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首页> 外文期刊>Journal of applied clinical medical physics / >Impact of image preprocessing methods on reproducibility of radiomic features in multimodal magnetic resonance imaging in glioblastoma
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Impact of image preprocessing methods on reproducibility of radiomic features in multimodal magnetic resonance imaging in glioblastoma

机译:图像预处理方法对胶质母细胞瘤多峰磁共振成像中辐射瘤特征的再现性的影响

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To investigate the effect of image preprocessing, in respect to intensity inhomogeneity correction and noise filtering, on the robustness and reproducibility of the radiomics features extracted from the Glioblastoma (GBM) tumor in multimodal MR images (mMRI). In this study, for each patient 1461 radiomics features were extracted from GBM subregions (i.e., edema, necrosis, enhancement, and tumor) of mMRI (i.e., FLAIR, T1, T1C, and T2) volumes for five preprocessing combinations (in total 116?880 radiomics features). The robustness and reproducibility of the radiomics features were assessed under four comparisons: (a) Baseline versus modified bias field; (b) Baseline versus modified bias field followed by noise filtering; (c) Baseline versus modified noise, and (d) Baseline versus modified noise followed bias field correction. The concordance correlation coefficient (CCC), dynamic range (DR), and interclass correlation coefficient (ICC) were used as metrics. Shape features and subsequently, local binary pattern (LBP) filtered images were highly stable and reproducible against bias field correction and noise filtering in all measurements. In all MRI modalities, necrosis regions (NC: n ? ~449/1461, 30%) had the highest number of highly robust features, with CCC and DR = 0.9, in comparison with edema (ED: n ? ~296/1461, 20%), enhanced (EN: n ? ~ 281/1461, 19%) and active‐tumor regions (TM: n ? ~254/1461, 17%). The necrosis regions (NC: ~?449/1461, 30%) had a higher number of highly robust features (CCC and DR?=?0.9) than edema (ED: ~?296/1461, 20%), enhanced (EN: ~?281/1461, 19%) and active‐tumor (TM: ~?254/1461, 17%) regions across all modalities. Furthermore, our results identified that the percentage of high reproducible features with ICC?= 0.9 after bias field correction (23.2%), and bias field correction followed by noise filtering (22.4%) were higher in contrast with noise smoothing and also noise smoothing follow by bias correction. These preliminary findings imply that preprocessing sequences can also have a significant impact on the robustness and reproducibility of mMRI‐based radiomics features and identification of generalizable and consistent preprocessing algorithms is a pivotal step before imposing radiomics biomarkers into the clinic for GBM patients.
机译:为了研究图像预处理的效果,就强度不均匀性校正和噪声滤波,在多模式MR图像(MMRI)中从胶质母细胞瘤(GBM)肿瘤中提取的鲁棒性和再现性。在本研究中,对于每位患者的患者1461,从MMRI(即,Flair,T1,T1C和T2)卷的GBM次区(即水肿,坏死,增强和肿瘤)提取,用于五种预处理组合的GBM次区(即水肿,坏死,增强和肿瘤)(总共116 ?880射频特征)。在四个比较下评估了辐射族特征的鲁棒性和再现性:(a)基线与改进的偏置场; (b)基线与修改的偏置字段,后跟噪声滤波; (c)基线与修改噪声,(d)基线与修改噪声遵循偏置场校正。使用一致性相关系数(CCC),动态范围(DR)和杂交相关系数(ICC)作为度量。形状特征和随后,局部二进制图案(LBP)滤波图像的图像非常稳定,并且对所有测量中的偏置场校正和噪声滤波进行高度稳定和再现。在所有MRI模式中,坏死区(NC:N?〜449 / 1461,30%)具有最高且高强度特征,与水肿相比,CCC和DR> = 0.9(ED:N?〜296/1461 ,20%),增强(EN:N?〜281/1461,19%)和有源肿瘤区域(TM:N?〜254/1461,17%)。坏死地区(NC:〜449/1461,30%)比水肿(ed:〜296/1461,20%),增强( EN:〜?281/1461,19%)和肿瘤(TM:〜254/1461,17%)各种方式。此外,我们的结果发现,在偏置场校正(23.2%)之后,ICC的高可再现功能的百分比(23.2%),并且噪声滤波(22.4%)与噪声平滑相比,噪声滤波更高,并且噪声平滑偏压校正遵循。这些初步发现意味着预处理序列也可能对MMRI基质的鲁棒性和再现性产生重大影响,并且识别概括和一致的预处理算法是在将辐射患者施加到诊所的诊所之前是枢轴步骤。

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