舒尼替尼
接收机工作特性
医学
神经内分泌肿瘤
置信区间
放射科
无线电技术
曲线下面积
实体瘤疗效评价标准
胰腺神经内分泌肿瘤
内科学
肿瘤科
核医学
癌症
化疗
进行性疾病
作者
Luohai Chen,Wei Wang,Kaizhou Jin,Bing Yuan,Huangying Tan,Jian Sun,Yu Guo,Yanji Luo,Shi‐Ting Feng,Xianjun Yu,Minhu Chen,Jie Chen
摘要
Abstract Clinically effective methods to predict the efficacy of sunitinib, for patients with metastatic or locally advanced pancreatic neuroendocrine tumors (panNET) are scarce, making precision treatment difficult. This study aimed to develop and validate a computed tomography (CT)‐based method to predict the efficacy of sunitinib in patients with panNET. Pretreatment CT images of 171 lesions from 38 patients with panNET were included. CT value ratio (CT value of tumor/CT value of abdominal aorta from the same patient) and radiomics features were extracted for model development. Receiver operating curve (ROC) with area under the curve (AUC) and decision curve analysis (DCA) were used to evaluate the proposed model. Tumor shrinkage of >10% at first follow‐up after sunitinib treatment was significantly associated with longer progression‐free survival (PFS; P < .001) and was used as the major treatment outcome. The CT value ratio could predict tumor shrinkage with AUC of 0.759 (95% confidence interval [CI], 0.685‐0.833). We then developed a radiomics signature, which showed significantly higher AUC in training (0.915; 95% CI, 0.866‐0.964) and validation (0.770; 95% CI, 0.584‐0.956) sets than CT value ratio. DCA also confirmed the clinical utility of the model. Subgroup analysis showed that this radiomics signature had a high accuracy in predicting tumor shrinkage both for primary and metastatic tumors, and for treatment‐naive and pretreated tumors. Survival analysis showed that radiomics signature correlated with PFS ( P = .020). The proposed radiomics‐based model accurately predicted tumor shrinkage and PFS in patients with panNET receiving sunitinib and may help select patients suitable for sunitinib treatment.
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