SIGMAP: an explainable artificial intelligence tool for SIGMA-1 receptor affinity prediction.

IF 4.1 4区 医学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Maria Cristina Lomuscio, Nicola Corriero, Vittoria Nanna, Antonio Piccinno, Michele Saviano, Rosa Lanzilotti, Carmen Abate, Domenico Alberga, Giuseppe Felice Mangiatordi
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引用次数: 0

Abstract

Developing sigma-1 receptor (S1R) modulators is considered a valuable therapeutic strategy to counteract neurodegeneration, cancer progression, and viral infections, including COVID-19. In this context, in silico tools capable of accurately predicting S1R affinity are highly desirable. Herein, we present a panel of 25 classifiers trained on a curated dataset of high-quality bioactivity data of small molecules, experimentally tested as potential S1R modulators. All data were extracted from ChEMBL v33, and the models were built using five different fingerprints and machine-learning algorithms. Remarkably, most of the developed classifiers demonstrated good predictive performance. The best-performing model, which achieved an AUC of 0.90, was developed using the support vector machine algorithm with Morgan fingerprints. To provide additional, user-friendly information for medicinal chemists in the rational design of S1R modulators, two independent explainable artificial intelligence (XAI) approaches were employed, namely Shapley Additive exPlanations (SHAP) and Contrastive Explanation. The top-performing model is accessible through a user-friendly web platform, SIGMAP (https://www.ba.ic.cnr.it/softwareic/sigmap/), specifically developed for this purpose. With its intuitive interface, robust predictive power, and implemented XAI approaches, SIGMAP serves as a valuable tool for the rational design of new and more effective S1R modulators.

SIGMAP:用于预测SIGMA-1受体亲和力的可解释的人工智能工具。
开发sigma-1受体(S1R)调节剂被认为是对抗神经退行性疾病、癌症进展和病毒感染(包括COVID-19)的有价值的治疗策略。在这种情况下,能够准确预测S1R亲和力的计算机工具是非常可取的。在此,我们提出了一个由25个分类器组成的小组,这些分类器是在高质量的小分子生物活性数据集上训练的,实验测试了这些小分子作为潜在的S1R调节剂。所有数据均从ChEMBL v33中提取,并使用五种不同的指纹和机器学习算法建立模型。值得注意的是,大多数开发的分类器显示出良好的预测性能。采用摩根指纹支持向量机算法建立了性能最好的模型,AUC为0.90。为了给药物化学家合理设计S1R调节剂提供额外的、用户友好的信息,我们采用了两种独立的可解释人工智能(XAI)方法,即Shapley加性解释(SHAP)和对比解释(comparative Explanation)。性能最好的模型可以通过用户友好的web平台SIGMAP (https://www.ba.ic.cnr.it/softwareic/sigmap/)访问,该平台是专门为此目的开发的。凭借其直观的界面、强大的预测能力和实现的XAI方法,SIGMAP可作为合理设计新型和更有效的S1R调制器的宝贵工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.80
自引率
2.40%
发文量
129
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