AI Article Synopsis

  • Scientists are using machine learning to help improve in vitro fertilization (IVF) by looking at time-lapse images of embryos.
  • Many embryos created during IVF are not used, but researchers found that information from these unused "sibling" embryos can help predict which ones might stick and develop in the uterus.
  • By using data from these sibling embryos, predictions about embryo success can be more accurate, helping doctors choose the best embryos to transfer.

Article Abstract

High-content time-lapse embryo imaging assessed by machine learning is revolutionizing the field of in vitro fertilization (IVF). However, the vast majority of IVF embryos are not transferred to the uterus, and these masses of embryos with unknown implantation outcomes are ignored in current efforts that aim to predict implantation. Here, whether, and to what extent the information encoded within "sibling" embryos from the same IVF cohort contributes to the performance of machine learning-based implantation prediction is explored. First, it is shown that the implantation outcome is correlated with attributes derived from the cohort siblings. Second, it is demonstrated that this unlabeled data boosts implantation prediction performance. Third, the cohort properties driving embryo prediction, especially those that rescued erroneous predictions, are characterized. The results suggest that predictive models for embryo implantation can benefit from the overlooked, widely available unlabeled data of sibling embryos by reducing the inherent noise of the individual transferred embryo.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10520665PMC
http://dx.doi.org/10.1002/advs.202207711DOI Listing

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