Can Ultrasound Confidence Maps Predict Sonographers’ Labeling Variability?

Vanessa Gonzalez Duque, Leonhard Zirus, Yordanka Velikova, Nassir Navab, Diana Mateus

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

1 Scopus citations

Abstract

Measuring cross-sectional areas in ultrasound images is a standard tool to evaluate disease progress or treatment response. Often addressed today with supervised deep-learning segmentation approaches, existing solutions highly depend upon the quality of experts’ annotations. However, the annotation quality in ultrasound is anisotropic and position-variant due to the inherent physical imaging principles, including attenuation, shadows, and missing boundaries, commonly exacerbated with depth. This work proposes a novel approach that guides ultrasound segmentation networks to account for sonographers’ uncertainties and generate predictions with variability similar to the experts. We claim that realistic variability can reduce overconfident predictions and improve physicians’ acceptance of deep-learning cross-sectional segmentation solutions. Toward that end, we rely on a simple and efficient method to estimate Confidence Maps (CM)s from ultrasound images. The method provides certainty for each pixel for minimal computational overhead as it can be precalculated directly from the image. We show that there is a correlation between low values in the confidence maps and expert’s label uncertainty. Therefore, we propose to give the confidence maps as additional information to the networks. We study the effect of the proposed use of ultrasound CMs in combination with four state-of-the-art neural networks and in two configurations: as a second input channel and as part of the loss. We evaluate our method on 3D ultrasound datasets of the thyroid and lower limb muscles. Our results show ultrasound CMs increase the Dice score, improve the Hausdorff and Average Surface Distances, and decrease the number of isolated pixel predictions. Furthermore, our findings suggest that ultrasound CMs improve the penalization of uncertain areas in the ground truth data, thereby improving problematic interpolations. Our code and example data will be made public at https://github.com/IFL-CAMP/Confidence-segmentation.

Original languageEnglish
Title of host publicationSimplifying Medical Ultrasound - 4th International Workshop, ASMUS 2023, Held in Conjunction with MICCAI 2023, Proceedings
EditorsBernhard Kainz, Johanna Paula Müller, Bernhard Kainz, Alison Noble, Julia Schnabel, Bishesh Khanal, Thomas Day
PublisherSpringer Science and Business Media Deutschland GmbH
Pages175-184
Number of pages10
ISBN (Print)9783031445200
DOIs
StatePublished - 2023
Event4th International Workshop of Advances in Simplifying Medical Ultrasound, ASMUS 2023 - Vancouver, Canada
Duration: 8 Oct 20238 Oct 2023

Publication series

NameLecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
Volume14337 LNCS
ISSN (Print)0302-9743
ISSN (Electronic)1611-3349

Conference

Conference4th International Workshop of Advances in Simplifying Medical Ultrasound, ASMUS 2023
Country/TerritoryCanada
CityVancouver
Period8/10/238/10/23

Keywords

  • 3D segmentation
  • 3D ultrasound
  • Confidence maps
  • fully convolutional neural networks

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