Do Hung Nguyen, Kubicek-Sutherland Jessica Z, Gnanakaran Sandrasegaram
Theoretical Biology and Biophysics Group, Theoretical Division, Los Alamos, New Mexico 87545, United States.
Physical Chemistry and Applied Spectroscopy Group, Chemistry Division, Los Alamos National Laboratory, Los Alamos, New Mexico 87545, United States.
ACS Chem Neurosci. 2025 Jun 18;16(12):2196-2207. doi: 10.1021/acschemneuro.4c00760. Epub 2025 May 29.
Conotoxins are a family of highly toxic neurotoxins composed of cysteine-rich peptides produced by marine cone snails. The most lethal cone snail species to humans is with fatality rates of up to ∼65% from a single sting, which is caused mostly by the activity of α-conotoxins against human nicotinic acetylcholine receptors (nAChRs). While sequence-based machine learning (ML) classifiers have been trained to identify targets of conotoxins binding voltage-gated ion channels, no ML model has been built to predict the subtype-specific nAChR targets of α-conotoxins. Here, we trained an ML model in a semi-supervised manner to predict the specificity of α-conotoxin binding toward different human nAChR subtypes to overcome the challenge of limited data in subtype-specific nAChR targets of α-conotoxins and the issue that one α-conotoxin can bind multiple nAChR subtypes with high selectivity. We considered additional features of sequences of α-conotoxins in training our ML model, including the secondary structure propensities and electrostatic properties, which resulted in better prediction capability for the ML model. Notably, we identify that most α-conotoxins bind to α3β2, α1γδ, and α7 subtypes of human nAChRs. Our findings from this study provide a framework for predicting targets of various kinds of toxins.
芋螺毒素是一类由海洋芋螺产生的富含半胱氨酸的高毒性神经毒素家族。对人类最致命的芋螺种类单次叮咬的致死率高达约65%,这主要是由α-芋螺毒素对人类烟碱型乙酰胆碱受体(nAChRs)的作用导致的。虽然基于序列的机器学习(ML)分类器已被训练用于识别芋螺毒素结合电压门控离子通道的靶点,但尚未构建用于预测α-芋螺毒素亚型特异性nAChR靶点的ML模型。在此,我们以半监督方式训练了一个ML模型,以预测α-芋螺毒素对不同人类nAChR亚型的结合特异性,以克服α-芋螺毒素亚型特异性nAChR靶点数据有限的挑战以及一种α-芋螺毒素可高选择性结合多种nAChR亚型的问题。在训练我们的ML模型时,我们考虑了α-芋螺毒素序列的其他特征,包括二级结构倾向和静电性质,这导致ML模型具有更好的预测能力。值得注意的是,我们确定大多数α-芋螺毒素与人类nAChRs的α3β2、α1γδ和α7亚型结合。我们这项研究的结果为预测各种毒素的靶点提供了一个框架。