Citing tidytcells#
To cite this software, please refer to the manuscript below:
Details#
AUTHOR |
Nagano Yuta , Chain Benjamin |
TITLE |
tidytcells: standardizer for TR/MH nomenclature |
JOURNAL |
Frontiers in Immunology |
VOLUME |
14 |
YEAR |
2023 |
URL |
https://www.frontiersin.org/journals/immunology/articles/10.3389/fimmu.2023.1276106 |
DOI |
10.3389/fimmu.2023.1276106 |
ISSN |
1664-3224 |
Abstract#
T cell receptors (TR) underpin the diversity and specificity of T cell activity. As such, TR repertoire data is valuable both as an adaptive immune biomarker, and as a way to identify candidate therapeutic TR. Analysis of TR repertoires relies heavily on computational analysis, and therefore it is of vital importance that the data is standardized and computer-readable. However in practice, the usage of different abbreviations and non-standard nomenclature in different datasets makes this data pre-processing non-trivial. tidytcells is a lightweight, platform-independent Python package that provides easy-to-use standardization tools specifically designed for TR nomenclature. The software is open-sourced under the MIT license and is available to install from the Python Package Index (PyPI). At the time of publishing, tidytcells is on version 2.0.0.
BibTex#
@ARTICLE{10.3389/fimmu.2023.1276106,
AUTHOR={Nagano, Yuta and Chain, Benjamin },
TITLE={tidytcells: standardizer for TR/MH nomenclature},
JOURNAL={Frontiers in Immunology},
VOLUME={14},
YEAR={2023},
URL={https://www.frontiersin.org/journals/immunology/articles/10.3389/fimmu.2023.1276106},
DOI={10.3389/fimmu.2023.1276106},
ISSN={1664-3224},
ABSTRACT={<p>T cell receptors (TR) underpin the diversity and specificity of T cell activity. As such, TR repertoire data is valuable both as an adaptive immune biomarker, and as a way to identify candidate therapeutic TR. Analysis of TR repertoires relies heavily on computational analysis, and therefore it is of vital importance that the data is standardized and computer-readable. However in practice, the usage of different abbreviations and non-standard nomenclature in different datasets makes this data pre-processing non-trivial. tidytcells is a lightweight, platform-independent Python package that provides easy-to-use standardization tools specifically designed for TR nomenclature. The software is open-sourced under the MIT license and is available to install from the Python Package Index (PyPI). At the time of publishing, tidytcells is on version 2.0.0.</p>}}