Fu Ma, Qi Han, Zhu Suyue, Gao Yan, Li Yanlin, Wu Jian, Zhu Dongsheng
Department of neonatology, Lianyungang Maternal and Child Health Care Hospital, Lianyungang, China.
Department of Emergency Surgery, The Second People's Hospital of Lianyungang, Affiliated to Kangda College of Nanjing Medical University, Lianyungang, China.
Sci Rep. 2025 May 6;15(1):15844. doi: 10.1038/s41598-025-99610-8.
To construct a computed tomography (CT) based radiomics signature and assess its performance in predicting vascular endothelial growth factor (VEGF) expression in pediatric patients with nephroblastoma. A total of 73 pediatric nephroblastomaL patients were enrolled (51 in the training cohort and 22 in the test cohort). The region of interest manually marked on the CT images served as the basis for the automatic extraction of radiomics features. A radiomics score was generated utilizing the radiomics signature based formula after retaining a subset of radiomics features to create a radiomics signature. Clinical elements, such as clinicopathological information and CT imaging characteristics, were used to create a clinical model. With the inclusion of a radiomics signature and clinical characteristics, a composite nomogram was created. Decision curve analysis (DCA) was used to evaluate the prediction performance. 5 carefully chosen radiomics features were used to create the radiomics signature. Next, the radiomics score was determined. In the training cohort and the test cohort, the logistic regression model's area under the curve was 0.761 and 0.791, respectively. Based on the radiomics signature and clinical variables, the clinical radiomics nomogram demonstrated its ability to accurately predict the level of VEGF expression. DCA verified the clinical value of the clinical radiomics nomogram. In pediatric patients with nephroblastoma, the radiomics model based on the CT radiomics signature may accurately predict the level of VEGF expression.
构建基于计算机断层扫描(CT)的影像组学特征,并评估其在预测小儿肾母细胞瘤患者血管内皮生长因子(VEGF)表达方面的性能。共纳入73例小儿肾母细胞瘤患者(训练队列51例,测试队列22例)。在CT图像上手动标记的感兴趣区域作为自动提取影像组学特征的基础。在保留一部分影像组学特征以创建影像组学特征后,利用基于影像组学特征的公式生成影像组学评分。使用临床病理信息和CT成像特征等临床因素创建临床模型。纳入影像组学特征和临床特征后,创建了一个综合列线图。采用决策曲线分析(DCA)评估预测性能。使用5个精心挑选的影像组学特征创建影像组学特征。接下来,确定影像组学评分。在训练队列和测试队列中,逻辑回归模型的曲线下面积分别为0.761和0.791。基于影像组学特征和临床变量,临床影像组学列线图显示出准确预测VEGF表达水平的能力。DCA验证了临床影像组学列线图的临床价值。在小儿肾母细胞瘤患者中,基于CT影像组学特征的影像组学模型可准确预测VEGF表达水平。