Towards the automation of early-stage human embryo development detection.
Vidas RaudonisAgne Paulauskaite-TarasevicieneKristina ŠutienėDomas JonaitisPublished in: Biomedical engineering online (2019)
This research contributes to the field by proposing a model to automate the monitoring of early-stage human embryo development. Unlike in other imaging fields, only a few published attempts have involved leveraging deep learning in this field. Therefore, the approach presented in this study could be used in the creation of novel algorithms integrated into the assisted reproductive technology used by embryologists.