Model-free prediction of microbiome compositions

被引:1
|
作者
Asher, Eitan E. [1 ]
Bashan, Amir [1 ]
机构
[1] Bar Ilan Univ, Phys Dept, Ramat Gan, Israel
基金
以色列科学基金会;
关键词
PROBIOTICS;
D O I
10.1186/s40168-023-01721-9
中图分类号
Q93 [微生物学];
学科分类号
071005 ; 100705 ;
摘要
BackgroundThe recent recognition of the importance of the microbiome to the host's health and well-being has yielded efforts to develop therapies that aim to shift the microbiome from a disease-associated state to a healthier one. Direct manipulation techniques of the species' assemblage are currently available, e.g., using probiotics or narrow-spectrum antibiotics to introduce or eliminate specific taxa. However, predicting the species' abundances at the new state remains a challenge, mainly due to the difficulties of deciphering the delicate underlying network of ecological interactions or constructing a predictive model for such complex ecosystems.ResultsHere, we propose a model-free method to predict the species' abundances at the new steady state based on their presence/absence configuration by utilizing a multi-dimensional k-nearest-neighbors (kNN) regression algorithm. By analyzing data from numeric simulations of ecological dynamics, we show that our predictions, which consider the presence/absence of all species holistically, outperform both the null model that uses the statistics of each species independently and a predictive neural network model. We analyze real metagenomic data of human-associated microbial communities and find that by relying on a small number of "neighboring" samples, i.e., samples with similar species assemblage, the kNN predicts the species abundance better than the whole-cohort average. By studying both real metagenomic and simulated data, we show that the predictability of our method is tightly related to the dissimilarity-overlap relationship of the training data.ConclusionsOur results demonstrate how model-free methods can prove useful in predicting microbial communities and may facilitate the development of microbial-based therapies.CJHm-5KeUt2XRc973vY451Video AbstractConclusionsOur results demonstrate how model-free methods can prove useful in predicting microbial communities and may facilitate the development of microbial-based therapies.CJHm-5KeUt2XRc973vY451Video Abstract
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页数:11
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