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Accepted for/Published in: Journal of Medical Internet Research

Date Submitted: Nov 22, 2024
Date Accepted: Aug 19, 2025

The final, peer-reviewed published version of this preprint can be found here:

Data Visualization Support for Interdisciplinary Team Treatment Planning in Clinical Oncology: Scoping Review

Boehm D, Strantz C, Ustjanzew A, Manuilova I, Scheiter A, Pauli T, Hechtel N, Reimer N, Christoph J, Busch H, Ganslandt T, Unberath P

Data Visualization Support for Interdisciplinary Team Treatment Planning in Clinical Oncology: Scoping Review

J Med Internet Res 2025;27:e69104

DOI: 10.2196/69104

PMID: 41364916

PMCID: 12728401

Data Visualization Support for Interdisciplinary Team Treatment Planning In Clinical Oncology: Scoping Review

  • Dominik Boehm; 
  • Cosima Strantz; 
  • Arsenij Ustjanzew; 
  • Iryna Manuilova; 
  • Alexander Scheiter; 
  • Thomas Pauli; 
  • Nicole Hechtel; 
  • Niklas Reimer; 
  • Jan Christoph; 
  • Hauke Busch; 
  • Thomas Ganslandt; 
  • Philipp Unberath

ABSTRACT

Background:

Complex and expanding data sets in clinical oncology applications require flexible and interactive visualization of patient data to provide physicians and other medical professionals with a maximum amount of information. In particular, interdisciplinary tumor conferences profit from customized tools to integrate, link, and visualize relevant data from all professions involved.

Objective:

Our objective was to identify and present currently available data visualization tools for tumor boards and related areas. We not only want to provide an overview of the digital tools currently used in tumor board settings but also of the data they include, the respective visualization solutions, and their integration into hospital processes.

Methods:

The scoping review is based on the Arksey and O'Malley scoping study framework. The following electronic databases were searched for articles: PubMed, Web of Knowledge, and SCOPUS. Articles were deemed eligible if published in English in the last ten years. Eligible articles were first deduplicated, followed by the screening of titles and abstracts. Second, a full-text screening was conducted to decide on article selection. A scoping review protocol was set up and published to prepare for the study, which can be accessed via the IRRID. The manuscript was written following the checklist “Preferred Reporting Items for Systematic Reviews and Meta-Analyses Extension for Scoping Reviews” (PRISMA-ScR).

Results:

The review process started with 2049 articles, of which 1014 were included in the title-abstract screening. (112/2049, 5%) Publications were eligible for full-text screening, leading to (60/2049, 3%) Publications eligible for final inclusion. They covered 49 distinct visualization tools and applications. We discovered a variety of innovative visualization solutions, often driven by the complexity of *omics data. However, many projects remain unused and are mostly abandoned once the publications have been written and published.

Conclusions:

There is a wide range of projects providing visualization solutions for tumor boards and clinical oncology applications. Under the few tools that find their way into clinical routine settings, there are both commercial and academic solutions alike. While tables for a variety of data types remain the dominant visualization strategy, the complexity of omics data appears to be the driving force behind many visualization innovations in the area of tumor boards.


 Citation

Please cite as:

Boehm D, Strantz C, Ustjanzew A, Manuilova I, Scheiter A, Pauli T, Hechtel N, Reimer N, Christoph J, Busch H, Ganslandt T, Unberath P

Data Visualization Support for Interdisciplinary Team Treatment Planning in Clinical Oncology: Scoping Review

J Med Internet Res 2025;27:e69104

DOI: 10.2196/69104

PMID: 41364916

PMCID: 12728401

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