Fr. 57.50

THE PRESUMPTIVE CLINICAL DIAGNOSIS OF MULTIPLE SCLEROSIS - PRACTICAL METHOD

English · Paperback / Softback

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A protocolized clinical history was designed to screen patients suspected of multiple sclerosis, evaluating the functional systems of the central nervous system: cognitive sphere, cerebellum, brainstem, encephalon and spinal cord, and to know some type of demyelinating dysfunction through the computation of probabilities in percentage, where 0% (no dysfunction) and 100 % (high dysfunction). A diagnosis of exclusion will be made by comparing the patient's symptomatology with the main demyelinating diseases of the neuroaxis and with the isolated clinical syndrome. If demyelination is proven, correlate the dysfunction with the Schumacher criteria, obtaining a presumptive diagnosis of: definite, improbable, and probable multiple sclerosis.the functional disability of each patient is analyzed, the clinical activity of the disease is analyzed, and an informed consent is drawn up.

About the author










Dott. C. Lázaro Antonio Ochoa Urdangarain. Si è laureato come dottore in medicina nel luglio 1976 e come specialista nel 1981, in medicina fisica e riabilitazione. Nel 2007 ha ottenuto lo status di Professore Consulente. Nel 2011 ha ottenuto il titolo scientifico di Dottore in Scienze Mediche. Nel 2013 ha ottenuto il grado di Professore Ordinario.

Product details

Authors Lázaro Antonio Ochoa Urdangarain
Publisher Our Knowledge Publishing
 
Languages English
Product format Paperback / Softback
Released 31.12.2023
 
EAN 9786206916260
ISBN 9786206916260
No. of pages 64
Subject Natural sciences, medicine, IT, technology > Medicine > General

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