CT and MRI radiomics of bone and soft-tissue sarcomas: an updated systematic review of reproducibility and validation strategies.

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State: Public
Version: Final published version
License: CC BY 4.0
Serval ID
serval:BIB_515794C36D58
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
CT and MRI radiomics of bone and soft-tissue sarcomas: an updated systematic review of reproducibility and validation strategies.
Journal
Insights into imaging
Author(s)
Gitto S., Cuocolo R., Huisman M., Messina C., Albano D., Omoumi P., Kotter E., Maas M., Van Ooijen P., Sconfienza L.M.
ISSN
1869-4101 (Print)
ISSN-L
1869-4101
Publication state
Published
Issued date
27/02/2024
Peer-reviewed
Oui
Volume
15
Number
1
Pages
54
Language
english
Notes
Publication types: Journal Article
Publication Status: epublish
Abstract
To systematically review radiomic feature reproducibility and model validation strategies in recent studies dealing with CT and MRI radiomics of bone and soft-tissue sarcomas, thus updating a previous version of this review which included studies published up to 2020.
A literature search was conducted on EMBASE and PubMed databases for papers published between January 2021 and March 2023. Data regarding radiomic feature reproducibility and model validation strategies were extracted and analyzed.
Out of 201 identified papers, 55 were included. They dealt with radiomics of bone (n = 23) or soft-tissue (n = 32) tumors. Thirty-two (out of 54 employing manual or semiautomatic segmentation, 59%) studies included a feature reproducibility analysis. Reproducibility was assessed based on intra/interobserver segmentation variability in 30 (55%) and geometrical transformations of the region of interest in 2 (4%) studies. At least one machine learning validation technique was used for model development in 34 (62%) papers, and K-fold cross-validation was employed most frequently. A clinical validation of the model was reported in 38 (69%) papers. It was performed using a separate dataset from the primary institution (internal test) in 22 (40%), an independent dataset from another institution (external test) in 14 (25%) and both in 2 (4%) studies.
Compared to papers published up to 2020, a clear improvement was noted with almost double publications reporting methodological aspects related to reproducibility and validation. Larger multicenter investigations including external clinical validation and the publication of databases in open-access repositories could further improve methodology and bring radiomics from a research area to the clinical stage.
An improvement in feature reproducibility and model validation strategies has been shown in this updated systematic review on radiomics of bone and soft-tissue sarcomas, highlighting efforts to enhance methodology and bring radiomics from a research area to the clinical stage.
• 2021-2023 radiomic studies on CT and MRI of musculoskeletal sarcomas were reviewed. • Feature reproducibility was assessed in more than half (59%) of the studies. • Model clinical validation was performed in 69% of the studies. • Internal (44%) and/or external (29%) test datasets were employed for clinical validation.
Keywords
Artificial intelligence, Radiomics, Sarcoma, Texture analysis
Pubmed
Web of science
Open Access
Yes
Create date
01/03/2024 11:21
Last modification date
09/08/2024 14:59
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