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How Much Chemistry Does a Deep Neural Network Need to Know to Make Accurate Predictions?

机译:深度神经网络需要多少化学性能需要了解准确的预测?

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The meteoric rise of deep learning models in computer vision research, having achieved human-level accuracy in image recognition tasks is firm evidence of the impact of representation learning of deep neural networks. In the chemistry domain, recent advances have also led to the development of similar CNN models, such as Chemception, that is trained to predict chemical properties using images of molecular drawings. In this work, we investigate the effects of systematically removing and adding localized domain-specific information to the image channels of the training data. By augmenting images with only 3 additional basic information, and without introducing any architectural changes, we demonstrate that an augmented Chemception (AugChemception) outperforms the original model in the prediction of toxicity, activity, and solvation free energy. Then, by altering the information content in the images, and examining the resulting model's performance, we also identify two distinct learning patterns in predicting toxicity/activity as compared to solvation free energy. These patterns suggest that Chemception is learning about its tasks in the manner that is consistent with established knowledge. Thus, our work demonstrates that advanced chemical knowledge is not a pre-requisite for deep learning models to accurately predict complex chemical properties.
机译:计算机视觉研究中深入学习模型的迁移升高,在图像识别任务中取得人力水平准确性是对深度神经网络表示学习的影响的坚定证据。在化学领域中,最近的进步也导致了类似CNN模型的发展,例如Chempection,其训练以预测使用分子附图的图像来预测化学性质。在这项工作中,我们调查系统地删除和添加本地化域特定信息的影响,对训练数据的图像信道。通过增加3个额外基本信息的图像,并且在不引入任何架构变革,我们证明了增强的化学(Augchemception)在毒性,活动和溶解的预测中优于原始模型。然后,通过改变图像中的信息内容,并检查所产生的模型的性能,与溶剂化自由能相比,我们还确定预测毒性/活性的两个不同的学习模式。这些模式表明,Chempection以与既定知识一致的方式学习其任务。因此,我们的工作表明,高级化学知识不是深度学习模型的预先要求,以准确预测复杂的化学性质。

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