Born Jannis, Manica Matteo, Oskooei Ali, Cadow Joris, Markert Greta, Rodríguez Martínez María
IBM Research Europe, 8803 Rüschlikon, Switzerland.
Department of Biosystems Science and Engineering, ETH Zurich, 4058 Basel, Switzerland.
iScience. 2021 Mar 5;24(4):102269. doi: 10.1016/j.isci.2021.102269. eCollection 2021 Apr 23.
With the advent of deep generative models in computational chemistry, drug design is undergoing an unprecedented transformation. Although deep learning approaches have shown potential in generating compounds with desired chemical properties, they disregard the cellular environment of target diseases. Bridging systems biology and drug design, we present a reinforcement learning method for de novo molecular design from gene expression profiles. We construct a hybrid Variational Autoencoder that tailors molecules to target-specific transcriptomic profiles, using an anticancer drug sensitivity prediction model (PaccMann) as reward function. Without incorporating information about anticancer drugs, the molecule generation is biased toward compounds with high predicted efficacy against cell lines or cancer types. The generation can be further refined by subsidiary constraints such as toxicity. Our cancer-type-specific candidate drugs are similar to cancer drugs in drug-likeness, synthesizability, and solubility and frequently exhibit the highest structural similarity to compounds with known efficacy against these cancer types.
随着计算化学中深度生成模型的出现,药物设计正在经历前所未有的变革。尽管深度学习方法在生成具有所需化学性质的化合物方面已显示出潜力,但它们忽略了目标疾病的细胞环境。为了将系统生物学与药物设计联系起来,我们提出了一种基于基因表达谱进行从头分子设计的强化学习方法。我们构建了一个混合变分自编码器,它使用抗癌药物敏感性预测模型(PaccMann)作为奖励函数,使分子适合特定靶点的转录组谱。在不纳入抗癌药物信息的情况下,分子生成偏向于对细胞系或癌症类型具有高预测疗效的化合物。生成过程可以通过诸如毒性等辅助约束进一步优化。我们针对特定癌症类型的候选药物在类药性、可合成性和溶解性方面与抗癌药物相似,并且经常与对这些癌症类型具有已知疗效的化合物表现出最高的结构相似性。