STLBRF: an improved random forest algorithm based on standardized-threshold for feature screening of gene expression data.

IF 2.5 3区 生物学 Q3 BIOTECHNOLOGY & APPLIED MICROBIOLOGY Briefings in Functional Genomics Pub Date : 2025-01-15 DOI:10.1093/bfgp/elae048
Huini Feng, Ying Ju, Xiaofeng Yin, Wenshi Qiu, Xu Zhang
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Abstract

When the traditional random forest (RF) algorithm is used to select feature elements in biostatistical data, a large amount of noise data and parameters can affect the importance of the selected feature elements, making the control of feature selection difficult. Therefore, it is a challenge for the traditional RF algorithm to preserve the accuracy of algorithm results in the presence of noise data. Generally, directly removing noise data can result in significant bias in the results. In this study, we develop a new algorithm, standardized threshold, and loops based random forest (STLBRF), and apply it to the field of gene expression data for feature gene selection. This algorithm, based on the traditional RF algorithm, combines backward elimination and K-fold cross-validation to construct a cyclic system and set a standardized threshold: error increment. The algorithm overcomes the shortcomings of existing gene selection methods. We compare ridge regression, lasso regression, elastic net regression, the traditional RF algorithm, and our improved RF algorithm using three real gene expression datasets and conducting a quantitative analysis. To ensure the reliability of the results, we validate the effectiveness of the genes selected by these methods using the Random Forest classifier. The results indicate that, compared to other methods, the STLBRF algorithm achieves not only higher effectiveness in feature gene selection but also better control over the number of selected genes. Our method offers reliable technical support for feature expression analysis and research on biomarker selection.

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STLBRF:基于标准化阈值的改进型随机森林算法,用于基因表达数据的特征筛选。
传统的随机森林(random forest, RF)算法在生物统计数据中选择特征元素时,大量的噪声数据和参数会影响所选特征元素的重要性,给特征选择的控制带来困难。因此,传统的射频算法在存在噪声数据的情况下如何保持算法结果的准确性是一个挑战。通常,直接去除噪声数据会导致结果出现明显偏差。在本研究中,我们开发了一种新的算法,标准化阈值和基于循环的随机森林(STLBRF),并将其应用于基因表达数据领域的特征基因选择。该算法在传统射频算法的基础上,结合反向消除和K-fold交叉验证构建循环系统,并设置标准化阈值:误差增量。该算法克服了现有基因选择方法的不足。我们比较了岭回归、lasso回归、弹性网回归、传统的射频算法和改进的射频算法,并使用三个真实的基因表达数据集进行了定量分析。为了确保结果的可靠性,我们使用随机森林分类器验证了这些方法选择的基因的有效性。结果表明,与其他方法相比,STLBRF算法不仅在特征基因选择方面具有更高的有效性,而且对选择的基因数量也有更好的控制。该方法为特征表达分析和生物标志物选择研究提供了可靠的技术支持。
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来源期刊
Briefings in Functional Genomics
Briefings in Functional Genomics BIOTECHNOLOGY & APPLIED MICROBIOLOGY-GENETICS & HEREDITY
CiteScore
6.30
自引率
2.50%
发文量
37
审稿时长
6-12 weeks
期刊介绍: Briefings in Functional Genomics publishes high quality peer reviewed articles that focus on the use, development or exploitation of genomic approaches, and their application to all areas of biological research. As well as exploring thematic areas where these techniques and protocols are being used, articles review the impact that these approaches have had, or are likely to have, on their field. Subjects covered by the Journal include but are not restricted to: the identification and functional characterisation of coding and non-coding features in genomes, microarray technologies, gene expression profiling, next generation sequencing, pharmacogenomics, phenomics, SNP technologies, transgenic systems, mutation screens and genotyping. Articles range in scope and depth from the introductory level to specific details of protocols and analyses, encompassing bacterial, fungal, plant, animal and human data. The editorial board welcome the submission of review articles for publication. Essential criteria for the publication of papers is that they do not contain primary data, and that they are high quality, clearly written review articles which provide a balanced, highly informative and up to date perspective to researchers in the field of functional genomics.
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