Data availability
Data and additional supporting information are available in supplemental tables. The source data for Fig. 4A-B is in Supplementary Data 7 and 8, and Fig. 4C is in Supplementary Data 9. The source data for Fig. 5A-B is in Supplementary Data 10, and Fig. 5C is in Supplementary Data 11. Data not included in the supplemental files are available in a prior publication by Church et al.8 or can be provided upon request to Katherine Janeway (katherine_janeway@dfci.harvard.edu).
Code availability
iCatalog was developed through a collaborative effort between the Dana-Farber Cancer Institute (DFCI) and the University of Chicago, with the University of Chicago retaining administrative control over the release of the source code. The codes for the original iCatalog and research versions are hosted in a private Bitbucket repository and available upon request. Interested parties may request access by contacting the co-first author and software developer at the University of Chicago (Wenjun Kang, wkang2@bsd.uchicago.edu) or the corresponding author (Katherine Janeway, katherine_janeway@dfci.harvard.edu).
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Acknowledgements
Funding for this study was provided by the Precision For Kids Pan Mass Challenge Team, the 4 C’s Fund, Lamb Family Fund, C&S Wholesale Grocers, and C&S Charities.
Ethics declarations
Competing interests
W.K., L.L.D.L.V., H.C., E.A., L.D.M., A.K., E.S., E.C., L.C., J.W., D.A.W., M.A.A., S.I.C., S.V., N.R.P., A.J.C. have no conflicts. M.C. consults for Tellic and Impetus. J.A.J. has received travel support from MDClone to attend scientific meetings. K.A.J. consults for Recordati and receives research funding from AstraZeneca.
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Kang, W., Lazo de la Vega, L., Comeau, H. et al. Introducing iCatalog as a clinical decision support tool for collaborative pediatric precision oncology studies. Commun Med (2026). https://doi.org/10.1038/s43856-025-01351-2
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DOI: https://doi.org/10.1038/s43856-025-01351-2
