Conti Allegra, Duggento Andrea, Indovina Iole, Guerrisi Maria, Toschi Nicola
Laboratory of Neuromotor Physiology, IRCCS Santa Lucia Foundation, Via Ardeatina, 306, 00179, Rome, Italy; Department of Biomedicine and Prevention, University of Rome Tor Vergata, Rome, Italy.
Department of Biomedicine and Prevention, University of Rome Tor Vergata, Rome, Italy.
Semin Cancer Biol. 2021 Jul;72:238-250. doi: 10.1016/j.semcancer.2020.04.002. Epub 2020 May 1.
Breast Cancer (BC) is the common form of cancer in women. Its diagnosis and screening are usually performed through different imaging modalities such as mammography, magnetic resonance imaging and ultrasound. However, mammography and ultrasound-imaging techniques have limited sensitivity and specificity both in identifying lesions and in differentiating malign from benign lesions, especially in presence of dense breast parenchyma. Due to the higher resolution of magnetic resonance images, MRI represents the method with the higher specificity and sensitivity among all the available tools, in both lesions' identification and diagnosis. However, especially for diagnosis, even MRI has limitations that are only partially solved if combined with mammography. Unfortunately, due to the limits of all these imaging tools, in order to have a certain diagnosis, patients often receive painful and costly bioptics procedures. In this context, several computational approaches have been developed to increase sensitivity, while maintaining the same specificity, in BC diagnosis and screening. Amongst these, radiomics has been increasingly gaining ground in oncology to improve cancer diagnosis, prognosis and treatment. Radiomics derives multiple quantitative features from single or multiple medical imaging modalities, highlighting image traits which are not visible to the naked eye and hence significantly augmenting the discriminatory and predictive potential of medical imaging. This review article aims to summarize the state of the art in radiomics-based BC research. The dominating evidence extracted from the literature points towards a high potential of radiomics in disentangling malignant from benign breast lesions, classifying BC types and grades and also in predicting treatment response and recurrence risk. In the era of personalized medicine, radiomics has the potential to improve diagnosis, prognosis, prediction, monitoring, image-based intervention, and assessment of therapeutic response in BC.
乳腺癌(BC)是女性中常见的癌症形式。其诊断和筛查通常通过不同的成像方式进行,如乳腺钼靶摄影、磁共振成像和超声检查。然而,乳腺钼靶摄影和超声成像技术在识别病变以及区分恶性与良性病变方面的敏感性和特异性有限,尤其是在乳腺实质致密的情况下。由于磁共振图像具有更高的分辨率,在所有可用工具中,MRI在病变识别和诊断方面都代表着具有更高特异性和敏感性的方法。然而,特别是对于诊断而言,即使是MRI也存在局限性,若与乳腺钼靶摄影相结合,也只能部分解决这些局限性。不幸的是,由于所有这些成像工具都存在局限性,为了获得明确的诊断,患者常常需要接受痛苦且费用高昂的活检程序。在这种背景下,已经开发了几种计算方法来提高BC诊断和筛查的敏感性,同时保持相同的特异性。其中,放射组学在肿瘤学中越来越受到重视,以改善癌症的诊断、预后和治疗。放射组学从单一或多种医学成像模态中提取多个定量特征,突出肉眼不可见的图像特征,从而显著增强医学成像的鉴别和预测潜力。这篇综述文章旨在总结基于放射组学的BC研究的现状。从文献中提取的主要证据表明,放射组学在区分乳腺良恶性病变、对BC进行分型和分级以及预测治疗反应和复发风险方面具有很高的潜力。在个性化医疗时代,放射组学有潜力改善BC的诊断、预后、预测、监测、基于图像的干预以及治疗反应评估。