Rafique Raihan, Islam S M Riazul, Kazi Julhash U
Ideflod AB, Lund, Sweden.
Department of Computer Science and Engineering, Sejong University, Seoul, South Korea.
Comput Struct Biotechnol J. 2021 Jul 8;19:4003-4017. doi: 10.1016/j.csbj.2021.07.003. eCollection 2021.
Resistance to therapy remains a major cause of cancer treatment failures, resulting in many cancer-related deaths. Resistance can occur at any time during the treatment, even at the beginning. The current treatment plan is dependent mainly on cancer subtypes and the presence of genetic mutations. Evidently, the presence of a genetic mutation does not always predict the therapeutic response and can vary for different cancer subtypes. Therefore, there is an unmet need for predictive models to match a cancer patient with a specific drug or drug combination. Recent advancements in predictive models using artificial intelligence have shown great promise in preclinical settings. However, despite massive improvements in computational power, building clinically useable models remains challenging due to a lack of clinically meaningful pharmacogenomic data. In this review, we provide an overview of recent advancements in therapeutic response prediction using machine learning, which is the most widely used branch of artificial intelligence. We describe the basics of machine learning algorithms, illustrate their use, and highlight the current challenges in therapy response prediction for clinical practice.
对治疗产生耐药性仍然是癌症治疗失败的主要原因,导致许多与癌症相关的死亡。耐药性可能在治疗的任何阶段出现,甚至在治疗开始时就会出现。当前的治疗方案主要取决于癌症亚型和基因突变的存在情况。显然,基因突变的存在并不总能预测治疗反应,并且在不同的癌症亚型中可能有所不同。因此,迫切需要预测模型来为癌症患者匹配特定的药物或药物组合。利用人工智能的预测模型最近取得的进展在临床前环境中显示出了巨大的前景。然而,尽管计算能力有了大幅提高,但由于缺乏具有临床意义的药物基因组数据,构建临床可用的模型仍然具有挑战性。在这篇综述中,我们概述了使用机器学习进行治疗反应预测的最新进展,机器学习是人工智能应用最广泛的分支。我们描述了机器学习算法的基础知识,举例说明了它们的用途,并强调了临床实践中治疗反应预测目前面临的挑战。