Arora Harkirat Singh, Lev Katherine, Robida Aaron, Velmurugan Ramraj, Chandrasekaran Sriram
Department of Biomedical Engineering, University of Michigan, Ann Arbor, MI, US, 48105.
Program in Chemical Biology, University of Michigan, Ann Arbor, MI, US, 48105.
medRxiv. 2025 Mar 20:2025.03.19.25324270. doi: 10.1101/2025.03.19.25324270.
Antimicrobial resistance poses a major global threat due to the diminishing efficacy of current treatments and limited new therapies. Combination therapy with existing drugs offers a promising solution, yet current empirical methods often lead to suboptimal efficacy and inadvertent toxicity. The high cost of experimentally testing numerous combinations underscores the need for data-driven methods to streamline treatment design. We introduce CALMA, an approach that predicts the potency and toxicity of multi-drug combinations in and . CALMA identified synergistic antimicrobial combinations involving vancomycin and isoniazid that were antagonistic for toxicity, which were validated using cell viability assays in human cell lines and through mining of patient health records that showed reduced side effects in patients taking combinations identified by CALMA. By combining mechanistic modelling with deep learning, CALMA improves the interpretability of neural networks, identifies key pathways influencing drug interactions, and prioritizes combinations with enhanced potency and reduced toxicity.
由于当前治疗方法的疗效不断下降以及新疗法有限,抗菌药物耐药性构成了重大的全球威胁。现有药物联合治疗提供了一个有前景的解决方案,但目前的经验性方法往往导致疗效欠佳和意外毒性。通过实验测试大量组合的高昂成本凸显了采用数据驱动方法来简化治疗方案设计的必要性。我们引入了CALMA,这是一种在体外和体内预测多药组合效力和毒性的方法。CALMA识别出了涉及万古霉素和异烟肼的协同抗菌组合,这些组合在毒性方面具有拮抗作用,这通过在人类细胞系中进行细胞活力测定以及挖掘患者健康记录得到了验证,后者显示服用CALMA识别出的组合的患者副作用减少。通过将机理建模与深度学习相结合,CALMA提高了神经网络的可解释性,识别出影响药物相互作用的关键途径,并对效力增强和毒性降低的组合进行了优先排序。