| Literature DB >> 33811587 |
Claudio Michael Louis1, Alva Erwin2,3, Nining Handayani2,4, Arie A Polim2,4,5, Arief Boediono2,4,6, Ivan Sini2,4.
Abstract
In vitro fertilization has been regarded as a forefront solution in treating infertility for over four decades, yet its effectiveness has remained relatively low. This could be attributed to the lack of advancements for the method of observing and selecting the most viable embryos for implantation. The conventional morphological assessment of embryos exhibits inevitable drawbacks which include time- and effort-consuming, and imminent risks of bias associated with subjective assessments performed by individual embryologists. A combination of these disadvantages, undeterred by the introduction of the time-lapse incubator technology, has been considered as a prominent contributor to the less preferable success rate of IVF cycles. Nonetheless, a recent surge of AI-based solutions for tasks automation in IVF has been observed. An AI-powered assistant could improve the efficiency of performing certain tasks in addition to offering accurate algorithms that behave as baselines to minimize the subjectivity of the decision-making process. Through a comprehensive review, we have discovered multiple approaches of implementing deep learning technology, each with varying degrees of success, for constructing the automated systems in IVF which could evaluate and even annotate the developmental stages of an embryo.Entities:
Keywords: Artificial intelligence; Deep learning; Embryo assessment; Embryo selection; In vitro fertilization
Mesh:
Year: 2021 PMID: 33811587 PMCID: PMC8324729 DOI: 10.1007/s10815-021-02123-2
Source DB: PubMed Journal: J Assist Reprod Genet ISSN: 1058-0468 Impact factor: 3.357