Cui Yanfen, Zhang Jiayi, Li Zhenhui, Wei Kaikai, Lei Ye, Ren Jialiang, Wu Lei, Shi Zhenwei, Meng Xiaochun, Yang Xiaotang, Gao Xin
Department of Radiology, Shanxi Cancer Hospital, Shanxi Medical University, Taiyuan 030013, China.
Department of Radiology, Guangdong Cardiovascular Institute, Guangdong Provincial People's Hospital, Guangdong Academy of Medical Sciences, 106 Zhangshan Er Road, Guangzhou 510080, China.
EClinicalMedicine. 2022 Mar 21;46:101348. doi: 10.1016/j.eclinm.2022.101348. eCollection 2022 Apr.
Accurate prediction of treatment response to neoadjuvant chemotherapy (NACT) in individual patients with locally advanced gastric cancer (LAGC) is essential for personalized medicine. We aimed to develop and validate a deep learning radiomics nomogram (DLRN) based on pretreatment contrast-enhanced computed tomography (CT) images and clinical features to predict the response to NACT in patients with LAGC.
719 patients with LAGC were retrospectively recruited from four Chinese hospitals between Dec 1st, 2014 and Nov 30th, 2020. The training cohort and internal validation cohort (IVC), comprising 243 and 103 patients, respectively, were randomly selected from center I; the external validation cohort1 (EVC1) comprised 207 patients from center II; and EVC2 comprised 166 patients from another two hospitals. Two imaging signatures, reflecting the phenotypes of the deep learning and handcrafted radiomics features, were constructed from the pretreatment portal venous-phase CT images. A four-step procedure, including reproducibility evaluation, the univariable analysis, the LASSO method, and the multivariable logistic regression analysis, was applied for feature selection and signature building. The integrated DLRN was then developed for the added value of the imaging signatures to independent clinicopathological factors for predicting the response to NACT. The prediction performance was assessed with respect to discrimination, calibration, and clinical usefulness. Kaplan-Meier survival curves based on the DLRN were used to estimate the disease-free survival (DFS) in the follow-up cohort ( = 300).
The DLRN showed satisfactory discrimination of good response to NACT and yielded the areas under the receiver operating curve (AUCs) of 0.829 (95% CI, 0.739-0.920), 0.804 (95% CI, 0.732-0.877), and 0.827 (95% CI, 0.755-0.900) in the internal and two external validation cohorts, respectively, with good calibration in all cohorts ( > 0.05). Furthermore, the DLRN performed significantly better than the clinical model ( < 0.001). Decision curve analysis confirmed that the DLRN was clinically useful. Besides, DLRN was significantly associated with the DFS of patients with LAGC ( < 0.05).
A deep learning-based radiomics nomogram exhibited a promising performance for predicting therapeutic response and clinical outcomes in patients with LAGC, which could provide valuable information for individualized treatment.
准确预测局部晚期胃癌(LAGC)个体患者对新辅助化疗(NACT)的治疗反应对于精准医疗至关重要。我们旨在开发并验证一种基于治疗前对比增强计算机断层扫描(CT)图像和临床特征的深度学习放射组学列线图(DLRN),以预测LAGC患者对NACT的反应。
2014年12月1日至2020年11月30日期间,从四家中国医院回顾性招募了719例LAGC患者。训练队列和内部验证队列(IVC)分别由243例和103例患者组成,从中心I随机选取;外部验证队列1(EVC1)由中心II的207例患者组成;EVC2由另外两家医院的166例患者组成。从治疗前门静脉期CT图像构建了两个反映深度学习和手工放射组学特征表型的影像特征。采用包括重复性评估、单变量分析、LASSO方法和多变量逻辑回归分析在内的四步程序进行特征选择和特征构建。然后开发了综合DLRN,以评估影像特征相对于独立临床病理因素在预测NACT反应方面的附加值。通过区分度、校准度和临床实用性评估预测性能。基于DLRN的Kaplan-Meier生存曲线用于估计随访队列(n = 300)中的无病生存期(DFS)。
DLRN对NACT的良好反应显示出令人满意的区分度,在内部验证队列和两个外部验证队列中的受试者操作特征曲线下面积(AUC)分别为0.829(95%CI,0.739 - 0.920)、0.804(95%CI,0.732 - 0.877)和0.827(95%CI,0.755 - 0.900),所有队列校准良好(P > 0.05)。此外,DLRN的表现明显优于临床模型(P < 0.001)。决策曲线分析证实DLRN具有临床实用性。此外,DLRN与LAGC患者的DFS显著相关(P < 0.05)。
基于深度学习的放射组学列线图在预测LAGC患者的治疗反应和临床结局方面表现出良好的性能,可为个体化治疗提供有价值的信息。