, it also contains environments and packages used to process the data. Objective: To investigate the effect of transmit waveforms on the performance of deep learning-based approaches for localizing microbubbles in radiofrequency signals. Type of research: Fundamental, Physics, Biomedical. Method of data collection: In-silico and in-vitro. Type of data: RF signals (.mat and .txt), super-resolved RF signals (.txt and .npy), weights and biases (.txt), images generated with the (super-resolved) RF signals (.mat), videos generated with the (super-resolved) RF signals (.mp4), python environments (.yaml), microbubble size distributions (.fig and .png). The code used for this work is available at https://github.com/MIAGroupUT/super-resolution-waveforms

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