Li Yuting, Fan Yaheng, Xu Dinghua, Li Yan, Zhong Zhangnan, Pan Haoyu, Huang Bingsheng, Xie Xiaotong, Yang Yang, Liu Bihua
The First Clinical Medical College, Guangdong Medical University, Zhanjiang, China.
Department of Radiology, Dongguan People's Hospital, Dongguan, China.
Front Oncol. 2023 Jan 5;12:1041142. doi: 10.3389/fonc.2022.1041142. eCollection 2022.
The aim of this study was to develop and validate a deep learning-based radiomic (DLR) model combined with clinical characteristics for predicting pathological complete response (pCR) to neoadjuvant chemotherapy (NAC) in breast cancer. For early prediction of pCR, the DLR model was based on pre-treatment and early treatment dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) data.
This retrospective study included 95 women (mean age, 48.1 years; range, 29-77 years) who underwent DCE-MRI before (pre-treatment) and after two or three cycles of NAC (early treatment) from 2018 to 2021. The patients in this study were randomly divided into a training cohort (n=67) and a validation cohort (n=28) at a ratio of 7:3. Deep learning and handcrafted features were extracted from pre- and early treatment DCE-MRI contoured lesions. These features contribute to the construction of radiomic signature RS1 and RS2 representing information from different periods. Mutual information and least absolute shrinkage and selection operator regression were used for feature selection. A combined model was then developed based on the DCE-MRI features and clinical characteristics. The performance of the models was assessed using the area under the receiver operating characteristic curve (AUC) and compared using the DeLong test.
The overall pCR rate was 25.3% (24/95). One radiomic feature and three deep learning features in RS1, five radiomic features and 11 deep learning features in RS2, and five clinical characteristics remained in the feature selection. The performance of the DLR model combining pre- and early treatment information (AUC=0.900) was better than that of RS1 (AUC=0.644, P=0.068) and slightly higher that of RS2 (AUC=0.888, P=0.604) in the validation cohort. The combined model including pre- and early treatment information and clinical characteristics showed the best ability with an AUC of 0.925 in the validation cohort.
The combined model integrating pre-treatment, early treatment DCE-MRI data, and clinical characteristics showed good performance in predicting pCR to NAC in patients with breast cancer. Early treatment DCE-MRI and clinical characteristics may play an important role in evaluating the outcomes of NAC by predicting pCR.
本研究旨在开发并验证一种基于深度学习的放射组学(DLR)模型,该模型结合临床特征用于预测乳腺癌新辅助化疗(NAC)后的病理完全缓解(pCR)。为了早期预测pCR,DLR模型基于治疗前和早期治疗的动态对比增强磁共振成像(DCE-MRI)数据。
这项回顾性研究纳入了95名女性(平均年龄48.1岁;范围29 - 77岁),她们在2018年至2021年期间接受了NAC的两个或三个周期治疗前(治疗前)和治疗后(早期治疗)的DCE-MRI检查。本研究中的患者以7:3的比例随机分为训练队列(n = 67)和验证队列(n = 28)。从治疗前和早期治疗的DCE-MRI勾勒出的病变中提取深度学习和手工制作的特征。这些特征有助于构建代表不同时期信息的放射组学特征RS1和RS2。使用互信息和最小绝对收缩和选择算子回归进行特征选择。然后基于DCE-MRI特征和临床特征开发一个联合模型。使用受试者工作特征曲线下面积(AUC)评估模型的性能,并使用德龙检验进行比较。
总体pCR率为25.3%(24/95)。特征选择后,RS1中保留了一个放射组学特征和三个深度学习特征,RS2中保留了五个放射组学特征和11个深度学习特征,以及五个临床特征。在验证队列中,结合治疗前和早期治疗信息的DLR模型的性能(AUC = 0.900)优于RS1(AUC = 0.644,P = 0.068),略高于RS2(AUC = 0.888,P = 0.604)。包括治疗前和早期治疗信息以及临床特征的联合模型在验证队列中表现最佳,AUC为0.925。
整合治疗前、早期治疗DCE-MRI数据和临床特征的联合模型在预测乳腺癌患者NAC后的pCR方面表现良好。早期治疗DCE-MRI和临床特征可能通过预测pCR在评估NAC的结果中发挥重要作用。