A Hybrid Model-Based Clinicopathological Features and Radiomics Based on Conventional MRI for Predicting Lymph Node Metastasis and DFS in Cervical Cancer.
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引用次数: 0
Abstract
This study aimed to improve the accuracy of the diagnosis of lymph node metastasis (LNM) and prediction of patient prognosis in cervical cancer patients using a hybrid model based on MRI and clinical aspects. We retrospectively analyzed routine MR data from 485 patients with pathologically confirmed cervical cancer from January 2014 to June 2021. The data were divided into a training cohort (N = 261), internal cohort (N = 113), and external validation cohort (n = 111). A total of 2194 features were extracted from each ROI from T2WI and CE-T1WI. The clinical model (M1) was built with clinicopathological features including squamous cell carcinoma antigen, MRI-reported LNM, maximal tumor diameter (MTD). The radiomics model (M2) was built with four radiomics features. The hybrid model (M3) was constructed with squamous cell carcinoma antigen, MRI-reported LNM, MTD which consists of M1 and four radiomics features which consist of M2. GBDT algorithms were used to create the scores of M1 (clinical-score, C-score), M2 (radiomic score, R-score), and M3 (hybrid-score, H-score). M3 showed good performance in the training cohort (AUCs, M3 vs. M1 vs. M2, 0.917 vs. 0.830 vs. 0.788), internal validation cohorts (AUCs, M3 vs. M1 vs. M2, 0.872 vs. 0.750 vs. 0.739), and external validation cohort (AUCs, M3 vs. M1 vs. M2, 0.907 vs. 0.811 vs. 0.785). In addition, higher scores were significantly associated with worse disease-free survival (DFS) in the training cohort and the internal validation cohort (C-score, P = 0.001; R-score, P = 0.002; H-score, P = 0.006). Radiomics models can accurately predict LNM status in patients with cervical cancer. The hybrid model, which incorporates clinical and radiomics features, is a novel way to enhance diagnostic performance and predict the prognosis of cervical cancer.
本研究旨在利用基于MRI和临床方面的混合模型提高宫颈癌患者淋巴结转移(LNM)诊断和患者预后预测的准确性。我们回顾性分析了2014年1月至2021年6月485例病理证实的宫颈癌患者的常规MR数据。数据分为培训队列(N = 261)、内部队列(N = 113)和外部验证队列(N = 111)。从T2WI和CE-T1WI的每个ROI中共提取了2194个特征。建立临床模型(M1),其临床病理特征包括鳞状细胞癌抗原、mri报告的LNM、最大肿瘤直径(MTD)。利用放射组学的四个特征建立放射组学模型(M2)。混合模型(M3)由鳞状细胞癌抗原、mri报道的LNM、由M1组成的MTD和由M2组成的四个放射组学特征组成。使用GBDT算法创建M1(临床评分,C-score)、M2(放射学评分,R-score)和M3(混合评分,H-score)评分。M3在训练队列(auc, M3 vs. M1 vs. M2, 0.917 vs. 0.830 vs. 0.788)、内部验证队列(auc, M3 vs. M1 vs. M2, 0.872 vs. 0.750 vs. 0.739)和外部验证队列(auc, M3 vs. M1 vs. M2, 0.907 vs. 0.811 vs. 0.785)中表现良好。此外,在训练组和内部验证组中,较高的评分与较差的无病生存(DFS)显著相关(C-score, P = 0.001;R-score, P = 0.002;H-score, P = 0.006)。放射组学模型可以准确预测宫颈癌患者的LNM状态。结合临床和放射组学特征的混合模型是提高宫颈癌诊断效能和预测预后的新方法。