Abstract
The advent of high-throughput technology like microarrays has provided the platform for studying how different cellular components work together, thus created an enormous interest in mathematically modeling biological network, particularly gene regulatory network (GRN). Of particular interest is the modeling and inference on time-series data, which capture a more thorough picture of the system than non-temporal data do. We have given an extensive review of methodologies that have been used on time-series data. In realizing that validation is an impartible part of the inference paradigm, we have also presented a discussion on the principles and challenges in performance evaluation of different methods. This survey gives a panoramic view on these topics, with anticipation that the readers will be inspired to improve and/or expand GRN inference and validation tool repository.
Current Genomics
Title: Inference of Gene Regulatory Networks Using Time-Series Data: A Survey
Volume: 10 Issue: 6
Author(s): Chao Sima, Jianping Hua and Sungwon Jung
Affiliation:
Abstract: The advent of high-throughput technology like microarrays has provided the platform for studying how different cellular components work together, thus created an enormous interest in mathematically modeling biological network, particularly gene regulatory network (GRN). Of particular interest is the modeling and inference on time-series data, which capture a more thorough picture of the system than non-temporal data do. We have given an extensive review of methodologies that have been used on time-series data. In realizing that validation is an impartible part of the inference paradigm, we have also presented a discussion on the principles and challenges in performance evaluation of different methods. This survey gives a panoramic view on these topics, with anticipation that the readers will be inspired to improve and/or expand GRN inference and validation tool repository.
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Cite this article as:
Sima Chao, Hua Jianping and Jung Sungwon, Inference of Gene Regulatory Networks Using Time-Series Data: A Survey, Current Genomics 2009; 10 (6) . https://dx.doi.org/10.2174/138920209789177610
DOI https://dx.doi.org/10.2174/138920209789177610 |
Print ISSN 1389-2029 |
Publisher Name Bentham Science Publisher |
Online ISSN 1875-5488 |
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