Jiang Wei, Deng Xiaofei, Zhu Ting, Fang Jing, Li Jinyao
Department of Ultrasound, Huazhong University of Science and Technology Union Shenzhen Hospital (Nanshan Hospital), Shenzhen, Guangdong province, People's Republic of China.
Breast Cancer (Dove Med Press). 2023 Aug 15;15:625-636. doi: 10.2147/BCTT.S418376. eCollection 2023.
Neoadjuvant chemotherapy (NAC) plays a significant role in breast cancer (BC) management; however, its efficacy varies among patients. Current evaluation methods may lead to delayed treatment alterations, and traditional imaging modalities often yield inaccurate results. Radiomics, an emerging field in medical imaging, offers potential for improved tumor characterization and personalized medicine. Nevertheless, its application in early and accurately predicting NAC response remains underinvestigated.
This study aims to develop an automated breast volume scanner (ABVS)-based radiomics model to facilitate early detection of suboptimal NAC response, ultimately promoting personalized therapeutic approaches for BC patients.
This retrospective study involved 248 BC patients receiving NAC. Standard guidelines were followed, and patients were classified as responders or non-responders based on treatment outcomes. ABVS images were obtained before and during NAC, and radiomics features were extracted using the PyRadiomics toolkit. Inter-observer consistency and hierarchical feature selection were assessed. Three machine learning classifiers, logistic regression, support vector machine, and random forest, were trained and validated using a five-fold cross-validation with three repetitions. Model performance was comprehensively evaluated based on discrimination, calibration, and clinical utility.
Of the 248 BC patients, 157 (63.3%) were responders, and 91 (36.7%) were non-responders. Radiomics feature selection revealed 7 pre-NAC and 6 post-NAC ABVS features, with higher weights for post-NAC features (min >0.05) than pre-NAC (max <0.03). The three post-NAC classifiers demonstrated AUCs of approximately 0.9, indicating excellent discrimination. DCA curves revealed a substantial net benefit when the threshold probability exceeded 40%. Conversely, the three pre-NAC classifiers had AUCs between 0.7 and 0.8, suggesting moderate discrimination and limited clinical utility based on their DCA curves.
The ABVS-based radiomics model effectively predicted suboptimal NAC responses in BC patients, with early post-NAC classifiers outperforming pre-NAC classifiers in discrimination and clinical utility. It could enhance personalized treatment and improve patient outcomes in BC management.
新辅助化疗(NAC)在乳腺癌(BC)治疗中发挥着重要作用;然而,其疗效在患者之间存在差异。当前的评估方法可能导致治疗调整延迟,并且传统成像方式往往产生不准确的结果。放射组学作为医学成像领域的一个新兴领域,为改善肿瘤特征描述和个性化医疗提供了潜力。尽管如此,其在早期准确预测NAC反应方面的应用仍研究不足。
本研究旨在开发一种基于自动乳腺容积扫描仪(ABVS)的放射组学模型,以促进对NAC反应欠佳的早期检测,最终推动针对BC患者的个性化治疗方法。
这项回顾性研究纳入了248例接受NAC的BC患者。遵循标准指南,并根据治疗结果将患者分为反应者或无反应者。在NAC之前和期间获取ABVS图像,并使用PyRadiomics工具包提取放射组学特征。评估了观察者间的一致性和分层特征选择。使用具有三次重复的五折交叉验证对逻辑回归、支持向量机和随机森林这三种机器学习分类器进行训练和验证。基于区分度、校准度和临床实用性对模型性能进行了全面评估。
在248例BC患者中,157例(63.3%)为反应者,91例(36.7%)为无反应者。放射组学特征选择显示,NAC前有7个ABVS特征,NAC后有6个ABVS特征,NAC后特征的权重(最小值>0.05)高于NAC前(最大值<0.03)。三个NAC后分类器的曲线下面积(AUC)约为0.9,表明具有出色的区分度。决策曲线分析(DCA)曲线显示,当阈值概率超过40%时,有显著的净效益。相反,三个NAC前分类器的AUC在0.7至0.8之间,表明区分度中等,基于其DCA曲线,临床实用性有限。
基于ABVS的放射组学模型有效地预测了BC患者中NAC反应欠佳的情况,NAC后早期分类器在区分度和临床实用性方面优于NAC前分类器。它可以加强个性化治疗并改善BC治疗中的患者预后。