We are proud to publish an editorial co-authored by our co-Editor-in-Chief Jason H. Moore, on ten important roles for academic leaders to promote equity, diversity, and inclusion in data science. Read here to see how mentors, champions, exemplars, practitioners, listeners, empathizers, ombuds, referees, advocates, and activists can work to create a support network which works together to chip away at inequality and inequity throughout data science.
Editorial: Equity, diversity, and inclusion in data science
Announcing our new Aims & Scope!
We are excited to announce that our Aims & Scope has undergone some changes, incorporating an encouragement of submissions pertaining to Artificial Intelligence, Machine Learning, and Visual Analytics, and expanding the data types we consider, to include imaging, electronic health records, biobanks, environmental data, social and behavioral data, wearable devices, and social media data. Please click here to check out the new Aims & Scope and types of submissions that we readily encourage you to submit.
Featured series: Next-generation machine learning
Our new thematic series, edited by Jason Moore and Marylyn Ritchie, seeks manuscripts on the topic of machine learning. We are interested in both original research and review papers, especially those that address new and novel machine learning methods and their application to biological and biomedical big data. The series is open, and you can find out more about it (including submission instructions), here.
The Biomedical Informatics Roundtable Podcast
We are happy to announce that our Editors-in-Chief, Jason H. Moore and Marylyn D. Ritchie, have recently launched a podcast! The Biomedical Informatics Roundtable Podcast aims to bring you discussion of hot topics, recent papers, news, conferences, open data, open-source software, and advice for trainees as well as interviews and spotlights biomedical informatics colleagues from around the world. Please check out Dr Moore and Dr Ritchie’s podcast, here!
Articles
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Deciphering the tissue-specific functional effect of Alzheimer risk SNPs with deep genome annotation
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Investigating potential drug targets for IgA nephropathy and membranous nephropathy through multi-queue plasma protein analysis: a Mendelian randomization study based on SMR and co-localization analysis
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Deep joint learning diagnosis of Alzheimer’s disease based on multimodal feature fusion
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Modeling heterogeneity of Sudanese hospital stay in neonatal and maternal unit: non-parametric random effect models with Gamma distribution
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Using graph theory to analyze biological networks
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Ten quick tips for machine learning in computational biology
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A survey of visualization tools for biological network analysis
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Applications of the MapReduce programming framework to clinical big data analysis: current landscape and future trends
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Search extension transforms Wiki into a relational system: A case for flavonoid metabolite database
Editors-in-Chief
Dr Jason Moore, University of Pennsylvania, USA
Dr Marylyn Ritchie, University of Pennsylvania, USA
Aims and scope
BioData Mining is an open access, open peer-reviewed, informatics journal encompassing research on all aspects of Artificial Intelligence (AI), Machine Learning, and Visual Analytics, applied to high-dimensional biological and biomedical data, focusing on computational aspects of knowledge discovery from large-scale genetic, genomic, metabolomic data and/or electronic health records, social determinants of health, and environmental exposure data. Please see here for more information on data types and topical areas.
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Editors' profiles
Dr Jason Moore is the Edward Rose Professor of Informatics, Professor of Biostatistics and Epidemiology, and Professor of Genetics at the Perelman School of Medicine of the University of Pennsylvania. He serves as the first permanent Director of the Institute for Biomedical Informatics and founding Director of the Division of Informatics in the Department of Biostatistics and Epidemiology. He also serves as Senior Associate Dean for Informatics. His work has been communicated in more than 400 scientific publications and he serves as PI on several NIH R01 grants. He has been recognized as a national leader in informatics through election as a Fellow of the American Association for the Advancement of Sciences (AAAS) and as a Kavli Fellow of the National Academy of Sciences (NAS). He was recently elected a Fellow of the American College of Medical Informatics (ACMI).
Marylyn D. Ritchie, PhD is a Professor in Genetics, Director of the Center for Translational Bioinformatics, and Associate Director for Bioinformatics in the Institute for Biomedical Informatics at the University of Pennsylvania School of Medicine. Dr. Ritchie is a computational geneticist and biomedical informatician with a focus on detecting disease-susceptibility genes associated with common, complex human disease and integrating electronic health records with genomics. She has expertise in developing novel bioinformatics tools for complex analysis of big data in genetics, genomics, and clinical databases, in particular in the area of Pharmacogenomics. Some of her methods include Multifactor Dimensionality Reduction (MDR), the Analysis Tool for Heritable and Environmental Network Associations (ATHENA), and the Biosoftware suite for annotating/ filtering variants and genomic regions as well as building models of biological relevance for gene-gene interactions and rare-variant burden/dispersion tests. Dr. Ritchie has over 15 years of experience in the analysis of complex data and has authored over 300 publications (H-index 76). She is one of Thomas Reuters Most Highly Cited Researchers for 2014. Dr. Ritchie has extensive experience in leading large collaborative efforts; has been a part of national networks using electronic health records and genomics data; has excellent organizational and leadership skills. Dr. Ritchie is well suited to be a collaborator on this project.
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Annual Journal Metrics
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Citation Impact 2023
Journal Impact Factor: 4.0
5-year Journal Impact Factor: 3.7
Source Normalized Impact per Paper (SNIP): 1.413
SCImago Journal Rank (SJR): 0.958
Speed 2023
Submission to first editorial decision (median days): 15
Submission to acceptance (median days): 171
Usage 2023
Downloads: 400,374
Altmetric mentions: 146