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A Data-Driven Predictive Approach for Drug Delivery Using Machine Learning Techniques

机译:使用机器学习技术的药物驱动数据驱动的预测方法

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摘要

In drug delivery, there is often a trade-off between effective killing of the pathogen, and harmful side effects associated with the treatment. Due to the difficulty in testing every dosing scenario experimentally, a computational approach will be helpful to assist with the prediction of effective drug delivery methods. In this paper, we have developed a data-driven predictive system, using machine learning techniques, to determine, in silico, the effectiveness of drug dosing. The system framework is scalable, autonomous, robust, and has the ability to predict the effectiveness of the current drug treatment and the subsequent drug-pathogen dynamics. The system consists of a dynamic model incorporating both the drug concentration and pathogen population into distinct states. These states are then analyzed using a temporal model to describe the drug-cell interactions over time. The dynamic drug-cell interactions are learned in an adaptive fashion and used to make sequential predictions on the effectiveness of the dosing strategy. Incorporated into the system is the ability to adjust the sensitivity and specificity of the learned models based on a threshold level determined by the operator for the specific application. As a proof-of-concept, the system was validated experimentally using the pathogen Giardia lamblia and the drug metronidazole in vitro.
机译:在药物输送中,通常需要在有效杀死病原体和与治疗相关的有害副作用之间进行权衡。由于难以通过实验测试每种给药方案,因此计算方法将有助于预测有效的药物输送方法。在本文中,我们使用机器学习技术开发了一种数据驱动的预测系统,以计算机方式确定药物剂量的有效性。该系统框架具有可扩展性,自治性,鲁棒性,并且能够预测当前药物治疗的有效性以及随后的药物病原体动力学。该系统由一个动态模型组成,该模型将药物浓度和病原体种群都纳入了不同的状态。然后使用时间模型分析这些状态,以描述药物-细胞相互作用随时间的变化。动态药物-细胞相互作用以自适应方式学习,并用于对给药策略的有效性进行顺序预测。结合到系统中的功能是根据操作员为特定应用确定的阈值水平来调整学习模型的敏感性和特异性的能力。作为概念验证,该系统在体外使用病原体贾第鞭毛虫和甲硝唑进行了实验验证。

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