Plasma proteomics identify biomarkers predicting Parkinson's disease up to 7 years before symptom onset.
Jenny HällqvistMichael BartlMohammed DaknaSebastian SchadePaolo GaragnaniMaria-Giulia BacaliniChiara PirazziniKailash P BhatiaSebastian R SchreglmannMary XylakiSandrina WeberMarielle ErnstMaria-Lucia MunteanFriederike Sixel-DöringClaudio FranceschiIvan DoykovJustyna ŚpiewakHeloise VinetteClaudia TrenkwalderWendy E HeywoodKevin MillsBrit MollenhauerPublished in: Nature communications (2024)
Parkinson's disease is increasingly prevalent. It progresses from the pre-motor stage (characterised by non-motor symptoms like REM sleep behaviour disorder), to the disabling motor stage. We need objective biomarkers for early/pre-motor disease stages to be able to intervene and slow the underlying neurodegenerative process. Here, we validate a targeted multiplexed mass spectrometry assay for blood samples from recently diagnosed motor Parkinson's patients (n = 99), pre-motor individuals with isolated REM sleep behaviour disorder (two cohorts: n = 18 and n = 54 longitudinally), and healthy controls (n = 36). Our machine-learning model accurately identifies all Parkinson patients and classifies 79% of the pre-motor individuals up to 7 years before motor onset by analysing the expression of eight proteins-Granulin precursor, Mannan-binding-lectin-serine-peptidase-2, Endoplasmatic-reticulum-chaperone-BiP, Prostaglaindin-H2-D-isomaerase, Interceullular-adhesion-molecule-1, Complement C3, Dickkopf-WNT-signalling pathway-inhibitor-3, and Plasma-protease-C1-inhibitor. Many of these biomarkers correlate with symptom severity. This specific blood panel indicates molecular events in early stages and could help identify at-risk participants for clinical trials aimed at slowing/preventing motor Parkinson's disease.
Keyphrases
- mass spectrometry
- clinical trial
- machine learning
- end stage renal disease
- ejection fraction
- newly diagnosed
- high resolution
- poor prognosis
- stem cells
- physical activity
- escherichia coli
- patient reported
- staphylococcus aureus
- deep learning
- long non coding rna
- cystic fibrosis
- oxidative stress
- liquid chromatography
- depressive symptoms
- ms ms
- drug delivery
- open label
- endoplasmic reticulum
- biofilm formation
- high performance liquid chromatography