利用核磁共振成像放射组学、年龄和性别评估肝细胞腺瘤亚型分类的多变量模型

Guillaume Declaux , Baudouin Denis de Senneville , Hervé Trillaud , Paulette Bioulac-Sage , Charles Balabaud , Jean-Frédéric Blanc , Laurent Facq , Nora Frulio
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引用次数: 0

摘要

目的肝细胞腺瘤(HCA)的非侵袭性亚型分型对于几种亚型来说仍然具有挑战性,因此会带来不同程度的风险和管理。本研究的目的是根据基本临床特征(年龄和性别)结合 MRI 放射线组学设计一个多变量诊断模型,并评估其诊断性能。方法这项单中心回顾性病例对照研究纳入了我院 2003 年 1 月至 2018 年 4 月病理数据库中所有通过 MRI 检查(T2、T1-无注射/注射-动脉-门静脉)确定的连续 HCA 患者;人工划定腺瘤中感兴趣的体积,并提取 38 个纹理特征(LIFEx,v5.10)。对定性分析(即核磁共振成像上的肉眼观察)和自动分析(计算机辅助)进行了比较。使用交叉验证的随机森林算法评估了基于基本临床特征(年龄和性别)与 MRI 放射组学(肿瘤体积和纹理特征)的多变量诊断模型的预后评分。结果通过可视化 MR 分析,HCA 亚组的均衡准确率分别为 80.8%(I-HCA 或 ß-I-HCA,两者无法区分)、81.8%(H-HCA)和 74.4%(sh-HCA 或 ß-HCA 也无法区分)。使用包括年龄、性别、体积和质地变量在内的模型预测 HCA 亚组(多变量分类)的平均均衡准确率为 58.6%,最佳=73.8%(sh-HCA)和 71.9%(ß-HCA)。结论使用机器学习算法(包括两个临床特征,即年龄和性别)并结合核磁共振成像放射组学,可以改善多重 HCA 亚型的诊断。未来对更多患者进行的 HCA 研究将进一步检验该模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessment of a multivariable model using MRI-radiomics, age and sex for the classification of hepatocellular adenoma subtypes

Objectives

Non-invasive subtyping of hepatocellular adenomas (HCA) remains challenging for several subtypes, thus carrying different levels of risks and management. The goal of this study is to devise a multivariable diagnostic model based on basic clinical features (age and sex) combined with MRI-radiomics and to evaluate its diagnostic performance.

Methods

This single-center retrospective case-control study included all consecutive patients with HCA identified within the pathological database from our institution from January 2003 to April 2018 with MRI examination (T2, T1-no injection/injection-arterial-portal); volumes of interest were manually delineated in adenomas and 38 textural features were extracted (LIFEx, v5.10). Qualitative (i.e., visual on MRI) and automatic (computer-assisted) analysis were compared. The prognostic scores of a multivariable diagnostic model based on basic clinical features (age and sex) combined with MRI-radiomics (tumor volume and texture features) were assessed using a cross-validated Random Forest algorithm.

Results

Via visual MR-analysis, HCA subgroups could be classified with balanced accuracies of 80.8 % (I-HCA or ß-I-HCA, the two being indistinguishable), 81.8 % (H-HCA) and 74.4 % (sh-HCA or ß-HCA also indistinguishable). Using a model including age, sex, volume and texture variables, HCA subgroups were predicted (multivariate classification) with an averaged balanced accuracy of 58.6 %, best=73.8 % (sh-HCA) and 71.9 % (ß-HCA). I-HCA and ß-I-HCA could be also distinguished (binary classification) with a balanced accuracy of 73 %.

Conclusion

Multiple HCA subtyping could be improved using machine-learning algorithms including two clinical features, i.e., age and sex, combined with MRI-radiomics. Future HCA studies enrolling more patients will further test the validity of the model.

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