通过量子阈值法(QuanT)识别微生物组数据中未测量的异质性。

Jiuyao Lu, Glen A Satten, Katie A Meyer, Lenore J Launer, Wodan Ling, Ni Zhao
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引用次数: 0

摘要

由于处理和实验设计的不同,微生物组数据表现出技术和生物医学的异质性,如果不加以纠正,可能会导致虚假结果。在这里,我们介绍了量化阈值(QuanT)方法,这是一种全面的非参数隐藏变量推断方法,可适应微生物读数计数和相对丰度的复杂分布。我们将 QuanT 应用于合成数据集和真实数据集,并展示了它识别未测量异质性和改进下游分析的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying unmeasured heterogeneity in microbiome data via quantile thresholding (QuanT).

Microbiome data, like other high-throughput data, suffer from technical heterogeneity stemming from differential experimental designs and processing. In addition to measured artifacts such as batch effects, there is heterogeneity due to unknown or unmeasured factors, which lead to spurious conclusions if unaccounted for. With the advent of large-scale multi-center microbiome studies and the increasing availability of public datasets, this issue becomes more pronounced. Current approaches for addressing unmeasured heterogeneity in high-throughput data were developed for microarray and/or RNA sequencing data. They cannot accommodate the unique characteristics of microbiome data such as sparsity and over-dispersion. Here, we introduce Quantile Thresholding (QuanT), a novel non-parametric approach for identifying unmeasured heterogeneity tailored to microbiome data. QuanT applies quantile regression across multiple quantile levels to threshold the microbiome abundance data and uncovers latent heterogeneity using thresholded binary residual matrices. We validated QuanT using both synthetic and real microbiome datasets, demonstrating its superiority in capturing and mitigating heterogeneity and improving the accuracy of downstream analyses, such as prediction analysis, differential abundance tests, and community-level diversity evaluations.

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