Sequence-based model of gap gene regulatory network

被引:8
|
作者
Kozlov, Konstantin [1 ]
Gursky, Vitaly [2 ]
Kulakovskiy, Ivan [3 ]
Samsonova, Maria [1 ]
机构
[1] St Petersburg State Polytech Univ, St Petersburg 195251, Russia
[2] RAS, AF Ioffe Phys Tech Inst, St Petersburg 194021, Russia
[3] RAS, VA Engelhardt Mol Biol Inst, Moscow 119991, Russia
来源
BMC GENOMICS | 2014年 / 15卷
基金
俄罗斯科学基金会;
关键词
TRANSCRIPTIONAL REPRESSION; PATTERN-FORMATION; KRUPPEL GENE; POLE REGION; DNA-BINDING; DROSOPHILA; EXPRESSION; HUNCHBACK; PROTEIN; GIANT;
D O I
10.1186/1471-2164-15-S12-S6
中图分类号
Q81 [生物工程学(生物技术)]; Q93 [微生物学];
学科分类号
071005 ; 0836 ; 090102 ; 100705 ;
摘要
Background: The detailed analysis of transcriptional regulation is crucially important for understanding biological processes. The gap gene network in Drosophila attracts large interest among researches studying mechanisms of transcriptional regulation. It implements the most upstream regulatory layer of the segmentation gene network. The knowledge of molecular mechanisms involved in gap gene regulation is far less complete than that of genetics of the system. Mathematical modeling goes beyond insights gained by genetics and molecular approaches. It allows us to reconstruct wild-type gene expression patterns in silico, infer underlying regulatory mechanism and prove its sufficiency. Results: We developed a new model that provides a dynamical description of gap gene regulatory systems, using detailed DNA-based information, as well as spatial transcription factor concentration data at varying time points. We showed that this model correctly reproduces gap gene expression patterns in wild type embryos and is able to predict gap expression patterns in Kr mutants and four reporter constructs. We used four-fold cross validation test and fitting to random dataset to validate the model and proof its sufficiency in data description. The identifiability analysis showed that most model parameters are well identifiable. We reconstructed the gap gene network topology and studied the impact of individual transcription factor binding sites on the model output. We measured this impact by calculating the site regulatory weight as a normalized difference between the residual sum of squares error for the set of all annotated sites and for the set with the site of interest excluded. Conclusions: The reconstructed topology of the gap gene network is in agreement with previous modeling results and data from literature. We showed that 1) the regulatory weights of transcription factor binding sites show very weak correlation with their PWM score; 2) sites with low regulatory weight are important for the model output; 3) functional important sites are not exclusively located in cis-regulatory elements, but are rather dispersed through regulatory region. It is of importance that some of the sites with high functional impact in hb, Kr and kni regulatory regions coincide with strong sites annotated and verified in Dnase I footprint assays.
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页数:17
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