4.5 Article

Identification of contributing genes of Huntington's disease by machine learning

Journal

BMC MEDICAL GENOMICS
Volume 13, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s12920-020-00822-w

Keywords

Huntington’ s disease; Machine learning; Transcriptional regulation; Enrichment analysis

Funding

  1. Ministry of Science and Technology in Taiwan [MOST108-2320-B-039-031-MY3, MOST 109-2314-B-039-030]
  2. China Medical University and Hospital [CMU109-MF-85, CMU108-MF-68, CMU107-S-08, DMR-109-150, DMR-106-119]

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Background Huntington's disease (HD) is an inherited disorder caused by the polyglutamine (poly-Q) mutations of the HTT gene results in neurodegeneration characterized by chorea, loss of coordination, cognitive decline. However, HD pathogenesis is still elusive. Despite the availability of a wide range of biological data, a comprehensive understanding of HD's mechanism from machine learning is so far unrealized, majorly due to the lack of needed data density. Methods To harness the knowledge of the HD pathogenesis from the expression profiles of postmortem prefrontal cortex samples of 157 HD and 157 controls, we used gene profiling ranking as the criteria to reduce the dimension to the order of magnitude of the sample size, followed by machine learning using the decision tree, rule induction, random forest, and generalized linear model. Results These four Machine learning models identified 66 potential HD-contributing genes, with the cross-validated accuracy of 90.79 +/- 4.57%, 89.49 +/- 5.20%, 90.45 +/- 4.24%, and 97.46 +/- 3.26%, respectively. The identified genes enriched the gene ontology of transcriptional regulation, inflammatory response, neuron projection, and the cytoskeleton. Moreover, three genes in the cognitive, sensory, and perceptual systems were also identified. Conclusions The mutant HTT may interfere with both the expression and transport of these identified genes to promote the HD pathogenesis.

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