ItemComplex: a Python-based visualization framework for ex-post organization and integration of large language-based datasets

BackgroundNowadays, both researchers and clinicians alike have to deal with increasingly larger datasets, specifically also in the context of mental health data. Sophisticated tools for dataset visualization of information from various item-based instruments, such as questionnaire data or data from...

Full description

Saved in:
Bibliographic Details
Main Authors: Janson, Karina (Author) , Gottfried, Karl (Author) , Reis, Olaf (Author) , Kornhuber, Johannes (Author) , Eichler, Anna (Author) , Deuschle, Michael (Author) , Banaschewski, Tobias (Author) , Nees, Frauke (Author)
Format: Article (Journal)
Language:English
Published: 26 May 2025
In: European psychiatry
Year: 2025, Volume: 68, Issue: 1, Pages: 1-15
ISSN:1778-3585
DOI:10.1192/j.eurpsy.2025.2457
Online Access:Verlag, kostenfrei, Volltext: https://doi.org/10.1192/j.eurpsy.2025.2457
Verlag, kostenfrei, Volltext: https://www.cambridge.org/core/journals/european-psychiatry/article/itemcomplex-a-pythonbased-visualization-framework-for-expost-organization-and-integration-of-large-languagebased-datasets/9948EC2C3598BF71E6EDB700CFB41593
Get full text
Author Notes:Karina Janson, Karl Gottfried, Olaf Reis, Johannes Kornhuber, Anna Eichler, Michael Deuschle, Tobias Banaschewski, Frauke Nees and IMAC-Mind Consortium
Description
Summary:BackgroundNowadays, both researchers and clinicians alike have to deal with increasingly larger datasets, specifically also in the context of mental health data. Sophisticated tools for dataset visualization of information from various item-based instruments, such as questionnaire data or data from digital applications or clinical documentations, are still lacking, specifically for an integration at multiple levels and for use in both data organization and appropriate construction for its valid use in subsequent analyses.MethodsHere, we introduce ItemComplex, a Python-based framework for ex-post visualization of large datasets. The method exploits the comprehensive recognition of instrument alignments and the identification of new content networks and graphs based on item similarities and shared versus differential conceptual bases within and across data and studies.ResultsThe ItemComplex framework was evaluated using four existing large datasets from four different cohort studies and demonstrated successful data visualization across multi-item instruments within and across studies. ItemComplex enables researchers and clinicians to navigate through big datasets reliably, informatively, and quickly. Moreover, it facilitates the extraction of new insights into construct representations and concept identifications within the data.ConclusionsThe ItemComplex app is an efficient tool in the field of big data management and analysis addressing the growing complexity of modern datasets to harness the potential hidden within these extensive collections of information. It is also easily adjustable for individual datasets and user preferences, both in the research and clinical field.
Item Description:Gesehen am 20.10.2025
Physical Description:Online Resource
ISSN:1778-3585
DOI:10.1192/j.eurpsy.2025.2457