Lobato-Delgado Barbara, Priego-Torres Blanca, Sanchez-Morillo Daniel
Unitat de Genòmica de Malalties Complexes, Institut de Recerca de l'Hospital de la Santa Creu i Sant Pau, IIB Sant Pau, 08041 Barcelona, Spain.
Department of Automation Engineering, Electronics and Computer Architecture and Networks, Universidad de Cádiz, Puerto Real, 11519 Cádiz, Spain.
Cancers (Basel). 2022 Jun 30;14(13):3215. doi: 10.3390/cancers14133215.
Cancer is one of the most detrimental diseases globally. Accordingly, the prognosis prediction of cancer patients has become a field of interest. In this review, we have gathered 43 state-of-the-art scientific papers published in the last 6 years that built cancer prognosis predictive models using multimodal data. We have defined the multimodality of data as four main types: clinical, anatomopathological, molecular, and medical imaging; and we have expanded on the information that each modality provides. The 43 studies were divided into three categories based on the modelling approach taken, and their characteristics were further discussed together with current issues and future trends. Research in this area has evolved from survival analysis through statistical modelling using mainly clinical and anatomopathological data to the prediction of cancer prognosis through a multi-faceted data-driven approach by the integration of complex, multimodal, and high-dimensional data containing multi-omics and medical imaging information and by applying Machine Learning and, more recently, Deep Learning techniques. This review concludes that cancer prognosis predictive multimodal models are capable of better stratifying patients, which can improve clinical management and contribute to the implementation of personalised medicine as well as provide new and valuable knowledge on cancer biology and its progression.
癌症是全球最具危害性的疾病之一。因此,癌症患者的预后预测已成为一个备受关注的领域。在本综述中,我们收集了过去6年发表的43篇最前沿的科学论文,这些论文利用多模态数据构建了癌症预后预测模型。我们将数据的多模态定义为四种主要类型:临床、解剖病理学、分子和医学影像;并详细阐述了每种模态所提供的信息。根据所采用的建模方法,将这43项研究分为三类,并结合当前问题和未来趋势对其特点进行了进一步讨论。该领域的研究已从主要利用临床和解剖病理学数据通过统计建模进行生存分析,发展到通过整合包含多组学和医学影像信息的复杂、多模态和高维数据,并应用机器学习以及最近的深度学习技术,采用多方面数据驱动的方法来预测癌症预后。本综述得出结论,癌症预后预测多模态模型能够更好地对患者进行分层,这可以改善临床管理,有助于个性化医疗的实施,并为癌症生物学及其进展提供新的有价值的知识。