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RecruitingNCT06002412

Quality Control of Ultrasound Images During Early Pregnancy Via AI

Deep Learning-based Quality Control of Ultrasound Images During Early Pregnancy

Status
Recruiting
Phase
Study type
Observational
Enrollment
400 (estimated)
Sponsor
Chinese Academy of Sciences · Other Government
Sex
Female
Age
20 Years
Healthy volunteers
Accepted

Summary

This research integrates artificial intelligence to enhance early pregnancy ultrasonography quality control, focusing on specific fetal sections. In collaboration with prominent medical institutions, the investigators have amassed extensive fetal ultrasound data. The investigators aim to develop a deep learning model that can accurately identify essential anatomical areas in ultrasound images and evaluate their quality. This tool is expected to significantly decrease misdiagnoses of conditions like Down Syndrome and neural system deformities by ensuring real-time image quality assessment.

Detailed description

This research is dedicated to integrating artificial intelligence technology to optimize the quality control process of early pregnancy ultrasonography. The ultrasound images involved primarily focus on the median sagittal section, NT section, and choroid plexus of the fetus during early pregnancy. In this regard, the investigators have collaborated with renowned medical institutions such as Beijing Obstetrics and Gynecology Hospital, Peking University Third Hospital, Changsha Hospital for Maternal and Child Health Care, and Second Xiangya Hospital of Central South University to retrospectively and prospectively collect a vast amount of early pregnancy fetal ultrasound image data. Based on this, the investigators plan to establish a model rooted in deep learning. This model will be capable of precisely identifying key anatomical regions in standard ultrasound scan images. Furthermore, by recognizing these anatomical structures, the model will determine whether the ultrasound image meets the standard scanning quality. This model is anticipated to serve as a powerful auxiliary tool in obstetric ultrasonography, enabling real-time assessment of ultrasound image quality, thereby significantly reducing the rates of missed and misdiagnosed fetal diseases such as Down Syndrome and neural system malformations.

Conditions

Interventions

TypeNameDescription
OTHERImage quality controlThe investigators identify the region of interest in the relevant section to give a conclusion on whether the image is standard or not, guiding clinicians to standardize the operation, and reducing the rate of misdiagnosis and underdiagnosis.

Timeline

Start date
2023-09-01
Primary completion
2023-12-31
Completion
2028-07-30
First posted
2023-08-21
Last updated
2023-09-08

Locations

4 sites across 1 country: China

Source: ClinicalTrials.gov record NCT06002412. Inclusion in this directory is not an endorsement.