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Cancer modeling: From mechanistic to data-driven approaches, and from fundamental insights to clinical applications

机译:癌症建模:从机械到数据驱动的方法,从根本见解到临床应用

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Cancer is still one of the major causes of death worldwide. Even if its comprehension is improving continuously, the complexity and heterogeneity of this group of diseases invariably make some cancer cases incurable and lethal. By focusing only on one or two cancerous molecular species simultaneously, traditional in vitro and in vivo approaches do not provide a global view on this disease and are sometimes unable to generate significant insights about cancer. In silico techniques are increasingly used in the oncology domain for their remarkable integration capacity. In basic cancer research, a vast number of mathematical and computational models has been implemented in the past decades, allowing for a better understanding of these complex diseases, generating new hypotheses and predictions, and guiding scientists towards the most impactful experiments. Although clinical uptake of such in silico approaches is still limited, some treatment strategies are currently under investigation in phase I or II clinical trials. Besides being responsible for new therapeutic ideas, in silico models could play a significant role in optimizing clinical trial design and patient stratification. This review provides a non-exhaustive overview of models according to their intrinsic features. In silico contributions to basic cancer science are discussed, using the hallmarks of cancer as a guidance. Subsequently, in silico cancer models, that are a part of currently ongoing clinical trials, are addressed. In a forward-looking section, issues such as the need for adequate regulatory processes related to in silico models, and advances in model technologies are discussed.
机译:癌症仍然是全世界死亡的主要原因之一。即使其理解力不断改善,这组疾病的复杂性和异质性也不明确地产生一些癌症病例,可抵抗和致命。仅通过同时关注一种或两种癌性分子物种,传统体外和体内方法不提供全球性对该疾病的看法,有时不能产生对癌症的显着洞察力。在Silico技术中越来越多地用于肿瘤结构领域,以获得显着的集成能力。在基础癌症研究中,在过去的几十年里已经实施了广泛的数学和计算模型,从而使这些复杂疾病更好地了解了这些复杂的疾病,产生了新的假设和预测,以及指导科学家迈向最有影响力的实验。虽然在硅化方法中的临床摄取仍然有限,但目前在I期或II期临床试验中正在调查一些治疗策略。除了负责新的治疗思想,在硅模型中,在优化临床试验设计和患者分层方面可能发挥重要作用。此审查提供了根据其内在特征的非详尽概述模型。在综合对基础癌症科学的贡献中,使用癌症的标志作为指导。随后,在硅癌模型中,是目前正在进行的临床试验的一部分。在前瞻性段中,讨论了诸如需要在Silico模型中有关的适当监管过程以及模型技术的进步的问题。

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