Total Nuclear Variation Spectral Log Difference for Ultrasonic Attenuation Images

Loading...
Thumbnail Image

Date

Journal Title

Journal ISSN

Volume Title

Publisher

IEEE Computer Society

Acceso al texto completo solo para la Comunidad PUCP

Abstract

Quantitative Ultrasound (QUS) is a non-invasive imaging modality that characterizes tissues numerically. A well-known QUS parameter is the attenuation coefficient slope (ACS). A previous work proposed a regularized spectral log difference method (RSLD) to estimate the ACS, yet the ACS and the backscatter component were computed as independent parameters using a single channel total variation with no joint prior exploited. This work proposes a joint reconstruction method named the Total Nuclear Variation SLD (TNV-SLD). It couples geometrical information of the ACS and the backscatter component to enhance the quality of the images, measured by the mean percentage error (MPE) and contrast-to-noise ratio (CNR). Metrics are compared to the RSLD with data from a simulated and a physical phantom. Initial results show that TNV-SLD can provide comparable CNR values than RSLD but with lower MPE values. In the simulation, RSLD achieved a MPE of 25.4% (inclusion) and 8.1% (background), while TNV-SLD obtained MPE of 15.9% (inclusion) and 2.8% (background). In the real phantom, RSLD achieved a MPE of 37.7% (inclusion) and 1.9% (background), while TNV-SLD obtained MPE of 22.5% (inclusion) and 1.8% (background). Furthermore, TNV-SLD was more robust in terms of the regularization parameter µ, maintaining a more s table MPE and a higher CNR than RSLD for a broader range of µ values, thus surpassing the risk of over-regularizing the images.

Description

Keywords

Imaging phantom, Attenuation, Physics, Algorithm, Mathematics, Optics

Citation

Collections

Endorsement

Review

Supplemented By

Referenced By