Morshid Ali, Elsayes Khaled M, Khalaf Ahmed M, Elmohr Mohab M, Yu Justin, Kaseb Ahmed O, Hassan Manal, Mahvash Armeen, Wang Zhihui, Hazle John D, Fuentes David
Departments of Imaging Physics, The University of Texas MD Anderson Cancer Center, Houston, TX 77030, USA.
Departments of Diagnostic Radiology, The University of Texas MD Anderson Cancer Center, Houston, TX 77030, USA.
Radiol Artif Intell. 2019 Sep;1(5). doi: 10.1148/ryai.2019180021. Epub 2019 Sep 25.
Some patients with hepatocellular carcinoma (HCC) are more likely to experience disease progression despite transcatheter arterial chemoembolization (TACE) treatment, and thus would benefit from early switching to other therapeutic regimens. We sought to evaluate a fully automated machine learning algorithm that uses pre-therapeutic quantitative computed tomography (CT) image features and clinical factors to predict HCC response to TACE.
Outcome information from 105 patients receiving first-line treatment with TACE was evaluated retrospectively. The primary clinical endpoint was time to progression (TTP) based on follow-up CT radiological criteria (mRECIST). A 14-week cutoff was used to classify patients as TACE-susceptible (TTP ≥14 weeks) or TACE-refractory (TTP <14 weeks). Response to TACE was predicted using a random forest classifier with the Barcelona Clinic Liver Cancer (BCLC) stage and quantitative image features as input as well as the BCLC stage alone as a control.
The model's response prediction accuracy rate was 74.2% (95% CI=64%-82%) using a combination of the BCLC stage plus quantitative image features versus 62.9% (95% CI= 52%-72%) using the BCLC stage alone. Shape image features of the tumor and background liver were the dominant features correlated to the TTP as selected by the Boruta method and were used to predict the outcome.
This preliminary study demonstrates that quantitative image features obtained prior to therapy can improve the accuracy of predicting response of HCC to TACE. This approach is likely to provide useful information for aiding HCC patient selection for TACE.
一些肝细胞癌(HCC)患者尽管接受了经动脉化疗栓塞术(TACE)治疗,但仍更有可能出现疾病进展,因此早期改用其他治疗方案会使他们受益。我们试图评估一种全自动机器学习算法,该算法利用治疗前的定量计算机断层扫描(CT)图像特征和临床因素来预测HCC对TACE的反应。
回顾性评估了105例接受TACE一线治疗患者的结局信息。主要临床终点是基于随访CT放射学标准(mRECIST)的疾病进展时间(TTP)。采用14周的临界值将患者分为TACE敏感型(TTP≥14周)或TACE难治型(TTP<14周)。使用随机森林分类器预测对TACE的反应,将巴塞罗那临床肝癌(BCLC)分期和定量图像特征作为输入,同时将单独的BCLC分期作为对照。
使用BCLC分期加定量图像特征组合时,模型的反应预测准确率为74.2%(95%CI=64%-82%),而仅使用BCLC分期时为62.9%(95%CI=52%-72%)。肿瘤和肝脏背景的形状图像特征是通过Boruta方法选择出的与TTP相关的主要特征,并用于预测结局。
这项初步研究表明,治疗前获得的定量图像特征可以提高预测HCC对TACE反应的准确性。这种方法可能为辅助选择适合TACE治疗的HCC患者提供有用信息。