4.6 Article

Predicting embryonic aneuploidy rate in IVF patients using whole-exome sequencing

Journal

HUMAN GENETICS
Volume 141, Issue 10, Pages 1615-1627

Publisher

SPRINGER
DOI: 10.1007/s00439-022-02450-z

Keywords

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Funding

  1. NIH/NICHD [R01-HD091331]
  2. NIH/NIGMS [R01-GM115486]
  3. NIH/NIMH [R01-MH115958]

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Infertility is a significant health issue affecting a considerable number of women in the United States. This study utilized machine learning-based classifiers to predict the risk of embryonic aneuploidy in female IVF patients using whole-exome sequencing data. The results demonstrated high accuracy and specificity of this approach, as well as identified candidate genes and pathways associated with aneuploidy risk. These findings offer potential targets for future research in aneuploidy studies.
Infertility is a major reproductive health issue that affects about 12% of women of reproductive age in the United States. Aneuploidy in eggs accounts for a significant proportion of early miscarriage and in vitro fertilization failure. Recent studies have shown that genetic variants in several genes affect chromosome segregation fidelity and predispose women to a higher incidence of egg aneuploidy. However, the exact genetic causes of aneuploid egg production remain unclear, making it difficult to diagnose infertility based on individual genetic variants in mother's genome. In this study, we evaluated machine learning-based classifiers for predicting the embryonic aneuploidy risk in female IVF patients using whole-exome sequencing data. Using two exome datasets, we obtained an area under the receiver operating curve of 0.77 and 0.68, respectively. High precision could be traded off for high specificity in classifying patients by selecting different prediction score cutoffs. For example, a strict prediction score cutoff of 0.7 identified 29% of patients as high-risk with 94% precision. In addition, we identified MCM5, FGGY, and DDX60L as potential aneuploidy risk genes that contribute the most to the predictive power of the model. These candidate genes and their molecular interaction partners are enriched for meiotic-related gene ontology categories and pathways, such as microtubule organizing center and DNA recombination. In summary, we demonstrate that sequencing data can be mined to predict patients' aneuploidy risk thus improving clinical diagnosis. The candidate genes and pathways we identified are promising targets for future aneuploidy studies.

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