Department of Urology, The First Affiliated Hospital of Nanchang University, Nanchang, China.
Jiangxi Institute of Urology, Nanchang, China.
Cancer Med. 2023 Aug;12(15):15868-15880. doi: 10.1002/cam4.6225. Epub 2023 Jul 11.
To construct and validate unfavorable pathology (UFP) prediction models for patients with the first diagnosis of bladder cancer (initial BLCA) and to compare the comprehensive predictive performance of these models.
A total of 105 patients with initial BLCA were included and randomly enrolled into the training and testing cohorts in a 7:3 ratio. The clinical model was constructed using independent UFP-risk factors determined by multivariate logistic regression (LR) analysis in the training cohort. Radiomics features were extracted from manually segmented regions of interest in computed tomography (CT) images. The optimal CT-based radiomics features to predict UFP were determined by the optimal feature filter and the least absolute shrinkage and selection operator algorithm. The radiomics model consist with the optimal features was constructed by the best of the six machine learning filters. The clinic-radiomics model combined the clinical and radiomics models via LR. The area under the curve (AUC), accuracy, sensitivity, specificity, positive and negative predictive value, calibration curve and decision curve analysis were used to evaluate the predictive performance of the models.
Patients in the UFP group had a significantly older age (69.61 vs. 63.93 years, p = 0.034), lager tumor size (45.7% vs. 11.1%, p = 0.002) and higher neutrophil to lymphocyte ratio (NLR; 2.76 vs. 2.33, p = 0.017) than favorable pathologic group in the training cohort. Tumor size (OR, 6.02; 95% CI, 1.50-24.10; p = 0.011) and NLR (OR, 1.50; 95% CI, 1.05-2.16; p = 0.026) were identified as independent predictive factors for UFP, and the clinical model was constructed using these factors. The LR classifier with the best AUC (0.817, the testing cohorts) was used to construct the radiomics model based on the optimal radiomics features. Finally, the clinic-radiomics model was developed by combining the clinical and radiomics models using LR. After comparison, the clinic-radiomics model had the best performance in comprehensive predictive efficacy (accuracy = 0.750, AUC = 0.817, the testing cohorts) and clinical net benefit among UFP-prediction models, while the clinical model (accuracy = 0.625, AUC = 0.742, the testing cohorts) was the worst.
Our study demonstrates that the clinic-radiomics model exhibits the best predictive efficacy and clinical net benefit for predicting UFP in initial BLCA compared with the clinical and radiomics model. The integration of radiomics features significantly improves the comprehensive performance of the clinical model.
构建并验证初诊膀胱癌(initial BLCA)患者不良病理(UFP)预测模型,并比较这些模型的综合预测性能。
共纳入 105 例初诊 BLCA 患者,按 7:3 的比例随机纳入训练集和测试集。在训练队列中,使用多变量逻辑回归(LR)分析确定独立的 UFP 风险因素构建临床模型。从 CT 图像中手动分割的感兴趣区域提取放射组学特征。通过最优特征筛选和最小绝对值收缩和选择算子算法确定预测 UFP 的最佳 CT 基于放射组学特征。使用六种机器学习滤波器中的最佳滤波器构建包含最佳特征的放射组学模型。通过 LR 将临床放射组学模型与临床模型相结合。曲线下面积(AUC)、准确性、灵敏度、特异性、阳性和阴性预测值、校准曲线和决策曲线分析用于评估模型的预测性能。
在训练队列中,UFP 组患者的年龄明显更大(69.61 岁比 63.93 岁,p=0.034)、肿瘤更大(45.7%比 11.1%,p=0.002)和更高的中性粒细胞与淋巴细胞比值(NLR;2.76 比 2.33,p=0.017)。肿瘤大小(OR,6.02;95%CI,1.50-24.10;p=0.011)和 NLR(OR,1.50;95%CI,1.05-2.16;p=0.026)被确定为 UFP 的独立预测因素,并使用这些因素构建了临床模型。在训练队列中,使用 AUC(0.817)最高的 LR 分类器构建基于最佳放射组学特征的放射组学模型。最后,通过 LR 将临床和放射组学模型相结合,建立临床放射组学模型。比较后,在预测 UFP 的所有模型中,临床放射组学模型在综合预测效果(准确性=0.750,AUC=0.817,测试队列)和临床净获益方面表现最佳,而临床模型(准确性=0.625,AUC=0.742,测试队列)表现最差。
本研究表明,与临床和放射组学模型相比,临床放射组学模型在预测初诊 BLCA 的 UFP 方面具有最佳的预测效能和临床净获益。放射组学特征的综合应用显著提高了临床模型的综合性能。