The use of voting ensembles to improve the accuracy of deep neural networks as a non-invasive method to predict embryo ploidy status.
Victoria S JiangHemanth KandulaPrudhvi ThirumalarajuManoj Kumar KanakasabapathyPanagiotis CherouveimIrene SouterIrene DimitriadisCharles L BormannHadi ShafieePublished in: Journal of assisted reproduction and genetics (2023)
By combining CNNs with patient characteristics, voting ensembles can be created to improve the accuracy of classifying embryos as euploid/aneuploid from CNN alone, allowing for AI to serve as a potential non-invasive method to aid in karyotype screening and selection of embryos.