Development and Validation of a Deep Learning System to Differentiate HER2-Zero, HER2-Low, and HER2-Positive Breast Cancer Based on Dynamic Contrast-Enhanced MRI.

IF 3.3 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Journal of Magnetic Resonance Imaging Pub Date : 2024-12-06 DOI:10.1002/jmri.29670
Yi Dai, Chun Lian, Zhuo Zhang, Jing Gao, Fan Lin, Ziyin Li, Qi Wang, Tongpeng Chu, Dilinuer Aishanjiang, Meiying Chen, Ximing Wang, Guanxun Cheng, Rong Huang, Jianjun Dong, Haicheng Zhang, Ning Mao
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引用次数: 0

Abstract

Background: Previous studies explored MRI-based radiomic features for differentiating between human epidermal growth factor receptor 2 (HER2)-zero, HER2-low, and HER2-positive breast cancer, but deep learning's effectiveness is uncertain.

Purpose: This study aims to develop and validate a deep learning system using dynamic contrast-enhanced MRI (DCE-MRI) for automated tumor segmentation and classification of HER2-zero, HER2-low, and HER2-positive statuses.

Study type: Retrospective.

Population: One thousand two hundred ninety-four breast cancer patients from three centers who underwent DCE-MRI before surgery were included in the study (52 ± 11 years, 811/204/279 for training/internal testing/external testing).

Field strength/sequence: 3 T scanners, using T1-weighted 3D fast spoiled gradient-echo sequence, T1-weighted 3D enhanced fast gradient-echo sequence and T1-weighted turbo field echo sequence.

Assessment: An automated model segmented tumors utilizing DCE-MRI data, followed by a deep learning models (ResNetGN) trained to classify HER2 statuses. Three models were developed to distinguish HER2-zero, HER2-low, and HER2-positive from their respective non-HER2 categories.

Statistical tests: Dice similarity coefficient (DSC) was used to evaluate the segmentation performance of the model. Evaluation of the model performances for HER2 statuses involved receiver operating characteristic (ROC) curve analysis and the area under the curve (AUC), accuracy, sensitivity, and specificity. The P-values <0.05 were considered statistically significant.

Results: The automatic segmentation network achieved DSC values of 0.85 to 0.90 compared to the manual segmentation across different sets. The deep learning models using ResNetGN achieved AUCs of 0.782, 0.776, and 0.768 in differentiating HER2-zero from others in the training, internal test, and external test sets, respectively. Similarly, AUCs of 0.820, 0.813, and 0.787 were achieved for HER2-low vs. others, and 0.792, 0.745, and 0.781 for HER2-positive vs. others, respectively.

Data conclusion: The proposed DCE-MRI-based deep learning system may have the potential to preoperatively distinct HER2 expressions of breast cancers with therapeutic implications.

Evidence level: 4 TECHNICAL EFFICACY: Stage 3.

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基于动态增强MRI的her2 - 0, HER2-Low和her2 -阳性乳腺癌的深度学习系统的开发和验证。
背景:先前的研究探索了基于mri的放射学特征来区分人表皮生长因子受体2 (HER2)零、HER2低和HER2阳性乳腺癌,但深度学习的有效性尚不确定。目的:本研究旨在开发和验证一种使用动态对比增强MRI (DCE-MRI)的深度学习系统,用于her2 -零、her2 -低和her2阳性状态的自动肿瘤分割和分类。研究类型:回顾性。人群:来自三个中心的1294名术前行DCE-MRI的乳腺癌患者被纳入研究(52±11年,811/204/279为培训/内部测试/外部测试)。场强/序列:3台T扫描仪,使用t1加权3D快速破坏梯度回波序列,t1加权3D增强快速梯度回波序列和t1加权涡轮场回波序列。评估:利用DCE-MRI数据自动分割肿瘤模型,然后使用深度学习模型(ResNetGN)对HER2状态进行分类。开发了三种模型来区分her2 - 0、HER2-low和her2 -阳性与各自的非her2类别。统计检验:采用骰子相似系数(DSC)评价模型的分割性能。评估HER2状态的模型性能包括受试者工作特征(ROC)曲线分析和曲线下面积(AUC)、准确性、灵敏度和特异性。p值结果:与人工分割相比,自动分割网络在不同集上的DSC值为0.85 ~ 0.90。使用ResNetGN的深度学习模型在训练集、内部测试集和外部测试集上区分her2 - 0的auc分别为0.782、0.776和0.768。同样,HER2-low组与其他组的auc分别为0.820、0.813和0.787,her2 -阳性组与其他组的auc分别为0.792、0.745和0.781。数据结论:提出的基于dce - mri的深度学习系统可能具有术前区分乳腺癌HER2表达的潜力,具有治疗意义。证据等级:4技术功效:阶段3。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
9.70
自引率
6.80%
发文量
494
审稿时长
2 months
期刊介绍: The Journal of Magnetic Resonance Imaging (JMRI) is an international journal devoted to the timely publication of basic and clinical research, educational and review articles, and other information related to the diagnostic applications of magnetic resonance.
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