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应用工作流程整合了放射组学特征的可重复性和可调和性的变异性,应用于体数据集。

The application of a workflow integrating the variable reproducibility and harmonizability of radiomic features on a phantom dataset.

机构信息

The D-Lab, Department of Precision Medicine, GROW- School for Oncology, Maastricht University, Maastricht, The Netherlands.

Department of Radiology and Nuclear Medicine, Maastricht University Medical Centre+, Maastricht, The Netherlands.

出版信息

PLoS One. 2021 May 7;16(5):e0251147. doi: 10.1371/journal.pone.0251147. eCollection 2021.

Abstract

Radiomics-the high throughput extraction of quantitative features from medical images and their correlation with clinical and biological endpoints- is the subject of active and extensive research. Although the field shows promise, the generalizability of radiomic signatures is affected significantly by differences in scan acquisition and reconstruction settings. Previous studies reported on the sensitivity of radiomic features (RFs) to test-retest variability, inter-observer segmentation variability, and intra-scanner variability. A framework involving robust radiomics analysis and the application of a post-reconstruction feature harmonization method using ComBat was recently proposed to address these challenges. In this study, we investigated the reproducibility of RFs across different scanners and scanning parameters using this framework. We analysed thirteen scans of a ten-layer phantom that were acquired differently. Each layer was subdivided into sixteen regions of interest (ROIs), and the scans were compared in a pairwise manner, resulting in seventy-eight different scenarios. Ninety-one RFs were extracted from each ROI. As hypothesized, we demonstrate that the reproducibility of a given RF is not a constant but is dependent on the heterogeneity found in the data under analysis. The number (%) of reproducible RFs varied across the pairwise scenarios investigated, having a wide range between 8 (8.8%) and 78 (85.7%) RFs. Furthermore, in contrast to what has been previously reported, and as hypothesized in the robust radiomics analysis framework, our results demonstrate that ComBat cannot be applied to all RFs but rather on a percentage of those-the "ComBatable" RFs-which differed depending on the data being harmonized. The number (%) of reproducible RFs following ComBat harmonization varied across the pairwise scenarios investigated, ranging from 14 (15.4%) to 80 (87.9%) RFs, and was found to depend on the heterogeneity in the data. We conclude that the standardization of image acquisition protocols remains the cornerstone for improving the reproducibility of RFs, and the generalizability of the signatures developed. Our proposed approach helps identify the reproducible RFs across different datasets.

摘要

放射组学——从医学图像中提取定量特征及其与临床和生物学终点的相关性的高通量技术——是目前活跃且广泛研究的领域。尽管该领域具有很大的发展前景,但放射组学特征的可推广性受到扫描采集和重建设置差异的显著影响。以前的研究报告了放射组学特征(RFs)对测试-重测变异性、观察者间分割变异性和同机内变异性的敏感性。最近提出了一种涉及稳健放射组学分析和应用基于 ComBat 的后重建特征协调方法的框架,以解决这些挑战。在这项研究中,我们使用该框架研究了不同扫描仪和扫描参数下 RFs 的可重复性。我们分析了十层体模的 13 次扫描,这些扫描是在不同的条件下采集的。每层分为 16 个感兴趣区域(ROI),并以两两比较的方式对这些扫描进行比较,产生了 78 种不同的情况。从每个 ROI 提取了 91 个 RFs。正如假设的那样,我们证明了给定 RF 的可重复性不是一个常数,而是取决于所分析数据中的异质性。在所研究的成对情况下,可重复 RF 的数量(%)变化很大,范围从 8 个(8.8%)到 78 个(85.7%)RFs。此外,与之前的报告相反,并且与稳健放射组学分析框架中的假设一致,我们的结果表明,ComBat 不能应用于所有 RFs,而是应用于那些“可协调”RFs的一部分,这些 RFs因要协调的数据而异。在进行 ComBat 协调后,可重复 RF 的数量(%)在研究的成对情况下变化很大,范围从 14 个(15.4%)到 80 个(87.9%)RFs,并且发现该数量取决于数据的异质性。我们得出的结论是,图像采集协议的标准化仍然是提高 RFs 可重复性和特征可推广性的基石。我们提出的方法有助于确定不同数据集之间的可重复 RFs。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/555f/8104396/6c7f0f745f42/pone.0251147.g001.jpg

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