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Effects of Interobserver Segmentation Variability and Intensity Discretization on MRI-Based Radiomic Feature Reproducibility of Lipoma and Atypical Lipomatous Tumor

Academic Article
Publication Date:
2024
Citation:
Effects of Interobserver Segmentation Variability and Intensity Discretization on MRI-Based Radiomic Feature Reproducibility of Lipoma and Atypical Lipomatous Tumor / S. Gitto, R. Cuocolo, V. Giannetta, J. Badalyan, F. Di Luca, S. Fusco, G. Zantonelli, D. Albano, C. Messina, L.M. Sconfienza. - In: JOURNAL OF IMAGING INFORMATICS IN MEDICINE. - ISSN 2948-2933. - 37:3(2024 Jun), pp. 1187-1200. [10.1007/s10278-024-00999-x]
abstract:
Segmentation and image intensity discretization impact on radiomics workflow. The aim of this study is to investigate the influence of interobserver segmentation variability and intensity discretization methods on the reproducibility of MRI-based radiomic features in lipoma and atypical lipomatous tumor (ALT). Thirty patients with lipoma or ALT were retrospectively included. Three readers independently performed manual contour-focused segmentation on T1-weighted and T2-weighted sequences, including the whole tumor volume. Additionally, a marginal erosion was applied to segmentations to evaluate its influence on feature reproducibility. After image pre-processing, with included intensity discretization employing both fixed bin number and width approaches, 1106 radiomic features were extracted from each sequence. Intraclass correlation coefficient (ICC) 95% confidence interval lower bound ≥ 0.75 defined feature stability. In contour-focused vs. margin shrinkage segmentation, the rates of stable features extracted from T1-weighted and T2-weighted images ranged from 92.68 to 95.21% vs. 90.69 to 95.66% after fixed bin number discretization and from 95.75 to 97.65% vs. 95.39 to 96.47% after fixed bin width discretization, respectively, with no difference between the two segmentation approaches (p ≥ 0.175). Higher stable feature rates and higher feature ICC values were found when implementing discretization with fixed bin width compared to fixed bin number, regardless of the segmentation approach (p < 0.001). In conclusion, MRI radiomic features of lipoma and ALT are reproducible regardless of the segmentation approach and intensity discretization method, although a certain degree of interobserver variability highlights the need for a preliminary reliability analysis in future studies.
IRIS type:
01 - Articolo su periodico
Keywords:
Artificial intelligence; Atypical lipomatous tumor; Lipoma; Radiomics; Texture analysis
List of contributors:
S. Gitto, R. Cuocolo, V. Giannetta, J. Badalyan, F. Di Luca, S. Fusco, G. Zantonelli, D. Albano, C. Messina, L.M. Sconfienza
Authors of the University:
ALBANO DOMENICO ( author )
FUSCO STEFANO ( author )
GITTO SALVATORE ( author )
MESSINA CARMELO ( author )
SCONFIENZA LUCA MARIA ( author )
Link to information sheet:
https://air.unimi.it/handle/2434/1028379
Full Text:
https://air.unimi.it/retrieve/handle/2434/1028379/2358977/s10278-024-00999-x.pdf
https://air.unimi.it/retrieve/handle/2434/1028379/2485952/s10278-024-00999-x.pdf
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Settore MED/36 - Diagnostica per Immagini e Radioterapia
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