Brief Bioinform. 2019 Jul 19;20(4):1434-1448. doi: 10.1093/bib/bby004.
Currently, the development of medicines for complex diseases requires the development of combination drug therapies. It is necessary because in many cases, one drug cannot target all necessary points of intervention. For example, in cancer therapy, a physician often meets a patient having a genomic profile including more than five molecular aberrations. Drug combination therapy has been an area of interest for a while, for example the classical work of Loewe devoted to the synergism of drugs was published in 1928-and it is still used in calculations for optimal drug combinations. More recently, over the past several years, there has been an explosion in the available information related to the properties of drugs and the biomedical parameters of patients. For the drugs, hundreds of 2D and 3D molecular descriptors for medicines are now available, while for patients, large data sets related to genetic/proteomic and metabolomics profiles of the patients are now available, as well as the more traditional data relating to the histology, history of treatments, pretreatment state of the organism, etc. Moreover, during disease progression, the genetic profile can change. Thus, the ability to optimize drug combinations for each patient is rapidly moving beyond the comprehension and capabilities of an individual physician. This is the reason, that biomedical informatics methods have been developed and one of the more promising directions in this field is the application of artificial intelligence (AI). In this review, we discuss several AI methods that have been successfully implemented in several instances of combination drug therapy from HIV, hypertension, infectious diseases to cancer. The data clearly show that the combination of rule-based expert systems with machine learning algorithms may be promising direction in this field.
目前,复杂疾病药物的开发需要开发联合药物疗法。这是必要的,因为在许多情况下,一种药物不能针对所有必要的干预点。例如,在癌症治疗中,医生经常遇到基因组谱中包含超过五个分子异常的患者。药物联合治疗一直是一个感兴趣的领域,例如,Loewe 于 1928 年发表的关于药物协同作用的经典著作至今仍用于计算最佳药物组合。最近,在过去几年中,与药物特性和患者生物医学参数相关的可用信息呈爆炸式增长。对于药物,现在有数百种二维和三维药物分子描述符,而对于患者,现在有大量与患者的遗传/蛋白质组学和代谢组学图谱相关的数据,以及更传统的与组织学、治疗史、预处理机体状态等相关的数据。此外,在疾病进展过程中,遗传谱可能会发生变化。因此,为每个患者优化药物组合的能力迅速超出了个体医生的理解和能力范围。这就是为什么已经开发了生物医学信息学方法,并且该领域更有前途的方向之一是应用人工智能(AI)。在这篇综述中,我们讨论了几种已成功应用于艾滋病毒、高血压、传染病和癌症等联合药物治疗实例的人工智能方法。数据清楚地表明,基于规则的专家系统与机器学习算法的结合可能是该领域有前途的方向。