TMolNet:用于分子性质预测的任务感知多模态神经网络。

IF 3.8 2区 化学 Q2 CHEMISTRY, APPLIED
Cao Han, Xianghong Tang, Jianguang Lu
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引用次数: 0

摘要

分子性质预测在药物发现、材料科学和化学生物学中起着至关重要的作用。尽管分子数据本质上是多模态的——包括1D序列或指纹、2D拓扑图和3D几何构象——但传统方法通常依赖于单模态输入,因此无法利用跨模态互补性并限制预测准确性。为了克服这一限制,我们提出了TMolNet,一个用于自适应多模态融合的任务感知深度学习框架。该体系结构集成了特定于模态的特征提取器,以从1D、2D和3D输入中学习不同的表示,减少由不完整或未充分表示的模态引起的偏差。对比学习方案在共享潜在空间内对齐跨模态的表示,增强语义一致性。在此基础上,提出了一种基于数据特征和任务需求的任务感知门控模块,对各模态的贡献进行动态调节。为了在训练过程中促进模态的平衡使用,我们引入了模态熵正则化损失,这鼓励了学习表征的多样性和稳定性。在多个基准数据集上的综合实验结果表明,TMolNet在预测精度和泛化方面取得了与现有先进方法相当的性能。这些发现强调了我们的方法的有效性,并推动了多模态分子性质预测的最新进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TMolNet: a task-aware multimodal neural network for molecular property prediction.

Molecular property prediction plays a vital role in drug discovery, materials science, and chemical biology. Although molecular data are intrinsically multimodal-comprising 1D sequences or fingerprints, 2D topological graphs, and 3D geometric conformations-conventional approaches often rely on single-modal inputs, thereby failing to leverage cross-modal complementarities and limiting predictive accuracy. To overcome this limitation, we propose TMolNet, a task-aware deep learning framework for adaptive multimodal fusion. The architecture integrates modality-specific feature extractors to learn distinct representations from 1D, 2D, and 3D inputs, reducing the bias caused by incomplete or under-represented modalities. A contrastive learning scheme aligns the representations across modalities within a shared latent space, enhancing semantic consistency. Furthermore, a novel task-aware gating module dynamically modulates the contribution of each modality based on both data characteristics and task requirements. To promote balanced modality usage during training, we introduce a modality entropy regularization loss, which encourages diversity and stability in learned representations. Comprehensive experimental results on multiple benchmark datasets show that TMolNet achieves competitive performance against existing advanced methods in predictive accuracy and generalization. These findings underscore the efficacy of our approach and advance the state-of-the-art in multimodal molecular property prediction.

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来源期刊
Molecular Diversity
Molecular Diversity 化学-化学综合
CiteScore
7.30
自引率
7.90%
发文量
219
审稿时长
2.7 months
期刊介绍: Molecular Diversity is a new publication forum for the rapid publication of refereed papers dedicated to describing the development, application and theory of molecular diversity and combinatorial chemistry in basic and applied research and drug discovery. The journal publishes both short and full papers, perspectives, news and reviews dealing with all aspects of the generation of molecular diversity, application of diversity for screening against alternative targets of all types (biological, biophysical, technological), analysis of results obtained and their application in various scientific disciplines/approaches including: combinatorial chemistry and parallel synthesis; small molecule libraries; microwave synthesis; flow synthesis; fluorous synthesis; diversity oriented synthesis (DOS); nanoreactors; click chemistry; multiplex technologies; fragment- and ligand-based design; structure/function/SAR; computational chemistry and molecular design; chemoinformatics; screening techniques and screening interfaces; analytical and purification methods; robotics, automation and miniaturization; targeted libraries; display libraries; peptides and peptoids; proteins; oligonucleotides; carbohydrates; natural diversity; new methods of library formulation and deconvolution; directed evolution, origin of life and recombination; search techniques, landscapes, random chemistry and more;
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