Department of Radiology, Zhejiang Provincial People's Hospital, People's Hospital of Hangzhou Medical College, Hangzhou, People's Republic of China.
Diagn Interv Radiol. 2022 Mar;28(2):124-130. doi: 10.5152/dir.2022.20926.
PURPOSE The purpose of this paper was to distinguish solid pseudopapillary neoplasms (SPNs) and nonfunctional neuroendocrine tumors (nf-NETs) of pancreas using univariate analysis and clinical-CT logistic regression model. METHODS Twenty-eight patients with SPNs and 46 patients with nf-NETs underwent enhanced CT examinations. Clinical data (sex, age), categorical (location, cystic degeneration, calcification, hemorrhage, and enhancement pattern), and numeric CT features (lesion long diameter, long/ short diameter ratio, tumor attenuation values and tumor/pancreas attenuation ratios at unenhanced phase [UP], arterial phase [AP], and venous phase [VP]) were recorded. The logistic regression model was constructed by stepwise forward method of binary logistic regression after univariate analysis. The corresponding operating characteristic curve (ROC) and nomogram were delineated. The area under the curve (AUC), sensitivity, and specificity of ROC were calculated. RESULTS The SPNs were observed more often in relatively young (P < .001), female (P < .001) patients. After the univariate analysis, the categorical CT features of location (P = .048), hemorrhage (P = .003), and enhancement pattern (P = .004) and the numeric CT features of lesion long diameter (P = .005), tumor/pancreasUP (P = .002), tumorAP (P < .001), and tumor/pancreasAP (P < .001) had statistical significance. The AUC (95% CI), sensitivity, and specificity of a logistic regression model composed of age, tumor/pancreasUP, and tumor/pancreasAP were 0.933 (95% CI, 0.850-0.978), 84.78%, and 92.86%. CONCLUSION The SPNs often occurred in 20- to 40-year-old female patients, were located in the body or tail of pancreas, showed hemorrhagic degeneration, heterogeneous enhancement, and were relatively larger in size compared with nf-NETs. Tumor/pancreasUP, tumorAP, and tumor/pancreasAP values of SPNs were smaller than those of nf-NETs. The clinical-CT logistic regression model and nomogram consisting of age, tumor/pancreasUP, and tumor/pancreasAP parameters helped to differentiate SPNs from nf-NETs.
目的 本研究旨在通过单变量分析和临床 CT 逻辑回归模型,区分胰腺实性假乳头状瘤(SPN)和无功能性神经内分泌肿瘤(nf-NET)。
方法 对 28 例 SPN 患者和 46 例 nf-NET 患者进行增强 CT 检查。记录临床资料(性别、年龄)、分类(位置、囊性变性、钙化、出血和强化模式)和数值 CT 特征(病变长径、长径/短径比、肿瘤衰减值及平扫[UP]、动脉期[AP]和静脉期[VP]时肿瘤/胰腺的衰减比)。采用二元逻辑回归的逐步向前法,对单变量分析后的数据进行逻辑回归模型构建。描绘相应的受试者工作特征曲线(ROC)和列线图。计算 ROC 的曲线下面积(AUC)、敏感度和特异度。
结果 SPN 患者多为年轻(P <.001)、女性(P <.001)。单变量分析后,位置(P =.048)、出血(P =.003)和强化模式(P =.004)的分类 CT 特征以及病变长径(P =.005)、肿瘤/胰腺 UP(P =.002)、肿瘤 AP(P <.001)和肿瘤/胰腺 AP(P <.001)的数值 CT 特征均具有统计学意义。由年龄、肿瘤/胰腺 UP 和肿瘤/胰腺 AP 组成的逻辑回归模型的 AUC(95%CI)、敏感度和特异度分别为 0.933(95%CI,0.850-0.978)、84.78%和 92.86%。
结论 SPN 多发生于 20-40 岁的年轻女性,位于胰腺体尾部,表现为出血性变性、不均匀强化,与 nf-NET 相比,其体积相对较大。SPN 的肿瘤/胰腺 UP、肿瘤 AP 和肿瘤/胰腺 AP 值均小于 nf-NET。由年龄、肿瘤/胰腺 UP 和肿瘤/胰腺 AP 参数组成的临床 CT 逻辑回归模型和列线图有助于区分 SPN 和 nf-NET。