Cangiotti Nicolò, Grasso Stefano
Department of Mathematics, Politecnico di Milano, via Bonardi 9, Campus Leonardo, Milan, 20133, Italy.
Lesaffre International, 101 Rue de Menin, Marcq-en-Barœul, 59700, France.
Acta Biotheor. 2025 Aug 1;73(3):11. doi: 10.1007/s10441-025-09500-9.
While RNA folding prediction remains challenging, even with machine and deep learning methods, it can also be approached from a topological mathematics perspective. The purpose of the present paper is to elucidate this problem for students and researchers in both the mathematical physics and biology fields, fostering interest in developing novel theoretical and applied solutions that could propel RNA research forward. With this intention, the mathematical method, based on matrix field theory, to compute the topological classification of RNA structures is reviewed. Similarly, McGenus, a computational software that exploits matrix field theory for topological and folding predictions, is examined. To further illustrate the outcomes of this mathematical approach, two types of analyses are performed: the prediction results from McGenus are compared with topological information extracted from experimentally-determined RNA structures, and the topology of RNA structures is investigated for biological significance, both in evolutionary and functional terms. Lastly, we advocate for more research efforts to be conducted at the intersection between physics, mathematics and biology, with a particular focus on the potential contributions that topology can make to the study of RNA folding and structure.
尽管RNA折叠预测仍然具有挑战性,即使使用机器学习和深度学习方法也是如此,但它也可以从拓扑数学的角度来探讨。本文的目的是为数学物理和生物学领域的学生和研究人员阐明这个问题,激发他们对开发新的理论和应用解决方案的兴趣,从而推动RNA研究的发展。出于这个目的,本文回顾了基于矩阵场论计算RNA结构拓扑分类的数学方法。同样,还研究了一种利用矩阵场论进行拓扑和折叠预测的计算软件McGenus。为了进一步说明这种数学方法的结果,进行了两种类型的分析:将McGenus的预测结果与从实验确定的RNA结构中提取的拓扑信息进行比较,并从进化和功能方面研究RNA结构的拓扑学的生物学意义。最后,我们主张在物理、数学和生物学的交叉领域开展更多研究工作,特别关注拓扑学对RNA折叠和结构研究可能做出的贡献。