EVATOM: an optical, label-free, machine learning assisted embryo health assessment tool.
Neha GoswamiNicola WinstonWonho ChoiNastasia Z E LaiRachel B ArcanjoXi ChenNahil SobhRomana A NowakMark A AnastasioGabriel PopescuPublished in: Communications biology (2024)
The combination of a good quality embryo and proper maternal health factors promise higher chances of a successful in vitro fertilization (IVF) procedure leading to clinical pregnancy and live birth. Of these two factors, selection of a good embryo is a controllable aspect. The current gold standard in clinical practice is visual assessment of an embryo based on its morphological appearance by trained embryologists. More recently, machine learning has been incorporated into embryo selection "packages". Here, we report EVATOM: a machine-learning assisted embryo health assessment tool utilizing an optical quantitative phase imaging technique called artificial confocal microscopy (ACM). We present a label-free nucleus detection method with, to the best of our knowledge, novel quantitative embryo health biomarkers. Two viability assessment models are presented for grading embryos into two classes: healthy/intermediate (H/I) or sick (S) class. The models achieve a weighted F1 score of 1.0 and 0.99 respectively on the in-distribution test set of 72 fixed embryos and a weighted F1 score of 0.9 and 0.95 respectively on the out-of-distribution test dataset of 19 time-instances from 8 live embryos.
Keyphrases
- pregnancy outcomes
- label free
- machine learning
- healthcare
- public health
- high resolution
- pregnant women
- mental health
- health information
- big data
- artificial intelligence
- clinical practice
- magnetic resonance
- health promotion
- social media
- risk assessment
- magnetic resonance imaging
- body mass index
- high speed
- deep learning
- network analysis
- weight loss
- preterm birth
- physical activity