PED:用于阿尔茨海默氏症药物分子生成的新型预测器-编码器-解码器模型

Dayan Liu, Tao Song, Kang Na, Shudong Wang
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摘要

阿尔茨海默病(AD)是一种逐渐进展的神经退行性疾病,其特点是发病隐匿。乙酰胆碱酯酶(AChE)是一种高效水解酶,可催化乙酰胆碱(ACh)的水解,从而调节突触中乙酰胆碱的浓度,进而终止乙酰胆碱介导的神经传递。目前有抑制 AChE 活性的抑制剂,但其副作用不可避免。最近,在 Al 的各种应用领域中,出现了基于神经网络的分子设计模型,并取得了令人鼓舞的成果。然而,在条件分子生成任务中,目前大多数生成模型都需要额外的优化算法才能生成具有预期特性的分子,这使得分子生成效率低下。因此,我们引入了一种认知条件分子设计模型,称为 PED,它利用了变异自动编码器。它的主要功能是根据特定的特性生成一个分子库。从这个库中,我们可以找出抑制 AChE 活性而不会产生不良影响的分子。这些分子可作为先导化合物,加快注意力缺失症的治疗,同时提高人工智能的认知能力。在本研究中,我们的目标是利用从 Binding DB 收集到的 AChE 活性化合物,在 ZINC 数据库上对预先训练好的 VAE 模型进行微调。与其他分子生成模型不同,PED 可同时进行性质预测和分子生成,因此无需额外的优化过程即可生成具有预期性质的分子。评估实验表明,所提出的模型在相同数据集上的表现优于其他基准方法。结果表明,该模型能很好地学习潜在化学空间,并能很好地生成具有预期性质的分子。在基准数据集上进行的大量实验证实了 PED 的效率和功效。此外,我们还通过分子对接验证了分子与 AChE 的结合能力。结果表明,我们的AD分子生成系统具有出色的认知能力,分子库中的分子能很好地与AChE结合并抑制其活性,从而阻止ACh的水解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PED: a novel predictor-encoder-decoder model for Alzheimer drug molecular generation
Alzheimer's disease (AD) is a gradually advancing neurodegenerative disorder characterized by a concealed onset. Acetylcholinesterase (AChE) is an efficient hydrolase that catalyzes the hydrolysis of acetylcholine (ACh), which regulates the concentration of ACh at synapses and then terminates ACh-mediated neurotransmission. There are inhibitors to inhibit the activity of AChE currently, but its side effects are inevitable. In various application fields where Al have gained prominence, neural network-based models for molecular design have recently emerged and demonstrate encouraging outcomes. However, in the conditional molecular generation task, most of the current generation models need additional optimization algorithms to generate molecules with intended properties which make molecular generation inefficient. Consequently, we introduce a cognitive-conditional molecular design model, termed PED, which leverages the variational auto-encoder. Its primary function is to adeptly produce a molecular library tailored for specific properties. From this library, we can then identify molecules that inhibit AChE activity without adverse effects. These molecules serve as lead compounds, hastening AD treatment and concurrently enhancing the AI's cognitive abilities. In this study, we aim to fine-tune a VAE model pre-trained on the ZINC database using active compounds of AChE collected from Binding DB. Different from other molecular generation models, the PED can simultaneously perform both property prediction and molecule generation, consequently, it can generate molecules with intended properties without additional optimization process. Experiments of evaluation show that proposed model performs better than other methods benchmarked on the same data sets. The results indicated that the model learns a good representation of potential chemical space, it can well generate molecules with intended properties. Extensive experiments on benchmark datasets confirmed PED's efficiency and efficacy. Furthermore, we also verified the binding ability of molecules to AChE through molecular docking. The results showed that our molecular generation system for AD shows excellent cognitive capacities, the molecules within the molecular library could bind well to AChE and inhibit its activity, thus preventing the hydrolysis of ACh.
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