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Subtypes of relapsing-remitting multiple sclerosis identified by network analysis. | LitMetric

AI Article Synopsis

  • The study used network analysis to categorize subjects with relapsing-remitting multiple sclerosis based on their cumulative signs and symptoms from electronic medical records.
  • Different community structures were identified in bipartite and unipartite network graphs, highlighting five distinct communities in each that reflect varying symptom profiles.
  • While no pure subtypes of multiple sclerosis were identified, the research demonstrates that network analysis can effectively separate subjects into different subtype communities, suggesting the need for larger datasets to validate these findings.

Article Abstract

We used network analysis to identify subtypes of relapsing-remitting multiple sclerosis subjects based on their cumulative signs and symptoms. The electronic medical records of 113 subjects with relapsing-remitting multiple sclerosis were reviewed, signs and symptoms were mapped to classes in a neuro-ontology, and classes were collapsed into sixteen superclasses by subsumption. After normalization and vectorization of the data, bipartite (subject-feature) and unipartite (subject-subject) network graphs were created using NetworkX and visualized in Gephi. Degree and weighted degree were calculated for each node. Graphs were partitioned into communities using the modularity score. Feature maps visualized differences in features by community. Network analysis of the unipartite graph yielded a higher modularity score (0.49) than the bipartite graph (0.25). The bipartite network was partitioned into five communities which were named fatigue, behavioral, hypertonia/weakness, abnormal gait/sphincter, and sensory, based on feature characteristics. The unipartite network was partitioned into five communities which were named fatigue, pain, cognitive, sensory, and gait/weakness/hypertonia based on features. Although we did not identify pure subtypes (e.g., pure motor, pure sensory, etc.) in this cohort of multiple sclerosis subjects, we demonstrated that network analysis could partition these subjects into different subtype communities. Larger datasets and additional partitioning algorithms are needed to confirm these findings and elucidate their significance. This study contributes to the literature investigating subtypes of multiple sclerosis by combining feature reduction by subsumption with network analysis.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9874946PMC
http://dx.doi.org/10.3389/fdgth.2022.1063264DOI Listing

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