PreLect: Prevalence leveraged consistent feature selection decodes microbial signatures across cohorts.

IF 7.8 1区 生物学 Q1 BIOTECHNOLOGY & APPLIED MICROBIOLOGY npj Biofilms and Microbiomes Pub Date : 2025-01-03 DOI:10.1038/s41522-024-00598-2
Yin-Cheng Chen, Yin-Yuan Su, Tzu-Yu Chu, Ming-Fong Wu, Chieh-Chun Huang, Chen-Ching Lin
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Abstract

The intricate nature of microbiota sequencing data-high dimensionality and sparsity-presents a challenge in identifying informative and reproducible microbial features for both research and clinical applications. Addressing this, we introduce PreLect, an innovative feature selection framework that harnesses microbes' prevalence to facilitate consistent selection in sparse microbiota data. Upon rigorous benchmarking against established feature selection methodologies across 42 microbiome datasets, PreLect demonstrated superior classification capabilities compared to statistical methods and outperformed machine learning-based methods by selecting features with greater prevalence and abundance. A significant strength of PreLect lies in its ability to reliably identify reproducible microbial features across varied cohorts. Applied to colorectal cancer, PreLect identifies key microbes and highlights crucial pathways, such as lipopolysaccharide and glycerophospholipid biosynthesis, in cancer progression. This case study exemplifies PreLect's utility in discerning clinically relevant microbial signatures. In summary, PreLect's accuracy and robustness make it a significant advancement in the analysis of complex microbiota data.

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预选:流行率杠杆一致的特征选择解码跨队列的微生物特征。
微生物群测序数据的复杂性-高维度和稀疏性-在确定研究和临床应用的信息性和可重复性微生物特征方面提出了挑战。为了解决这个问题,我们引入了PreLect,这是一个创新的特征选择框架,利用微生物的普遍性来促进稀疏微生物群数据中的一致选择。通过对42个微生物组数据集中已建立的特征选择方法进行严格的基准测试,PreLect与统计方法相比展示了优越的分类能力,并且通过选择具有更高流行度和丰度的特征,优于基于机器学习的方法。PreLect的一个重要优势在于它能够可靠地识别不同队列中可重复的微生物特征。应用于结直肠癌,PreLect识别关键微生物,并突出癌症进展中的关键途径,如脂多糖和甘油磷脂的生物合成。本案例研究举例说明了PreLect在识别临床相关微生物特征方面的实用性。总之,PreLect的准确性和稳健性使其在分析复杂微生物群数据方面取得了重大进展。
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来源期刊
npj Biofilms and Microbiomes
npj Biofilms and Microbiomes Immunology and Microbiology-Microbiology
CiteScore
12.10
自引率
3.30%
发文量
91
审稿时长
9 weeks
期刊介绍: npj Biofilms and Microbiomes is a comprehensive platform that promotes research on biofilms and microbiomes across various scientific disciplines. The journal facilitates cross-disciplinary discussions to enhance our understanding of the biology, ecology, and communal functions of biofilms, populations, and communities. It also focuses on applications in the medical, environmental, and engineering domains. The scope of the journal encompasses all aspects of the field, ranging from cell-cell communication and single cell interactions to the microbiomes of humans, animals, plants, and natural and built environments. The journal also welcomes research on the virome, phageome, mycome, and fungome. It publishes both applied science and theoretical work. As an open access and interdisciplinary journal, its primary goal is to publish significant scientific advancements in microbial biofilms and microbiomes. The journal enables discussions that span multiple disciplines and contributes to our understanding of the social behavior of microbial biofilm populations and communities, and their impact on life, human health, and the environment.
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