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Combination protein biomarkers predict multiple sclerosis diagnosis and outcomes. | LitMetric

Combination protein biomarkers predict multiple sclerosis diagnosis and outcomes.

J Neuroinflammation

Division of Psychological Medicine and Clinical Neurosciences, School of Medicine, Cardiff University, Cardiff, CF14 4XW, UK.

Published: February 2024

AI Article Synopsis

  • Establishing effective biomarkers for diagnosing and predicting multiple sclerosis (MS) is difficult when relying on single biomarkers, leading researchers to explore multi-biomarker combinations.
  • In a study involving 77 MS patients and 80 with other neurological disorders, 24 fluid biomarkers were examined, showing that combination models significantly outperformed single biomarker predictions.
  • The best diagnostic combination achieved an area under the curve of 0.97, while optimal predictions for relapse timing and disability milestones greatly improved, indicating the potential of multi-biomarker approaches in MS management.

Article Abstract

Establishing biomarkers to predict multiple sclerosis diagnosis and prognosis has been challenging using a single biomarker approach. We hypothesised that a combination of biomarkers would increase the accuracy of prediction models to differentiate multiple sclerosis from other neurological disorders and enhance prognostication for people with multiple sclerosis. We measured 24 fluid biomarkers in the blood and cerebrospinal fluid of 77 people with multiple sclerosis and 80 people with other neurological disorders, using ELISA or Single Molecule Array assays. Primary outcomes were multiple sclerosis versus any other diagnosis, time to first relapse, and time to disability milestone (Expanded Disability Status Scale 6), adjusted for age and sex. Multivariate prediction models were calculated using the area under the curve value for diagnostic prediction, and concordance statistics (the percentage of each pair of events that are correctly ordered in time for each of the Cox regression models) for prognostic predictions. Predictions using combinations of biomarkers were considerably better than single biomarker predictions. The combination of cerebrospinal fluid [chitinase-3-like-1 + TNF-receptor-1 + CD27] and serum [osteopontin + MCP-1] had an area under the curve of 0.97 for diagnosis of multiple sclerosis, compared to the best discriminative single marker in blood (osteopontin: area under the curve 0.84) and in cerebrospinal fluid (chitinase-3-like-1 area under the curve 0.84). Prediction for time to next relapse was optimal with a combination of cerebrospinal fluid[vitamin D binding protein + Factor I + C1inhibitor] + serum[Factor B + Interleukin-4 + C1inhibitor] (concordance 0.80), and time to Expanded Disability Status Scale 6 with cerebrospinal fluid [C9 + Neurofilament-light] + serum[chitinase-3-like-1 + CCL27 + vitamin D binding protein + C1inhibitor] (concordance 0.98). A combination of fluid biomarkers has a higher accuracy to differentiate multiple sclerosis from other neurological disorders and significantly improved the prediction of the development of sustained disability in multiple sclerosis. Serum models rivalled those of cerebrospinal fluid, holding promise for a non-invasive approach. The utility of our biomarker models can only be established by robust validation in different and varied cohorts.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10874571PMC
http://dx.doi.org/10.1186/s12974-024-03036-4DOI Listing

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