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A systems biology approach to the global analysis of transcription factors in colorectal cancer.

Pradhan MP, Prasad NK, Palakal MJ - BMC Cancer (2012)

Bottom Line: Biological entities do not perform in isolation, and often, it is the nature and degree of interactions among numerous biological entities which ultimately determines any final outcome.Starting with just one TF (SMAD3) in the bait list, the literature mining process identified an additional 116 CRC-associated TFs.Among these identified TFs, we obtained a novel six-node module consisting of ATF2-P53-JNK1-ELK1-EPHB2-HIF1A, from which the novel JNK1-ELK1 association could potentially be a significant marker for CRC.

View Article: PubMed Central - HTML - PubMed

Affiliation: School of Informatics, Indiana University Purdue University Indianapolis, Indianapolis, IN 46202, USA.

ABSTRACT

Background: Biological entities do not perform in isolation, and often, it is the nature and degree of interactions among numerous biological entities which ultimately determines any final outcome. Hence, experimental data on any single biological entity can be of limited value when considered only in isolation. To address this, we propose that augmenting individual entity data with the literature will not only better define the entity's own significance but also uncover relationships with novel biological entities.To test this notion, we developed a comprehensive text mining and computational methodology that focused on discovering new targets of one class of molecular entities, transcription factors (TF), within one particular disease, colorectal cancer (CRC).

Methods: We used 39 molecular entities known to be associated with CRC along with six colorectal cancer terms as the bait list, or list of search terms, for mining the biomedical literature to identify CRC-specific genes and proteins. Using the literature-mined data, we constructed a global TF interaction network for CRC. We then developed a multi-level, multi-parametric methodology to identify TFs to CRC.

Results: The small bait list, when augmented with literature-mined data, identified a large number of biological entities associated with CRC. The relative importance of these TF and their associated modules was identified using functional and topological features. Additional validation of these highly-ranked TF using the literature strengthened our findings. Some of the novel TF that we identified were: SLUG, RUNX1, IRF1, HIF1A, ATF-2, ABL1, ELK-1 and GATA-1. Some of these TFs are associated with functional modules in known pathways of CRC, including the Beta-catenin/development, immune response, transcription, and DNA damage pathways.

Conclusions: Our methodology of using text mining data and a multi-level, multi-parameter scoring technique was able to identify both known and novel TF that have roles in CRC. Starting with just one TF (SMAD3) in the bait list, the literature mining process identified an additional 116 CRC-associated TFs. Our network-based analysis showed that these TFs all belonged to any of 13 major functional groups that are known to play important roles in CRC. Among these identified TFs, we obtained a novel six-node module consisting of ATF2-P53-JNK1-ELK1-EPHB2-HIF1A, from which the novel JNK1-ELK1 association could potentially be a significant marker for CRC.

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Functional groups and associated transcription factors. The centermost transcription factors are associated with multiple functional groups. The size of the functional group represents the relative number of pathways and transcription factors associated with it.
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Figure 5: Functional groups and associated transcription factors. The centermost transcription factors are associated with multiple functional groups. The size of the functional group represents the relative number of pathways and transcription factors associated with it.

Mentions: Figure‚ÄČ5 shows the TF distribution profile in each functional group for which the connectivity profile was analyzed. The Development, Immune Response, Transcription, and Apoptosis and Survival functional groups were associated with the highest number of TFs (54, 48, 24, and 20, respectively), whereas the Chemotaxis and Muscle Contraction functional groups were associated with 2 and 1 TFs, respectively. The most highly-ranked TFs identified through the analysis, p53, c-Jun, and c-Myc, were identified in multiple functional groups. TFs such as RARA/RXRA, VDR, and GATA, which are specific to certain functional groups, were identified in our ranking analysis as well.


A systems biology approach to the global analysis of transcription factors in colorectal cancer.

Pradhan MP, Prasad NK, Palakal MJ - BMC Cancer (2012)

Functional groups and associated transcription factors. The centermost transcription factors are associated with multiple functional groups. The size of the functional group represents the relative number of pathways and transcription factors associated with it.
© Copyright Policy - open-access
Related In: Results  -  Collection

License
Show All Figures
getmorefigures.php?uid=PMC3539921&req=5

Figure 5: Functional groups and associated transcription factors. The centermost transcription factors are associated with multiple functional groups. The size of the functional group represents the relative number of pathways and transcription factors associated with it.
Mentions: Figure‚ÄČ5 shows the TF distribution profile in each functional group for which the connectivity profile was analyzed. The Development, Immune Response, Transcription, and Apoptosis and Survival functional groups were associated with the highest number of TFs (54, 48, 24, and 20, respectively), whereas the Chemotaxis and Muscle Contraction functional groups were associated with 2 and 1 TFs, respectively. The most highly-ranked TFs identified through the analysis, p53, c-Jun, and c-Myc, were identified in multiple functional groups. TFs such as RARA/RXRA, VDR, and GATA, which are specific to certain functional groups, were identified in our ranking analysis as well.

Bottom Line: Biological entities do not perform in isolation, and often, it is the nature and degree of interactions among numerous biological entities which ultimately determines any final outcome.Starting with just one TF (SMAD3) in the bait list, the literature mining process identified an additional 116 CRC-associated TFs.Among these identified TFs, we obtained a novel six-node module consisting of ATF2-P53-JNK1-ELK1-EPHB2-HIF1A, from which the novel JNK1-ELK1 association could potentially be a significant marker for CRC.

View Article: PubMed Central - HTML - PubMed

Affiliation: School of Informatics, Indiana University Purdue University Indianapolis, Indianapolis, IN 46202, USA.

ABSTRACT

Background: Biological entities do not perform in isolation, and often, it is the nature and degree of interactions among numerous biological entities which ultimately determines any final outcome. Hence, experimental data on any single biological entity can be of limited value when considered only in isolation. To address this, we propose that augmenting individual entity data with the literature will not only better define the entity's own significance but also uncover relationships with novel biological entities.To test this notion, we developed a comprehensive text mining and computational methodology that focused on discovering new targets of one class of molecular entities, transcription factors (TF), within one particular disease, colorectal cancer (CRC).

Methods: We used 39 molecular entities known to be associated with CRC along with six colorectal cancer terms as the bait list, or list of search terms, for mining the biomedical literature to identify CRC-specific genes and proteins. Using the literature-mined data, we constructed a global TF interaction network for CRC. We then developed a multi-level, multi-parametric methodology to identify TFs to CRC.

Results: The small bait list, when augmented with literature-mined data, identified a large number of biological entities associated with CRC. The relative importance of these TF and their associated modules was identified using functional and topological features. Additional validation of these highly-ranked TF using the literature strengthened our findings. Some of the novel TF that we identified were: SLUG, RUNX1, IRF1, HIF1A, ATF-2, ABL1, ELK-1 and GATA-1. Some of these TFs are associated with functional modules in known pathways of CRC, including the Beta-catenin/development, immune response, transcription, and DNA damage pathways.

Conclusions: Our methodology of using text mining data and a multi-level, multi-parameter scoring technique was able to identify both known and novel TF that have roles in CRC. Starting with just one TF (SMAD3) in the bait list, the literature mining process identified an additional 116 CRC-associated TFs. Our network-based analysis showed that these TFs all belonged to any of 13 major functional groups that are known to play important roles in CRC. Among these identified TFs, we obtained a novel six-node module consisting of ATF2-P53-JNK1-ELK1-EPHB2-HIF1A, from which the novel JNK1-ELK1 association could potentially be a significant marker for CRC.

Show MeSH
Related in: MedlinePlus