Reliability of 2D Magnetic Resonance Imaging Texture Analysis in Cerebral Gliomas: Influence of Slice Selection Bias on Reproducibility of Radiomic Features

Introduction:In this study, we aimed to investigate the reproducibility of two-dimensional (2D) texture features between adjacent magnetic resonance imaging (MRI) slices in patients with cerebral gliomas.Methods:For this retrospective methodological study, T2-weighted MRI and semi-automatic segmenta...

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Main Author: Burak Koçak
Format: Article
Language:English
Published: Galenos Yayinevi 2019-09-01
Series:İstanbul Medical Journal
Subjects:
mri
Online Access: http://imj.galenos.com.tr/archives/archive-detail/article-preview/reliability-of-2d-magnetic-resonance-maging-textur/30572
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spelling doaj-8712c749074849799001268b56c839ab2020-11-25T00:53:56ZengGalenos Yayineviİstanbul Medical Journal2619-97932148-094X2019-09-0120541341710.4274/imj.galenos.2019.0958213049054Reliability of 2D Magnetic Resonance Imaging Texture Analysis in Cerebral Gliomas: Influence of Slice Selection Bias on Reproducibility of Radiomic FeaturesBurak Koçak0 İstanbul Training and Research Hospital, Clinic of Radilogy, İstanbul, Turkey Introduction:In this study, we aimed to investigate the reproducibility of two-dimensional (2D) texture features between adjacent magnetic resonance imaging (MRI) slices in patients with cerebral gliomas.Methods:For this retrospective methodological study, T2-weighted MRI and semi-automatic segmentation data of 25 patients with lower-grade gliomas were obtained from a public database. Only two regions of interests were used in this study: (i), the largest slice and (ii) one of the adjacent slices. Using PyRadiomics, an open source software to extract radiomic features from medical images, a total of 1116 texture features from six different feature classes were extracted from original, Laplacian of Gaussian-filtered, and wavelet-transformed images. Intra-class correlation coefficient (ICC) values with and without 95% confidence interval (CI) were used for reliability analysis. The ICC threshold for excellent reproducibility was 0.9.Results:In the reliability analysis without considering the 95% CI for the ICC values, 28% of the texture features had excellent reproducibility. On the other hand, considering the 95% CI, only 10% of the texture features had excellent reproducibility. Neither a feature class (range of excellent reproducibility rates without 95% CI, 21.2%-34.4%; with 95% CI, 2.1%-18.3%) nor an image type (range of excellent reproducibility rates without 95% CI, 22.3%-41.9%; with 95% CI, 9.1%-14%) had considerable reliability in two adjacent MRI slices.Conclusion:2D MRI texture analysis of gliomas using T2- weighted sequence is substantially sensitive to slice selection bias, which may lead to non-reproducible results in radiomic works. http://imj.galenos.com.tr/archives/archive-detail/article-preview/reliability-of-2d-magnetic-resonance-maging-textur/30572 gliomamritexture analysisradiomicsreliability
collection DOAJ
language English
format Article
sources DOAJ
author Burak Koçak
spellingShingle Burak Koçak
Reliability of 2D Magnetic Resonance Imaging Texture Analysis in Cerebral Gliomas: Influence of Slice Selection Bias on Reproducibility of Radiomic Features
İstanbul Medical Journal
glioma
mri
texture analysis
radiomics
reliability
author_facet Burak Koçak
author_sort Burak Koçak
title Reliability of 2D Magnetic Resonance Imaging Texture Analysis in Cerebral Gliomas: Influence of Slice Selection Bias on Reproducibility of Radiomic Features
title_short Reliability of 2D Magnetic Resonance Imaging Texture Analysis in Cerebral Gliomas: Influence of Slice Selection Bias on Reproducibility of Radiomic Features
title_full Reliability of 2D Magnetic Resonance Imaging Texture Analysis in Cerebral Gliomas: Influence of Slice Selection Bias on Reproducibility of Radiomic Features
title_fullStr Reliability of 2D Magnetic Resonance Imaging Texture Analysis in Cerebral Gliomas: Influence of Slice Selection Bias on Reproducibility of Radiomic Features
title_full_unstemmed Reliability of 2D Magnetic Resonance Imaging Texture Analysis in Cerebral Gliomas: Influence of Slice Selection Bias on Reproducibility of Radiomic Features
title_sort reliability of 2d magnetic resonance imaging texture analysis in cerebral gliomas: influence of slice selection bias on reproducibility of radiomic features
publisher Galenos Yayinevi
series İstanbul Medical Journal
issn 2619-9793
2148-094X
publishDate 2019-09-01
description Introduction:In this study, we aimed to investigate the reproducibility of two-dimensional (2D) texture features between adjacent magnetic resonance imaging (MRI) slices in patients with cerebral gliomas.Methods:For this retrospective methodological study, T2-weighted MRI and semi-automatic segmentation data of 25 patients with lower-grade gliomas were obtained from a public database. Only two regions of interests were used in this study: (i), the largest slice and (ii) one of the adjacent slices. Using PyRadiomics, an open source software to extract radiomic features from medical images, a total of 1116 texture features from six different feature classes were extracted from original, Laplacian of Gaussian-filtered, and wavelet-transformed images. Intra-class correlation coefficient (ICC) values with and without 95% confidence interval (CI) were used for reliability analysis. The ICC threshold for excellent reproducibility was 0.9.Results:In the reliability analysis without considering the 95% CI for the ICC values, 28% of the texture features had excellent reproducibility. On the other hand, considering the 95% CI, only 10% of the texture features had excellent reproducibility. Neither a feature class (range of excellent reproducibility rates without 95% CI, 21.2%-34.4%; with 95% CI, 2.1%-18.3%) nor an image type (range of excellent reproducibility rates without 95% CI, 22.3%-41.9%; with 95% CI, 9.1%-14%) had considerable reliability in two adjacent MRI slices.Conclusion:2D MRI texture analysis of gliomas using T2- weighted sequence is substantially sensitive to slice selection bias, which may lead to non-reproducible results in radiomic works.
topic glioma
mri
texture analysis
radiomics
reliability
url http://imj.galenos.com.tr/archives/archive-detail/article-preview/reliability-of-2d-magnetic-resonance-maging-textur/30572
work_keys_str_mv AT burakkocak reliabilityof2dmagneticresonanceimagingtextureanalysisincerebralgliomasinfluenceofsliceselectionbiasonreproducibilityofradiomicfeatures
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