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TADbit is a complete Python library to deal with all steps to analyze, model and explore 3C-based data. With TADbit the user can map FASTQ files to obtain raw interaction binned matrices (Hi-C like matrices), normalize and correct interaction matrices, identify and compare the so-called Topologically Associating Domains (TADs), build 3D models f…

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TADbit is a complete Python library to deal with all steps to analyze, model and explore 3C-based data. With TADbit the user can map FASTsQ files to obtain raw interaction binned matrices (Hi-C like matrices), normalize and correct interaction matrices, identify and compare the Topologically Associating Domains (TADs), build 3D models from the interaction matrices, and finally, extract structural properties from the models. TADbit is complemented by TADkit for visualizing 3D models.

Hi-C experiments generate genomic interaction between loci located in the same or in different chromosomes. TADbit is built around the concept of a chromosome, and uses it as a central item to store and compare different Hi-C experiments. The library has been designed to be used by researchers with no expertise in computer science. All-in-one scripts provided in TADbit allow to run the full analysis using one single command line; advanced users may produce their own programs using TADbit as a complementary library.

Contributors

TADbit is currently developed at the MarciusLab with the contributions of François Serra, David Castillo, Marco Di Stefano, Irene Farabella, Mike Goodstadt and many other members of our Lab

Documentation

Feedback

If you have any question remaining, we would be happy to answer informally:

Join the chat at https://gitter.im/3DGenomes/tadbit

Frequently asked questions

Check the label FAQ in TADbit issues.

If your question is still unanswered feel free to open a new issue.

Docker/Singularity Containers

Recipe files (Dockerfile and Singularity recipe) to generate containers are available in the containers folder.

  • Docker

Build the image using the Dockerfile from inside an empty folder with docker build -t tadbit . (~20 minutes)

Once built, run it as docker run tadbit tadbit map -h

This image contains all dependencies for TADbit and also jupyter .

To run a notebook from inside the docker container run tadbit docker image as:

docker run -it -p 8888:8888 -v /LOCAL_PATH:/mnt tadbit

LOCAL_PATH would be for example a local folder with data (e.g. FASTQs or reference genomes). And /mnt a directory inside the Docker container where the LOCAL_PATH would be mounted.

From inside docker run:

jupyter notebook --ip 0.0.0.0 --allow-root --NotebookApp.token=''

And finally write the url http://localhost:8888 in your browser.

Note: this can also be done in a single line and running in the background:

docker run -d -p 8888:8888 -v /LOCAL_PATH:/mnt tadbit jupyter notebook --ip 0.0.0.0 --allow-root --NotebookApp.token='' > /dev/null &
  • Singularity

Build the image using the Singularity from inside an empty folder with sudo singularity build tadbit.simg Singularity (~20 minutes)

Once built, run it as singularity run tadbit.simg

You can also install jupyter inside the Singularity by uncommenting the coresponding line in the recipe file.

Citation

Please, cite this article if you use TADbit.

Serra, F., Baù, D., Goodstadt, M., Castillo, D. Filion, G., & Marti-Renom, M.A. (2017). Automatic analysis and 3D-modelling of Hi-C data using TADbit reveals structural features of the fly chromatin colors. PLOS Comp Bio 13(7) e1005665. doi:10.1371/journal.pcbi.1005665

Methods implemented in TADbit

In addition to the general citation for the TADbit library, please cite these articles if you used TADbit for:

Applications

TADbit has been previously used for modeling genomes and genomic domains. Here is the list of published articles:

Other programs

TADbit uses other major software packages in biology. Here is the list of their articles:

TADbit training

Next editions

  • To be announced.

Past editions

Bibliography

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Ay, F., Vu, T.H., Zeitz, M.J., Varoquaux, N., Carette, J.E., Vert, J.-P., Hoffman, A.R. and Noble, W.S. 2015. Identifying multi-locus chromatin contacts in human cells using tethered multiple 3C. BMC Genomics 16, p. 121.

Baù2011

Baù, D., Sanyal, A., Lajoie, B.R., Capriotti, E., Byron, M., Lawrence, J.B., Dekker, J. and Marti-Renom, M.A. 2011. The three-dimensional folding of the α-globin gene domain reveals formation of chromatin globules. Nature Structural & Molecular Biology 18(1), pp. 107–114.

BaùMarti-Renom2012

Baù, D. and Marti-Renom, M.A. 2012. Genome structure determination via 3C-based data integration by the Integrative Modeling Platform. Methods 58(3), pp. 300–306.

Belton2015

Belton, J.-M., Lajoie, B.R., Audibert, S., Cantaloube, S., Lassadi, I., Goiffon, I., Baù, D., Marti-Renom, M.A., Bystricky, K. and Dekker, J. 2015. The conformation of yeast chromosome III is mating type dependent and controlled by the recombination enhancer. Cell reports 13(9), pp. 1855–1867.

Cattoni2017

Cattoni, D.I., Cardozo-Gizz, A.M., Georgieva, M., Di Stefano, M., Valeri, A., Chamousset, D., Houbron, C., Dejardin, S., Fiche, J-B., Marti-Renom, M.A., Bantignies, F., Cavalli, G. and Nollmann, M. (2017) Single-cell absolute contact probability detection reveals that chromosomes are organized by modulated stochasticity. Nature Communications 8 pp 1753

Cuadrado2019

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Imakaev, M., Fudenberg, G., McCord, R.P., Naumova, N., Goloborodko, A., Lajoie, B.R., Dekker, J. and Mirny, L.A. 2012. Iterative correction of Hi-C data reveals hallmarks of chromosome organization. Nature Methods 9(10), pp. 999–1003.

Kojic2018

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Le_Dily2014

Le Dily, F., Baù, D., Pohl, A., Vicent, G.P., Serra, F., Soronellas, D., Castellano, G., Wright, R.H.G., Ballare, C., Filion, G., Marti-Renom, M.A. and Beato, M. 2014. Distinct structural transitions of chromatin topological domains correlate with coordinated hormone-induced gene regulation. Genes & Development 28(19), pp. 2151–2162.

Lieberman-Aiden2009

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Mas2018

Mas, G., Blanco, E., Ballaré, C., Sansó, M., Spill, Y.G., Hu, D., Aoi, Y., Le Dily, F., Shilatifard, A., Marti-Renom, M.A. and Di Croce, L. (2018) Promoter bivalency favors an open architecture of the stem cell genome. Nature Genetics 50 pp 1452–1462

Miguel-Escalada2019

Miguel-Escalada, I., Bonàs-Guarch, S., Cebola, I., Ponsa-Cobas, J., Mendieta-Esteban, J. , Rolando, D., Javierre, B.M., Atla, G., Farabella, I., Morgan, C.C., García-Hurtado, J., Beucher, A., Morán, I., Pasquali, L., Ramos, M., Appel, E.V.R., Linneberg, L., Gjesing, A.P., Witte, D.R., Pedersen, O., Grarup, N., Ravassard, P., Mercader, J.M., Torrents, D., Piemonti, L., Berney, T., de Koning E., Kerr-Conte, J., Pattou, F., Hansen, T., Marti-Renom, M.A., Fraser, P. and Ferrer, J. (2019) Human pancreatic islet 3D chromatin architecture provides insights into the genetics of type 2 diabetes. Nature Genetics, in press

Morf2019

Morf, J., Wingett, S.W., Farabella, I., Cairns, J., Furlan-Magaril, M., Jiménez-García, L.F., Liu, X., Craig, F.F., Walker, S., Segons-Pichon, A., Andrews, S., Marti-Renom, M.A. and Fraser, P. (2019) RNA proximity sequencing reveals properties of spatial transcriptome organization in the nucleus. Nature Biotechnology, in press

Nir2018

Nir, G., Farabella, I., Pérez Estrada, C., Ebeling, C.G., Beliveau, B.J., Sasaki, H.M., Lee, S.H., Nguyen, S.C., McCole, R.B., Chattoraj, S., Erceg, J., Abed, J.A., Martins, N.M.C., Nguyen, H.Q., Hannan, M.A., Russell, S., Durand, N.C., Rao, S.S.P., Kishi, J.Y., Soler-Vila, P., Di Pierro, M., Onuchic, J.N., Callahan, S., Schreiner, J., Stuckey, J., Yin, P., Lieberman Aiden, E., Marti-Renom, M.A. and Wu, C.T. (2018) Walking along chromosomes with super-resolution imaging, contact maps, and integrative modeling. PLOS Genetics 14(12) pp e1007872

Pascual-Reguant2018

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Rao2014

Rao, S.S.P., Huntley, M.H., Durand, N.C., Stamenova, E.K., Bochkov, I.D., Robinson, J.T., Sanborn, A.L., Machol, I., Omer, A.D., Lander, E.S. and Aiden, E.L. 2014. A 3D map of the human genome at kilobase resolution reveals principles of chromatin looping. Cell 159(7), pp. 1665–1680.

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Stadhouders2018

Stadhouders, R., Vidal, E., Serra, F., Di Stefano, B., Le Dily, F., Quilez, J., Gomez, A., Collombet, S., Berenguer, C., Cuartero, Y., Hecht, J., Filion, G., Beato, M., Marti-Renom, M.A. and Graf, T. (2018) Transcription factors orchestrate dynamic interplay between genome topology and gene regulation during cell reprogramming. Nature Genetics 50 pp 238–249

Trussart2015

Trussart, M., Serra, F., Baù, D., Junier, I., Serrano, L. and Marti-Renom, M.A. 2015. Assessing the limits of restraint-based 3D modeling of genomes and genomic domains. Nucleic Acids Research 43(7), pp. 3465–3477.

Trussart2017

Trussart, M., Yus, E., Martinez, S., Baù, D., Tahara, Y.O., Pengo, T., Widjaja, M., Kretschmer, S., Swoger, J., Djordjevic, S., Turnbull, L., Whitchurch, C., Miyata, M., Marti-Renom, M.A., Lluch-Senar, M. and Serrano, L. 2017. Defined chromosome structure in the genome-reduced bacterium Mycoplasma pneumoniae. Nature Communications 8, p. 14665.

Umbarger2011

Umbarger, M.A., Toro, E., Wright, M.A., Porreca, G.J., Baù, D., Hong, S.-H., Fero, M.J., Zhu, L.J., Marti-Renom, M.A., McAdams, H.H., Shapiro, L., Dekker, J. and Church, G.M. 2011. The three-dimensional architecture of a bacterial genome and its alteration by genetic perturbation. Molecular Cell 44(2), pp. 252–264.

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TADbit is a complete Python library to deal with all steps to analyze, model and explore 3C-based data. With TADbit the user can map FASTQ files to obtain raw interaction binned matrices (Hi-C like matrices), normalize and correct interaction matrices, identify and compare the so-called Topologically Associating Domains (TADs), build 3D models f…

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