GCN-BBB:基于图卷积神经网络的深度学习血脑屏障(BBB)渗透性药物分析。

IF 3.7 3区 医学 Q1 PHARMACOLOGY & PHARMACY AAPS Journal Pub Date : 2025-04-03 DOI:10.1208/s12248-025-01059-0
Yankang Jing, Guangyi Zhao, Yuanyuan Xu, Terence McGuire, Ganqian Hou, Jack Zhao, Maozi Chen, Oscar Lopez, Ying Xue, Xiang-Qun Xie
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引用次数: 0

摘要

血脑屏障(BBB)是中枢神经系统(CNS)和外周系统之间的选择性屏障,调节分子的分布。血脑屏障的通透性在中枢神经系统靶向药物的开发中起着至关重要的作用,例如胶质母细胞瘤相关药物的开发。此外,更多的中枢神经系统疾病仍然存在重大挑战,例如阿尔茨海默病(AD)等神经系统疾病和药物滥用。相反,需要不穿过血脑屏障的大麻素药物来避免脱靶中枢神经系统的精神药物作用。体外和体内实验测量血脑屏障通透性是昂贵和低通量的。计算药物分析建模,特别是使用深度学习图神经网络(gnn),提供了一个有希望的替代方案。gnn擅长捕捉基于图形的信息中的复杂关系,比如小分子结构。在本研究中,我们利用药物的图形表示建立了血脑屏障通透性的GNNs模型。使用分子指纹或物理化学描述符将gnn与其他算法进行比较。以1924个分子为样本,采用归一化拉普拉斯矩阵的卷积图神经网络模型(GCN_2)的GNNs模型的准确率为0.94,召回率为0.96,F1得分为0.95,MCC得分为0.77。这优于其他带有分子指纹的机器学习算法。研究结果表明,结合gnn结构的小分子图形表示在预测血脑屏障通透性方面具有很高的准确性和召回率。所建立的GNNs模型可用于新药开发的初始筛选阶段。
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GCN-BBB: Deep Learning Blood-Brain Barrier (BBB) Permeability PharmacoAnalytics with Graph Convolutional Neural (GCN) Network.

The Blood-Brain Barrier (BBB) is a selective barrier between the Central Nervous System (CNS) and the peripheral system, regulating the distribution of molecules. BBB permeability has been crucial in CNS-targeting drug development, such as glioblastoma-related drug discovery. In addition, more CNS diseases still present significant challenges, for instance, neurological disorders like Alzheimer's Disease (AD) and drug abuse. Conversely, cannabinoid drugs that do not cross the BBB are needed to avoid off-target CNS psychotropic effects. In vitro and in vivo experiments measuring BBB permeability are costly and low throughput. Computational pharmacoanalytics modeling, particularly using deep-learning Graph Neural Networks (GNNs), offers a promising alternative. GNNs excel at capturing intricate relationships in graph-based information, such as small molecular structures. In this study, we developed GNNs model for BBB permeability using the graph representation of drugs. The GNNs were compared with other algorithms using molecular fingerprints or physical-chemical descriptors. With a dataset of 1924 molecules, the best GNNs model, a convolutional graph neural network using a normalized Laplacian matrix (GCN_2), achieved a precision of 0.94, recall of 0.96, F1 score of 0.95, and MCC score of 0.77. This outperformed other machine learning algorithms with molecular fingerprints. The findings indicate that the graphic representation of small molecules combined with GNNs architecture is powerful in predicting BBB permeability with high accuracy and recall. The developed GNNs model can be utilized in the initial screening stage for new drug development.

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来源期刊
AAPS Journal
AAPS Journal 医学-药学
CiteScore
7.80
自引率
4.40%
发文量
109
审稿时长
1 months
期刊介绍: The AAPS Journal, an official journal of the American Association of Pharmaceutical Scientists (AAPS), publishes novel and significant findings in the various areas of pharmaceutical sciences impacting human and veterinary therapeutics, including: · Drug Design and Discovery · Pharmaceutical Biotechnology · Biopharmaceutics, Formulation, and Drug Delivery · Metabolism and Transport · Pharmacokinetics, Pharmacodynamics, and Pharmacometrics · Translational Research · Clinical Evaluations and Therapeutic Outcomes · Regulatory Science We invite submissions under the following article types: · Original Research Articles · Reviews and Mini-reviews · White Papers, Commentaries, and Editorials · Meeting Reports · Brief/Technical Reports and Rapid Communications · Regulatory Notes · Tutorials · Protocols in the Pharmaceutical Sciences In addition, The AAPS Journal publishes themes, organized by guest editors, which are focused on particular areas of current interest to our field.
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