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ResGene-T: A Tensor-Based Residual Network Approach for Genomic Prediction

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In this work, we propose a new deep learning model for Genomic Prediction (GP), which involves correlating genotypic data with phenotypic. The genotypes are typically fed as a sequence of characters to the 1D-Convolution Neural Network layer of the underlying deep learning model. Inspired by earlier work that represented genotype as a 2D-image for genotype-phenotype classification, we extend this idea to GP, which is a regression task. We use a ResNet-18 as the underlying architecture, and term this model as ResGene-2D. Although the 2D-image representation captures biological interactions well, it requires all the layers of the model to do so. This limits training efficiency. Thus, as seen in the earlier work that proposed a 2D-image representation, our ResGene-2D performs almost the same as other models (3% improvement). To overcome this, we propose a novel idea of converting the 2D-image into a 3D/ tensor and feed this to the ResNet-18 architecture, and term this model as ResGene-T. We evaluate our proposed models on three crop species having ten phenotypic traits and compare it with seven most popular models (two statistical, two machine learning, and three deep learning). ResGene-T performs the best among all these seven methods (gains from 14.51% to 41.51%).

Kuldeep Pathak, Kapil Ahuja, Eric de Sturler• 2026

Related benchmarks

TaskDatasetResultRank
Genomic PredictionSoybean
Rank1
36
Genomic PredictionRice dataset
Rank1
27
Genomic PredictionSorghum dataset
Rank1
27
Genomic PredictionSoybean, Rice, and Sorghum Combined
Average PCC0.4281
9
Showing 4 of 4 rows

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