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Detection and Localization of Ultrasound Scatterers Using Convolutional Neural Networks

Jihwan Youn, Martin Lind Ommen, Matthias Bo Stuart, Erik Vilain Thomsen, Niels B. Larsen, Jørgen Arendt Jensen

2020IEEE Transactions on Medical Imaging44 citationsDOIOpen Access PDF

Abstract

Delay-and-sum (DAS) beamforming is unable to identify individual scatterers when their density is so high that their point spread functions overlap. This paper proposes a convolutional neural network (CNN)-based method to detect and localize high-density scatterers, some of which are closer than the resolution limit of delay-and-sum (DAS) beamforming. A CNN was designed to take radio frequency channel data and return non-overlapping Gaussian confidence maps. The scatterer positions were estimated from the confidence maps by identifying local maxima. On simulated test sets, the CNN method with three plane waves achieved a precision of 1.00 and a recall of 0.91. Localization uncertainties after excluding outliers were ±46 [Formula: see text] (outlier ratio: 4%) laterally and ±26 [Formula: see text] (outlier ratio: 1%) axially. To evaluate the proposed method on measured data, two phantoms containing cavities were 3-D printed and imaged. For the phantom study, the training data were modified according to the physical properties of the phantoms and a new CNN was trained. On an uniformly spaced scatterer phantom, a precision of 0.98 and a recall of 1.00 were achieved with the localization uncertainties of ±101 [Formula: see text] (outlier ratio: 1%) laterally and ±37 [Formula: see text] (outlier ratio: 1%) axially. On a randomly spaced scatterer phantom, a precision of 0.59 and a recall of 0.63 were achieved. The localization uncertainties were ±132 [Formula: see text] (outlier ratio: 0%) laterally and ±44 [Formula: see text] with a bias of 22 [Formula: see text] (outlier ratio: 0%) axially. This method can potentially be extended to detect highly concentrated microbubbles in order to shorten data acquisition times of super-resolution ultrasound imaging.

Topics & Concepts

Convolutional neural networkComputer scienceArtificial intelligenceUltrasoundComputer visionArtificial neural networkPattern recognition (psychology)RadiologyMedicineUltrasonics and Acoustic Wave PropagationMicrowave Imaging and Scattering AnalysisFlow Measurement and Analysis
Detection and Localization of Ultrasound Scatterers Using Convolutional Neural Networks | Litcius