ML-Based Models as a Strategy to Discover Novel Antiepileptic Drugs Targeting Sodium Receptor Channel.

IF 2.9 4区 医学 Q3 CHEMISTRY, MEDICINAL
Priyanka Andola, Mukesh Doble
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引用次数: 0

Abstract

Background: Epilepsy remains the most common and chronic disorder demanding longterm management. The impact of epilepsy disease is a cause of great concern and has resulted in efforts to develop treatment for epilepsy. It occurs due to an increase in neuronal excitability produced by changes affecting the voltage-dependent properties of Voltage-gated Sodium Channels (VGSCs).

Materials and methods: Weka, a popular suite for machine learning techniques, was used on a dataset comprising 1781 chemical compounds, showing inhibition activity for sodium channel protein IX alpha subunit. After the analysis of the dataset obtained from ChEMBL, molecular fingerprints were computed for the molecules by the ChemDes server. Different classifiers available in the Weka software were explored to find out the algorithm that could be more suitable for the dataset or produce the highest accuracy for the classification of molecules as active or inactive.

Results: In this work, a comprehensive comparison of different classifiers in the Weka suite for the prediction of active, inactive, and intermediate classes of molecules showing inhibition against human NaV1.7 protein was made. The prediction accuracy of these classifiers was assessed based on performance measures, including accuracy, Root Mean Squared Error (RMSE), Receiver Operating Characteristic (ROC), precision, Mathews Correlation Coefficient (MCC), recall, and Fmeasure. The comparison of results for model performance demonstrated that the OneR classifier performed best over others when validated using percentage split, cross-validation, and supplied test methods. J48 and Bagging also performed equally well in the prediction of different classes with an MCC value of 1, ROC area equal to 1, and RMSE close to 0.

Conclusion: Machine Learning (ML) tools provide a fast, reliable, and cost-effective approach required to identify or predict inhibitory molecules for the treatment of a disease. This study shows that the ML methods, particularly OneR, J48, and Bagging have the ability to identify active and inactive classes of compounds for the human NaV1.7 protein target. Such predictive models may provide a reliable and time-saving approach that can aid in the design of potential inhibitors for the treatment of epilepsy disease.

将基于 ML 的模型作为发现靶向钠受体通道的新型抗癫痫药物的策略。
背景:癫痫是最常见的慢性疾病,需要长期治疗。癫痫疾病的影响引起了人们的极大关注,并促使人们努力开发癫痫治疗方法。它的发生是由于影响电压门控钠通道(VGSCs)电压依赖特性的变化导致神经元兴奋性增加:Weka是一款流行的机器学习技术套件,用于分析由1781种化合物组成的数据集,这些化合物对钠离子通道蛋白IX alpha亚基具有抑制活性。在对从 ChEMBL 获取的数据集进行分析后,ChemDes 服务器计算出了分子的分子指纹。对 Weka 软件中的不同分类器进行了探索,以找出更适合该数据集的算法,或对分子进行活性或非活性分类的最高准确率:在这项工作中,对 Weka 套件中不同的分类器进行了综合比较,以预测对人类 NaV1.7 蛋白有抑制作用的分子的活性、非活性和中间类别。这些分类器的预测准确度是根据性能指标来评估的,包括准确度、均方根误差(RMSE)、接收者工作特征(ROC)、精确度、马修斯相关系数(MCC)、召回率和 Fmeasure。对模型性能的比较结果表明,在使用百分比分割、交叉验证和供应测试方法进行验证时,OneR 分类器的表现优于其他分类器。J48 和 Bagging 分类器在预测不同类别时表现同样出色,MCC 值为 1,ROC 面积等于 1,RMSE 接近 0.结论:机器学习(ML)工具为识别或预测治疗疾病的抑制性分子提供了一种快速、可靠且经济有效的方法。本研究表明,ML 方法,尤其是 OneR、J48 和 Bagging 能够识别人类 NaV1.7 蛋白靶点的活性和非活性化合物类别。这种预测模型可提供一种可靠、省时的方法,有助于设计治疗癫痫疾病的潜在抑制剂。
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来源期刊
CiteScore
6.40
自引率
2.90%
发文量
186
审稿时长
3-8 weeks
期刊介绍: Current Topics in Medicinal Chemistry is a forum for the review of areas of keen and topical interest to medicinal chemists and others in the allied disciplines. Each issue is solely devoted to a specific topic, containing six to nine reviews, which provide the reader a comprehensive survey of that area. A Guest Editor who is an expert in the topic under review, will assemble each issue. The scope of Current Topics in Medicinal Chemistry will cover all areas of medicinal chemistry, including current developments in rational drug design, synthetic chemistry, bioorganic chemistry, high-throughput screening, combinatorial chemistry, compound diversity measurements, drug absorption, drug distribution, metabolism, new and emerging drug targets, natural products, pharmacogenomics, and structure-activity relationships. Medicinal chemistry is a rapidly maturing discipline. The study of how structure and function are related is absolutely essential to understanding the molecular basis of life. Current Topics in Medicinal Chemistry aims to contribute to the growth of scientific knowledge and insight, and facilitate the discovery and development of new therapeutic agents to treat debilitating human disorders. The journal is essential for every medicinal chemist who wishes to be kept informed and up-to-date with the latest and most important advances.
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