三维分子预训练的分数去噪

Shi Feng, Yuyan Ni, Yanyan Lan, Zhiming Ma, Wei-Ying Ma
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引用次数: 3

摘要

坐标去噪是一种很有前途的三维分子预训练方法,在各种下游药物发现任务中取得了显著的效果。从理论上讲,目标相当于学习力场,这对后续任务有帮助。然而,坐标去噪学习有效力场存在两个挑战,即低覆盖样本和各向同性力场。其根本原因是现有的去噪方法所假设的分子分布未能捕捉到分子的各向异性特征。为了解决这些问题,我们提出了一种新的混合噪声策略,包括二面角和坐标上的噪声。然而,用传统的方法去噪这种混合噪声并不等同于学习力场。通过理论推导,我们发现这个问题是由输入构象对协方差的依赖性引起的。为此,我们提出将两种类型的噪声解耦,并设计了一种新的分数阶去噪方法(Frad),该方法只对后一种坐标部分进行去噪。这样,Frad既具有采样更多低能结构的优点,又具有力场等效性。大量的实验表明,Frad在分子表征方面是有效的,在QM9的12个任务中有9个任务和MD17的8个目标中有7个目标具有最新的技术水平。
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Fractional Denoising for 3D Molecular Pre-training
Coordinate denoising is a promising 3D molecular pre-training method, which has achieved remarkable performance in various downstream drug discovery tasks. Theoretically, the objective is equivalent to learning the force field, which is revealed helpful for downstream tasks. Nevertheless, there are two challenges for coordinate denoising to learn an effective force field, i.e. low coverage samples and isotropic force field. The underlying reason is that molecular distributions assumed by existing denoising methods fail to capture the anisotropic characteristic of molecules. To tackle these challenges, we propose a novel hybrid noise strategy, including noises on both dihedral angel and coordinate. However, denoising such hybrid noise in a traditional way is no more equivalent to learning the force field. Through theoretical deductions, we find that the problem is caused by the dependency of the input conformation for covariance. To this end, we propose to decouple the two types of noise and design a novel fractional denoising method (Frad), which only denoises the latter coordinate part. In this way, Frad enjoys both the merits of sampling more low-energy structures and the force field equivalence. Extensive experiments show the effectiveness of Frad in molecular representation, with a new state-of-the-art on 9 out of 12 tasks of QM9 and on 7 out of 8 targets of MD17.
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