Jennifer Gotta, Leon D Gruenewald, Philipp Reschke, Christian Booz, Scherwin Mahmoudi, Bram Stieltjes, Moon Hyung Choi, Tommaso D'Angelo, Simon Bernatz, Thomas J Vogl, Ralph Sinkus, Robert Grimm, Ralph Strecker, Sebastian Haberkorn, Vitali Koch
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引用次数: 0
摘要
鉴于代谢综合征的全球患病率不断上升,本研究旨在评估mri衍生放射组学在无创纤维化分级中的潜力。该研究纳入了79名前瞻性参与者,他们在2022年11月至2023年9月期间因已知或疑似肝脏疾病接受了MRE。其中48例经组织病理学确诊为肝纤维化。每例患者共提取107个放射学特征。然后将数据集分为训练集和测试集,用于模型开发和验证。采用逐步特征约简来识别最相关的特征,随后用于训练梯度增强树模型。梯度增强树模型在具有确定的放射学特征的训练队列上进行训练以区分纤维化等级,表现出良好的性能,AUC值在0.997至0.998之间。在24例患者的独立测试队列中,放射组学模型显示的AUC值范围为0.617至0.830,将纤维化分级为2级的AUC最高为0.830 (95% CI 0.52 -0.830)。加入ADC值并没有提高模型的性能。总之,我们的研究强调了在MRI图像上使用放射组学分析进行无创肝纤维化分期的重要前景。该方法提供了对组织特征和模式的有价值的见解,可以通过非专用MRI扫描进行回顾性肝纤维化严重程度评估。
Noninvasive Grading of Liver Fibrosis Based on Texture Analysis From MRI-Derived Radiomics.
Given the increasing global prevalence of metabolic syndrome, this study aimed to assess the potential of MRI-derived radiomics in noninvasively grading fibrosis. The study included 79 prospectively enrolled participants who had undergone MRE due to known or suspected liver disease between November 2022 and September 2023. Among them, 48 patients were diagnosed with histopathologically confirmed liver fibrosis. A total of 107 radiomic features per patient were extracted from MRI imaging. The dataset was then divided into training and test sets for model development and validation. Stepwise feature reduction was employed to identify the most relevant features and subsequently used to train a gradient-boosted tree model. The gradient-boosted tree model, trained on the training cohort with identified radiomic features to differentiate fibrosis grades, exhibited good performances, achieving AUC values from 0.997 to 0.998. In the independent test cohort of 24 patients, the radiomics model demonstrated AUC values ranging from 0.617 to 0.830, with the highest AUC of 0.830 (95% CI 0.520-0.830) for classifying fibrosis grade 2. Incorporating ADC values did not improve the model's performance. In conclusion, our study emphasizes the significant promise of using radiomics analysis on MRI images for noninvasively staging liver fibrosis. This method provides valuable insights into tissue characteristics and patterns, enabling a retrospective liver fibrosis severity assessment from nondedicated MRI scans.
期刊介绍:
NMR in Biomedicine is a journal devoted to the publication of original full-length papers, rapid communications and review articles describing the development of magnetic resonance spectroscopy or imaging methods or their use to investigate physiological, biochemical, biophysical or medical problems. Topics for submitted papers should be in one of the following general categories: (a) development of methods and instrumentation for MR of biological systems; (b) studies of normal or diseased organs, tissues or cells; (c) diagnosis or treatment of disease. Reports may cover work on patients or healthy human subjects, in vivo animal experiments, studies of isolated organs or cultured cells, analysis of tissue extracts, NMR theory, experimental techniques, or instrumentation.