Improving pharmacogenetic prediction of extrapyramidal symptoms induced by antipsychotics.
Daniel BolocAnna GortatJia Qi Cheng-ZhangSusana García-CerroNatalia RodríguezMara ParelladaJeronimo Saiz-RuizManolo J CuestaPatricia GassóAmalia LafuenteMiquel BernardoSergi MasPublished in: Translational psychiatry (2018)
In previous work we developed a pharmacogenetic predictor of antipsychotic (AP) induced extrapyramidal symptoms (EPS) based on four genes involved in mTOR regulation. The main objective is to improve this predictor by increasing its biological plausibility and replication. We re-sequence the four genes using next-generation sequencing. We predict functionality "in silico" of all identified SNPs and test it using gene reporter assays. Using functional SNPs, we develop a new predictor utilizing machine learning algorithms (Discovery Cohort, N = 131) and replicate it in two independent cohorts (Replication Cohort 1, N = 113; Replication Cohort 2, N = 113). After prioritization, four SNPs were used to develop the pharmacogenetic predictor of AP-induced EPS. The model constructed using the Naive Bayes algorithm achieved a 66% of accuracy in the Discovery Cohort, and similar performances in the replication cohorts. The result is an improved pharmacogenetic predictor of AP-induced EPS, which is more robust and generalizable than the original.
Keyphrases
- machine learning
- genome wide
- high glucose
- diabetic rats
- transcription factor
- small molecule
- high throughput
- copy number
- deep learning
- oxidative stress
- artificial intelligence
- dna methylation
- big data
- crispr cas
- wastewater treatment
- molecular docking
- cell proliferation
- molecular dynamics simulations
- genome wide association