license: mit
tags:
- biology
- plants
- gene expression
pretty_name: Maize and Arabidopsis gene expression
Dataset Card for Maize and Arabidopsis gene expression
Plant Gene expression data used for benchmarking sequence to gene expression prediction ML models.
Dataset Description
Species included are Maize and Arabidopsis thaliana. Dataset includes gene expression values for leaf and root tissues.
Within the tasks
folder, datasets are broken down by species-task-tissue
. Genomes in the genomes
folders include the annotation and the GFF files associated with that specific genome.
All tasks are split by 80% train, 10% validation, and 10% test.
Dataset Structure
dataset
genomes/
Arabidopsis_thaliana/
annotation.fa
ath.gff
Zea_mays/
annotation.fa
ath.gff
tasks/
species-task-tissue/
train.tsv
validate.tsv
test.tsv
- Curated by: Taylor Ferebee, Travis Wrightsman, Jingjing Zhai, Aaron Gokaslan, Volodymyr Kuleshov, Edward S. Buckler
- Repository: [https://github.com/maize-genetics/expression-survey]
- Paper: PLExBench: A benchmarking suite for predicting gene expression in plants
- License: MIT
Dataset Sources
sample_name | species | genotype | library_layout | library_selection | reads_location | organ | age | condition | replicate | batch | reference |
SRR505743 | Arabidopsis_thaliana | Col-0 | single-read | random | sra | root | seedling | controlled | 1 | 1 | SRP013631 |
SRR505744 | Arabidopsis_thaliana | Col-0 | single-read | random | sra | leaf | seedling | controlled | 1 | 1 | SRP013631 |
SRR953400 | Arabidopsis_thaliana | Col-0 | single-read | random | sra | leaf | seeding | controlled | 1 | 1 | PRJNA215448 |
SRR1005386 | Arabidopsis_thaliana | Col-0 | single-read | random | sra | leaf | seedling | controlled | 1 | 1 | PRJNA222364 |
SRR578947 | Arabidopsis_thaliana | Col-0 | single-read | random | sra | root | seedling | controlled | 1 | 1 | SRP013631 |
SRR578948 | Arabidopsis_thaliana | Col-0 | single-read | random | sra | root | seedling | controlled | 1 | 1 | SRP013631 |
ERR2096663 | Zea_mays | B73 | paired-end | polyA | sra | leaf | seedling | controlled | 1 | 1 | PRJEB22166 |
ERR2096664 | Zea_mays | B73 | paired-end | polyA | sra | leaf | seedling | controlled | 1 | 1 | PRJEB22166 |
ERR2096665 | Zea_mays | B73 | paired-end | polyA | sra | leaf | seedling | controlled | 1 | 1 | PRJEB22166 |
ERR2096666 | Zea_mays | B73 | paired-end | polyA | sra | leaf | seedling | controlled | 1 | 1 | PRJEB22166 |
ERR2096667 | Zea_mays | B73 | paired-end | polyA | sra | leaf | seedling | controlled | 1 | 1 | PRJEB22166 |
ERR3773807 | Zea_mays | B73 | paired-end | polyA | sra | root | seedling | controlled | 1 | 1 | PRJEB35943 |
ERR3773808 | Zea_mays | B73 | paired-end | polyA | sra | root | seedling | controlled | 1 | 1 | PRJEB35943 |
ERR986091 | Zea_mays | B73 | paired-end | random | sra | root | seedling | controlled | 1 | 1 | PRJEB10406 |
Curation Rationale
To choose experiments for leaf and root tissues, we focused on datasets that have been used in a recent study and can be found in multiple databases.
Data Collection and Processing
In the max gene expression datasets, for each gene, we take the maximum transcript per million TPM value over experiments. Similarly, for the absolute expression datasets, we take the mean TPM value over experiments. Finally, for the on-off ex- pression, we assign 1 to a gene if it has a TPM value in one of the tissues. To create train-test-validation splits, we use orthogroup guided splitting as introduced by Washburn et al. 2019. Then, we split the training test sets so that we train on 80% of the orthogroups and test on 10%. Note that for each of the task-based datasets, we keep the same train-test-validate split.
BibTeX:
Dataset Card Authors
Taylor Ferebee ([email protected])
Dataset Card Contact
Taylor Ferebee ([email protected]), Cinta Romay, Edward S. Buckler