» Articles » PMID: 28371793

Ultrasound Standard Plane Detection Using a Composite Neural Network Framework

Overview
Date 2017 Apr 4
PMID 28371793
Citations 28
Authors
Affiliations
Soon will be listed here.
Abstract

Ultrasound (US) imaging is a widely used screening tool for obstetric examination and diagnosis. Accurate acquisition of fetal standard planes with key anatomical structures is very crucial for substantial biometric measurement and diagnosis. However, the standard plane acquisition is a labor-intensive task and requires operator equipped with a thorough knowledge of fetal anatomy. Therefore, automatic approaches are highly demanded in clinical practice to alleviate the workload and boost the examination efficiency. The automatic detection of standard planes from US videos remains a challenging problem due to the high intraclass and low interclass variations of standard planes, and the relatively low image quality. Unlike previous studies which were specifically designed for individual anatomical standard planes, respectively, we present a general framework for the automatic identification of different standard planes from US videos. Distinct from conventional way that devises hand-crafted visual features for detection, our framework explores in- and between-plane feature learning with a novel composite framework of the convolutional and recurrent neural networks. To further address the issue of limited training data, a multitask learning framework is implemented to exploit common knowledge across detection tasks of distinctive standard planes for the augmentation of feature learning. Extensive experiments have been conducted on hundreds of US fetus videos to corroborate the better efficacy of the proposed framework on the difficult standard plane detection problem.

Citing Articles

Clinical validation of explainable AI for fetal growth scans through multi-level, cross-institutional prospective end-user evaluation.

Bashir Z, Lin M, Feragen A, Mikolaj K, Taksoe-Vester C, Christensen A Sci Rep. 2025; 15(1):2074.

PMID: 39820804 PMC: 11739376. DOI: 10.1038/s41598-025-86536-4.


Artificial Intelligence in Congenital Heart Disease: Current State and Prospects.

Jone P, Gearhart A, Lei H, Xing F, Nahar J, Lopez-Jimenez F JACC Adv. 2024; 1(5):100153.

PMID: 38939457 PMC: 11198540. DOI: 10.1016/j.jacadv.2022.100153.


PSFHSP-Net: an efficient lightweight network for identifying pubic symphysis-fetal head standard plane from intrapartum ultrasound images.

Qiu R, Zhou M, Bai J, Lu Y, Wang H Med Biol Eng Comput. 2024; 62(10):2975-2986.

PMID: 38722478 PMC: 11379789. DOI: 10.1007/s11517-024-03111-1.


Applications of artificial intelligence-powered prenatal diagnosis for congenital heart disease.

Liu X, Zhang Y, Zhu H, Jia B, Wang J, He Y Front Cardiovasc Med. 2024; 11:1345761.

PMID: 38720920 PMC: 11076681. DOI: 10.3389/fcvm.2024.1345761.


Artificial intelligence as a teaching tool for gynaecological ultrasound: A systematic search and scoping review.

Deslandes A, Avery J, Chen H, Leonardi M, Condous G, Hull M Australas J Ultrasound Med. 2024; 27(1):5-11.

PMID: 38434541 PMC: 10902831. DOI: 10.1002/ajum.12368.