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1.
Eur J Pain ; 22(10): 1735-1756, 2018 11.
Article in English | MEDLINE | ID: mdl-29923268

ABSTRACT

BACKGROUND: Human genetic research has implicated functional variants of more than one hundred genes in the modulation of persisting pain. Artificial intelligence and machine-learning techniques may combine this knowledge with results of genetic research gathered in any context, which permits the identification of the key biological processes involved in chronic sensitization to pain. METHODS: Based on published evidence, a set of 110 genes carrying variants reported to be associated with modulation of the clinical phenotype of persisting pain in eight different clinical settings was submitted to unsupervised machine-learning aimed at functional clustering. Subsequently, a mathematically supported subset of genes, comprising those most consistently involved in persisting pain, was analysed by means of computational functional genomics in the Gene Ontology knowledgebase. RESULTS: Clustering of genes with evidence for a modulation of persisting pain elucidated a functionally heterogeneous set. The situation cleared when the focus was narrowed to a genetic modulation consistently observed throughout several clinical settings. On this basis, two groups of biological processes, the immune system and nitric oxide signalling, emerged as major players in sensitization to persisting pain, which is biologically highly plausible and in agreement with other lines of pain research. CONCLUSIONS: The present computational functional genomics-based approach provided a computational systems-biology perspective on chronic sensitization to pain. Human genetic control of persisting pain points to the immune system as a source of potential future targets for drugs directed against persisting pain. Contemporary machine-learned methods provide innovative approaches to knowledge discovery from previous evidence. SIGNIFICANCE: We show that knowledge discovery in genetic databases and contemporary machine-learned techniques can identify relevant biological processes involved in Persitent pain.


Subject(s)
Machine Learning , Neuroimmunomodulation/physiology , Pain/etiology , Polymorphism, Genetic/physiology , Cluster Analysis , Humans , Phenotype
2.
Pharmacogenomics J ; 17(5): 419-426, 2017 10.
Article in English | MEDLINE | ID: mdl-27139154

ABSTRACT

Next-generation sequencing (NGS) provides unrestricted access to the genome, but it produces 'big data' exceeding in amount and complexity the classical analytical approaches. We introduce a bioinformatics-based classifying biomarker that uses emergent properties in genetics to separate pain patients requiring extremely high opioid doses from controls. Following precisely calculated selection of the 34 most informative markers in the OPRM1, OPRK1, OPRD1 and SIGMAR1 genes, pattern of genotypes belonging to either patient group could be derived using a k-nearest neighbor (kNN) classifier that provided a diagnostic accuracy of 80.6±4%. This outperformed alternative classifiers such as reportedly functional opioid receptor gene variants or complex biomarkers obtained via multiple regression or decision tree analysis. The accumulation of several genetic variants with only minor functional influences may result in a qualitative consequence affecting complex phenotypes, pointing at emergent properties in genetics.


Subject(s)
Analgesics, Opioid/therapeutic use , Biomarkers, Pharmacological/analysis , Chronic Pain/drug therapy , Pharmacogenomic Testing , Pharmacogenomic Variants , Receptors, Opioid/genetics , Analgesics, Opioid/administration & dosage , Chronic Pain/genetics , Dose-Response Relationship, Drug , Genotype , High-Throughput Nucleotide Sequencing , Humans , Receptors, Opioid, delta/genetics , Receptors, Opioid, kappa/genetics , Receptors, Opioid, mu/genetics , Receptors, sigma/genetics , Sigma-1 Receptor
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