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Machine learning applications in microbial ecology human microbiome studies and environmental monitoring

机译:微生物生态学人类微生物研究和环境监测中的机器学习应用

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摘要

Advances in nucleic acid sequencing technology have enabled expansion of our ability to profile microbial diversity. These large datasets of taxonomic and functional diversity are key to better understanding microbial ecology. Machine learning has proven to be a useful approach for analyzing microbial community data and making predictions about outcomes including human and environmental health. Machine learning applied to microbial community profiles has been used to predict disease states in human health, environmental quality and presence of contamination in the environment, and as trace evidence in forensics. Machine learning has appeal as a powerful tool that can provide deep insights into microbial communities and identify patterns in microbial community data. However, often machine learning models can be used as black boxes to predict a specific outcome, with little understanding of how the models arrived at predictions. Complex machine learning algorithms often may value higher accuracy and performance at the sacrifice of interpretability. In order to leverage machine learning into more translational research related to the microbiome and strengthen our ability to extract meaningful biological information, it is important for models to be interpretable. Here we review current trends in machine learning applications in microbial ecology as well as some of the important challenges and opportunities for more broad application of machine learning to understanding microbial communities.
机译:核酸测序技术的进展使我们能够扩展我们的微生物多样性的能力。这些大型分类和功能多样性的数据集是更好地理解微生物生态学的关键。机器学习已被证明是分析微生物群落数据的有用方法,并制定关于包括人类和环境健康的结果的预测。应用于微生物社区型材的机器学习已被用于预测人类健康,环境质量和环境中污染的存在的疾病状态,以及在法医学中的痕迹证据。机器学习作为一种强大的工具,可以为微生物群落提供深入的见解,并识别微生物群落数据中的模式。然而,通常可以使用机器学习模型作为黑匣子来预测特定结果,几乎没有了解模型如何到达预测。复杂的机器学习算法通常可能在牺牲可解释性时重视更高的准确性和性能。为了利用机器学习与微生物组有关的更多翻译研究并加强我们提取有意义的生物信息的能力,对于可解释的模型来说很重要。在这里,我们审查了微生物生态学中机器学习应用的当前趋势,以及一些重要的挑战和机遇,以便更广泛地应用机器学习以了解微生物社区。

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