Literature DB >> 34126997

Using deep learning to identify recent positive selection in malaria parasite sequence data.

Luigi Palla1,2, Taane G Clark3, Wouter Deelder1,4, Ernest Diez Benavente1, Jody Phelan1, Emilia Manko1, Susana Campino1.   

Abstract

BACKGROUND: Malaria, caused by Plasmodium parasites, is a major global public health problem. To assist an understanding of malaria pathogenesis, including drug resistance, there is a need for the timely detection of underlying genetic mutations and their spread. With the increasing use of whole-genome sequencing (WGS) of Plasmodium DNA, the potential of deep learning models to detect loci under recent positive selection, historically signals of drug resistance, was evaluated.
METHODS: A deep learning-based approach (called "DeepSweep") was developed, which can be trained on haplotypic images from genetic regions with known sweeps, to identify loci under positive selection. DeepSweep software is available from https://github.com/WDee/Deepsweep .
RESULTS: Using simulated genomic data, DeepSweep could detect recent sweeps with high predictive accuracy (areas under ROC curve > 0.95). DeepSweep was applied to Plasmodium falciparum (n = 1125; genome size 23 Mbp) and Plasmodium vivax (n = 368; genome size 29 Mbp) WGS data, and the genes identified overlapped with two established extended haplotype homozygosity methods (within-population iHS, across-population Rsb) (~ 60-75% overlap of hits at P < 0.0001). DeepSweep hits included regions proximal to known drug resistance loci for both P. falciparum (e.g. pfcrt, pfdhps and pfmdr1) and P. vivax (e.g. pvmrp1).
CONCLUSION: The deep learning approach can detect positive selection signatures in malaria parasite WGS data. Further, as the approach is generalizable, it may be trained to detect other types of selection. With the ability to rapidly generate WGS data at low cost, machine learning approaches (e.g. DeepSweep) have the potential to assist parasite genome-based surveillance and inform malaria control decision-making.

Entities:  

Keywords:  Drug resistance; Machine learning; Plasmodium falciparum; Plasmodium vivax; Population genomics; Positive selection

Year:  2021        PMID: 34126997     DOI: 10.1186/s12936-021-03788-x

Source DB:  PubMed          Journal:  Malar J        ISSN: 1475-2875            Impact factor:   2.979


  2 in total

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Journal:  Adv Neural Inf Process Syst       Date:  2018-12

2.  Using Drosophila melanogaster as a Model for Genotoxic Chemical Mutational Studies with a New Program, SnpSift.

Authors:  Pablo Cingolani; Viral M Patel; Melissa Coon; Tung Nguyen; Susan J Land; Douglas M Ruden; Xiangyi Lu
Journal:  Front Genet       Date:  2012-03-15       Impact factor: 4.599

  2 in total
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1.  Barnacles Mating Optimizer with Deep Transfer Learning Enabled Biomedical Malaria Parasite Detection and Classification.

Authors:  Ashit Kumar Dutta; R Uma Mageswari; A Gayathri; J Mary Dallfin Bruxella; Mohamad Khairi Ishak; Samih M Mostafa; Habib Hamam
Journal:  Comput Intell Neurosci       Date:  2022-06-01

2.  An optimized features selection approach based on Manta Ray Foraging Optimization (MRFO) method for parasite malaria classification.

Authors:  Javeria Amin; Muhammad Sharif; Ghulam Ali Mallah; Steven L Fernandes
Journal:  Front Public Health       Date:  2022-09-06
  2 in total

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