Ontology highlight
ABSTRACT:
SUBMITTER: Cheng CY
PROVIDER: S-EPMC8463701 | biostudies-literature | 2021 Sep
REPOSITORIES: biostudies-literature
Cheng Chia-Yi CY Li Ying Y Varala Kranthi K Bubert Jessica J Huang Ji J Kim Grace J GJ Halim Justin J Arp Jennifer J Shih Hung-Jui S HS Levinson Grace G Park Seo Hyun SH Cho Ha Young HY Moose Stephen P SP Coruzzi Gloria M GM
Nature communications 20210924 1
Inferring phenotypic outcomes from genomic features is both a promise and challenge for systems biology. Using gene expression data to predict phenotypic outcomes, and functionally validating the genes with predictive powers are two challenges we address in this study. We applied an evolutionarily informed machine learning approach to predict phenotypes based on transcriptome responses shared both within and across species. Specifically, we exploited the phenotypic diversity in nitrogen use effi ...[more]