Mask-R[Formula: see text]CNN: a distance-field regression version of Mask-RCNN for fetal-head delineation in ultrasound images

Int J Comput Assist Radiol Surg. 2021 Oct;16(10):1711-1718. doi: 10.1007/s11548-021-02430-0. Epub 2021 Jun 22.

Abstract

Background and objectives: Fetal head-circumference (HC) measurement from ultrasound (US) images provides useful hints for assessing fetal growth. Such measurement is performed manually during the actual clinical practice, posing issues relevant to intra- and inter-clinician variability. This work presents a fully automatic, deep-learning-based approach to HC delineation, which we named Mask-R[Formula: see text]CNN. It advances our previous work in the field and performs HC distance-field regression in an end-to-end fashion, without requiring a priori HC localization nor any postprocessing for outlier removal.

Methods: Mask-R[Formula: see text]CNN follows the Mask-RCNN architecture, with a backbone inspired by feature-pyramid networks, a region-proposal network and the ROI align. The Mask-RCNN segmentation head is here modified to regress the HC distance field.

Results: Mask-R[Formula: see text]CNN was tested on the HC18 Challenge dataset, which consists of 999 training and 335 testing images. With a comprehensive ablation study, we showed that Mask-R[Formula: see text]CNN achieved a mean absolute difference of 1.95 mm (standard deviation [Formula: see text] mm), outperforming other approaches in the literature.

Conclusions: With this work, we proposed an end-to-end model for HC distance-field regression. With our experimental results, we showed that Mask-R[Formula: see text]CNN may be an effective support for clinicians for assessing fetal growth.

Keywords: Deep learning; Distance fields; Fetal Ultrasound; Head-circumference delineation.

MeSH terms

  • Head* / diagnostic imaging
  • Humans
  • Image Processing, Computer-Assisted*
  • Ultrasonography