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Utility of Radiomic Features in Predicting Clinical Outcomes in Stage II-III Pancreatic Cancer.

JOURNAL OF CLINICAL ONCOLOGY(2024)

Mayo Clin | Stanford Univ | Univ Texas MD Anderson Canc Ctr | Univ Michigan | Stanford University School of Medicine | Stanford University | University of Michigan | Department of Medicine

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Abstract
74 Background: We identified computed tomography (CT)-derived radiomic features predictive of tumor progression within three months, then examined their ability to prognosticate overall survival (OS) along with clinical features in pancreatic cancer. We evaluated these features in patients with unresected pancreatic cancer who underwent stereotactic body radiation therapy (SBRT) in sequence with chemotherapy, but not surgery. Methods: In this retrospective study, we examined a cohort of 101 patients with stage II-III pancreatic cancer who underwent SBRT with sequential chemotherapy at a single institution (Stanford Health Care) between 1999-2020. From their pre-SBRT contrast-enhanced CT images with segmented tumors, delineating regions-of-interest, we extracted 900 radiomic (quantitative pixel-level imaging characteristic) features. In the first phase, we identified radiomic features that predicted rapid tumor progression within three months following SBRT. We divided the dataset into a training set (n = 53) for model development and a test set (n = 48) for evaluation. Using logistic regression with the Least Absolute Shrinkage and Selection Operator algorithm for feature selection and classification, we built a binary prediction model on the training set to identify patients at risk of progression within three months of SBRT. To fine-tune parameters, we performed five-fold cross-validation (CV) on the training set, repeating each set of parameters five times. We assessed model performance on the test set using the area under the curve (AUC). We selected the model with the best AUC, generating the predictive radiomic feature set. In the second phase, we conducted univariate and multivariate Cox regression analyses to assess the relationship between OS and individual clinical variables (age, sex, stage, vessel involvement, tumor location, performance status, body mass index, biological equivalent dose of radiation) and the radiomic feature set as high versus low risk. Results: Our cohort consisted of 48 men (mean age, 70 years ± 11 [SD]) and 53 women (mean age, 67 years ± 13 [SD]). From the first phase, 32 textural features comprised the radiomic feature set that best predicted rapid tumor progression, with mean AUCs of 0.852 (CV, n=53) and 0.814 (test, n=48). In the univariate Cox model, only the radiomic feature set was predictive of OS (hazard ratio, HR, 1.724, p=0.011). In the multivariate Cox model, radiomic features and age were significant predictors of OS, with HR of 1.819 (p=0.007) and 1.024 (p=0.024), respectively. Conclusions: CT-derived radiomic features predict rapid tumor progression following SBRT, confer nearly a twofold increase in mortality risk, and, along with patient age, enhance the identification of patients with stage II-III pancreatic cancer with poor OS. [Table: see text]
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要点】:该研究通过分析胰腺癌患者的CT影像放射组学特征,预测了肿瘤在立体定向体部放射治疗(SBRT)后三个月内的快速进展,并探讨了这些特征对总体生存期(OS)的预后价值。

方法】:研究采用逻辑回归和最小绝对收缩选择算子(Lasso)算法进行特征选择和分类,构建了二元预测模型,并在训练集上进行了五折交叉验证以优化模型参数。

实验】:研究回顾性分析了101例在斯坦福健康护理机构接受SBRT和化疗序列治疗的II-III期胰腺癌患者,从患者术前增强CT图像中提取了900个放射组学特征,并在测试集上评估了模型性能,最终确定了32个与肿瘤快速进展相关的特征。结果显示,放射组学特征集对总体生存期有显著预测作用,与患者年龄共同构成了预后不良的重要指标。