基于不确定性估计的折叠端到端化学药物设计:解决后gpt时代的幻觉

IF 6.8 1区 医学 Q1 CHEMISTRY, MEDICINAL
Feisheng Zhong*, Rongcai Yue, Jinxing Chen, Dingyan Wang, Shaojie Ma* and Shiming Chen*, 
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引用次数: 0

摘要

在后gpt时代,Llama-Gram代表了人工智能驱动的化学药物发现的一个有希望的进步,它基于分子结构决定性质的化学原理。这个基于折叠的端到端框架试图通过整合蛋白质折叠嵌入、基于图的分子表示和不确定性估计来解决传统大型语言模型的幻觉问题,以更好地捕捉蛋白质-配体相互作用的结构复杂性。通过利用冻结梯度ESMFold模型和Graph Transformer变体,lama-Gram旨在通过分组查询关注和受支点理论启发的Gram层来提高预测的准确性和可靠性。通过结合蛋白质折叠信息,该模型展示了与Transformer CPI 2.0和Graph-DTA等最先进的方法相比具有竞争力的性能,并提供了化合物-目标相互作用的改进。lama- gram提供了一种可扩展的创新化学理论,有助于加速化学药物的发现过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Folding-Based End-To-End Chemical Drug Design with Uncertainty Estimation: Tackling Hallucination in the Post-GPT Era

Folding-Based End-To-End Chemical Drug Design with Uncertainty Estimation: Tackling Hallucination in the Post-GPT Era

In the post-GPT era, Llama-Gram represents a promising advancement in AI-driven chemical drug discovery, grounded in the chemical principle that molecular structure determines properties. This folding-based end-to-end framework seeks to address the hallucination issues of traditional large language models by integrating protein folding embeddings, graph-based molecular representations, and uncertainty estimation to better capture the structural complexities of protein–ligand interactions. By leveraging the frozen-gradient ESMFold model and a Graph Transformer variant, Llama-Gram aims to enhance predictive accuracy and reliability through grouped-query attention and a Gram layer inspired by support points theory. By incorporating protein folding information, the model demonstrates competitive performance against state-of-the-art approaches such as Transformer CPI 2.0 and Graph-DTA, offering improvements in compound–target interaction. Llama-Gram provides a scalable and innovative chemical theory that could contribute to accelerating the chemical drug discovery process.

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来源期刊
Journal of Medicinal Chemistry
Journal of Medicinal Chemistry 医学-医药化学
CiteScore
4.00
自引率
11.00%
发文量
804
审稿时长
1.9 months
期刊介绍: The Journal of Medicinal Chemistry is a prestigious biweekly peer-reviewed publication that focuses on the multifaceted field of medicinal chemistry. Since its inception in 1959 as the Journal of Medicinal and Pharmaceutical Chemistry, it has evolved to become a cornerstone in the dissemination of research findings related to the design, synthesis, and development of therapeutic agents. The Journal of Medicinal Chemistry is recognized for its significant impact in the scientific community, as evidenced by its 2022 impact factor of 7.3. This metric reflects the journal's influence and the importance of its content in shaping the future of drug discovery and development. The journal serves as a vital resource for chemists, pharmacologists, and other researchers interested in the molecular mechanisms of drug action and the optimization of therapeutic compounds.
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