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An Automated Statistical Technique for Counting Distinct Multiple Sclerosis Lesions.

Jordan D DworkinKristin A LinnI OguzG M FleishmanRohit BakshiGovind NairPeter A CalabresiRoland G HenryJiwon OhNico PapinuttoDaniel PelletierWilliam D RooneyWilliam A SternNancy L SicotteDaniel S ReichRussell Taki Shinoharanull null
Published in: AJNR. American journal of neuroradiology (2018)
This study introduces a novel technique for counting pathologically distinct lesions using cross-sectional data and demonstrates its ability to recover obscured longitudinal information. The proposed count allows more accurate estimation of lesion size, which correlated more closely with disability scores than either lesion load or lesion count alone.
Keyphrases
  • multiple sclerosis
  • cross sectional
  • peripheral blood
  • high resolution
  • white matter
  • electronic health record
  • healthcare
  • machine learning
  • deep learning
  • social media