Feasibility of radiomic feature harmonization for pooling of [<SUP>18</SUP>F]FET or [<SUP>18</SUP>F]GE-180 PET images of gliomas

Zounek, Adrian Jun and Albert, Nathalie Lisa and Holzgreve, Adrien and Unterrainer, Marcus and Brosch-Lenz, Julia and Lindner, Simon and Bollenbacher, Andreas and Boening, Guido and Rupprecht, Rainer and Brendel, Matthias and von Baumgarten, Louisa and Tonn, Joerg-Christian and Bartenstein, Peter and Ziegler, Sibylle and Kaiser, Lena (2023) Feasibility of radiomic feature harmonization for pooling of [<SUP>18</SUP>F]FET or [<SUP>18</SUP>F]GE-180 PET images of gliomas. ZEITSCHRIFT FUR MEDIZINISCHE PHYSIK, 33 (1). pp. 91-102. ISSN 0939-3889, 1876-4436

Full text not available from this repository. (Request a copy)

Abstract

Introduction: Large datasets are required to ensure reliable non-invasive glioma assessment with radiomics-based machine learning methods. This can often only be achieved by pooling images from different centers. Moreover, trained models should perform with high accuracy when applied to data from different centers. In this study, the impact of reconstruction settings and segmentation methods on radiomic features derived from amino acid and TSPO PET images of glioma patients was examined. Additionally, the ability to model and thus reduce feature differences was investigated.Methods: [(18)FJFET and [(18)FJGE-180 PET data were acquired from 19 glioma patients. For each acquisition, 10 reconstruction settings and 9 segmentation methods were included to emulate multicentric data. Statistical robustness measures were calculated before and after ComBat harmonization. Differences between features due to setting variations were assessed using Friedman test, coefficient of variation (CV) and inter-rater reliability measures, including intraclass and Spearman's rank correlation coefficients and Fleiss' Kappa.Results: According to Friedman analyses, most features (>60%) showed significant differences. Yet, CV and interrater reliability measures indicated higher robustness. ComBat resulted in almost complete harmonization (>87%) according to Friedman test and little to no improvement according to CV and inter-rater reliability measures. [(18)FJGE-180 features were more sensitive to reconstruction settings than [(18)FJFET features.Conclusions: According to Friedman test, feature distributions could be successfully aligned using ComBat. However, depending on settings, changes in patient ranks were observed for some features and could not be eliminated by harmo-nization. Thus, for clinical utilization it is recommended to exclude affected features.

Item Type: Article
Uncontrolled Keywords: SYSTEM; Radiomics; Robustness; Data Pooling; FET PET; TSPO PET; Glioma
Subjects: 600 Technology > 610 Medical sciences Medicine
Divisions: Medicine > Lehrstuhl für Psychiatrie und Psychotherapie
Depositing User: Dr. Gernot Deinzer
Date Deposited: 30 Jan 2024 13:05
Last Modified: 30 Jan 2024 13:05
URI: https://pred.uni-regensburg.de/id/eprint/60623

Actions (login required)

View Item View Item