Robustness of magnetic resonance radiomic features to pixel size resampling and interpolation in patients with cervical cancer

Abstract Background Radiomics is a promising field in oncology imaging. However, the implementation of radiomics clinically has been limited because its robustness remains unclear. Previous CT and PET studies suggested that radiomic features were sensitive to variations in pixel size and slice thick...

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Main Authors: Shin-Hyung Park, Hyejin Lim, Bong Kyung Bae, Myong Hun Hahm, Gun Oh Chong, Shin Young Jeong, Jae-Chul Kim
Format: Article
Language:English
Published: BMC 2021-02-01
Series:Cancer Imaging
Subjects:
Online Access:https://doi.org/10.1186/s40644-021-00388-5
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spelling doaj-2c1f7c2f9b354bee93acb8f8a8fe49462021-04-02T20:22:04ZengBMCCancer Imaging1470-73302021-02-0121111110.1186/s40644-021-00388-5Robustness of magnetic resonance radiomic features to pixel size resampling and interpolation in patients with cervical cancerShin-Hyung Park0Hyejin Lim1Bong Kyung Bae2Myong Hun Hahm3Gun Oh Chong4Shin Young Jeong5Jae-Chul Kim6Department of Radiation Oncology, School of Medicine, Kyungpook National University HospitalDepartment of Radiation Oncology, School of Medicine, Kyungpook National University HospitalDepartment of Radiation Oncology, School of Medicine, Kyungpook National University HospitalDepartment of Radiology, School of Medicine, Kyungpook National UniversityDepartment of Obstetrics and Gynecology, School of Medicine, Kyungpook National UniversityDepartment of Nuclear Medicine, School of Medicine, Kyungpook National UniversityDepartment of Radiation Oncology, School of Medicine, Kyungpook National University HospitalAbstract Background Radiomics is a promising field in oncology imaging. However, the implementation of radiomics clinically has been limited because its robustness remains unclear. Previous CT and PET studies suggested that radiomic features were sensitive to variations in pixel size and slice thickness of the images. The purpose of this study was to assess robustness of magnetic resonance (MR) radiomic features to pixel size resampling and interpolation in patients with cervical cancer. Methods This retrospective study included 254 patients with a pathological diagnosis of cervical cancer stages IB to IVA who received definitive chemoradiation at our institution between January 2006 and June 2020. Pretreatment MR scans were analyzed. Each region of cervical cancer was segmented on the axial gadolinium-enhanced T1- and T2-weighted images; 107 radiomic features were extracted. MR scans were interpolated and resampled using various slice thicknesses and pixel spaces. Intraclass correlation coefficients (ICCs) were calculated between the original images and images that underwent pixel size resampling (OP), interpolation (OI), or pixel size resampling and interpolation (OP+I) as well as among processed image sets with various pixel spaces (P), various slice thicknesses (I), and both (P + I). Results After feature standardization, ≥86.0% of features showed good robustness when compared between the original and processed images (OP, OI, and OP+I) and ≥ 88.8% of features showed good robustness when processed images were compared (P, I, and P + I). Although most first-order, shape, and texture features showed good robustness, GLSZM small-area emphasis-related features and NGTDM strength were sensitive to variations in pixel size and slice thickness. Conclusion Most MR radiomic features in patients with cervical cancer were robust after pixel size resampling and interpolation following the feature standardization process. The understanding regarding the robustness of individual features after pixel size resampling and interpolation could help future radiomics research.https://doi.org/10.1186/s40644-021-00388-5RadiomicsCervical cancerMagnetic resonance imagingPixel size resamplingInterpolationRobustness
collection DOAJ
language English
format Article
sources DOAJ
author Shin-Hyung Park
Hyejin Lim
Bong Kyung Bae
Myong Hun Hahm
Gun Oh Chong
Shin Young Jeong
Jae-Chul Kim
spellingShingle Shin-Hyung Park
Hyejin Lim
Bong Kyung Bae
Myong Hun Hahm
Gun Oh Chong
Shin Young Jeong
Jae-Chul Kim
Robustness of magnetic resonance radiomic features to pixel size resampling and interpolation in patients with cervical cancer
Cancer Imaging
Radiomics
Cervical cancer
Magnetic resonance imaging
Pixel size resampling
Interpolation
Robustness
author_facet Shin-Hyung Park
Hyejin Lim
Bong Kyung Bae
Myong Hun Hahm
Gun Oh Chong
Shin Young Jeong
Jae-Chul Kim
author_sort Shin-Hyung Park
title Robustness of magnetic resonance radiomic features to pixel size resampling and interpolation in patients with cervical cancer
title_short Robustness of magnetic resonance radiomic features to pixel size resampling and interpolation in patients with cervical cancer
title_full Robustness of magnetic resonance radiomic features to pixel size resampling and interpolation in patients with cervical cancer
title_fullStr Robustness of magnetic resonance radiomic features to pixel size resampling and interpolation in patients with cervical cancer
title_full_unstemmed Robustness of magnetic resonance radiomic features to pixel size resampling and interpolation in patients with cervical cancer
title_sort robustness of magnetic resonance radiomic features to pixel size resampling and interpolation in patients with cervical cancer
publisher BMC
series Cancer Imaging
issn 1470-7330
publishDate 2021-02-01
description Abstract Background Radiomics is a promising field in oncology imaging. However, the implementation of radiomics clinically has been limited because its robustness remains unclear. Previous CT and PET studies suggested that radiomic features were sensitive to variations in pixel size and slice thickness of the images. The purpose of this study was to assess robustness of magnetic resonance (MR) radiomic features to pixel size resampling and interpolation in patients with cervical cancer. Methods This retrospective study included 254 patients with a pathological diagnosis of cervical cancer stages IB to IVA who received definitive chemoradiation at our institution between January 2006 and June 2020. Pretreatment MR scans were analyzed. Each region of cervical cancer was segmented on the axial gadolinium-enhanced T1- and T2-weighted images; 107 radiomic features were extracted. MR scans were interpolated and resampled using various slice thicknesses and pixel spaces. Intraclass correlation coefficients (ICCs) were calculated between the original images and images that underwent pixel size resampling (OP), interpolation (OI), or pixel size resampling and interpolation (OP+I) as well as among processed image sets with various pixel spaces (P), various slice thicknesses (I), and both (P + I). Results After feature standardization, ≥86.0% of features showed good robustness when compared between the original and processed images (OP, OI, and OP+I) and ≥ 88.8% of features showed good robustness when processed images were compared (P, I, and P + I). Although most first-order, shape, and texture features showed good robustness, GLSZM small-area emphasis-related features and NGTDM strength were sensitive to variations in pixel size and slice thickness. Conclusion Most MR radiomic features in patients with cervical cancer were robust after pixel size resampling and interpolation following the feature standardization process. The understanding regarding the robustness of individual features after pixel size resampling and interpolation could help future radiomics research.
topic Radiomics
Cervical cancer
Magnetic resonance imaging
Pixel size resampling
Interpolation
Robustness
url https://doi.org/10.1186/s40644-021-00388-5
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