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通过深层潜在空间预测微生物组。

Predicting microbiomes through a deep latent space.

机构信息

Centro de Biotecnología y Genómica de Plantas (CBGP, UPM-INIA), Universidad Politécnica de Madrid (UPM) - Instituto Nacional de Investigación y Tecnología Agraria y Alimentaria (INIA), Campus de Montegancedo-UPM, 28223-Pozuelo de Alarcón, Madrid, Spain.

Serendeepia Research, 28905 Getafe (Madrid), Spain.

出版信息

Bioinformatics. 2021 Jun 16;37(10):1444-1451. doi: 10.1093/bioinformatics/btaa971.

Abstract

MOTIVATION

Microbial communities influence their environment by modifying the availability of compounds, such as nutrients or chemical elicitors. Knowing the microbial composition of a site is therefore relevant to improve productivity or health. However, sequencing facilities are not always available, or may be prohibitively expensive in some cases. Thus, it would be desirable to computationally predict the microbial composition from more accessible, easily-measured features.

RESULTS

Integrating deep learning techniques with microbiome data, we propose an artificial neural network architecture based on heterogeneous autoencoders to condense the long vector of microbial abundance values into a deep latent space representation. Then, we design a model to predict the deep latent space and, consequently, to predict the complete microbial composition using environmental features as input. The performance of our system is examined using the rhizosphere microbiome of Maize. We reconstruct the microbial composition (717 taxa) from the deep latent space (10 values) with high fidelity (>0.9 Pearson correlation). We then successfully predict microbial composition from environmental variables, such as plant age, temperature or precipitation (0.73 Pearson correlation, 0.42 Bray-Curtis). We extend this to predict microbiome composition under hypothetical scenarios, such as future climate change conditions. Finally, via transfer learning, we predict microbial composition in a distinct scenario with only 100 sequences, and distinct environmental features. We propose that our deep latent space may assist microbiome-engineering strategies when technical or financial resources are limited, through predicting current or future microbiome compositions.

AVAILABILITY AND IMPLEMENTATION

Software, results and data are available at https://github.com/jorgemf/DeepLatentMicrobiome.

SUPPLEMENTARY INFORMATION

Supplementary data are available at Bioinformatics online.

摘要

动机

微生物群落通过改变化合物(如营养物质或化学诱导剂)的可用性来影响其环境。因此,了解一个地点的微生物组成对于提高生产力或健康水平是很重要的。然而,测序设备并不总是可用的,在某些情况下,成本可能过高。因此,从更容易获得、更容易测量的特征出发,通过计算来预测微生物的组成是可取的。

结果

我们将深度学习技术与微生物组数据相结合,提出了一种基于异构自动编码器的人工神经网络架构,用于将微生物丰度值的长向量压缩到深层潜在空间表示中。然后,我们设计了一个模型来预测深层潜在空间,并使用环境特征作为输入来预测完整的微生物组成。我们使用玉米根际微生物组来检验我们系统的性能。我们从深层潜在空间(10 个值)中重建微生物组成(717 个分类群),具有很高的保真度(>0.9 Pearson 相关系数)。然后,我们成功地从环境变量(如植物年龄、温度或降水)预测微生物组成(0.73 Pearson 相关系数,0.42 Bray-Curtis)。我们将其扩展到预测未来气候变化条件下的微生物组组成。最后,通过迁移学习,我们仅用 100 个序列和不同的环境特征来预测一个不同场景中的微生物组成。我们提出,我们的深层潜在空间可以通过预测当前或未来的微生物组组成,在技术或财务资源有限的情况下,辅助微生物组工程策略。

可用性和实现

软件、结果和数据可在 https://github.com/jorgemf/DeepLatentMicrobiome 上获得。

补充信息

补充数据可在生物信息学在线获得。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/15fd/8208755/f10c272ab12d/btaa971f1.jpg

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