Deep learning MRI-based radiomic models for predicting recurrence in locally advanced nasopharyngeal carcinoma after neoadjuvant chemoradiotherapy: a multi-center study.

IF 4.2 3区 医学 Q2 ONCOLOGY
Chunmiao Hu, Congrui Xu, Jiaxin Chen, Yiling Huang, Qingcheng Meng, Zhian Lin, Xinming Huang, Li Chen
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Abstract

Local recurrence and distant metastasis were a common manifestation of locoregionally advanced nasopharyngeal carcinoma (LA-NPC) after neoadjuvant chemoradiotherapy (NACT). To validate the clinical value of MRI radiomic models based on deep learning for predicting the recurrence of LA-NPC patients. A total of 328 NPC patients from four hospitals were retrospectively included and divided into the training(n = 229) and validation (n = 99) cohorts randomly. Extracting 975 traditional radiomic features and 1000 deep radiomic features from contrast enhanced T1-weighted (T1WI + C) and T2-weighted (T2WI) sequences, respectively. Least absolute shrinkage and selection operator (LASSO) was applied for feature selection. Five machine learning classifiers were conducted to develop three models for LA-NPC prediction in training cohort, namely Model I: traditional radiomic features, Model II: combined the deep radiomic features with Model I, and Model III: combined Model II with clinical features. The predictive performance of these models were evaluated by receive operating characteristic (ROC) curve analysis, area under the curve (AUC), accuracy, sensitivity and specificity in both cohorts. The clinical characteristics in two cohorts showed no significant differences. Choosing 15 radiomic features and 6 deep radiomic features from T1WI + C. Choosing 9 radiomic features and 6 deep radiomic features from T2WI. In T2WI, the Model II based on Random forest (RF) (AUC = 0.87) performed best compared with other models in validation cohort. Traditional radiomic model combined with deep radiomic features shows excellent predictive performance. It could be used assist clinical doctors to predict curative effect for LA-NPC patients after NACT.

基于mri的深度学习放射学模型预测局部晚期鼻咽癌新辅助放化疗后复发:一项多中心研究
局部复发和远处转移是局部进展期鼻咽癌(LA-NPC)在新辅助放化疗(NACT)后的常见表现。验证基于深度学习的MRI放射学模型预测LA-NPC患者复发的临床价值。回顾性纳入来自4家医院的328例鼻咽癌患者,随机分为训练组(n = 229)和验证组(n = 99)。从对比增强的t1 -加权(T1WI + C)和t2 -加权(T2WI)序列中分别提取975个传统放射学特征和1000个深度放射学特征。采用最小绝对收缩和选择算子(LASSO)进行特征选择。利用5个机器学习分类器,建立了3个用于训练队列LA-NPC预测的模型,即模型1:传统放射学特征、模型2:深度放射学特征与模型1结合、模型3:模型2与临床特征结合。通过接收工作特征(ROC)曲线分析、曲线下面积(AUC)、准确性、敏感性和特异性对两组模型的预测性能进行评价。两组患者的临床特征无显著差异。从T1WI + C中选择15个放射学特征和6个深部放射学特征。选择T2WI 9个放射学特征和6个深部放射学特征。在T2WI中,基于随机森林(RF)的模型II (AUC = 0.87)在验证队列中较其他模型表现最好。传统的放射组学模型结合深部放射组学特征显示出良好的预测效果。可辅助临床医生预测LA-NPC患者行NACT后的疗效。
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来源期刊
CiteScore
7.80
自引率
5.00%
发文量
55
审稿时长
12 months
期刊介绍: The Journal''s scope encompasses all aspects of metastasis research, whether laboratory-based, experimental or clinical and therapeutic. It covers such areas as molecular biology, pharmacology, tumor biology, and clinical cancer treatment (with all its subdivisions of surgery, chemotherapy and radio-therapy as well as pathology and epidemiology) insofar as these disciplines are concerned with the Journal''s core subject of metastasis formation, prevention and treatment.
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