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Fibromyalgia diagnostic model derived from combination of American College of Rheumatology 1990 and 2011 criteria

BACKGROUND: We aimed to explore the American College of Rheumatology (ACR) 1990 and 2011 fibromyalgia (FM) classification criteria’s items and the components of Fibromyalgia Impact Questionnaire (FIQ) to identify features best discriminating FM features. Finally, we developed a combined FM diagnosti...

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Autores principales: Ghavidel-Parsa, Banafsheh, Bidari, Ali, Hajiabbasi, Asghar, Shenavar, Irandokht, Ghalehbaghi, Babak, Sanaei, Omid
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Korean Pain Society 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6549593/
https://www.ncbi.nlm.nih.gov/pubmed/31091511
http://dx.doi.org/10.3344/kjp.2019.32.2.120
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author Ghavidel-Parsa, Banafsheh
Bidari, Ali
Hajiabbasi, Asghar
Shenavar, Irandokht
Ghalehbaghi, Babak
Sanaei, Omid
author_facet Ghavidel-Parsa, Banafsheh
Bidari, Ali
Hajiabbasi, Asghar
Shenavar, Irandokht
Ghalehbaghi, Babak
Sanaei, Omid
author_sort Ghavidel-Parsa, Banafsheh
collection PubMed
description BACKGROUND: We aimed to explore the American College of Rheumatology (ACR) 1990 and 2011 fibromyalgia (FM) classification criteria’s items and the components of Fibromyalgia Impact Questionnaire (FIQ) to identify features best discriminating FM features. Finally, we developed a combined FM diagnostic (C-FM) model using the FM’s key features. METHODS: The means and frequency on tender points (TPs), ACR 2011 components and FIQ items were calculated in the FM and non-FM (osteoarthritis [OA] and non-OA) patients. Then, two-step multiple logistic regression analysis was performed to order these variables according to their maximal statistical contribution in predicting group membership. Partial correlations assessed their unique contribution, and two-group discriminant analysis provided a classification table. Using receiver operator characteristic analyses, we determined the sensitivity and specificity of the final model. RESULTS: A total of 172 patients with FM, 75 with OA and 21 with periarthritis or regional pain syndromes were enrolled. Two steps multiple logistic regression analysis identified 8 key features of FM which accounted for 64.8% of variance associated with FM group membership: lateral epicondyle TP with variance percentages (36.9%), neck pain (14.5%), fatigue (4.7%), insomnia (3%), upper back pain (2.2%), shoulder pain (1.5%), gluteal TP (1.2%), and FIQ fatigue (0.9%). The C-FM model demonstrated a 91.4% correct classification rate, 91.9% for sensitivity and 91.7% for specificity. CONCLUSIONS: The C-FM model can accurately detect FM patients among other pain disorders. Re-inclusion of TPs along with saving of FM main symptoms in the C-FM model is a unique feature of this model.
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spelling pubmed-65495932019-06-18 Fibromyalgia diagnostic model derived from combination of American College of Rheumatology 1990 and 2011 criteria Ghavidel-Parsa, Banafsheh Bidari, Ali Hajiabbasi, Asghar Shenavar, Irandokht Ghalehbaghi, Babak Sanaei, Omid Korean J Pain Original Article BACKGROUND: We aimed to explore the American College of Rheumatology (ACR) 1990 and 2011 fibromyalgia (FM) classification criteria’s items and the components of Fibromyalgia Impact Questionnaire (FIQ) to identify features best discriminating FM features. Finally, we developed a combined FM diagnostic (C-FM) model using the FM’s key features. METHODS: The means and frequency on tender points (TPs), ACR 2011 components and FIQ items were calculated in the FM and non-FM (osteoarthritis [OA] and non-OA) patients. Then, two-step multiple logistic regression analysis was performed to order these variables according to their maximal statistical contribution in predicting group membership. Partial correlations assessed their unique contribution, and two-group discriminant analysis provided a classification table. Using receiver operator characteristic analyses, we determined the sensitivity and specificity of the final model. RESULTS: A total of 172 patients with FM, 75 with OA and 21 with periarthritis or regional pain syndromes were enrolled. Two steps multiple logistic regression analysis identified 8 key features of FM which accounted for 64.8% of variance associated with FM group membership: lateral epicondyle TP with variance percentages (36.9%), neck pain (14.5%), fatigue (4.7%), insomnia (3%), upper back pain (2.2%), shoulder pain (1.5%), gluteal TP (1.2%), and FIQ fatigue (0.9%). The C-FM model demonstrated a 91.4% correct classification rate, 91.9% for sensitivity and 91.7% for specificity. CONCLUSIONS: The C-FM model can accurately detect FM patients among other pain disorders. Re-inclusion of TPs along with saving of FM main symptoms in the C-FM model is a unique feature of this model. The Korean Pain Society 2019-04 2019-04-01 /pmc/articles/PMC6549593/ /pubmed/31091511 http://dx.doi.org/10.3344/kjp.2019.32.2.120 Text en © The Korean Pain Society, 2019 This is an open-access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/4.0/), which permits unrestricted non-commercial use, distribution, and reproduction in any medium, rovided the original work is properly cited.
spellingShingle Original Article
Ghavidel-Parsa, Banafsheh
Bidari, Ali
Hajiabbasi, Asghar
Shenavar, Irandokht
Ghalehbaghi, Babak
Sanaei, Omid
Fibromyalgia diagnostic model derived from combination of American College of Rheumatology 1990 and 2011 criteria
title Fibromyalgia diagnostic model derived from combination of American College of Rheumatology 1990 and 2011 criteria
title_full Fibromyalgia diagnostic model derived from combination of American College of Rheumatology 1990 and 2011 criteria
title_fullStr Fibromyalgia diagnostic model derived from combination of American College of Rheumatology 1990 and 2011 criteria
title_full_unstemmed Fibromyalgia diagnostic model derived from combination of American College of Rheumatology 1990 and 2011 criteria
title_short Fibromyalgia diagnostic model derived from combination of American College of Rheumatology 1990 and 2011 criteria
title_sort fibromyalgia diagnostic model derived from combination of american college of rheumatology 1990 and 2011 criteria
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6549593/
https://www.ncbi.nlm.nih.gov/pubmed/31091511
http://dx.doi.org/10.3344/kjp.2019.32.2.120
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