CNSEG-GAN: a lightweight generative adversarial network for segmentation of CRL and NT from first-trimester fetal ultrasound

This paper presents a novel, low-compute and efficient generative adversarial network (GAN) design for automatic segmentation called CNSeg-GAN, which combines 1-D kernel factorized networks, spatial and channel attention, and multi-scale aggregation mechanisms in a conditional GAN (cGAN) fashion. Th...

Full description

Bibliographic Details
Main Authors: Sarker, MD, Yasrab, R, Alsharid, M, Papageorghiou, A, Noble, J
Format: Conference item
Language:English
Published: IEEE 2023
_version_ 1826311279027945472
author Sarker, MD
Yasrab, R
Alsharid, M
Papageorghiou, A
Noble, J
author_facet Sarker, MD
Yasrab, R
Alsharid, M
Papageorghiou, A
Noble, J
author_sort Sarker, MD
collection OXFORD
description This paper presents a novel, low-compute and efficient generative adversarial network (GAN) design for automatic segmentation called CNSeg-GAN, which combines 1-D kernel factorized networks, spatial and channel attention, and multi-scale aggregation mechanisms in a conditional GAN (cGAN) fashion. The proposed CNSeg-GAN architecture is trained and tested on a first-trimester ultrasound (US) scan video dataset for automatic detection and segmentation of anatomical structures in the midsagittal plane to enable Crown Rump Length (CRL) and Nuchal Translucency (NT) measurement. Experimental results shows that the proposed CNSeg-GAN is x15 faster than U-Net and yields mIoU of 78.20% on the CRL and 89.03% on the NT dataset, respectively with only 2.19 millions in parameters. The accuracy of this lightweight design makes it well-suited for real-time deployment in future work.
first_indexed 2024-03-07T08:07:28Z
format Conference item
id oxford-uuid:017d0991-6a88-4c79-a1a0-a4a89b942edf
institution University of Oxford
language English
last_indexed 2024-03-07T08:07:28Z
publishDate 2023
publisher IEEE
record_format dspace
spelling oxford-uuid:017d0991-6a88-4c79-a1a0-a4a89b942edf2023-11-09T08:39:56ZCNSEG-GAN: a lightweight generative adversarial network for segmentation of CRL and NT from first-trimester fetal ultrasoundConference itemhttp://purl.org/coar/resource_type/c_5794uuid:017d0991-6a88-4c79-a1a0-a4a89b942edfEnglishSymplectic ElementsIEEE2023Sarker, MDYasrab, RAlsharid, MPapageorghiou, ANoble, JThis paper presents a novel, low-compute and efficient generative adversarial network (GAN) design for automatic segmentation called CNSeg-GAN, which combines 1-D kernel factorized networks, spatial and channel attention, and multi-scale aggregation mechanisms in a conditional GAN (cGAN) fashion. The proposed CNSeg-GAN architecture is trained and tested on a first-trimester ultrasound (US) scan video dataset for automatic detection and segmentation of anatomical structures in the midsagittal plane to enable Crown Rump Length (CRL) and Nuchal Translucency (NT) measurement. Experimental results shows that the proposed CNSeg-GAN is x15 faster than U-Net and yields mIoU of 78.20% on the CRL and 89.03% on the NT dataset, respectively with only 2.19 millions in parameters. The accuracy of this lightweight design makes it well-suited for real-time deployment in future work.
spellingShingle Sarker, MD
Yasrab, R
Alsharid, M
Papageorghiou, A
Noble, J
CNSEG-GAN: a lightweight generative adversarial network for segmentation of CRL and NT from first-trimester fetal ultrasound
title CNSEG-GAN: a lightweight generative adversarial network for segmentation of CRL and NT from first-trimester fetal ultrasound
title_full CNSEG-GAN: a lightweight generative adversarial network for segmentation of CRL and NT from first-trimester fetal ultrasound
title_fullStr CNSEG-GAN: a lightweight generative adversarial network for segmentation of CRL and NT from first-trimester fetal ultrasound
title_full_unstemmed CNSEG-GAN: a lightweight generative adversarial network for segmentation of CRL and NT from first-trimester fetal ultrasound
title_short CNSEG-GAN: a lightweight generative adversarial network for segmentation of CRL and NT from first-trimester fetal ultrasound
title_sort cnseg gan a lightweight generative adversarial network for segmentation of crl and nt from first trimester fetal ultrasound
work_keys_str_mv AT sarkermd cnsegganalightweightgenerativeadversarialnetworkforsegmentationofcrlandntfromfirsttrimesterfetalultrasound
AT yasrabr cnsegganalightweightgenerativeadversarialnetworkforsegmentationofcrlandntfromfirsttrimesterfetalultrasound
AT alsharidm cnsegganalightweightgenerativeadversarialnetworkforsegmentationofcrlandntfromfirsttrimesterfetalultrasound
AT papageorghioua cnsegganalightweightgenerativeadversarialnetworkforsegmentationofcrlandntfromfirsttrimesterfetalultrasound
AT noblej cnsegganalightweightgenerativeadversarialnetworkforsegmentationofcrlandntfromfirsttrimesterfetalultrasound