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Radiomics machine-learning signature for diagnosis of hepatocellular carcinoma in cirrhotic patients with indeterminate liver nodules

机译:循环机学习签名,用于肝硬化患者肝细胞癌不确定肝结节中的肝细胞癌

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摘要

Purpose To enhance clinician's decision-making by diagnosing hepatocellular carcinoma (HCC) in cirrhotic patients with indeterminate liver nodules using quantitative imaging features extracted from triphasic CT scans. Material and methods We retrospectively analyzed 178 cirrhotic patients from 27 institutions, with biopsy-proven liver nodules classified as indeterminate using the European Association for the Study of the Liver (EASL) guidelines. Patients were randomly assigned to a discovery cohort (142 patients (pts.)) and a validation cohort (36 pts.). Each liver nodule was segmented on each phase of triphasic CT scans, and 13,920 quantitative imaging features (12 sets of 1160 features each reflecting the phenotype at one single phase or its change between two phases) were extracted. Using machine-learning techniques, the signature was trained and calibrated (discovery cohort), and validated (validation cohort) to classify liver nodules as HCC vs. non-HCC. Effects of segmentation and contrast enhancement quality were also evaluated. Results Patients were predominantly male (88%) and CHILD A (65%). Biopsy was positive for HCC in 77% of patients. LI-RADS scores were not different between HCC and non-HCC patients. The signature included a single radiomics feature quantifying changes between arterial and portal venous phases: V-Delta-A(_)DWT1_LL_Variance-2D and reached area under the receiver operating characteristic curve (AUC) of 0.70 (95%CI 0.61-0.80) and 0.66 (95%CI 0.64-0.84) in discovery and validation cohorts, respectively. The signature was influenced neither by segmentation nor by contrast enhancement. Conclusion A signature using a single feature was validated in a multicenter retrospective cohort to diagnose HCC in cirrhotic patients with indeterminate liver nodules. Artificial intelligence could enhance clinicians' decision by identifying a subgroup of patients with high HCC risk.
机译:目的通过使用从TRIPHASIC CT扫描中提取的定量成像特征诊断肝硬化患者在肝硬化患者中诊断肝细胞癌(HCC)来增强临床医生的决策。材料和方法我们回顾性分析了来自27个机构的178名肝硬化患者,活组织检查证明肝脏结节使用欧洲肝脏(EASL)指南的研究不确定。患者被随机分配给发现队列(142名患者(PTS))和验证队列(36分。)。将每个肝脏结节分段在TRαCT扫描的每个阶段上,并提取13,920个定量成像特征(每次反射一个单相的12组1160个特征,或者在单个相时反射表型或其两相之间的变化)。使用机器学习技术,签名培训并校准(发现群组),并验证(验证队列)以将肝脏结节分类为HCC与非HCC。还评估了分割和对比增强质量的影响。结果患者主要是男性(88%)和儿童(65%)。 77%的患者中HCC是活组织检查。 HCC和非HCC患者之间的分数不差异。签名包括单个辐射术语特征量量量化动脉和门静脉阶段之间的变化:V-Δ-a(_)dwt1_ll_variance-2d和接收器操作特性曲线(auc)的达到区域为0.70(95%ci 0.61-0.80)和在发现和验证队列中,0.66(95%CI 0.64-0.84)分别。签名既不按照分割也不受到对比度增强。结论在多中心回顾性队列中验证了使用单一特征的签名,以诊断肝硬化患者的肝硬化患者HCC。人工智能可以通过鉴定高HCC风险的患者亚组来提高临床医生的决定。

著录项

  • 来源
    《European radiology》 |2020年第1期|共13页
  • 作者单位

    Rangueil Univ Hosp Radiol Dept Toulouse France;

    Columbia Univ New York Presbyterian Hosp Dept Radiol Vagelos Coll Phys &

    Surg New York NY;

    Rangueil Univ Hosp Radiol Dept Toulouse France;

    Rangueil Univ Hosp Radiol Dept Toulouse France;

    Purpan Univ Hosp Hepatol Dept Toulouse France;

    Columbia Univ New York Presbyterian Hosp Dept Radiol Vagelos Coll Phys &

    Surg New York NY;

    Columbia Univ New York Presbyterian Hosp Dept Radiol Vagelos Coll Phys &

    Surg New York NY;

    Univ Paris Saclay Serv Radiol Gustave Roussy Villejuif France;

    Columbia Univ Dept Med Div Hematol Oncol Med Ctr New York Presbyterian New York NY USA;

    Rangueil Univ Hosp Radiol Dept Toulouse France;

    Columbia Univ New York Presbyterian Hosp Dept Radiol Vagelos Coll Phys &

    Surg New York NY;

    Columbia Univ New York Presbyterian Hosp Dept Radiol Vagelos Coll Phys &

    Surg New York NY;

    Columbia Univ New York Presbyterian Hosp Dept Radiol Vagelos Coll Phys &

    Surg New York NY;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 放射医学;
  • 关键词

    Cirrhosis; Radiomics; Hepatocellular carcinoma;

    机译:肝硬化;辐射瘤;肝细胞癌;

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