TY - JOUR
AU - Halchenko, Yaroslav O.
AU - Goncalves, Mathias
AU - Ghosh, Satrajit
AU - Velasco, Pablo
AU - Visconti di Oleggio Castello, Matteo
AU - Salo, Taylor
AU - Wodder, John T.
AU - Hanke, Michael
AU - Sadil, Patrick
AU - Gorgolewski, Krzysztof Jacek
AU - Ioanas, Horea-Ioan
AU - Rorden, Chris
AU - Hendrickson, Timothy J.
AU - Dayan, Michael
AU - Houlihan, Sean Dae
AU - Kent, James
AU - Strauss, Ted
AU - Lee, John
AU - To, Isaac
AU - Markiewicz, Christopher J.
AU - Lukas, Darren
AU - Butler, Ellyn R.
AU - Thompson, Todd
AU - Termenon, Maite
AU - Smith, David V.
AU - Macdonald, Austin
AU - Kennedy, David N.
TI - HeuDiConv — flexible DICOM conversion into structured directory layouts
JO - The journal of open source software
VL - 9
IS - 99
SN - 2475-9066
CY - [Erscheinungsort nicht ermittelbar]
PB - [Verlag nicht ermittelbar]
M1 - FZJ-2024-05845
SP - 5839 -
PY - 2024
N1 - Open Source Initiative8605 Santa Monica Blvd PMB 63639West Hollywood, CA 90069-4109United StatesThe Open Source Initiative’s IRS Tax ID Number (TIN) is 91-2037395.The Open Source Initiative’s EU Transparency Register Number 672028337929-77
AB - In order to support efficient processing, data must be formatted according to standards thatare prevalent in the field and widely supported among actively developed analysis tools. TheBrain Imaging Data Structure (BIDS) (Gorgolewski et al., 2016) is an open standard designedfor computational accessibility, operator legibility, and a wide and easily extendable scopeof modalities — and is consequently used by numerous analysis and processing tools as thepreferred input format in many fields of neuroscience. HeuDiConv (Heuristic DICOM Converter)enables flexible and efficient conversion of spatially reconstructed neuroimaging data fromthe DICOM format (quasi-ubiquitous in biomedical image acquisition systems, particularlyin clinical settings) to BIDS, as well as other file layouts. HeuDiConv provides a multi-stageoperator input workflow (discovery, manual tuning, conversion) where a manual tuning step isoptional and the entire conversion can thus be seamlessly integrated into a data processingpipeline. HeuDiConv is written in Python, and supports the DICOM specification for input parsing, and the BIDS specification for output construction. The support for these standardsis extensive, and HeuDiConv can handle complex organization scenarios that arise for specificdata types (e.g., multi-echo sequences, or single-band reference volumes). In addition togenerating valid BIDS outputs, additional support is offered for custom output layouts. Thisis obtained via a set of built-in fully functional or example heuristics expressed as simplePython functions. Those heuristics could be taken as a template or as a base for developingcustom heuristics, thus providing full flexibility and maintaining user accessibility. HeuDiConvfurther integrates with DataLad (Halchenko et al., 2021), and can automatically preparehierarchies of DataLad datasets with optional obfuscation of sensitive data and metadata,including obfuscating patient visit timestamps in the git version control system. As a result,given its extensibility, large modality support, and integration with advanced data managementtechnologies, HeuDiConv has become a mainstay in numerous neuroimaging workflows, andconstitutes a powerful and highly adaptable tool of potential interest to large swathes of theneuroimaging community.
LB - PUB:(DE-HGF)16
DO - DOI:10.21105/joss.05839
UR - https://juser.fz-juelich.de/record/1031830
ER -