Integrative multi-omics analysis provides deeper insight and enables better and more realistic modeling of the underlying biology and causes of diseases than does single omics analysis. Although several integrative multi-omics analysis methods have been proposed and demonstrated promising results in integrating distinct omics datasets, inconsistent distribution of the different omics data, which is caused by technology variations, poses a challenge for paired integrative multi-omics methods. In addition, the existing discriminant analysis-based integrative methods do not effectively exploit correlation and consistent discriminant structures, necessitating a compromise between correlation and discrimination in using these methods. Herein we present PAN-omics Discriminant Analysis (PANDA), a joint discriminant analysis method that seeks omics-specific discriminant common spaces by jointly learning consistent discriminant latent representations for each omics. PANDA jointly maximizes between-class and minimizes within-class omics variations in a common space and simultaneously models the relationships among omics at the consistency representation and cross-omics correlation levels, overcoming the need for compromise between discrimination and correlation as with the existing integrative multi-omics methods. Because of the consistency representation learning incorporated into the objective function of PANDA, this method seeks a common discriminant space to minimize the differences in distributions among omics, can lead to a more robust latent representations than other methods, and is against the inconsistency of the different omics. We compared PANDA to 10 other state-of-the-art multi-omics data integration methods using both simulated and real-world multi-omics datasets and found that PANDA consistently outperformed them while providing meaningful discriminant latent representations. PANDA is implemented using both R and MATLAB, with codes available at https://github.com/WuLabMDA/PANDA.
Joint multi-omics discriminant analysis with consistent representation learning using PANDA.
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作者:Aminu Muhammad, Hong Lingzhi, Vokes Natalie, Schmidt Stephanie T, Saad Maliazurina, Zhu Bo, Le Xiuning, Tina Cascone, Sheshadri Ajay, Wang Bo, Jaffray David, Futreal Andy, Lee J Jack, Byers Lauren A, Gibbons Don, Heymach John, Chen Ken, Cheng Chao, Zhang Jianjun, Wu Jia
| 期刊: | Res Sq | 影响因子: | 0.000 |
| 时间: | 2024 | 起止号: | 2024 May 17 |
| doi: | 10.21203/rs.3.rs-4353037/v1 | ||
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