Inglese Marianna, Ferrante Matteo, Boccato Tommaso, Conti Allegra, Pistolese Chiara A, Buonomo Oreste C, D'Angelillo Rolando M, Toschi Nicola
Department of Biomedicine and Prevention, University of Rome Tor Vergata, 00133 Rome, Italy.
Department of Surgery and Cancer, Imperial College London, London W12 0HS, UK.
J Pers Med. 2023 Jun 15;13(6):1004. doi: 10.3390/jpm13061004.
Traditional imaging techniques for breast cancer (BC) diagnosis and prediction, such as X-rays and magnetic resonance imaging (MRI), demonstrate varying sensitivity and specificity due to clinical and technological factors. Consequently, positron emission tomography (PET), capable of detecting abnormal metabolic activity, has emerged as a more effective tool, providing critical quantitative and qualitative tumor-related metabolic information. This study leverages a public clinical dataset of dynamic F-Fluorothymidine (FLT) PET scans from BC patients, extending conventional static radiomics methods to the time domain-termed as 'Dynomics'. Radiomic features were extracted from both static and dynamic PET images on lesion and reference tissue masks. The extracted features were used to train an XGBoost model for classifying tumor versus reference tissue and complete versus partial responders to neoadjuvant chemotherapy. The results underscored the superiority of dynamic and static radiomics over standard PET imaging, achieving accuracy of 94% in tumor tissue classification. Notably, in predicting BC prognosis, dynomics delivered the highest performance, achieving accuracy of 86%, thereby outperforming both static radiomics and standard PET data. This study illustrates the enhanced clinical utility of dynomics in yielding more precise and reliable information for BC diagnosis and prognosis, paving the way for improved treatment strategies.
用于乳腺癌(BC)诊断和预测的传统成像技术,如X射线和磁共振成像(MRI),由于临床和技术因素,其敏感性和特异性各不相同。因此,能够检测异常代谢活动的正电子发射断层扫描(PET)已成为一种更有效的工具,可提供关键的定量和定性肿瘤相关代谢信息。本研究利用了一个来自BC患者的动态F-氟胸苷(FLT)PET扫描的公共临床数据集,将传统的静态放射组学方法扩展到时域,称为“动态组学”。从病变和参考组织掩码的静态和动态PET图像中提取放射组学特征。提取的特征用于训练一个XGBoost模型,以区分肿瘤与参考组织,以及新辅助化疗的完全缓解者与部分缓解者。结果强调了动态和静态放射组学相对于标准PET成像的优越性,在肿瘤组织分类中达到了94%的准确率。值得注意的是,在预测BC预后方面,动态组学表现最佳,准确率达到86%,从而超过了静态放射组学和标准PET数据。本研究说明了动态组学在为BC诊断和预后提供更精确和可靠信息方面增强的临床效用,为改进治疗策略铺平了道路。