Molecular property prediction is crucial for drug discovery and materials science, yet existing approaches suffer from limited interpretability, poor cross-task generalization, and lack of chemical reasoning capabilities. Traditional machine learning models struggle with task transferability, while specialized molecular language models provide little insight into their decision-making processes. To address these limitations, we propose \textbf{MPPReasoner}, a multimodal large language model that incorporates chemical reasoning for molecular property prediction. Our approach, built upon Qwen2.5-VL-7B-Instruct, integrates molecular images with SMILES strings to enable comprehensive molecular understanding. We develop a two-stage training strategy: supervised fine-tuning (SFT) using 16,000 high-quality reasoning trajectories generated through expert knowledge and multiple teacher models, followed by Reinforcement Learning from Principle-Guided Rewards (RLPGR). RLPGR employs verifiable, rule-based rewards that systematically evaluate chemical principle application, molecular structure analysis, and logical consistency through computational verification. Extensive experiments across 8 datasets demonstrate significant performance improvements, with MPPReasoner outperforming the best baselines by 7.91\% and 4.53\% on in-distribution and out-of-distribution tasks respectively. MPPReasoner exhibits exceptional cross-task generalization and generates chemically sound reasoning paths that provide valuable insights into molecular property analysis, substantially enhancing both interpretability and practical utility for chemists. Code is available at https://anonymous.4open.science/r/MPPReasoner-12687.
翻译:分子性质预测对于药物发现和材料科学至关重要,但现有方法存在可解释性有限、跨任务泛化能力差以及缺乏化学推理能力等问题。传统机器学习模型难以实现任务可迁移性,而专门的分子语言模型对其决策过程提供的洞察甚少。为应对这些局限,我们提出\textbf{MPPReasoner}——一种融合化学推理能力的多模态大语言模型,用于分子性质预测。该方法基于Qwen2.5-VL-7B-Instruct构建,通过整合分子图像与SMILES字符串实现全面的分子理解。我们开发了一种两阶段训练策略:首先使用通过专家知识和多个教师模型生成的16,000条高质量推理轨迹进行监督微调,随后实施基于原理指导奖励的强化学习。该强化学习方法采用可验证的、基于规则的奖励机制,通过计算验证系统评估化学原理应用、分子结构分析和逻辑一致性。在8个数据集上的大量实验表明性能显著提升,MPPReasoner在分布内和分布外任务上分别以7.91%和4.53%的优势超越最佳基线模型。MPPReasoner展现出卓越的跨任务泛化能力,并能生成符合化学原理的推理路径,为分子性质分析提供宝贵见解,显著增强了化学研究中的可解释性与实际应用价值。代码发布于https://anonymous.4open.science/r/MPPReasoner-12687。