Litcius/Paper detail

iM-Seeker: a webserver for DNA i-motifs prediction and scoring via automated machine learning

Haopeng Yu, Li Fan, Bibo Yang, Yiman Qi, Dilek Guneri, Wenqian Chen, Zoë A. E. Waller, Ke Li, Yiliang Ding

2024Nucleic Acids Research20 citationsDOIOpen Access PDF

Abstract

DNA, beyond its canonical B-form double helix, adopts various alternative conformations, among which the i-motif, emerging in cytosine-rich sequences under acidic conditions, holds significant biological implications in transcription modulation and telomere biology. Despite recognizing the crucial role of i-motifs, predictive software for i-motif forming sequences has been limited. Addressing this gap, we introduce 'iM-Seeker', an innovative computational platform designed for the prediction and evaluation of i-motifs. iM-Seeker exhibits the capability to identify potential i-motifs within DNA segments or entire genomes, calculating stability scores for each predicted i-motif based on parameters such as the cytosine tracts number, loop lengths, and sequence composition. Furthermore, the webserver leverages automated machine learning (AutoML) to effortlessly fine-tune the optimal i-motif scoring model, incorporating user-supplied experimental data and customised features. As an advanced, versatile approach, 'iM-Seeker' promises to advance genomic research, highlighting the potential of i-motifs in cell biology and therapeutic applications. The webserver is freely available at https://im-seeker.org.

Topics & Concepts

BiologyMotif (music)Web serverComputational biologyCytosineSequence motifSoftwareDNATelomereArtificial intelligenceGenomeDNA sequencingSequence alignmentBioinformaticsComputer scienceMachine learningGeneticsThe InternetPeptide sequenceGeneWorld Wide WebProgramming languageAcousticsPhysicsRNA and protein synthesis mechanismsAdvanced biosensing and bioanalysis techniquesGenomics and Chromatin Dynamics