Human essential gene identification based on feature fusion and feature screening.

IF 1.9 4区 生物学 Q4 CELL BIOLOGY
Zhao-Yue Zhang, Yue-Er Fan, Cheng-Bing Huang, Meng-Ze Du
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引用次数: 0

Abstract

Essential genes are necessary to sustain the life of a species under adequate nutritional conditions. These genes have attracted significant attention for their potential as drug targets, especially in developing broad-spectrum antibacterial drugs. However, studying essential genes remains challenging due to their variability in specific environmental conditions. In this study, the authors aim to develop a powerful prediction model for identifying essential genes in humans. The authors first obtained the essential gene data from human cancer cell lines and characterised gene sequences using 7 feature encoding methods such as Kmer, the Composition of K-spaced Nucleic Acid Pairs, and Z-curve. Subsequently, feature fusion and feature optimisation strategies were employed to select the impactful features. Finally, machine learning algorithms were applied to construct the prediction models and evaluate their performance. The single-feature-based model achieved the highest area under the Receiver Operating Characteristic curve (AUC) of 0.830. After fusing and filtering these features, the classical machine learning models achieved the highest AUC at 0.823 while the deep learning model reached 0.860. Results obtained by the authors show that compared to using individual features, feature fusion and feature optimisation strategies significantly improved model performance. Moreover, the study provided an advantageous method for essential gene identification compared to other methods.

基于特征融合和特征筛选的人类基本基因识别。
在充足的营养条件下,必需基因是维持物种生命的必要条件。这些基因因其作为药物靶点的潜力而备受关注,尤其是在开发广谱抗菌药物方面。然而,由于基本基因在特定环境条件下的变异性,研究基本基因仍然具有挑战性。在这项研究中,作者旨在开发一个强大的预测模型,用于识别人类的重要基因。作者首先从人类癌症细胞系中获取了重要基因数据,并使用 Kmer、K 间隔核酸对的组成和 Z 曲线等 7 种特征编码方法对基因序列进行了表征。随后,采用了特征融合和特征优化策略来选择有影响的特征。最后,应用机器学习算法构建预测模型并评估其性能。基于单一特征的模型达到了最高的接收者工作特征曲线下面积(AUC),为 0.830。在对这些特征进行融合和过滤后,经典机器学习模型达到了最高的 AUC,为 0.823,而深度学习模型则达到了 0.860。作者获得的结果表明,与使用单个特征相比,特征融合和特征优化策略显著提高了模型性能。此外,与其他方法相比,该研究为重要基因的识别提供了一种有利的方法。
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来源期刊
IET Systems Biology
IET Systems Biology 生物-数学与计算生物学
CiteScore
4.20
自引率
4.30%
发文量
17
审稿时长
>12 weeks
期刊介绍: IET Systems Biology covers intra- and inter-cellular dynamics, using systems- and signal-oriented approaches. Papers that analyse genomic data in order to identify variables and basic relationships between them are considered if the results provide a basis for mathematical modelling and simulation of cellular dynamics. Manuscripts on molecular and cell biological studies are encouraged if the aim is a systems approach to dynamic interactions within and between cells. The scope includes the following topics: Genomics, transcriptomics, proteomics, metabolomics, cells, tissue and the physiome; molecular and cellular interaction, gene, cell and protein function; networks and pathways; metabolism and cell signalling; dynamics, regulation and control; systems, signals, and information; experimental data analysis; mathematical modelling, simulation and theoretical analysis; biological modelling, simulation, prediction and control; methodologies, databases, tools and algorithms for modelling and simulation; modelling, analysis and control of biological networks; synthetic biology and bioengineering based on systems biology.
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