Robust and generalizable embryo selection based on artificial intelligence and time-lapse image sequences
J{\o}rgen Berntsen, Jens Rimestad, Jacob Theilgaard Lassen, Dang Tran,, Mikkel Fly Kragh

TL;DR
This study develops and evaluates a deep learning model for embryo selection using time-lapse images, demonstrating its generalizability across clinics and conditions, and its correlation with traditional grading methods.
Contribution
The paper introduces a fully automated AI-based embryo scoring model trained on a large, multi-center dataset, showing comparable or superior performance to manual methods.
Findings
AI model achieved AUC of 0.67 for KID embryos and 0.95 for all embryos.
Model generalized well across clinics with AUC range 0.60-0.75.
Predictions correlated with blastocyst grading and inversely with direct cleavages.
Abstract
Assessing and selecting the most viable embryos for transfer is an essential part of in vitro fertilization (IVF). In recent years, several approaches have been made to improve and automate the procedure using artificial intelligence (AI) and deep learning. Based on images of embryos with known implantation data (KID), AI models have been trained to automatically score embryos related to their chance of achieving a successful implantation. However, as of now, only limited research has been conducted to evaluate how embryo selection models generalize to new clinics and how they perform in subgroup analyses across various conditions. In this paper, we investigate how a deep learning-based embryo selection model using only time-lapse image sequences performs across different patient ages and clinical conditions, and how it correlates with traditional morphokinetic parameters. The model was…
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