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NCT06884930

Machine Learning and Pregnancy Success Prediction in Fertility Treatments

Sponsor: IRCCS San Raffaele

View on ClinicalTrials.gov

Summary

Infertility, as defined by the World Health Organization (WHO), is a disorder of the male or female reproductive system characterized by the inability to achieve a clinical pregnancy after 12 months or more of regular, unprotected sexual intercourse. In modern fertility treatment, assisted reproductive technologies (ART), including in vitro fertilization (IVF), have become a standard approach for addressing complex fertility issues and sterility. In Italy, infertility affects approximately 16.5% of couples. Despite advancements in ART, comparing the failure rates of pregnancies achieved through ART with those of spontaneous pregnancies in Italy reveals significant differences, particularly in terms of success rates, miscarriage rates, and embryo implantation outcomes. In this context, AI-based models have shown promising potential in predicting IVF success by analyzing complex datasets that include patient demographics, hormonal levels, and embryo morphology. Research indicates that AI can enhance embryo selection, predict the optimal timing for embryo transfer, and advance personalized medicine approaches in reproductive health. This study aims to use of Machine Learning to identify patterns and factors associated with successful pregnancy outcomes by analyzing large-scale, anonymized ART data. The resulting predictive model could enable clinicians to better personalize treatment protocols for each patient, optimizing medication dosages, timing, and embryo selection. It could also improve pregnancy success rates while reducing the emotional and financial burden on patients, thus advancing the standard of care in ART.

Official title: Machine Learning-based Evaluation of Pregnancy Success Indicators in Assisted Reproductive Technology (ART) Cycles

Key Details

Gender

All

Age Range

18 Years - 43 Years

Study Type

OBSERVATIONAL

Enrollment

5000

Start Date

2025-04-16

Completion Date

2026-03

Last Updated

2025-10-07

Healthy Volunteers

No

Locations (1)

IRCCS San Raffaele Hospital

Milan, Milano, Italy