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MetaNN: Accurate classification of host phenotypes from metagenomic data using neural networks

BMC Bioinformatics, ISSN: 1471-2105, Vol: 20, Issue: Suppl 12, Page: 314
2019
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万能性とは無謬性では無く、使役される価値に拠って立つ。 □ StruM: DNA shape complements sequence-based representations of transcription factor binding sites https://www.biorxiv.org/content/biorxiv/early/2019/06/17/666735.full.pdf an alternative strategy for representing DNA motifs, that can easily represent different sets of structural features. Structural features are inferred from dinucleotide properties listed in the Dinuc

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Background: Microbiome profiles in the human body and environment niches have become publicly available due to recent advances in high-throughput sequencing technologies. Indeed, recent studies have already identified different microbiome profiles in healthy and sick individuals for a variety of diseases; this suggests that the microbiome profile can be used as a diagnostic tool in identifying the disease states of an individual. However, the high-dimensional nature of metagenomic data poses a significant challenge to existing machine learning models. Consequently, to enable personalized treatments, an efficient framework that can accurately and robustly differentiate between healthy and sick microbiome profiles is needed. Results: In this paper, we propose MetaNN (i.e., classification of host phenotypes from Metagenomic data using Neural Networks), a neural network framework which utilizes a new data augmentation technique to mitigate the effects of data over-fitting. Conclusions: We show that MetaNN outperforms existing state-of-the-art models in terms of classification accuracy for both synthetic and real metagenomic data. These results pave the way towards developing personalized treatments for microbiome related diseases.

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