4.7 Article

Machine Learning Data Analysis Highlights the Role of Parasutterella and Alloprevotella in Autism Spectrum Disorders

Journal

BIOMEDICINES
Volume 10, Issue 8, Pages -

Publisher

MDPI
DOI: 10.3390/biomedicines10082028

Keywords

autism spectrum disorder; gut microbiota; dysbiosis; machine learning data analysis; Parasutterella; Alloprevorella; targeted metagenomics

Funding

  1. [N.A0320-2019-28090 HGP-T21]
  2. [RF-2018-12366931]

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This paper investigates the involvement of gut microbiota in disease and health, specifically in Autism Spectrum Disorder (ASD). The authors collected samples from multiple projects and applied machine learning algorithms to develop a predictor that can differentiate between ASD and healthy controls. The study identified important microbial genera and highlighted the potential of machine learning algorithms in identifying common taxonomic features across different datasets.
In recent years, the involvement of the gut microbiota in disease and health has been investigated by sequencing the 16S gene from fecal samples. Dysbiotic gut microbiota was also observed in Autism Spectrum Disorder (ASD), a neurodevelopmental disorder characterized by gastrointestinal symptoms. However, despite the relevant number of studies, it is still difficult to identify a typical dysbiotic profile in ASD patients. The discrepancies among these studies are due to technical factors (i.e., experimental procedures) and external parameters (i.e., dietary habits). In this paper, we collected 959 samples from eight available projects (540 ASD and 419 Healthy Controls, HC) and reduced the observed bias among studies. Then, we applied a Machine Learning (ML) approach to create a predictor able to discriminate between ASD and HC. We tested and optimized three algorithms: Random Forest, Support Vector Machine and Gradient Boosting Machine. All three algorithms confirmed the importance of five different genera, including Parasutterella and Alloprevotella. Furthermore, our results show that ML algorithms could identify common taxonomic features by comparing datasets obtained from countries characterized by latent confounding variables.

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