Development and evaluation of inexpensive automated deep learning-based imaging systems for embryology.
Manoj Kumar KanakasabapathyPrudhvi ThirumalarajuCharles L BormannHemanth KandulaIrene DimitriadisIrene SouterVinish YogeshSandeep Kota Sai PavanDivyank YarravarapuRaghav GuptaRohan PooniwalaHadi ShafieePublished in: Lab on a chip (2019)
Embryo assessment and selection is a critical step in an in vitro fertilization (IVF) procedure. Current embryo assessment approaches such as manual microscopy analysis done by embryologists or semi-automated time-lapse imaging systems are highly subjective, time-consuming, or expensive. Availability of cost-effective and easy-to-use hardware and software for embryo image data acquisition and analysis can significantly empower embryologists towards more efficient clinical decisions both in resource-limited and resource-rich settings. Here, we report the development of two inexpensive (<$100 and <$5) and automated imaging platforms that utilize advances in artificial intelligence (AI) for rapid, reliable, and accurate evaluations of embryo morphological qualities. Using a layered learning approach, we have shown that network models pre-trained with high quality embryo image data can be re-trained using data recorded on such low-cost, portable optical systems for embryo assessment and classification when relatively low-resolution image data are used. Using two test sets of 272 and 319 embryo images recorded on the reported stand-alone and smartphone optical systems, we were able to classify embryos based on their cell morphology with >90% accuracy.
Keyphrases
- deep learning
- artificial intelligence
- big data
- high resolution
- pregnancy outcomes
- machine learning
- convolutional neural network
- low cost
- electronic health record
- data analysis
- high throughput
- high speed
- single molecule
- mesenchymal stem cells
- single cell
- bone marrow
- quantum dots
- depressive symptoms
- physical activity
- reduced graphene oxide