Litcius/Paper detail

Parkinson's Disease Diagnosis Using miRNA Biomarkers and Deep Learning

Alex Kumar, Valentina L. Kouznetsova, Santosh Kesari, Igor F. Tsigelny

2024Frontiers in Bioscience-Landmark13 citationsDOIOpen Access PDF

Abstract

BACKGROUND: The current standard for Parkinson's disease (PD) diagnosis is often imprecise and expensive. However, the dysregulation patterns of microRNA (miRNA) hold potential as a reliable and effective non-invasive diagnosis of PD. METHODS: We use data mining to elucidate new miRNA biomarkers and then develop a machine-learning (ML) model to diagnose PD based on these biomarkers. RESULTS: The best-performing ML model, trained on filtered miRNA dysregulated in PD, was able to identify miRNA biomarkers with 95.65% accuracy. Through analysis of miRNA implicated in PD, thousands of descriptors reliant on gene targets were created that can be used to identify novel biomarkers and strengthen PD diagnosis. CONCLUSIONS: The developed ML model based on miRNAs and their genomic pathway descriptors achieved high accuracies for the prediction of PD.

Topics & Concepts

microRNAComputational biologyDiseaseParkinson's diseaseMachine learningDiagnostic biomarkerBioinformaticsBiomarkerBiomarker discoveryDiagnostic accuracyArtificial intelligenceMedicineComputer scienceGeneBiologyPathologyInternal medicineProteomicsGeneticsParkinson's Disease Mechanisms and TreatmentsMicroRNA in disease regulationVoice and Speech Disorders
Parkinson's Disease Diagnosis Using miRNA Biomarkers and Deep Learning | Litcius