Department of Chemistry and Applied Biosciences, Swiss Federal Institute of Technology (ETH), Vladimir-Prelog-Weg 4, CH-, 8093, Zurich, Switzerland.
Department of Earth and Environmental Sciences, University of Milano-Bicocca, P.za della Scienza, 1, IT-, 20126, Milan, Italy.
Mol Inform. 2018 Jan;37(1-2). doi: 10.1002/minf.201700153. Epub 2018 Jan 10.
Generative artificial intelligence offers a fresh view on molecular design. We present the first-time prospective application of a deep learning model for designing new druglike compounds with desired activities. For this purpose, we trained a recurrent neural network to capture the constitution of a large set of known bioactive compounds represented as SMILES strings. By transfer learning, this general model was fine-tuned on recognizing retinoid X and peroxisome proliferator-activated receptor agonists. We synthesized five top-ranking compounds designed by the generative model. Four of the compounds revealed nanomolar to low-micromolar receptor modulatory activity in cell-based assays. Apparently, the computational model intrinsically captured relevant chemical and biological knowledge without the need for explicit rules. The results of this study advocate generative artificial intelligence for prospective de novo molecular design, and demonstrate the potential of these methods for future medicinal chemistry.
生成式人工智能为分子设计提供了新的视角。我们首次前瞻性地应用深度学习模型来设计具有预期活性的新型类药性化合物。为此,我们训练了一个递归神经网络,以捕捉大量已知生物活性化合物的结构,这些化合物用 SMILES 字符串表示。通过迁移学习,该通用模型在识别视黄酸和过氧化物酶体增殖物激活受体激动剂方面进行了微调。我们合成了由生成模型设计的五个排名靠前的化合物。在基于细胞的测定中,有四个化合物表现出纳摩尔到低微摩尔的受体调节活性。显然,计算模型内在地捕捉到了相关的化学和生物学知识,而无需明确的规则。这项研究的结果支持生成式人工智能用于前瞻性的从头分子设计,并展示了这些方法在未来药物化学中的潜力。