Construction of a prediction model for muscular invasion in upper urinary tract urothelial carcinoma based on preoperative MRI features
10.3760/cma.j.cn112330-20241123-00520
- VernacularTitle:基于术前MRI特征构建上尿路尿路上皮癌肌层浸润的预测模型
- Author:
Haonan CHEN
1
;
Lingkai CAI
;
Hongyuan DING
;
Hao JI
;
Tianxiao HONG
;
Hao YU
;
Qikai WU
;
Chaoran ZHAO
;
Xiao YANG
;
Qiang CAO
;
Xiancheng ZHAO
;
Pengchao LI
;
Qiang LYU
Author Information
1. 南京医科大学第一附属医院(江苏省人民医院)泌尿外科,南京 210029
- Publication Type:Journal Article
- Keywords:
Urothelial tumor;
Upper urinary tract urothelial carcinoma;
Magnetic resonance imaging;
Nomogram;
Muscle-invasion
- From:
Chinese Journal of Urology
2025;46(9):661-668
- CountryChina
- Language:Chinese
-
Abstract:
Objective:To construct a nomogram based on preoperative MRI imaging features for the prediction of muscle-invasive upper urinary tract urothelial carcinoma(UTUC)and evaluate its performance.Methods:This retrospective cohort study analyzed the clinical data of 99 UTUC patients treated at the First Affiliated Hospital of Nanjing Medical University from April 2018 to May 2024. Among them,69(69.7%)were male and 30(30.3%)were female,with a median age of 67.0 years. All patients underwent preoperative MRI and radical nephroureterectomy. According to postoperative pathology,tumors staged ≥ T 2 were assigned to the muscle-invasive group,and those staged ≤ T 1 were assigned to the non-muscle-invasive group. Baseline data,pathological information,and imaging characteristics were collected and compared between the two groups. Logistic regression analysis was performed to identify risk factors for muscle-invasive UTUC,and a nomogram was constructed. The diagnostic performance of the model was assessed using receiver operating characteristic(ROC)curves,calibration curves,and decision curve analysis(DCA). Results:Among the 99 patients,70(70.7%)were diagnosed with muscle-invasive UTUC,and 29(29.3%)with non-muscle-invasive UTUC. The muscle-invasive group had significantly larger tumor size[4.5(2.8,7.0)cm vs. 3.0(2.3,4.5)cm, P = 0.029],a higher incidence of multifocal tumors[37.1%(26/70)vs. 3.5%(1/29), P < 0.001],patchy tumors[30.0%(21/70)vs. 6.9%(2/29), P = 0.019],spiculated tumor margins[52.9%(37/70)vs. 17.2%(5/29), P = 0.001],tumor compression on renal parenchyma or periureteral/peripelvic fat[68.6%(48/70)vs. 10.3%(3/29), P < 0.001],high-grade pathology[92.9%(65/70)vs. 75.9%(22/29), P = 0.043],lymph node metastasis[28.6%(20/70)vs. 0, P = 0.001],and lymphovascular invasion[42.9%(30/70)vs. 10.3%(3/29), P=0.002]. The apparent diffusion coefficient(ADC)values[0.9(0.8,1.1)× 10 -3 mm2/s vs. 1.1(1.0,1.4)× 10 -3 mm2/s, P < 0.001]and normalized ADC(NADC)values[0.8(0.7,1.0)vs. 0.9(0.8,1.1), P = 0.002]were significantly lower in the muscle-invasive group. Univariate logistic regression identified multifocality,patchy tumor patterns,spiculated tumor margins,tumor compression on renal parenchyma or periureteral/peripelvic fat,and low NADC values as risk factors for muscle-invasive UTUC(all P < 0.05). Multivariate analysis revealed multifocality( OR = 17.903,95% CI 1.650 - 194.253, P = 0.018),tumor compression on renal parenchyma or perirenal / ureteral fat( OR = 14.690,95% CI 3.069 - 70.323, P < 0.001),and low NADC value( OR = 0.016,95% CI 0.001 - 0.471, P = 0.017)as independent risk factors. A nomogram was constructed based on these factors. The area under the ROC curve(AUC)of the model was 0.898(95% CI 0.838 - 0.957),with an optimal cutoff value of 0.639. The model showed an accuracy of 83.8%,sensitivity of 81.4%,and specificity of 89.7%. Calibration curves indicated good calibration,and DCA showed that the model provided substantial clinical net benefit. Conclusions:This study constructed a nomogram based on preoperative MRI features,including tumor multifocality,compression on renal parenchyma or periureteral/peripelvic fat and NADC value,which demonstrates good predictive performances for muscle-invasive UTUC.