Predicting risk for Alcohol Use Disorder using longitudinal data with multimodal biomarkers and family history: a machine learning study

dc.contributor.authorKinreich, Sivan
dc.contributor.authorMeyers, Jacquelyn L.
dc.contributor.authorMaron-Katz, Adi
dc.contributor.authorKamarajan, Chella
dc.contributor.authorPandey, Ashwini K.
dc.contributor.authorChorlian, David B.
dc.contributor.authorZhang, Jian
dc.contributor.authorPandey, Gayathri
dc.contributor.authorde Viteri, Stacey Subbie-Saenz
dc.contributor.authorPitti, Dan
dc.contributor.authorAnokhin, Andrey P.
dc.contributor.authorBauer, Lance
dc.contributor.authorHesselbrock, Victor
dc.contributor.authorSchuckit, Marc A.
dc.contributor.authorEdenberg, Howard J.
dc.contributor.authorPorjesz, Bernice
dc.contributor.departmentMedical and Molecular Genetics, School of Medicineen_US
dc.date.accessioned2023-06-13T12:02:40Z
dc.date.available2023-06-13T12:02:40Z
dc.date.issued2021
dc.description.abstractPredictive models have succeeded in distinguishing between individuals with Alcohol use Disorder (AUD) and controls. However, predictive models identifying who is prone to develop AUD and the biomarkers indicating a predisposition to AUD are still unclear. Our sample (n = 656) included offspring and non-offspring of European American (EA) and African American (AA) ancestry from the Collaborative Study of the Genetics of Alcoholism (COGA) who were recruited as early as age 12 and were unaffected at first assessment and reassessed years later as AUD (DSM-5) (n = 328) or unaffected (n = 328). Machine learning analysis was performed for 220 EEG measures, 149 alcohol-related single nucleotide polymorphisms (SNPs) from a recent large Genome-wide Association Study (GWAS) of alcohol use/misuse and two family history (mother DSM-5 AUD and father DSM-5 AUD) features using supervised, Linear Support Vector Machine (SVM) classifier to test which features assessed before developing AUD predict those who go on to develop AUD. Age, gender, and ancestry stratified analyses were performed. Results indicate significant and higher accuracy rates for the AA compared with the EA prediction models and a higher model accuracy trend among females compared with males for both ancestries. Combined EEG and SNP features model outperformed models based on only EEG features or only SNP features for both EA and AA samples. This multidimensional superiority was confirmed in a follow-up analysis in the AA age groups (12-15, 16-19, 20-30) and EA age group (16-19). In both ancestry samples, the youngest age group achieved higher accuracy score than the two other older age groups. Maternal AUD increased the model's accuracy in both ancestries' samples. Several discriminative EEG measures and SNPs features were identified, including lower posterior gamma, higher slow wave connectivity (delta, theta, alpha), higher frontal gamma ratio, higher beta correlation in the parietal area, and 5 SNPs: rs4780836, rs2605140, rs11690265, rs692854, and rs13380649. Results highlight the significance of sampling uniformity followed by stratified (e.g., ancestry, gender, developmental period) analysis, and wider selection of features, to generate better prediction scores allowing a more accurate estimation of AUD development.en_US
dc.eprint.versionAuthor's manuscripten_US
dc.identifier.citationKinreich S, Meyers JL, Maron-Katz A, et al. Predicting risk for Alcohol Use Disorder using longitudinal data with multimodal biomarkers and family history: a machine learning study. Mol Psychiatry. 2021;26(4):1133-1141. doi:10.1038/s41380-019-0534-xen_US
dc.identifier.urihttps://hdl.handle.net/1805/33705
dc.language.isoen_USen_US
dc.publisherSpringer Natureen_US
dc.relation.isversionof10.1038/s41380-019-0534-xen_US
dc.relation.journalMolecular Psychiatryen_US
dc.rightsPublisher Policyen_US
dc.sourcePMCen_US
dc.subjectAlcoholismen_US
dc.subjectBiomarkersen_US
dc.subjectGenome-wide association studyen_US
dc.subjectMachine learningen_US
dc.titlePredicting risk for Alcohol Use Disorder using longitudinal data with multimodal biomarkers and family history: a machine learning studyen_US
dc.typeArticleen_US
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