Welcome to the Bioinformatics and Biotechnology Resources Hub — a comprehensive repository designed to empower researchers, scientists, and enthusiasts in the fields of bioinformatics and biotechnology. This repository serves as a one-stop destination for a myriad of invaluable resources, ranging from insightful guides and cutting-edge research papers to informative podcasts, web tools, and efficient workflows.
As resources continue to grow, please use Ctrl-F to search for desired keywords. You can also use Ctrl - to shrink the screen and view more results.
Feel free to customize the hub according to your preferences and needs by forking the repository to your profile. If you wish to contribute to the maintenance or updates of the repository, please create a pull request.
Key Features:
- Workflow Managers (e.g., Nextflow): Streamline computational analyses with powerful workflow managers.
- Resources for Starting a Company: Tailored resources to navigate biotech entrepreneurship and kickstart ventures.
- Podcasts: Stay informed and inspired with expert discussions on the latest trends and breakthroughs.
- Informatic Tools/Languages/Workflows/Libraries: A comprehensive toolkit for bioinformatics projects, including languages and workflows.
- Models/Softwares/Pipelines: Implement cutting-edge models, software solutions, and pipelines for advanced research.
- Web-Tools: Curated online resources and tools to simplify and enhance bioinformatics workflows.
- Books: Diverse collection covering various bioinformatics and biotechnology topics.
- Blogs: Stay connected with industry trends, opinions, and insights through curated blog recommendations.
- Blog Articles: In-depth explorations of specific topics with practical tips and insights.
- Papers: An extensive archive of research papers spanning genomics, proteomics, and bioinformatics algorithms.
- Tutorials/Guides: Step-by-step tutorials and guides suitable for all skill levels.
- Wet Lab: Resources tailored to experimental research and methodologies in wet lab environments.
- Communities/Forums/Learning Platforms: Connect, collaborate, and learn through vibrant communities, forums, and dedicated platforms.
network science by albert laszlo barabasi - http://networksciencebook.com/ [18] R. Pastor-Satorras and A.Vespignani. Epidemic spreading in scalefree networks. Physical Review Letters, 86:3200–3203, 2001.
[19] R. Albert and A.-L. Barabási. Statistical Mechanics of Complex Networks. Reviews of Modern Physics, 74: 47, 2002.
[20] H. Jeong, B. Tombor, R. Albert, Z.N. Oltvai, and A.-L. Barabási . The large-scale organization of metabolic networks. Nature, 407:651–655, 2000.
[21] H. Jeong, S. P. Mason, A.-L. Barabási, and Z.N. Oltvai. Lethality and centrality in protein networks. Nature, 411:41-42, 2001.
[22] A.-L. Barabási, and Z.N. Oltvai. Network biology: understanding the cell’s functional organization. Nature Reviews Genetics, 5:101-113, 2004.
Title | field | Link |
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David PEA pathway enrichment analysis (functional annotation) | cell | https://david.ncifcrf.gov/tools.jsp |
QIAGEN Ingenuity Pathway Analysis (QIAGEN IPA) | cell | https://digitalinsights.qiagen.com/products-overview/discovery-insights-portfolio/analysis-and-visualization/qiagen-ipa/ |
clusterprofiler | cell | https://yulab-smu.top/biomedical-knowledge-mining-book/index.html |
Analyzing RNA-seq data with DESeq2 | cell | https://bioconductor.org/packages/devel/bioc/vignettes/DESeq2/inst/doc/DESeq2.html |
Linear Models for Microarray and RNA-Seq Data | ||
User’s Guide | cell | https://bioconductor.org/packages/devel/bioc/vignettes/limma/inst/doc/usersguide.pdf |
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biotech resources | cell | https://github.com/crazyhottommy/biotech_resource |
Companies Innovating in Biotech | cell | https://www.biotech2k.com/companies/companies.html |
So You Want to Start a Biotech: A Bioinformatics Approach That Works A blog post by Michele Busby. | cell | https://michelebusby.tumblr.com/post/643211974587629568/so-you-want-to-start-a-biotech-a-bioinformatics |
Nextflow | cell | https://medium.com/23andme-engineering/introduction-to-nextflow-4d0e3b6768d1 |
How Novo Nordisk built a modern data architecture on AWS | cell | https://aws.amazon.com/blogs/big-data/how-novo-nordisk-built-a-modern-data-architecture-on-aws/ |
zettlr | cell | https://zettlr.com/ |
Modern biotech data infrastructure | cell | http://blog.booleanbiotech.com/biotech-data-infrastructure.html |
The digital biotech startup playbook | cell | https://medium.com/@jfeala/the-digital-biotech-startup-playbook-398aeafca8a4 |
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Bancroft Library · Oral History Center · Projects; Bioscience and Biotechnology | cell | https://www.lib.berkeley.edu/visit/bancroft/oral-history-center/projects/bioscience |
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OncoPharm: latest developments in oncology | cell | https://podcasts.apple.com/us/podcast/oncopharm/id1305345744 |
the long run (luke timmerman) | cell | https://podcasts.apple.com/us/podcast/the-long-run-with-luke-timmerman/id1282838969 |
Mendelspod (diagnostics, genetics and genomic medicine | cell | https://mendelspod.com/ |
STAT’s weekly biotech podcast, breaking down the latest news, digging deep into industry goings-on | cell | https://www.statnews.com/category/readout-loud/ |
the bioinformatics chat | cell | https://open.spotify.com/show/1adLiZOHtLtrnx6MScTvAX |
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uniprot | cell | |
IEDB | cell | |
uniref | cell | |
interpro | cell | |
PDB | cell | |
Veupathdb | cell | |
reactome | pathway database | https://reactome.org/ |
cell |
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Python | cell | https://www.python.org/ |
R | cell | https://www.r-project.org/ |
Bioconductor | cell | https://www.bioconductor.org/ |
PyTorch: Deep learning library for python | cell | https://pytorch.org/ |
D3: The JavaScript library for bespokedata visualization | cell | https://d3js.org/ |
How to make your research data more FAIR | cell | https://howtofair.dk/ |
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iFeature: generation of protein descriptors | cell | https://github.com/Superzchen/iFeature |
pandas | cell | |
numpy | cell | |
rdkit | cell | |
pytorch | cell | |
tensorflow | cell | |
keras | cell | |
scikit learn | cell | |
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ESM2 | cell | |
protT5 | cell | |
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DeepFRI: Protein function prediction | cell | https://github.com/flatironinstitute/DeepFRI |
MSA Transformer: Generate synthetic proteins statistically similar | https://doi.org/10.7554/eLife.79854 | cell |
GenProSeq: Generating Protein Sequences with Deep Generative Models | cell | GenProSeq: Generating Protein Sequences with Deep Generative Models |
ESM models (META/facebook): Evolutionary Scale Modeling. | cell | cell |
EvoMIL: Prediction of virus-host association. Prediction of virus-host association using protein language models and multiple instance learning | EvoMIL: Prediction of virus-host association. Prediction of virus-host association using protein language models and multiple instance learning | EvoMIL: Prediction of virus-host association. Prediction of virus-host association using protein language models and multiple instance learning |
ExamPle: Explainable deep learning framework for the prediction of plant small secreted peptides. | cell | ExamPle: Explainable deep learning framework for the prediction of plant small secreted peptides. |
SuMD: Supervised Molecular Dynamics Simulations. | cell | SuMD: Supervised Molecular Dynamics Simulations. |
S4PRED: A tool for accurate prediction of a protein's secondary structure from only its amino acid sequence with no evolutionary information i.e. MSA required | cell | https://github.com/psipred/s4pred |
LinearDesign: Algorithm for Optimized mRNA Design Improves Stability and Immunogenicity | cell | https://github.com/LinearDesignSoftware/LinearDesign |
gINTomics is an R package for Multi-Omics data integration and visualization | cell | https://github.com/angelovelle96/gINTomics |
GSEA | Gene Set Enrichment Analysis | https://www.gsea-msigdb.org/gsea/doc/GSEAUserGuideFrame.html |
Enformer: Effective gene expression prediction from sequence by integrating long-range interactions | cell | https://www.nature.com/articles/s41592-021-01252-x |
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VOSviewer: software tool for constructing and visualizing bibliometric networks | Content Cell | VOSviewer: software tool for constructing and visualizing bibliometric networks |
Consensus: Evidence-Based Answers, Faster | Content Cell | |
Connected papers: Explore connected papers in a visual graph | cell | Connected papers: Explore connected papers in a visual graph |
enrichr | comprehensive gene set enrichment analysis web server | https://maayanlab.cloud/Enrichr/ |
string | Protein-Protein Interaction Networks | |
Functional Enrichment Analysis | https://string-db.org/ | |
cell |
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Data Analysis in Medicine and Health using R | Content Cell | https://bookdown.org/drki_musa/dataanalysis/ |
Content Cell |
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codon | cell | https://www.readcodon.com/ |
Liams' Blog | cell | https://liambai.com/ |
single cell best practices | cell | https://www.sc-best-practices.org/preamble.html |
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AlphaFold 2 is here: what’s behind the structure prediction miracle | cell | https://www.blopig.com/blog/2021/07/alphafold-2-is-here-whats-behind-the-structure-prediction-miracle/ |
The big problems | cell | https://www.science.org/content/blog-post/big-problems |
Why we didn’t get a malaria vaccine sooner | Content Cell | https://worksinprogress.co/issue/why-we-didnt-get-a-malaria-vaccine-sooner |
How to represent a protein sequence | Content Cell | https://liambai.com/protein-representation/ |
What we can learn from evolving proteins | Content Cell | https://liambai.com/protein-evolution/ |
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Generative models for protein structure: A comparison between Generative Adversarial and Autoregressive networks. | cell | https://webthesis.biblio.polito.it/15944/ |
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volkamer lab | cell | https://volkamerlab.org/research/ |
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basic methods | cell | https://www.youtube.com/@csberg5856/videos |
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Rosalind (forum and platform for learning bioinformatics) | cell | https://rosalind.info/problems/list-view/, solutions: https://github.com/crazyhottommy/rosalind_problems_python_solutions |
biostars | cell | https://www.biostars.org/ |
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