Software-assisted structured reporting and semi-automated TNM classification for NSCLC staging in a multicenter proof of concept study

Bibliographic Details
Title: Software-assisted structured reporting and semi-automated TNM classification for NSCLC staging in a multicenter proof of concept study
Authors: Maurice M. Heimer, Yevgeniy Dikhtyar, Boj F. Hoppe, Felix L. Herr, Anna Theresa Stüber, Tanja Burkard, Emma Zöller, Matthias P. Fabritius, Lena Unterrainer, Lisa Adams, Annette Thurner, David Kaufmann, Timo Trzaska, Markus Kopp, Okka Hamer, Katharina Maurer, Inka Ristow, Matthias S. May, Amanda Tufman, Judith Spiro, Matthias Brendel, Michael Ingrisch, Jens Ricke, Clemens C. Cyran
Source: Insights into Imaging, Vol 15, Iss 1, Pp 1-10 (2024)
Publisher Information: SpringerOpen, 2024.
Publication Year: 2024
Collection: LCC:Medical physics. Medical radiology. Nuclear medicine
Subject Terms: Lung, Non-small-cell lung carcinoma, PET-CT, TNM classification, Medical physics. Medical radiology. Nuclear medicine, R895-920
More Details: Abstract Objectives In this multi-center study, we proposed a structured reporting (SR) framework for non-small cell lung cancer (NSCLC) and developed a software-assisted tool to automatically translate image-based findings and annotations into TNM classifications. The aim of this study was to validate the software-assisted SR tool for NSCLC, assess its potential clinical impact in a proof-of-concept study, and evaluate current reporting standards in participating institutions. Methods A framework for SR and staging of NSCLC was developed in a multi-center collaboration. SR annotations and descriptions were used to generate semi-automated TNM classification. The SR and TNM classification tools were evaluated by nine radiologists on n = 20 representative [18F]FDG PET/CT studies and compared to the free text reporting (FTR) strategy. Results were compared to a multidisciplinary team reference using a generalized linear mixed model (GLMM). Additionally, participants were surveyed on their experience with SR and TNM classification. Results Overall, GLMM analysis revealed that readers using SR were 1.707 (CI: 1.137–2.585) times more likely to correctly classify TNM status compared to FTR strategy (p = 0.01) resulting in increased overall TNM correctness in 71.9% (128/178) of cases compared to 62.8% (113/180) FTR. The primary source of variation in classification accuracy was explained by case complexity. Participants rated the potential impact of SR and semi-automated TNM classification as positive across all categories with improved scores after template validation. Conclusion This multi-center study yielded an effective software-assisted SR framework for NSCLC. The SR and semi-automated classification tool improved TNM classification and were perceived as valuable. Critical relevance statement Software-assisted SR provides robust input for semi-automated rule-based TNM classification in non-small-cell lung carcinoma (NSCLC), improves TNM correctness compared to FTR, and was perceived as valuable by radiology physicians. Key Points SR and TNM classification are underutilized across participating centers for NSCLC staging. Software-assisted SR has emerged as a promising strategy for oncologic assessment. Software-assisted SR facilitates semi-automated TNM classification with improved staging accuracy compared to free-text reports in NSCLC. Graphical Abstract
Document Type: article
File Description: electronic resource
Language: English
ISSN: 1869-4101
Relation: https://doaj.org/toc/1869-4101
DOI: 10.1186/s13244-024-01836-z
Access URL: https://doaj.org/article/5ef913ead32c442f884a6b89c796967b
Accession Number: edsdoj.5ef913ead32c442f884a6b89c796967b
Database: Directory of Open Access Journals
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More Details
ISSN:18694101
DOI:10.1186/s13244-024-01836-z
Published in:Insights into Imaging
Language:English