Jun-hao Zha, Tian-yi Xia, Zhi-yuan Chen, Tian-ying Zheng, Shan Huang, Qian Yu, Jia-ying Zhou, Peng Cao, Yuan-cheng Wang, Tian-yu Tang, Yang Song, Jun Xu, Bin Song, Yu-pin Liu, Sheng-hong Ju
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Another data set (105) from Center 2 was collected for external testing. Radiomics scores were built with selected features from Deep learning-based (ResUNet) automated whole liver segmentations on MRI (T2FS and delayed enhanced-T1WI). The CoRC model incorporated radiomics scores and relevant clinical variables with logistic regression, comparing routine approaches. Diagnostic performance was evaluated by the area under the receiver operating characteristic curve (AUC). The additive value of the CoRC model to TE-LSM was investigated, considering necroinflammation. The CoRC model achieved AUCs of 0.79 (0.70, 0.86), 0.82 (0.73, 0.89), and 0.81 (0.72-0.91), outperformed FIB-4, APRI (all <i>p</i> < 0.05) in the internal, temporal, and external test sets and maintained the discriminatory power in G0-1 subgroups (AUCs range, 0.85–0.86; all <i>p</i> < 0.05). The AUCs of joint CoRC-LSM model were 0.86 (0.79–0.94), and 0.81 (0.72–0.90) in the internal and temporal sets (<i>p</i> = 0.01). 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引用次数: 0
摘要
建立可靠的无创工具来精确诊断临床上严重的肝纤维化(SF,≥F2)仍是一项尚未满足的需求。我们的目标是建立一个放射线组学-门诊(CoRC)联合模型,用于分流 SF,并探索 CoRC 模型对基于瞬态弹性成像的肝脏硬度测量(FibroScan,TE-LSM)的附加值。这项回顾性研究在2015年1月至2021年12月期间在两个中心招募了595名经活检证实的肝纤维化患者。在第一中心,2018 年 12 月之前的患者被随机分成训练集(276 例)和内部测试集(118 例),剩余的作为时间测试集(96 例),与时间无关。另一个数据集(105)来自中心 2,用于外部测试。放射组学评分是从基于深度学习(ResUNet)的自动全肝磁共振成像(T2FS和延迟增强-T1WI)分割中选取的特征建立的。CoRC 模型将放射组学评分和相关临床变量纳入逻辑回归,并对常规方法进行了比较。诊断性能通过接收者工作特征曲线下面积(AUC)进行评估。考虑到坏死性炎症,研究了 CoRC 模型对 TE-LSM 的附加值。CoRC 模型的 AUC 值分别为 0.79 (0.70, 0.86)、0.82 (0.73, 0.89) 和 0.81 (0.72-0.91),优于 FIB-4、APRI(所有 P
Fully automated hybrid approach on conventional MRI for triaging clinically significant liver fibrosis: A multi-center cohort study
Establishing reliable noninvasive tools to precisely diagnose clinically significant liver fibrosis (SF, ≥F2) remains an unmet need. We aimed to build a combined radiomics-clinic (CoRC) model for triaging SF and explore the additive value of the CoRC model to transient elastography-based liver stiffness measurement (FibroScan, TE-LSM). This retrospective study recruited 595 patients with biopsy-proven liver fibrosis at two centers between January 2015 and December 2021. At Center 1, the patients before December 2018 were randomly split into training (276) and internal test (118) sets, the remaining were time-independent as a temporal test set (96). Another data set (105) from Center 2 was collected for external testing. Radiomics scores were built with selected features from Deep learning-based (ResUNet) automated whole liver segmentations on MRI (T2FS and delayed enhanced-T1WI). The CoRC model incorporated radiomics scores and relevant clinical variables with logistic regression, comparing routine approaches. Diagnostic performance was evaluated by the area under the receiver operating characteristic curve (AUC). The additive value of the CoRC model to TE-LSM was investigated, considering necroinflammation. The CoRC model achieved AUCs of 0.79 (0.70, 0.86), 0.82 (0.73, 0.89), and 0.81 (0.72-0.91), outperformed FIB-4, APRI (all p < 0.05) in the internal, temporal, and external test sets and maintained the discriminatory power in G0-1 subgroups (AUCs range, 0.85–0.86; all p < 0.05). The AUCs of joint CoRC-LSM model were 0.86 (0.79–0.94), and 0.81 (0.72–0.90) in the internal and temporal sets (p = 0.01). The CoRC model was useful for triaging SF, and may add value to TE-LSM.
期刊介绍:
The Journal of Medical Virology focuses on publishing original scientific papers on both basic and applied research related to viruses that affect humans. The journal publishes reports covering a wide range of topics, including the characterization, diagnosis, epidemiology, immunology, and pathogenesis of human virus infections. It also includes studies on virus morphology, genetics, replication, and interactions with host cells.
The intended readership of the journal includes virologists, microbiologists, immunologists, infectious disease specialists, diagnostic laboratory technologists, epidemiologists, hematologists, and cell biologists.
The Journal of Medical Virology is indexed and abstracted in various databases, including Abstracts in Anthropology (Sage), CABI, AgBiotech News & Information, National Agricultural Library, Biological Abstracts, Embase, Global Health, Web of Science, Veterinary Bulletin, and others.