基于位置敏感深度学习的毒性预测

IF 3.1 Q2 TOXICOLOGY
Xiu Huan Yap , Michael Raymer
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引用次数: 2

摘要

使用线性QSAR模型进行毒性预测时,在小规模、局部水平的类似化学物质上进行训练时,通常显示出良好的预测能力,但在跨越化学库的全球水平上则不行。我们假设大型化学毒性数据集通常具有局部线性数据结构,并提出了位置敏感深度学习器(LSDL),一种具有注意机制[1]的深度神经网络和可选的基于实例的特征加权组件,以解决具有局部变化噪声特征的异构分类空间的挑战。在精心构建的具有极度不平衡类(10%正)的合成数据上,具有学习特征权重的位置敏感深度学习器保持了较高的测试性能(AUC >0.9),而前馈神经网络出现过拟合数据(AUC <0.6)。对于Tox21数据集[2],位置敏感深度学习在12个标签中的9个上优于前馈神经网络。对于乙酰胆碱酯酶抑制(AChEi)[3]、雄激素受体活性协同建模项目(CoMPARA)[4]和急性口服毒性(AOT)[5]数据集,我们观察到,在几乎所有情况下,位置敏感深度学习与前传神经网络的组合都比单个模型表现出更好的测试性能。推广机器学习模型以拟合局部线性数据可能潜在地提高化学毒性模型的预测性。所提出的建模方法可以潜在地补充和增加当前用于集成和/或共识模型的预测毒性算法套件的多样性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toxicity prediction using locality-sensitive deep learner

Toxicity prediction using linear QSAR models typically show good predictivity when trained on a small-scale, local level of similar chemicals, but not on a global level spanning a chemical library. We hypothesize that large chemical toxicity datasets generally have a locally-linear data structure, and propose the locality-sensitive deep learner (LSDL), a deep neural network with attention mechanism [1] and an optional instance-based feature weighting component, to tackle the challenges of heterogeneous classification space with locally-varying noise features. On carefully-constructed synthetic data with extremely unbalanced classes (10% positive), the locality-sensitive deep learner with learned feature weights retained high test performance (AUC > 0.9) in the presence of 60% cluster-specific feature noise, while feed-forward neural network appeared to over-fit the data (AUC < 0.6). For the Tox21 dataset [2], locality-sensitive deep learner out-performed feed-forward neural network in 9 out of 12 labels. For acetylcholinesterase inhibition (AChEi) [3], Collaborative Modeling Project for Androgen Receptor Activity (CoMPARA) [4], and Acute Oral Toxicity (AOT) [5] datasets, we observed that the combination of locality-sensitive deep learner with feed-forward neural network showed improved test performance than individual models in almost all cases. Generalizing machine learning models to fit locally-linear data may potentially improve predictivity of chemical toxicity models. The proposed modeling approach could potentially complement and add diversity to the current suite of predictive toxicity algorithms for use in ensemble and/or consensus models.

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来源期刊
Computational Toxicology
Computational Toxicology Computer Science-Computer Science Applications
CiteScore
5.50
自引率
0.00%
发文量
53
审稿时长
56 days
期刊介绍: Computational Toxicology is an international journal publishing computational approaches that assist in the toxicological evaluation of new and existing chemical substances assisting in their safety assessment. -All effects relating to human health and environmental toxicity and fate -Prediction of toxicity, metabolism, fate and physico-chemical properties -The development of models from read-across, (Q)SARs, PBPK, QIVIVE, Multi-Scale Models -Big Data in toxicology: integration, management, analysis -Implementation of models through AOPs, IATA, TTC -Regulatory acceptance of models: evaluation, verification and validation -From metals, to small organic molecules to nanoparticles -Pharmaceuticals, pesticides, foods, cosmetics, fine chemicals -Bringing together the views of industry, regulators, academia, NGOs
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