Coada Camelia Alexandra, Santoro Miriam, Zybin Vladislav, Di Stanislao Marco, Paolani Giulia, Modolon Cecilia, Di Costanzo Stella, Genovesi Lucia, Tesei Marco, De Leo Antonio, Ravegnini Gloria, De Biase Dario, Morganti Alessio Giuseppe, Lovato Luigi, De Iaco Pierandrea, Strigari Lidia, Perrone Anna Myriam
Department of Medical and Surgical Sciences, University of Bologna, 40126 Bologna, Italy.
Department of Medical Physics, IRCCS Azienda Ospedaliero-Universitaria di Bologna, 40138 Bologna, Italy.
Cancers (Basel). 2023 Sep 13;15(18):4534. doi: 10.3390/cancers15184534.
Current prognostic models lack the use of pre-operative CT images to predict recurrence in endometrial cancer (EC) patients. Our study aimed to investigate the potential of radiomic features extracted from pre-surgical CT scans to accurately predict disease-free survival (DFS) among EC patients.
Contrast-Enhanced CT (CE-CT) scans from 81 EC cases were used to extract the radiomic features from semi-automatically contoured volumes of interest. We employed a 10-fold cross-validation approach with a 6:4 training to test set and utilized data augmentation and balancing techniques. Univariate analysis was applied for feature reduction leading to the development of three distinct machine learning (ML) models for the prediction of DFS: LASSO-Cox, CoxBoost and Random Forest (RFsrc).
In the training set, the ML models demonstrated AUCs ranging from 0.92 to 0.93, sensitivities from 0.96 to 1.00 and specificities from 0.77 to 0.89. In the test set, AUCs ranged from 0.86 to 0.90, sensitivities from 0.89 to 1.00 and specificities from 0.73 to 0.90. Patients classified as having a high recurrence risk prediction by ML models exhibited significantly worse DSF (-value < 0.001) across all models.
Our findings demonstrate the potential of radiomics in predicting EC recurrence. While further validation studies are needed, our results underscore the promising role of radiomics in forecasting EC outcomes.
目前的预后模型未利用术前CT图像来预测子宫内膜癌(EC)患者的复发情况。我们的研究旨在探讨从术前CT扫描中提取的影像组学特征准确预测EC患者无病生存期(DFS)的潜力。
使用81例EC患者的对比增强CT(CE-CT)扫描,从半自动勾勒的感兴趣体积中提取影像组学特征。我们采用10折交叉验证方法,以6:4的比例划分训练集和测试集,并运用数据增强和平衡技术。应用单变量分析进行特征约简,从而开发出三种不同的机器学习(ML)模型来预测DFS:套索-考克斯模型、考克斯提升模型和随机森林(RFsrc)模型。
在训练集中,ML模型的曲线下面积(AUC)范围为0.92至0.93,灵敏度为0.96至1.00,特异度为0.77至0.89。在测试集中,AUC范围为0.86至0.90,灵敏度为0.89至1.00,特异度为0.73至0.90。所有模型中,被ML模型分类为具有高复发风险预测的患者显示出明显更差的无病生存期(P值<0.001)。
我们的研究结果证明了影像组学在预测EC复发方面的潜力。虽然需要进一步的验证研究,但我们的结果强调了影像组学在预测EC预后方面的前景作用。