Mathematics (Jan 2022)

Bivariate Continuous Negatively Correlated Proportional Models with Applications in Schizophrenia Research

  • Yuan Sun,
  • Guoliang Tian,
  • Shuixia Guo,
  • Lianjie Shu,
  • Chi Zhang

DOI
https://doi.org/10.3390/math10030353
Journal volume & issue
Vol. 10, no. 3
p. 353

Abstract

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Bivariate continuous negatively correlated proportional data defined in the unit square (0,1)2 often appear in many different disciplines, such as medical studies, clinical trials and so on. To model this type of data, the paper proposes two new bivariate continuous distributions (i.e., negatively correlated proportional inverse Gaussian (NPIG) and negatively correlated proportional gamma (NPGA) distributions) for the first time and provides corresponding distributional properties. Two mean regression models are further developed for data with covariates. The normalized expectation–maximization (N-EM) algorithm and the gradient descent algorithm are combined to obtain the maximum likelihood estimates of parameters of interest. Simulations studies are conducted, and a data set of cortical thickness for schizophrenia is used to illustrate the proposed methods. According to our analysis between patients and controls of cortical thickness in typical mutual inhibitory brain regions, we verified the compensatory of cortical thickness in patients with schizophrenia and found its negative correlation with age.

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