夏婷,王明亮,易宗键,董梦艺,黄佳,梁长虹,刘再毅.基于增强CT影像组学模型术前预测胰腺神经内分泌肿瘤病理分级[J].中国医学影像技术,2021,37(3):396~400
基于增强CT影像组学模型术前预测胰腺神经内分泌肿瘤病理分级
Preoperative prediction of pathological grade of pancreatic neuroendocrine tumors based on contrast-enhanced CT radiomics model
投稿时间:2020-10-26  修订日期:2021-03-15
DOI:10.13929/j.issn.1003-3289.2021.03.020
中文关键词:  胰腺  神经内分泌肿瘤  影像组学  体层摄影术,X线计算机
英文关键词:pancreas  neuroendocrine tumors  radiomics  tomography, X-ray computed
基金项目:国家重点研发计划(2017YFC1309100、2017YFC1309102、2017YFC1309104)、国家杰出青年科学基金(81925023)、国家自然科学基金面上项目(81771912)。
作者单位E-mail
夏婷 华南理工大学医学院, 广东 广州 510006
广东省人民医院(广东省医学科学院) 放射科, 广东 广州 510080 
 
王明亮 复旦大学附属中山医院放射科, 上海 200032  
易宗键 华南理工大学生物医学科学与工程学院, 广东 广州 510006  
董梦艺 广东省人民医院(广东省医学科学院) 放射科, 广东 广州 510080  
黄佳 广东省人民医院(广东省医学科学院) 放射科, 广东 广州 510080  
梁长虹 广东省人民医院(广东省医学科学院) 放射科, 广东 广州 510080  
刘再毅 华南理工大学医学院, 广东 广州 510006
广东省人民医院(广东省医学科学院) 放射科, 广东 广州 510080 
zyliu@163.com 
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中文摘要:
      目的 观察基于CT影像组学模型术前预测胰腺神经内分泌肿瘤(PNET)病理分级(G1和G2/3级)的价值。方法 回顾性分析145例经病理证实的PNET,分为训练组91例、验证组54例,2组各自来源于同一医疗机构。基于训练组动脉期和门脉期CT图像提取PNET影像组学特征,以Pearson相关分析及ReliefF算法进行筛选;采用Logistic回归,针对差异有统计学意义的参数构建预测PNET病理分级的联合影像组学模型,绘制受试者工作特征(ROC)曲线,计算曲线下面积(AUC),以敏感度、特异度及准确率评估其诊断效能,并以验证组加以验证。结果 基于训练组动脉期与门脉期CT图像构建的联合影像组学模型具有良好预测效能,AUC为0.86[95% CI(0.78,0.94)],截断值为0.63时,敏感度为78.95%,特异度为85.29%,准确率为81.32%。验证组预测PNET病理分级AUC为0.85[95% CI(0.75,0.95)],截断值为0.63时,敏感度为84.61%,特异度为75.00%,准确率为79.63%。结论 基于增强CT图像构建的影像组学模型对于术前预测PNET病理分级具有一定价值。
英文摘要:
      Objective To explore the value of CT radiomics model for preoperative predicting pathological grade (G1 and G2/3) of pancreatic neuroendocrine tumors (PNET). Methods A total of 145 patients with pathologically confirmed PNET were included,including 91 in training group and 54 in validation group,in each group coming from one same hospital. Radiomics features of PNET were extracted based on arterial phase and portal venous phase CT images in training group. Pearson correlation analysis and ReliefF algorithm were used to select radiomics features, and Logistic regression was used to construct radiomics model for predicting pathological grade of PNET. Then receiver operating characteristic (ROC) curve was drawn, and the diagnostic performance of model was evaluated with area under the curve (AUC), accuracy, sensitivity and specificity, and were validated in validation group. Results The combined radiomics model based on arterial phase and portal venous phase CT image achieved good prediction performances. In training group, the AUC was 0.86 (95%CI), the intercept value was 0.63, the sensitivity, specificity and accuracy was 78.95%, 85.29% and 81.32%, respectively. In the validation group, the AUC was 0.85 (95%CI), the intercept value was 0.63, the sensitivity, specificity and accuracy was 84.61%, 75.00% and 79.63%, respectively. Conclusion The radiomics model based on contrast-enhanced CT images had certain value for preoperative prediction of pathological grade of PNET.
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