Genes (May 2022)

Gene-Based Methods for Estimating the Degree of the Skewness of X Chromosome Inactivation

  • Meng-Kai Li,
  • Yu-Xin Yuan,
  • Bin Zhu,
  • Kai-Wen Wang,
  • Wing Kam Fung,
  • Ji-Yuan Zhou

DOI
https://doi.org/10.3390/genes13050827
Journal volume & issue
Vol. 13, no. 5
p. 827

Abstract

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Skewed X chromosome inactivation (XCI-S) has been reported to be associated with some X-linked diseases, and currently several methods have been proposed to estimate the degree of the XCI-S (denoted as γ) for a single locus. However, no method has been available to estimate γ for genes. Therefore, in this paper, we first propose the point estimate and the penalized point estimate of γ for genes, and then derive its confidence intervals based on the Fieller’s and penalized Fieller’s methods, respectively. Further, we consider the constraint condition of γ∈[0, 2] and propose the Bayesian methods to obtain the point estimates and the credible intervals of γ, where a truncated normal prior and a uniform prior are respectively used (denoted as GBN and GBU). The simulation results show that the Bayesian methods can avoid the extreme point estimates (0 or 2), the empty sets, the noninformative intervals ([0, 2]) and the discontinuous intervals to occur. GBN performs best in both the point estimation and the interval estimation. Finally, we apply the proposed methods to the Minnesota Center for Twin and Family Research data for their practical use. In summary, in practical applications, we recommend using GBN to estimate γ of genes.

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