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Some probability models for diagnosing neurogenic disorders

Author

Summary, in English

Healthy human skeletal muscles are composed of two distinguishable types of fibre, apparently randomly arranged within fascicles (bundles of fibres surrounded by connective tissue). Large groups of fibres of the same type indicate a neurogenic muscle disorder. An objective method for detecting nonrandom arrangements of fibres could improve the diagnosis of such disorders, particularly at an early stage. The number of enclosed fibres (NEF)--fibres surrounded by others of the same type--is considered here as a measure of nonrandomness. The distribution of NEF is shown to be approximately negative binomial for a non-free-sampling model, which is then compared with a free-sampling model studied previously. A modification for a known boundary effect is also investigated. The models are applied to data from m. vastus lateralis obtained post mortem from 24 previously healthy men. Finally, the relationship between size of biopsy and the accuracy of predictions is discussed.

Publishing year

1988

Language

English

Pages

167-179

Publication/Series

IMA Journal of Mathematics Applied in Medicine and Biology

Volume

5

Issue

3

Document type

Journal article

Publisher

Oxford University Press

Topic

  • Surgery
  • Neurology

Status

Published

ISBN/ISSN/Other

  • ISSN: 0265-0746