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RECRUITING
NCT06717802

Endometrial Receptivity Prediction During in Vitro Fertilization Using Artificial Intelligence

Sponsor: Gottsegen National Cardiovascular Institute

View on ClinicalTrials.gov

Summary

The investigators plan to use artificial intelligence to analyse vaginal ultrasound images of the uterine lining (endometrium) taken during routine IVF treatment, which may predict implantation success during IVF treatment. Participation in the study is voluntary, involves no additional testing or intervention beyond routine procedures, and consent can be withdrawn verbally or in writing at any time without cause or adverse consequences. Over a three-year period, the trial is expected to enrol approximately 1,500 patients between the ages of 18 and 40 who are indicated for IVF treatment and who volunteer for treatment. Patients enrolled in the study will not be required to attend more clinic visits during treatment than they would otherwise have to. During the trial, certain patient-specific data (age, indication for treatment, body mass index), stimulation-specific data (duration of stimulation, type and dose of drug, endometrial thickness), ultrasound scans and outcome-specific data (treatment failure, biochemical pregnancy, clinical pregnancy) will be collected. The data will be stored in a secure database. The data collected during the study will only be accessible to the professionals involved in the study and no information, including personal data, will be disclosed to third parties.

Official title: Endometrial Receptivity Prediction During in Vitro Fertilization Using Artificial Intelligence Analysis of Vaginal Ultrasound Images

Key Details

Gender

FEMALE

Age Range

18 Years - 40 Years

Study Type

OBSERVATIONAL

Enrollment

1500

Start Date

2025-06-01

Completion Date

2028-12-31

Last Updated

2025-09-11

Healthy Volunteers

No

Locations (1)

Dunamenti REK Reprodukcios Kozpont

Budapest, Hungary