Literature DB >> 16780622

The Manual Ability Classification System (MACS) for children with cerebral palsy: scale development and evidence of validity and reliability.

Ann-Christin Eliasson1, Lena Krumlinde-Sundholm, Birgit Rösblad, Eva Beckung, Marianne Arner, Ann-Marie Ohrvall, Peter Rosenbaum.   

Abstract

The Manual Ability Classification System (MACS) has been developed to classify how children with cerebral palsy (CP) use their hands when handling objects in daily activities. The classification is designed to reflect the child's typical manual performance, not the child's maximal capacity. It classifies the collaborative use of both hands together. Validation was based on the experience within an expert group, a review of the literature, and thorough analysis of children across a spectrum of function. Discussions continued until consensus was reached, first about the constructs, then about the content of the five levels. Parents and therapists were interviewed about the content and the description of levels. Reliability was tested between pairs of therapists for 168 children (70 females, 98 males; with hemiplegia [n=52], diplegia [n=70], tetraplegia [n=19], ataxia [n=6], dyskinesia [n=19], and unspecified CP [n=2]) between 4 and 18 years and between 25 parents and their children's therapists. The results demonstrated that MACS has good validity and reliability. The intraclass correlation coefficient between therapists was 0.97 (95% confidence interval 0.96-0.98), and between parents and therapist was 0.96 (0.89-0.98), indicating excellent agreement.

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Year:  2006        PMID: 16780622     DOI: 10.1017/S0012162206001162

Source DB:  PubMed          Journal:  Dev Med Child Neurol        ISSN: 0012-1622            Impact factor:   5.449


  338 in total

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Review 2.  Assessment tools and classification systems used for the upper extremity in children with cerebral palsy.

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Review 3.  Genetic [corrected] insights into the causes and classification of [corrected] cerebral palsies.

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5.  The pediatric upper limb motion index and a temporal-spatial logistic regression: quantitative analysis of upper limb movement disorders during the Reach & Grasp Cycle.

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Journal:  J Biomech       Date:  2012-02-02       Impact factor: 2.712

6.  Classification of speech and language profiles in 4-year-old children with cerebral palsy: a prospective preliminary study.

Authors:  Katherine C Hustad; Kristin Gorton; Jimin Lee
Journal:  J Speech Lang Hear Res       Date:  2010-07-19       Impact factor: 2.297

7.  Multiple Treatments of Pediatric Constraint-Induced Movement Therapy (pCIMT): A Clinical Cohort Study.

Authors:  Stephanie C DeLuca; Sharon Landesman Ramey; Mary Rebekah Trucks; Dorian Ainsworth Wallace
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8.  Reactivity of sensorimotor oscillations is altered in children with hemiplegic cerebral palsy: A magnetoencephalographic study.

Authors:  Elina Pihko; Päivi Nevalainen; Selja Vaalto; Kristina Laaksonen; Helena Mäenpää; Leena Valanne; Leena Lauronen
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9.  Genetic, Phenotypic, and Interferon Biomarker Status in ADAR1-Related Neurological Disease.

Authors:  Gillian I Rice; Naoki Kitabayashi; Magalie Barth; Tracy A Briggs; Annabel C E Burton; Maria Luisa Carpanelli; Alfredo M Cerisola; Cindy Colson; Russell C Dale; Federica Rachele Danti; Niklas Darin; Begoña De Azua; Valentina De Giorgis; Christian G L De Goede; Isabelle Desguerre; Corinne De Laet; Atieh Eslahi; Michael C Fahey; Penny Fallon; Alex Fay; Elisa Fazzi; Mark P Gorman; Nirmala Rani Gowrinathan; Marie Hully; Manju A Kurian; Nicolas Leboucq; Jean-Pierre S-M Lin; Matthew A Lines; Soe S Mar; Reza Maroofian; Laura Martí-Sanchez; Gary McCullagh; Majid Mojarrad; Vinodh Narayanan; Simona Orcesi; Juan Dario Ortigoza-Escobar; Belén Pérez-Dueñas; Florence Petit; Keri M Ramsey; Magnhild Rasmussen; François Rivier; Pilar Rodríguez-Pombo; Agathe Roubertie; Tommy I Stödberg; Mehran Beiraghi Toosi; Annick Toutain; Florence Uettwiller; Nicole Ulrick; Adeline Vanderver; Amy Waldman; John H Livingston; Yanick J Crow
Journal:  Neuropediatrics       Date:  2017-04-10       Impact factor: 1.947

10.  Data-Driven Classification of Dysarthria Profiles in Children With Cerebral Palsy.

Authors:  Kristen M Allison; Katherine C Hustad
Journal:  J Speech Lang Hear Res       Date:  2018-12-10       Impact factor: 2.297

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