Deep learning pipeline reveals key moments in human embryonic development predictive of live birth after in vitro fertilization.
Camilla MapstoneHelen HunterDaniel R BrisonJulia HandlBerenika PłusaPublished in: Biology methods & protocols (2024)
Demand for in vitro fertilization (IVF) treatment is growing; however, success rates remain low partly due to difficulty in selecting the best embryo to be transferred. Current manual assessments are subjective and may not take advantage of the most informative moments in embryo development. Here, we apply convolutional neural networks (CNNs) to identify key windows in pre-implantation human development that can be linked to embryo viability and are therefore suitable for the early grading of IVF embryos. We show how machine learning models trained at these developmental time points can be used to refine overall embryo viability assessment. Exploiting the well-known capabilities of transfer learning, we illustrate the performance of CNN models for very limited datasets, paving the way for the use on a clinic-by-clinic basis, catering for local data heterogeneity.
Keyphrases
- convolutional neural network
- pregnancy outcomes
- deep learning
- endothelial cells
- machine learning
- pregnant women
- primary care
- artificial intelligence
- induced pluripotent stem cells
- pluripotent stem cells
- big data
- electronic health record
- physical activity
- preterm birth
- gestational age
- resistance training
- body composition
- smoking cessation
- data analysis