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MicroProtein Prediction Program (miP3): A Software for Predicting microProteins and Their Target Transcription Factors.


ABSTRACT: An emerging concept in transcriptional regulation is that a class of truncated transcription factors (TFs), called microProteins (miPs), engages in protein-protein interactions with TF complexes and provides feedback controls. A handful of miP examples have been described in the literature but the extent of their prevalence is unclear. Here we present an algorithm that predicts miPs and their target TFs from a sequenced genome. The algorithm is called miP prediction program (miP3), which is implemented in Python. The software will help shed light on the prevalence, biological roles, and evolution of miPs. Moreover, miP3 can be used to predict other types of miP-like proteins that may have evolved from other functional classes such as kinases and receptors. The program is freely available and can be applied to any sequenced genome.

SUBMITTER: de Klein N 

PROVIDER: S-EPMC4427850 | biostudies-literature | 2015

REPOSITORIES: biostudies-literature

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microProtein Prediction Program (miP3): A Software for Predicting microProteins and Their Target Transcription Factors.

de Klein Niek N   Magnani Enrico E   Banf Michael M   Rhee Seung Yon SY  

International journal of genomics 20150428


An emerging concept in transcriptional regulation is that a class of truncated transcription factors (TFs), called microProteins (miPs), engages in protein-protein interactions with TF complexes and provides feedback controls. A handful of miP examples have been described in the literature but the extent of their prevalence is unclear. Here we present an algorithm that predicts miPs and their target TFs from a sequenced genome. The algorithm is called miP prediction program (miP3), which is impl  ...[more]

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