针对不同化学空间任务的新型多任务学习算法:以斑马鱼毒性预测为例

IF 7.1 2区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Run-Hsin Lin, Pinpin Lin, Chia-Chi Wang, Chun-Wei Tung
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引用次数: 0

摘要

数据匮乏是阻碍化学效应预测模型开发的最关键问题之一。利用相关任务知识的多任务学习算法显示出了处理数据有限任务的潜力。然而,目前的多任务方法主要侧重于从任务标签可用于大部分训练样本的数据集中学习。由于数据集是为不同目的生成的,具有不同的化学空间,因此传统的多任务学习方法可能并不适合。本研究提出了一种新颖的多任务学习方法 MTForestNet,它可以处理数据稀缺问题,并从具有不同化学空间的任务中学习。MTForestNet 由以渐进网络形式组织的随机森林分类器节点组成,每个节点代表一个从特定任务中学习到的随机森林模型。为了证明 MTForestNet 的有效性,我们收集了 48 个斑马鱼毒性数据集作为示例。其中,有两个任务与其他任务有很大不同,只有 1.3% 的化学物质与其他任务共享。在一项独立测试中,MTForestNet 的接收器工作特征曲线下面积(AUC)值高达 0.911,其性能优于单任务和多任务方法。从开发的斑马鱼毒性模型中得出的总体毒性与实验测定的总体毒性有很好的相关性。此外,所开发的斑马鱼毒性模型的输出结果可作为特征用于提高发育毒性的预测。所开发的模型可有效预测斑马鱼的毒性,预计所提出的 MTForestNet 可用于具有独特化学空间的任务,并可应用于其他任务。科学贡献 我们提出了一种新颖的多任务学习算法 MTForestNet,以解决使用具有独特化学空间的数据集开发模型所面临的挑战,这是化学信息学任务中的一个常见问题。以斑马鱼毒性预测模型为例,使用所提出的 MTForestNet 开发的模型比传统的单任务和多任务学习方法性能更优。此外,所开发的斑马鱼毒性预测模型还能减少动物试验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel multitask learning algorithm for tasks with distinct chemical space: zebrafish toxicity prediction as an example

Data scarcity is one of the most critical issues impeding the development of prediction models for chemical effects. Multitask learning algorithms leveraging knowledge from relevant tasks showed potential for dealing with tasks with limited data. However, current multitask methods mainly focus on learning from datasets whose task labels are available for most of the training samples. Since datasets were generated for different purposes with distinct chemical spaces, the conventional multitask learning methods may not be suitable. This study presents a novel multitask learning method MTForestNet that can deal with data scarcity problems and learn from tasks with distinct chemical space. The MTForestNet consists of nodes of random forest classifiers organized in the form of a progressive network, where each node represents a random forest model learned from a specific task. To demonstrate the effectiveness of the MTForestNet, 48 zebrafish toxicity datasets were collected and utilized as an example. Among them, two tasks are very different from other tasks with only 1.3% common chemicals shared with other tasks. In an independent test, MTForestNet with a high area under the receiver operating characteristic curve (AUC) value of 0.911 provided superior performance over compared single-task and multitask methods. The overall toxicity derived from the developed models of zebrafish toxicity is well correlated with the experimentally determined overall toxicity. In addition, the outputs from the developed models of zebrafish toxicity can be utilized as features to boost the prediction of developmental toxicity. The developed models are effective for predicting zebrafish toxicity and the proposed MTForestNet is expected to be useful for tasks with distinct chemical space that can be applied in other tasks.

Scieific contribution

A novel multitask learning algorithm MTForestNet was proposed to address the challenges of developing models using datasets with distinct chemical space that is a common issue of cheminformatics tasks. As an example, zebrafish toxicity prediction models were developed using the proposed MTForestNet which provide superior performance over conventional single-task and multitask learning methods. In addition, the developed zebrafish toxicity prediction models can reduce animal testing.

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来源期刊
Journal of Cheminformatics
Journal of Cheminformatics CHEMISTRY, MULTIDISCIPLINARY-COMPUTER SCIENCE, INFORMATION SYSTEMS
CiteScore
14.10
自引率
7.00%
发文量
82
审稿时长
3 months
期刊介绍: Journal of Cheminformatics is an open access journal publishing original peer-reviewed research in all aspects of cheminformatics and molecular modelling. Coverage includes, but is not limited to: chemical information systems, software and databases, and molecular modelling, chemical structure representations and their use in structure, substructure, and similarity searching of chemical substance and chemical reaction databases, computer and molecular graphics, computer-aided molecular design, expert systems, QSAR, and data mining techniques.
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