Englander Institute for Precision Medicine

A foundational model for in vitro fertilization trained on 18 million time-lapse images.

TitleA foundational model for in vitro fertilization trained on 18 million time-lapse images.
Publication TypeJournal Article
Year of Publication2025
AuthorsRajendran S, Rehani E, Phu W, Zhan Q, Malmsten JE, Meseguer M, Miller KA, Rosenwaks Z, Elemento O, Zaninovic N, Hajirasouliha I
JournalNat Commun
Volume16
Issue1
Pagination6235
Date Published2025 Jul 11
ISSN2041-1723
KeywordsBlastocyst, Deep Learning, Embryonic Development, Female, Fertilization in Vitro, Humans, Ploidies, ROC Curve, Time-Lapse Imaging
Abstract

Embryo assessment in in vitro fertilization (IVF) involves multiple tasks-including ploidy prediction, quality scoring, component segmentation, embryo identification, and timing of developmental milestones. Existing methods address these tasks individually, leading to inefficiencies due to high costs and lack of standardization. Here, we introduce FEMI (Foundational IVF Model for Imaging), a foundation model trained on approximately 18 million time-lapse embryo images. We evaluate FEMI on ploidy prediction, blastocyst quality scoring, embryo component segmentation, embryo witnessing, blastulation time prediction, and stage prediction. FEMI attains area under the receiver operating characteristic (AUROC) >  0.75 for ploidy prediction using only image data-significantly outpacing benchmark models. It has higher accuracy than both traditional and deep-learning approaches for overall blastocyst quality and its subcomponents. Moreover, FEMI has strong performance in embryo witnessing, blastulation-time, and stage prediction. Our results demonstrate that FEMI can leverage large-scale, unlabelled data to improve predictive accuracy in several embryology-related tasks in IVF.

DOI10.1038/s41467-025-61116-2
Alternate JournalNat Commun
PubMed ID40645954
PubMed Central IDPMC12254344
Grant ListR35GM138152 / / U.S. Department of Health & Human Services | NIH | National Institute of General Medical Sciences (NIGMS) /
1000331235 / / National Science Foundation (NSF) /

Weill Cornell Medicine Englander Institute for Precision Medicine 413 E 69th Street
Belfer Research Building
New York, NY 10021