微生物ラマンオミクスのハイスループット解析を可能にするRamExを開発(Scientists Develop RamEx to Unlock High-Throughput Analysis for Microbial Ramanomics)

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2026-02-13 中国科学院(CAS)

中国科学院青島生物能源・生物プロセス技術研究所の研究チームは、微生物ラマノミクスの大規模データ解析を可能にする計算ツール「RamEx」を開発し、Microbiome誌に発表した。ラマンフローサイトメトリーの高スループット化で生じる膨大かつ高次元・高ノイズのスペクトルデータに対応するため、前処理から品質管理、データマイニングまでを統合。独自のICODアルゴリズムにより外れ値を教師なしで自動検出・除去し、解析精度を向上させた。病原菌や酵母系で検証し、同一遺伝子集団内の代謝多様性や細胞内脂質・タンパク質などの動態把握に成功。単一細胞レベルでの微生物機能解析を加速する基盤を示した。

微生物ラマンオミクスのハイスループット解析を可能にするRamExを開発(Scientists Develop RamEx to Unlock High-Throughput Analysis for Microbial Ramanomics)
RamEX: a modularized pipeline for ramanome analysis. (Image by LIU Yang)

<関連情報>

RamEx: 正確な品質評価を備えた高スループット微生物ラマンオノーム分析のためのRパッケージ RamEx: an R package for high-throughput microbial ramanome analyses with accurate quality assessment

Yanmei Zhang,Gongchao Jing,Rongze Chen,Yanhai Gong,Yuandong Li,Yongshun Wang,Xixian Wang,Jia Zhang,Yuli Mao,Yuehui He,Xiaoshan Zheng,Mingchao Wang,Hao Yuan,Jian Xu & Luyang Sun
Microbiome  Published:10 February 2026
DOI:https://doi.org/10.1186/s40168-026-02339-3  An unedited version of this manuscript

Abstract

Background

Microbial single-cell Raman spectroscopy (SCRS) has emerged as a powerful tool for label-free phenotyping, enabling rapid characterization of microbial diversity, metabolic states, and functional interactions within complex communities. However, high-throughput SCRS datasets often contain spectral anomalies from noise and fluorescence interference, which obscure microbial signatures and hinder accurate classification. Robust algorithms for outlier detection and microbial ramanome analysis remain underdeveloped.

Results

Here, we introduce RamEx, an R package specifically designed for high-throughput microbial ramanome analyses with robust quality control and phenotypic classification. At the core of RamEx is the Iterative Convolutional Outlier Detection (ICOD) algorithm, which dynamically detects spectral anomalies without requiring predefined thresholds. Benchmarking on both simulated and real microbial datasets—including pathogenic bacteria, probiotic strains, and yeast fermentation populations—demonstrated that ICOD achieves an F1 score of 0.97 on simulated datasets and 0.74 on real datasets, outperforming existing approaches by at least 19.8%. Beyond anomaly detection, RamEx provides a modular and scalable workflow for microbial phenotype differentiation, taxonomic marker identification, metabolic-associated fingerprinting, and intra-population heterogeneity analysis. It integrates Raman-based species-specific biomarkers, enabling precise classification of microbial communities and facilitating functional trait mapping at the single-cell level. To support large-scale studies, RamEx incorporates C++ acceleration, GPU parallelization, and optimized memory management, enabling the rapid processing of over one million microbial spectra within an hour.

Conclusions

By bridging the gap between high-throughput Raman-based microbial phenotyping and computational analysis, RamEx provides a comprehensive toolkit for exploring microbial ecology, metabolic interactions, and antibiotic susceptibility at the single-cell resolution. RamEx is freely available under the MIT license at https://github.com/qibebt-bioinfo/RamEx.

生物化学工学
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