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首页> 外文期刊>EBioMedicine >Optimal co-clinical radiomics: Sensitivity of radiomic features to tumour volume, image noise and resolution in co-clinical T1-weighted and T2-weighted magnetic resonance imaging
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Optimal co-clinical radiomics: Sensitivity of radiomic features to tumour volume, image noise and resolution in co-clinical T1-weighted and T2-weighted magnetic resonance imaging

机译:优化共临床辐射族:辐射特征对肿瘤体积的敏感性,在共临床T1加权和T2加权磁共振成像中的图像噪声和分辨率

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Background Radiomics analyses has been proposed to interrogate the biology of tumour as well as to predict/assess response to therapy in vivo . The objective of this work was to assess the sensitivity of radiomics features to noise, resolution, and tumour volume in the context of a co-clinical trial. Methods Triple negative breast cancer (TNBC) patients were recruited into an ongoing co-clinical imaging trial. Sub-typed matched TNBC patient-derived tumour xenografts (PDX) were generated to investigate optimal co-clinical MR radiomic features. The MR imaging protocol included T1-weighed and T2-weighted imaging. To test the sensitivity of radiomics to resolution, PDX were imaged at three different resolutions. Multiple sets of images with varying signal-to-noise ratio (SNR) were generated, and an image independent patch-based method was implemented to measure the noise levels. Forty-eight radiomic features were extracted from manually segmented 2D and 3D segmented tumours and normal tissues of T1- and T2- weighted co-clinical MR images. Findings Sixteen radiomics features were identified as volume dependent and corrected for volume-dependency following normalization. Features from grey-level run-length matrix (GLRLM), grey-level size zone matrix (GLSZM) were identified as most sensitive to noise. Radiomic features Kurtosis and Run-length variance (RLV) from GLSZM were most sensitive to changes in resolution in both T1w and T2w MRI. In general, 3D radiomic features were more robust compared to 2D (single slice) measures, although the former exhibited higher variability between subjects. Interpretation Tumour volume, noise characteristics, and image resolution significantly impact radiomic analysis in co-clinical studies.
机译:已经提出了背景辐射瘤分析来询问肿瘤的生物学以及预测/评估体内治疗的反应。这项工作的目的是在共临床试验的背景下评估辐射瘤特征对噪声,分辨率和肿瘤体积的敏感性。方法将三重阴性乳腺癌(TNBC)患者招募到持续的共同临床影像学试验中。产生亚型匹配的TNBC患者衍生的肿瘤异种移植物(PDX)以研究最佳共临床MR射出物特征。 MR成像协议包括T1称重和T2加权成像。为了测试射出物的敏感性,在分辨率下,PDX在三种不同的分辨率下成像。生成多组具有不同信噪比(SNR)的图像,并实现了一种基于图像独立的补丁方法来测量噪声水平。从手动分段的2D和3D分段肿瘤和T1-和T2-加权共临床MR图像的正常组织中提取了四十八个射粒特征。调查结果十六个辐射瘤特征被鉴定为依赖于体积并校正标准化后体积依赖性。灰级运行长度矩阵(GLRLM),灰度尺寸Zone矩阵(GLSZM)的特点被识别为对噪声最敏感。来自GLSZM的kurtosis和流量长度差异(RLV)对T1W和T2W MRI的分辨率变化最敏感。通常,与2D(单片)测量相比,3D射线特征更加稳健,尽管前者在受试者之间表现出更高的可变性。解释肿瘤体积,噪声特性和图像分辨率显着影响共临床研究的射系分析。

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