F5C-finder: An Explainable and Ensemble Biological Language Model for Predicting 5-Formylcytidine Modifications on mRNA

Guohao Wang, Ting Liu, Hongqiang Lyu, Ze Liu
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Abstract

As a prevalent and dynamically regulated epigenetic modification, 5-formylcytidine (f5C) is crucial in various biological processes. However, traditional experimental methods for f5C detection are often laborious and time-consuming, limiting their ability to map f5C sites across the transcriptome comprehensively. While computational approaches offer a cost-effective and high-throughput alternative, no recognition model for f5C has been developed to date. Drawing inspiration from language models in natural language processing, this study presents f5C-finder, an ensemble neural network-based model utilizing multi-head attention for the identification of f5C. Five distinct feature extraction methods were employed to construct five individual artificial neural networks, and these networks were subsequently integrated through ensemble learning to create f5C-finder. 10-fold cross-validation and independent tests demonstrate that f5C-finder achieves state-of-the-art (SOTA) performance with AUC of 0.807 and 0.827, respectively. The result highlights the effectiveness of biological language model in capturing both the order (sequential) and functional meaning (semantics) within genomes. Furthermore, the built-in interpretability allows us to understand what the model is learning, creating a bridge between identifying key sequential elements and a deeper exploration of their biological functions.
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F5C-finder:用于预测 mRNA 上 5-甲酰基胞嘧啶修饰的可解释和集合生物语言模型
5-甲酰基胞嘧啶(f5C)是一种普遍存在且受动态调控的表观遗传修饰,在各种生物过程中至关重要。然而,检测 f5C 的传统实验方法往往费时费力,限制了它们在转录组中全面绘制 f5C 位点的能力。虽然计算方法提供了一种具有成本效益和高通量的替代方法,但迄今为止还没有开发出 f5C 的识别模型。本研究从自然语言处理中的语言模型中汲取灵感,提出了一种基于神经网络的集合模型--f5C-finder,它利用多头注意力来识别5C。研究采用了五种不同的特征提取方法来构建五个单独的人工神经网络,然后通过集合学习对这些网络进行整合,从而创建了 f5C-finder。10倍交叉验证和独立测试表明,f5C-finder的AUC分别为0.807和0.827,达到了最先进水平(SOTA)。此外,内置的可解释性使我们能够理解模型在学习什么,从而在识别关键序列元素和深入探索其生物功能之间架起了一座桥梁。
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