针对A类gpcr的更安全药物的大规模筛选的微调深度迁移学习模型。

IF 2.9 3区 生物学 Q3 BIOCHEMISTRY & MOLECULAR BIOLOGY
Biochemistry Biochemistry Pub Date : 2025-03-18 Epub Date: 2025-03-08 DOI:10.1021/acs.biochem.4c00832
Davide Provasi, Marta Filizola
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引用次数: 0

摘要

G蛋白偶联受体(gpcr)由于其在细胞信号传导中的关键作用和作为药物靶点的突出地位,一直是研究的焦点。然而,直接将药物疗效与受体介导的特定细胞内转导的激活和由此产生的生理结果联系起来仍然具有挑战性。目前尚不清楚某些药物的增强治疗窗口(定义为提供有效治疗且副作用最小的剂量范围)是否源于它们在所有信号通路上的低内在功效或配体偏倚,其中特定的换能器亚型在给定的细胞系统中比参考配体优先被激活。通过低内在功效或配体偏倚来准确预测更安全的化合物,将极大地推动药物开发。虽然人工智能模型有望进行此类预测,但能够可靠地预测具有确定生物活性的GPCR配体的深度学习模型的开发仍然具有挑战性,这主要是由于高质量数据的可用性有限。为了解决这个问题,我们对所有a类gpcr的受体序列和配体数据集进行了预训练,然后对其进行了改进,以预测单个a类gpcr的低功效化合物或偏倚激动剂。这是通过迁移学习和结合目标序列的自然语言处理和信号受体突变效应的神经网络实现的。这两种微调模型──一种用于低效激动剂,另一种用于偏倚激动剂──可根据需要为每种A类GPCR提供,并可对大型化学文库进行虚拟筛选,从而促进发现可能提高安全性的化合物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fine-Tuned Deep Transfer Learning Models for Large Screenings of Safer Drugs Targeting Class A GPCRs.

G protein-coupled receptors (GPCRs) remain a focal point of research due to their critical roles in cell signaling and their prominence as drug targets. However, directly linking drug efficacy to the receptor-mediated activation of specific intracellular transducers and the resulting physiological outcomes remains challenging. It is unclear whether the enhanced therapeutic window of certain drugs─defined as the dose range that provides effective therapy with minimal side effects─stems from their low intrinsic efficacy across all signaling pathways or ligand bias, wherein specific transducer subtypes are preferentially activated in a given cellular system compared to a reference ligand. Accurately predicting safer compounds, through either low intrinsic efficacy or ligand bias, would greatly advance drug development. While AI models hold promise for such predictions, the development of deep learning models capable of reliably forecasting GPCR ligands with defined bioactivities remains challenging, largely due to the limited availability of high-quality data. To address this, we pretrained a model on receptor sequences and ligand data sets across all class A GPCRs and then refined it to predict low-efficacy compounds or biased agonists for individual class A GPCRs. This was achieved using transfer learning and a neural network incorporating natural language processing of target sequences and receptor mutation effects on signaling. These two fine-tuned models─one for low-efficacy agonists and one for biased agonists─are available on demand for each class A GPCR and enable virtual screening of large chemical libraries, thereby facilitating the discovery of compounds with potentially improved safety profiles.

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来源期刊
Biochemistry Biochemistry
Biochemistry Biochemistry 生物-生化与分子生物学
CiteScore
5.50
自引率
3.40%
发文量
336
审稿时长
1-2 weeks
期刊介绍: Biochemistry provides an international forum for publishing exceptional, rigorous, high-impact research across all of biological chemistry. This broad scope includes studies on the chemical, physical, mechanistic, and/or structural basis of biological or cell function, and encompasses the fields of chemical biology, synthetic biology, disease biology, cell biology, nucleic acid biology, neuroscience, structural biology, and biophysics. In addition to traditional Research Articles, Biochemistry also publishes Communications, Viewpoints, and Perspectives, as well as From the Bench articles that report new methods of particular interest to the biological chemistry community.
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