Candidate Inflammatory Biomarkers Display Unique Relationships with Alpha-Synuclein and Correlate with Measures of Disease Severity in Subjects with Parkinson’s Disease
Journal of neuroinflammation(2017)SCI 1区
Department of Physiology | Department of Biostatistics | BioLegend | Paracelsus-Elena-Klinik | Program in Neuroscience and Division of Neurology | Follow the Molecule | PAREXEL International | Research Programs | Yale-New Haven Hospital | Nell Hodgson Woodruff School of Nursing
Abstract
Efforts to identify fluid biomarkers of Parkinson’s disease (PD) have intensified in the last decade. As the role of inflammation in PD pathophysiology becomes increasingly recognized, investigators aim to define inflammatory signatures to help elucidate underlying mechanisms of disease pathogenesis and aid in identification of patients with inflammatory endophenotypes that could benefit from immunomodulatory interventions. However, discordant results in the literature and a lack of information regarding the stability of inflammatory factors over a 24-h period have hampered progress.
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Key words
Parkinson’s disease,Inflammation,Protein biomarkers,Daily rhythm,CSF,Serum
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