Conference Information

RECOMB 2025: International Conference on Research in Computational Molecular Biology

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Submission Date:
2024-10-16
Notification Date:
2024-12-16
Conference Date:
2025-04-26
Location:
Seoul, South Korea
Years:
29
CCF: B   ICORE: B   QUALIS: A2   Viewed: 56239   Tracked: 19   Attend: 4

Call For Papers

RECOMB 2025 (International Conference on Research in Computational Molecular Biology) is a CCF B / ICORE B / QUALIS A2 conference held in Seoul, South Korea on 2025-04-26. The paper submission deadline is 2024-10-16. Acceptance notifications are sent on 2024-12-16.

Papers The RECOMB conference series was founded in 1997 to provide a scientific forum for communicating advances in computational biology and applications in molecular biology and medicine. The conference aims at bridging the computational, mathematical, statistical, and biological sciences, and bringing together researchers, professionals, students and industrial practitioners from all over the world for interaction and exchange of new developments in all areas of bioinformatics and computational biology. The conference will feature keynote talks by leading scientists, presentations of peer-reviewed high-quality research papers, presentations of exciting research developments that were published within the past year and poster sessions on latest research progress. Topics Papers reporting on original research (both theoretical and experimental) in all areas of computational molecular biology are suitable for submission. Topics of interest include, but are not limited to: Molecular sequence analysis Sequencing and genotyping technologies Gene regulation and epigenomics Transcriptomics, including single-cell Metagenomics Population and statistical genetics Evolution and comparative genomics Structure and function of non-coding RNAs Computational proteomics and proteogenomics Computational structural biology Computational metabolomics Protein structure and function Biological networks Computational systems biology Privacy of biomedical data Bioimaging
Last updated by Dou Sun on

Acceptance Ratio

Average acceptance rate: 19.1% over 15 years (2006–2020).

YearSubmittedAcceptedAccepted(%)
20202063718%
20191753721.1%
2018193168.3%
20171842212%
20161723520.3%
20151703621.2%
20141543522.7%
20131673219.2%
20122003115.5%
20111534328.1%
20101763620.5%
20091663722.3%
20081933417.6%
20071703721.8%
20062173918%

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Related Journals

CCFFull NameImpact FactorPublisherISSN
Algorithms for Molecular Biology1.7Springer1748-7188
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