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Effect of grey-level discretization on texture feature on different weighted MRI images of diverse disease groups

PURPOSE: Many studies of MRI radiomics do not include the discretization method used for the analyses, which might indicate that the discretization methods used are considered irrelevant. Our goals were to compare three frequently used discretization methods (lesion relative resampling (LRR), lesion...

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Autores principales: Veres, Gergő, Vas, Norman Félix, Lyngby Lassen, Martin, Béresová, Monika, K. Krizsan, Aron, Forgács, Attila, Berényi, Ervin, Balkay, László
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8213143/
https://www.ncbi.nlm.nih.gov/pubmed/34143830
http://dx.doi.org/10.1371/journal.pone.0253419
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author Veres, Gergő
Vas, Norman Félix
Lyngby Lassen, Martin
Béresová, Monika
K. Krizsan, Aron
Forgács, Attila
Berényi, Ervin
Balkay, László
author_facet Veres, Gergő
Vas, Norman Félix
Lyngby Lassen, Martin
Béresová, Monika
K. Krizsan, Aron
Forgács, Attila
Berényi, Ervin
Balkay, László
author_sort Veres, Gergő
collection PubMed
description PURPOSE: Many studies of MRI radiomics do not include the discretization method used for the analyses, which might indicate that the discretization methods used are considered irrelevant. Our goals were to compare three frequently used discretization methods (lesion relative resampling (LRR), lesion absolute resampling (LAR) and absolute resampling (AR)) applied to the same data set, along with two different lesion segmentation approaches. METHODS: We analyzed the effects of altering bin widths or bin numbers for the three different sampling methods using 40 texture indices (TIs). The impact was evaluated on brain MRI studies obtained for 71 patients divided into three different disease groups: multiple sclerosis (MS, N = 22), ischemic stroke (IS, N = 22), cancer patients (N = 27). Two different MRI acquisition protocols were considered for all patients, a T2- and a post-contrast 3D T1-weighted MRI sequence. Elliptical and manually drawn VOIs were employed for both imaging series. Three different types of gray-level discretization methods were used: LRR, LAR and AR. Hypothesis tests were done among all diseased and control areas to compare the TI values in these areas. We also did correlation analyses between TI values and lesion volumes. RESULTS: In general, no significant differences were reported in the results when employing the AR and LAR discretization methods. It was found that employing 38 TIs introduced variation in the results when the number of bin parameters was altered, suggesting that both the degree and direction of monotonicity between each TI value and binning parameters were characteristic for each TI. Furthermore, while TIs were changing with altering binning values, no changes correlated to neither disease nor the MRI sequence. We found that most indices correlated weakly with the volume, while the correlation coefficients were independent of both diseases analyzed and MR contrast. Several cooccurrence-matrix based texture parameters show a definite higher correlation when employing the LRR discretization method However, with the best correlations obtained for the manually drawn VOI. Hypothesis tests among all disease and control areas (co-lateral hemisphere) revealed that the AR or LAR discretization techniques provide more suitable texture features than LRR. In addition, the manually drawn segmentation gave fewer significantly different TIs than the ellipsoid segmentations. In addition, the amount of TIs with significant differences was increasing with increasing the number of bins, or decreasing bin widths. CONCLUSION: Our findings indicate that the AR discretization method may offer the best texture analysis in MR image assessments. Employing too many bins or too large bin widths might reduce the selection of TIs that can be used for differential diagnosis. In general, more statistically different TIs were observed for elliptical segmentations when compared to the manually drawn VOIs. In the texture analysis of MR studies, studies and publications should report on all important parameters and methods related to data collection, corrections, normalization, discretization, and segmentation.
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spelling pubmed-82131432021-06-29 Effect of grey-level discretization on texture feature on different weighted MRI images of diverse disease groups Veres, Gergő Vas, Norman Félix Lyngby Lassen, Martin Béresová, Monika K. Krizsan, Aron Forgács, Attila Berényi, Ervin Balkay, László PLoS One Research Article PURPOSE: Many studies of MRI radiomics do not include the discretization method used for the analyses, which might indicate that the discretization methods used are considered irrelevant. Our goals were to compare three frequently used discretization methods (lesion relative resampling (LRR), lesion absolute resampling (LAR) and absolute resampling (AR)) applied to the same data set, along with two different lesion segmentation approaches. METHODS: We analyzed the effects of altering bin widths or bin numbers for the three different sampling methods using 40 texture indices (TIs). The impact was evaluated on brain MRI studies obtained for 71 patients divided into three different disease groups: multiple sclerosis (MS, N = 22), ischemic stroke (IS, N = 22), cancer patients (N = 27). Two different MRI acquisition protocols were considered for all patients, a T2- and a post-contrast 3D T1-weighted MRI sequence. Elliptical and manually drawn VOIs were employed for both imaging series. Three different types of gray-level discretization methods were used: LRR, LAR and AR. Hypothesis tests were done among all diseased and control areas to compare the TI values in these areas. We also did correlation analyses between TI values and lesion volumes. RESULTS: In general, no significant differences were reported in the results when employing the AR and LAR discretization methods. It was found that employing 38 TIs introduced variation in the results when the number of bin parameters was altered, suggesting that both the degree and direction of monotonicity between each TI value and binning parameters were characteristic for each TI. Furthermore, while TIs were changing with altering binning values, no changes correlated to neither disease nor the MRI sequence. We found that most indices correlated weakly with the volume, while the correlation coefficients were independent of both diseases analyzed and MR contrast. Several cooccurrence-matrix based texture parameters show a definite higher correlation when employing the LRR discretization method However, with the best correlations obtained for the manually drawn VOI. Hypothesis tests among all disease and control areas (co-lateral hemisphere) revealed that the AR or LAR discretization techniques provide more suitable texture features than LRR. In addition, the manually drawn segmentation gave fewer significantly different TIs than the ellipsoid segmentations. In addition, the amount of TIs with significant differences was increasing with increasing the number of bins, or decreasing bin widths. CONCLUSION: Our findings indicate that the AR discretization method may offer the best texture analysis in MR image assessments. Employing too many bins or too large bin widths might reduce the selection of TIs that can be used for differential diagnosis. In general, more statistically different TIs were observed for elliptical segmentations when compared to the manually drawn VOIs. In the texture analysis of MR studies, studies and publications should report on all important parameters and methods related to data collection, corrections, normalization, discretization, and segmentation. Public Library of Science 2021-06-18 /pmc/articles/PMC8213143/ /pubmed/34143830 http://dx.doi.org/10.1371/journal.pone.0253419 Text en © 2021 Veres et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Veres, Gergő
Vas, Norman Félix
Lyngby Lassen, Martin
Béresová, Monika
K. Krizsan, Aron
Forgács, Attila
Berényi, Ervin
Balkay, László
Effect of grey-level discretization on texture feature on different weighted MRI images of diverse disease groups
title Effect of grey-level discretization on texture feature on different weighted MRI images of diverse disease groups
title_full Effect of grey-level discretization on texture feature on different weighted MRI images of diverse disease groups
title_fullStr Effect of grey-level discretization on texture feature on different weighted MRI images of diverse disease groups
title_full_unstemmed Effect of grey-level discretization on texture feature on different weighted MRI images of diverse disease groups
title_short Effect of grey-level discretization on texture feature on different weighted MRI images of diverse disease groups
title_sort effect of grey-level discretization on texture feature on different weighted mri images of diverse disease groups
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8213143/
https://www.ncbi.nlm.nih.gov/pubmed/34143830
http://dx.doi.org/10.1371/journal.pone.0253419
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