Effects of Time Point Measurement on the Reconstruction of Gene Regulatory Networks
With the availability of high-throughput gene expression data in the post-genomic era, reconstruction of gene regulatory networks has become a hot topic. Regulatory networks have been intensively studied over the last decade and many software tools are currently available. However, the impact of tim...
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doaj-d0ab41a4540e425d89a0cbb22d82db362020-11-25T01:09:34ZengMDPI AGMolecules1420-30492010-08-011585354536810.3390/molecules15085354Effects of Time Point Measurement on the Reconstruction of Gene Regulatory NetworksBairong ShenYuanyuan ZhangJiajia ChenYang YangHuangqiong ZhuWenying YanWith the availability of high-throughput gene expression data in the post-genomic era, reconstruction of gene regulatory networks has become a hot topic. Regulatory networks have been intensively studied over the last decade and many software tools are currently available. However, the impact of time point selection on network reconstruction is often underestimated. In this paper we apply the Dynamic Bayesian network (DBN) to construct the Arabidopsis gene regulatory networks by analyzing the time-series gene microarray data. In order to evaluate the impact of time point measurement on network reconstruction, we deleted time points one by one to yield 11 distinct groups of incomplete time series. Then the gene regulatory networks constructed based on complete and incomplete data series are compared in terms of statistics at different levels. Two time points are found to play a significant role in the Arabidopsis gene regulatory networks. Pathway analysis of significant nodes revealed three key regulatory genes. In addition, important regulations between genes, which were insensitive to the time point measurement, were also identified. http://www.mdpi.com/1420-3049/15/8/5354/dynamic Bayesian networkstime pointsgene regulatory networknetwork statisticsnetwork reconstruction |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Bairong Shen Yuanyuan Zhang Jiajia Chen Yang Yang Huangqiong Zhu Wenying Yan |
spellingShingle |
Bairong Shen Yuanyuan Zhang Jiajia Chen Yang Yang Huangqiong Zhu Wenying Yan Effects of Time Point Measurement on the Reconstruction of Gene Regulatory Networks Molecules dynamic Bayesian networks time points gene regulatory network network statistics network reconstruction |
author_facet |
Bairong Shen Yuanyuan Zhang Jiajia Chen Yang Yang Huangqiong Zhu Wenying Yan |
author_sort |
Bairong Shen |
title |
Effects of Time Point Measurement on the Reconstruction of Gene Regulatory Networks |
title_short |
Effects of Time Point Measurement on the Reconstruction of Gene Regulatory Networks |
title_full |
Effects of Time Point Measurement on the Reconstruction of Gene Regulatory Networks |
title_fullStr |
Effects of Time Point Measurement on the Reconstruction of Gene Regulatory Networks |
title_full_unstemmed |
Effects of Time Point Measurement on the Reconstruction of Gene Regulatory Networks |
title_sort |
effects of time point measurement on the reconstruction of gene regulatory networks |
publisher |
MDPI AG |
series |
Molecules |
issn |
1420-3049 |
publishDate |
2010-08-01 |
description |
With the availability of high-throughput gene expression data in the post-genomic era, reconstruction of gene regulatory networks has become a hot topic. Regulatory networks have been intensively studied over the last decade and many software tools are currently available. However, the impact of time point selection on network reconstruction is often underestimated. In this paper we apply the Dynamic Bayesian network (DBN) to construct the Arabidopsis gene regulatory networks by analyzing the time-series gene microarray data. In order to evaluate the impact of time point measurement on network reconstruction, we deleted time points one by one to yield 11 distinct groups of incomplete time series. Then the gene regulatory networks constructed based on complete and incomplete data series are compared in terms of statistics at different levels. Two time points are found to play a significant role in the Arabidopsis gene regulatory networks. Pathway analysis of significant nodes revealed three key regulatory genes. In addition, important regulations between genes, which were insensitive to the time point measurement, were also identified. |
topic |
dynamic Bayesian networks time points gene regulatory network network statistics network reconstruction |
url |
http://www.mdpi.com/1420-3049/15/8/5354/ |
work_keys_str_mv |
AT bairongshen effectsoftimepointmeasurementonthereconstructionofgeneregulatorynetworks AT yuanyuanzhang effectsoftimepointmeasurementonthereconstructionofgeneregulatorynetworks AT jiajiachen effectsoftimepointmeasurementonthereconstructionofgeneregulatorynetworks AT yangyang effectsoftimepointmeasurementonthereconstructionofgeneregulatorynetworks AT huangqiongzhu effectsoftimepointmeasurementonthereconstructionofgeneregulatorynetworks AT wenyingyan effectsoftimepointmeasurementonthereconstructionofgeneregulatorynetworks |
_version_ |
1725177960068022272 |