Literature DB >> 33363212

Delayed Comparison and Apriori Algorithm (DCAA): A Tool for Discovering Protein-Protein Interactions From Time-Series Phosphoproteomic Data.

Lianhong Ding1, Shaoshuai Xie2, Shucui Zhang3, Hangyu Shen4, Huaqiang Zhong4, Daoyuan Li2, Peng Shi4, Lianli Chi2, Qunye Zhang3.   

Abstract

Analysis of high-throughput omics data is one of the most important approaches for obtaining information regarding interactions between proteins/genes. Time-series omics data are a series of omics data points indexed in time order and normally contain more abundant information about the interactions between biological macromolecules than static omics data. In addition, phosphorylation is a key posttranslational modification (PTM) that is indicative of possible protein function changes in cellular processes. Analysis of time-series phosphoproteomic data should provide more meaningful information about protein interactions. However, although many algorithms, databases, and websites have been developed to analyze omics data, the tools dedicated to discovering molecular interactions from time-series omics data, especially from time-series phosphoproteomic data, are still scarce. Moreover, most reported tools ignore the lag between functional alterations and the corresponding changes in protein synthesis/PTM and are highly dependent on previous knowledge, resulting in high false-positive rates and difficulties in finding newly discovered protein-protein interactions (PPIs). Therefore, in the present study, we developed a new method to discover protein-protein interactions with the delayed comparison and Apriori algorithm (DCAA) to address the aforementioned problems. DCAA is based on the idea that there is a lag between functional alterations and the corresponding changes in protein synthesis/PTM. The Apriori algorithm was used to mine association rules from the relationships between items in a dataset and find PPIs based on time-series phosphoproteomic data. The advantage of DCAA is that it does not rely on previous knowledge and the PPI database. The analysis of actual time-series phosphoproteomic data showed that more than 68% of the protein interactions/regulatory relationships predicted by DCAA were accurate. As an analytical tool for PPIs that does not rely on a priori knowledge, DCAA should be useful to predict PPIs from time-series omics data, and this approach is not limited to phosphoproteomic data.
Copyright © 2020 Ding, Xie, Zhang, Shen, Zhong, Li, Shi, Chi and Zhang.

Entities:  

Keywords:  Apriori; DCAA; delayed comparison; phosphoproteomics; protein–protein interactions

Year:  2020        PMID: 33363212      PMCID: PMC7758479          DOI: 10.3389/fmolb.2020.606570

Source DB:  PubMed          Journal:  Front Mol Biosci        ISSN: 2296-889X


  27 in total

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Journal:  Cell       Date:  2018-04-05       Impact factor: 41.582

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