State Key Laboratory of Robotics, Shenyang Institute of Automation, Chinese Academy of Sciences, Shenyang, China.
Institutes for Robotics and Intelligent Manufacturing, Chinese Academy of Sciences, Shenyang, China.
BMC Bioinformatics. 2021 Sep 21;22(1):451. doi: 10.1186/s12859-021-04364-5.
Combinatorial drug therapy for complex diseases, such as HSV infection and cancers, has a more significant efficacy than single-drug treatment. However, one key challenge is how to effectively and efficiently determine the optimal concentrations of combinatorial drugs because the number of drug combinations increases exponentially with the types of drugs.
In this study, a searching method based on Markov chain is presented to optimize the combinatorial drug concentrations. In this method, the searching process of the optimal drug concentrations is converted into a Markov chain process with state variables representing all possible combinations of discretized drug concentrations. The transition probability matrix is updated by comparing the drug responses of the adjacent states in the network of the Markov chain and the drug concentration optimization is turned to seek the state with maximum value in the stationary distribution vector. Its performance is compared with five stochastic optimization algorithms as benchmark methods by simulation and biological experiments. Both simulation results and experimental data demonstrate that the Markov chain-based approach is more reliable and efficient in seeking global optimum than the benchmark algorithms. Furthermore, the Markov chain-based approach allows parallel implementation of all drug testing experiments, and largely reduces the times in the biological experiments.
This article provides a versatile method for combinatorial drug screening, which is of great significance for clinical drug combination therapy.
针对 HSV 感染和癌症等复杂疾病的组合药物疗法比单一药物治疗具有更显著的疗效。然而,一个关键的挑战是如何有效地确定组合药物的最佳浓度,因为随着药物种类的增加,药物组合的数量呈指数级增长。
本研究提出了一种基于马尔可夫链的搜索方法来优化组合药物浓度。在该方法中,将最优药物浓度的搜索过程转化为具有状态变量的马尔可夫链过程,状态变量表示离散药物浓度的所有可能组合。通过比较马尔可夫链网络中相邻状态的药物反应,更新转移概率矩阵,药物浓度优化转化为寻找平稳分布向量中最大值的状态。通过模拟和生物实验,将其性能与五种随机优化算法作为基准方法进行比较。模拟结果和实验数据均表明,基于马尔可夫链的方法在寻找全局最优方面比基准算法更可靠、更高效。此外,基于马尔可夫链的方法允许并行执行所有药物测试实验,大大减少了生物实验的次数。
本文提供了一种通用的组合药物筛选方法,对临床药物联合治疗具有重要意义。