Su Li-Ya, Xu Ming, Chen Yan-Lin, Lin Man-Xia, Xie Xiao-Yan
Department of Medical Ultrasound, The First Affiliated Hospital, Institute of Diagnostic and Interventional Ultrasound, Sun Yat-Sen University, Guangzhou 510000, Guangdong Province, China.
World J Radiol. 2024 Jul 28;16(7):247-255. doi: 10.4329/wjr.v16.i7.247.
Hepatocellular carcinoma (HCC) and intrahepatic cholangiocarcinoma (ICC) represent the predominant histological types of primary liver cancer, comprising over 99% of cases. Given their differing biological behaviors, prognoses, and treatment strategies, accurately differentiating between HCC and ICC is crucial for effective clinical management. Radiomics, an emerging image processing technology, can automatically extract various quantitative image features that may elude the human eye. Reports on the application of ultrasound (US)-based radiomics methods in distinguishing HCC from ICC are limited.
To develop and validate an ultrasomics model to accurately differentiate between HCC and ICC.
In our retrospective study, we included a total of 280 patients who were diagnosed with ICC ( = 140) and HCC ( = 140) between 1999 and 2019. These patients were divided into training ( = 224) and testing ( = 56) groups for analysis. US images and relevant clinical characteristics were collected. We utilized the XGBoost method to extract and select radiomics features and further employed a random forest algorithm to establish ultrasomics models. We compared the diagnostic performances of these ultrasomics models with that of radiologists.
Four distinct ultrasomics models were constructed, with the number of selected features varying between models: 13 features for the US model; 15 for the contrast-enhanced ultrasound (CEUS) model; 13 for the combined US + CEUS model; and 21 for the US + CEUS + clinical data model. The US + CEUS + clinical data model yielded the highest area under the receiver operating characteristic curve (AUC) among all models, achieving an AUC of 0.973 in the validation cohort and 0.971 in the test cohort. This performance exceeded even the most experienced radiologist (AUC = 0.964). The AUC for the US + CEUS model (training cohort AUC = 0.964, test cohort AUC = 0.955) was significantly higher than that of the US model alone (training cohort AUC = 0.822, test cohort AUC = 0.816). This finding underscored the significant benefit of incorporating CEUS information in accurately distinguishing ICC from HCC.
We developed a radiomics diagnostic model based on CEUS images capable of quickly distinguishing HCC from ICC, which outperformed experienced radiologists.
肝细胞癌(HCC)和肝内胆管癌(ICC)是原发性肝癌的主要组织学类型,占病例总数的99%以上。鉴于它们不同的生物学行为、预后和治疗策略,准确区分HCC和ICC对于有效的临床管理至关重要。放射组学是一种新兴的图像处理技术,能够自动提取各种可能被肉眼忽略的定量图像特征。关于基于超声(US)的放射组学方法在区分HCC和ICC中的应用报道有限。
开发并验证一种能准确区分HCC和ICC的超声组学模型。
在我们的回顾性研究中,纳入了1999年至2019年间共280例被诊断为ICC(n = 140)和HCC(n = 140)的患者。这些患者被分为训练组(n = 224)和测试组(n = 56)进行分析。收集了US图像和相关临床特征。我们利用XGBoost方法提取和选择放射组学特征,并进一步采用随机森林算法建立超声组学模型。我们将这些超声组学模型的诊断性能与放射科医生的诊断性能进行了比较。
构建了四个不同的超声组学模型,各模型所选特征数量不同:US模型为13个特征;对比增强超声(CEUS)模型为15个;联合US + CEUS模型为13个;US + CEUS +临床数据模型为21个。在所有模型中,US + CEUS +临床数据模型在受试者工作特征曲线下面积(AUC)最高,在验证队列中AUC为0.973,在测试队列中为0.971。这一表现甚至超过了最有经验的放射科医生(AUC = 0.964)。US + CEUS模型的AUC(训练队列AUC = 0.964,测试队列AUC = 0.955)显著高于单独的US模型(训练队列AUC = 0.822,测试队列AUC = 0.816)。这一发现强调了纳入CEUS信息在准确区分ICC和HCC方面的显著益处。
我们开发了一种基于CEUS图像的放射组学诊断模型,能够快速区分HCC和ICC,其性能优于经验丰富的放射科医生。