Back to Papers Home
Back to Papers of School of Biological Sciences
Paper
IPM / Biological Sciences / 16287 |
School of Biological Sciences
|
Title: |
LogicNet: probabilistic continuous logics in reconstructing gene regulatory networks
|
Author(s): |
1. |
|
Status: |
Published
|
Journal: |
BMC Bioinformatics
|
No.: |
318
|
Vol.: |
21
|
Year: |
2020
|
Pages: |
1-21
|
Supported by: |
IPM
|
|
Abstract: |
Gene Regulatory Networks (GRNs) have been previously studied by using Boolean/multi-state logics. While the gene expression values are usually scaled into the range [0, 1], these GRN inference methods apply a threshold to discretize the data, resulting in missing information. Most of studies apply fuzzy logics to infer the logical gene-gene interactions from continuous data. However, all these approaches require an a priori known network structure.<br>
https://doi.org/10.1186/s12859-020-03651-x
Download TeX format
|
back to top
|
|