Data, scripts and results for NN-MM paper:
Tianjing Zhao, Jian Zeng, Hao Cheng, Extend mixed models to multilayer neural networks for genomic prediction including intermediate omics data, Genetics, Volume 221, Issue 1, May 2022, iyac034, https://doi.org/10.1093/genetics/iyac034
Those files are:
- Part1_NNLMM_vs_singlestep: compare the prediction performance of NN-LMM to the single-step approach in Christensenet al.(2021). (Figure 4 in NN-LMM paper)
- Part2_NNLMM_nonlinear: the prediction performance of NN-GBLUP with a linear function was compared to NN-GBLUP with a nonlinear sigmoid activation function, when the underlying relationship between intermediate omics features and phenotypes was nonlinear for the simulated datasets. (Figure 5 in NN-LMM paper)
- Part3_NNGBLUP_vs_NNBayesC: performance of NN-LMM with a GBLUP prior (i.e, NN-GBLUP) and NN-LMM with a BayesC prior (i.e., NN-BayesC) were compared, and linear activation functions were applied. (Figure 6 in NN-LMM paper)
NN-MM is also called "mixed effects neural networks". To perform NN-MM in JWAS, please see documentation and latest examples. The scripts here may be invalid due to the updated NN-MM interface in JWAS.
Christensen OF, Börner V, Varona L, Legarra A. Genetic evaluation including intermediate omics features. Genetics. 2021 Oct;219(2):iyab130.