Valerio Matteo, Inno Alessandro, Zambelli Alberto, Cortesi Laura, Lorusso Domenica, Viassolo Valeria, Verzè Matteo, Nicolis Fabrizio, Gori Stefania
Medical Oncology, IRCCS Sacro Cuore Don Calabria Hospital, 37024 Negrar di Valpolicella, Verona, Italy.
Medical Oncology Unit, IRCCS Istituto Clinico Humanitas and Department of Biomedical Sciences, Humanitas University, 20089 Rozzano, Milan, Italy.
Cancers (Basel). 2024 Aug 14;16(16):2845. doi: 10.3390/cancers16162845.
(1) Background: The identification of tumor subtypes is fundamental in precision medicine for accurate diagnoses and personalized therapies. Cancer development is often driven by the accumulation of somatic mutations that can cause alterations in tissue functions and morphologies. In this work, a method based on a deep neural network integrated into a network-based stratification framework (D3NS) is proposed to stratify tumors according to somatic mutations. (2) Methods: This approach leverages the power of deep neural networks to detect hidden information in the data by combining the knowledge contained in a network of gene interactions, as typical of network-based stratification methods. D3NS was applied using real-world data from The Cancer Genome Atlas for bladder, ovarian, and kidney cancers. (3) Results: This technique allows for the identification of tumor subtypes characterized by different survival rates and significant associations with several clinical outcomes (tumor stage, grade or response to therapy). (4) Conclusion: D3NS can provide a base model in cancer research and could be considered as a useful tool for tumor stratification, offering potential support in clinical settings.
(1) 背景:肿瘤亚型的识别是精准医学中进行准确诊断和个性化治疗的基础。癌症的发展通常由体细胞突变的积累驱动,这些突变可导致组织功能和形态的改变。在这项工作中,提出了一种基于深度神经网络并集成到基于网络的分层框架(D3NS)中的方法,用于根据体细胞突变对肿瘤进行分层。(2) 方法:这种方法利用深度神经网络的能力,通过结合基因相互作用网络中包含的知识来检测数据中的隐藏信息,这是基于网络的分层方法的典型特征。使用来自癌症基因组图谱的膀胱癌、卵巢癌和肾癌的真实世界数据应用D3NS。(3) 结果:该技术能够识别出具有不同生存率且与多种临床结果(肿瘤分期、分级或对治疗的反应)有显著关联的肿瘤亚型。(4) 结论:D3NS可为癌症研究提供一个基础模型,并可被视为肿瘤分层的有用工具,在临床环境中提供潜在支持。