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Comparison of Interpolation Methods in the Diagnosis of Carpal Tunnel Syndrome

BACKGROUND: Diagnosis of carpal tunnel syndrome is based on clinical symptoms, examination findings, and electrodiagnostic studies. For carpal tunnel syndrome, the most useful of these are nerve conduction studies. However, nerve conduction studie can result in ambiguous or false-negative results, p...

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Autores principales: Alcan, Veysel, Zinnuroğlu, Murat, Kaymak Karataş, Gülçin, Bodofsky, Elliot
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Galenos Publishing 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6158466/
https://www.ncbi.nlm.nih.gov/pubmed/29855424
http://dx.doi.org/10.4274/balkanmedj.2017.1314
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author Alcan, Veysel
Zinnuroğlu, Murat
Kaymak Karataş, Gülçin
Bodofsky, Elliot
author_facet Alcan, Veysel
Zinnuroğlu, Murat
Kaymak Karataş, Gülçin
Bodofsky, Elliot
author_sort Alcan, Veysel
collection PubMed
description BACKGROUND: Diagnosis of carpal tunnel syndrome is based on clinical symptoms, examination findings, and electrodiagnostic studies. For carpal tunnel syndrome, the most useful of these are nerve conduction studies. However, nerve conduction studie can result in ambiguous or false-negative results, particularly for mild carpal tunnel syndrome. Increasing the number of nerve conduction studie tests improves accuracy but also increases time, cost, and discomfort. To improve accuracy without additional testing, the terminal latency index and residual latency are additional calculations that can be performed using the minimum number of tests. Recently, the median sensory-ulnar motor latency difference was devised as another way to improve diagnostic accuracy for mild carpal tunnel syndrome. AIMS: The median sensory-ulnar motor latency difference, terminal latency index, and residual latency were compared for diagnostic accuracy according to severity of carpal tunnel syndrome. STUDY DESIGN: Diagnostic accuracy study. METHODS: A total of 657 subjects were retrospectively enrolled. The carpal tunnel syndrome group consisted of 546 subjects with carpal tunnel syndrome according to nerve conduction studie (all severities). The control group consisted of 121 subjects with no hand symptoms and normal nerve conduction studie. All statistical analyses were performed using SAS v9.4. Means were compared using one-way ANOVA with the Bonferroni adjustment. Sensitivity, specificity, positive predictive value, and negative predictive value were compared, including receiver operating characteristic curve analysis. RESULTS: For mild carpal tunnel syndrome, the median sensory-ulnar motor latency difference showed higher specificity and positive predictive value rates (0.967 and 0.957, respectively) than terminal latency index (0.603 and 0.769, respectively) and residual latency (0.818 and 0.858, respectively). The area under the receiver operating characteristic was highest for the median sensory-ulnar motor latency difference (0.889), followed by the residual latency (0.829), and lastly the terminal latency index (0.762). Differences were statistically significant (median sensory-ulnar motor latency difference being the most accurate). For moderate carpal tunnel syndrome, sensitivity and specificity rates of residual latency (0.989 and 1.000) and terminal latency index (0.983 and 0.975) were higher than those for median sensory-ulnar motor latency difference (0.866 and 0.958). Differences in area under the receiver operating characteristic curve were not significantly significant, but median sensory-ulnar motor latency difference sensitivity was lower. For severe carpal tunnel syndrome, residual latency yielded 1.000 sensitivity, specificity, positive predictive value, negative predictive value and area beneath the receiver operating characteristic curve. Differences in area under the receiver operating characteristic curve were not significantly different. CONCLUSION: The median sensory-ulnar motor latency difference is the best calculated parameter for diagnosing mild carpal tunnel syndrome. It requires only a simple calculation and no additional testing. Residual latency and the terminal latency index are also useful in diagnosing mild to moderate carpal tunnel syndrome.
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spelling pubmed-61584662018-10-01 Comparison of Interpolation Methods in the Diagnosis of Carpal Tunnel Syndrome Alcan, Veysel Zinnuroğlu, Murat Kaymak Karataş, Gülçin Bodofsky, Elliot Balkan Med J Original Article BACKGROUND: Diagnosis of carpal tunnel syndrome is based on clinical symptoms, examination findings, and electrodiagnostic studies. For carpal tunnel syndrome, the most useful of these are nerve conduction studies. However, nerve conduction studie can result in ambiguous or false-negative results, particularly for mild carpal tunnel syndrome. Increasing the number of nerve conduction studie tests improves accuracy but also increases time, cost, and discomfort. To improve accuracy without additional testing, the terminal latency index and residual latency are additional calculations that can be performed using the minimum number of tests. Recently, the median sensory-ulnar motor latency difference was devised as another way to improve diagnostic accuracy for mild carpal tunnel syndrome. AIMS: The median sensory-ulnar motor latency difference, terminal latency index, and residual latency were compared for diagnostic accuracy according to severity of carpal tunnel syndrome. STUDY DESIGN: Diagnostic accuracy study. METHODS: A total of 657 subjects were retrospectively enrolled. The carpal tunnel syndrome group consisted of 546 subjects with carpal tunnel syndrome according to nerve conduction studie (all severities). The control group consisted of 121 subjects with no hand symptoms and normal nerve conduction studie. All statistical analyses were performed using SAS v9.4. Means were compared using one-way ANOVA with the Bonferroni adjustment. Sensitivity, specificity, positive predictive value, and negative predictive value were compared, including receiver operating characteristic curve analysis. RESULTS: For mild carpal tunnel syndrome, the median sensory-ulnar motor latency difference showed higher specificity and positive predictive value rates (0.967 and 0.957, respectively) than terminal latency index (0.603 and 0.769, respectively) and residual latency (0.818 and 0.858, respectively). The area under the receiver operating characteristic was highest for the median sensory-ulnar motor latency difference (0.889), followed by the residual latency (0.829), and lastly the terminal latency index (0.762). Differences were statistically significant (median sensory-ulnar motor latency difference being the most accurate). For moderate carpal tunnel syndrome, sensitivity and specificity rates of residual latency (0.989 and 1.000) and terminal latency index (0.983 and 0.975) were higher than those for median sensory-ulnar motor latency difference (0.866 and 0.958). Differences in area under the receiver operating characteristic curve were not significantly significant, but median sensory-ulnar motor latency difference sensitivity was lower. For severe carpal tunnel syndrome, residual latency yielded 1.000 sensitivity, specificity, positive predictive value, negative predictive value and area beneath the receiver operating characteristic curve. Differences in area under the receiver operating characteristic curve were not significantly different. CONCLUSION: The median sensory-ulnar motor latency difference is the best calculated parameter for diagnosing mild carpal tunnel syndrome. It requires only a simple calculation and no additional testing. Residual latency and the terminal latency index are also useful in diagnosing mild to moderate carpal tunnel syndrome. Galenos Publishing 2018-09 2018-09-21 /pmc/articles/PMC6158466/ /pubmed/29855424 http://dx.doi.org/10.4274/balkanmedj.2017.1314 Text en © Copyright 2018, Trakya University Faculty of Medicine http://creativecommons.org/licenses/by/2.5/ Balkan Medical Journal
spellingShingle Original Article
Alcan, Veysel
Zinnuroğlu, Murat
Kaymak Karataş, Gülçin
Bodofsky, Elliot
Comparison of Interpolation Methods in the Diagnosis of Carpal Tunnel Syndrome
title Comparison of Interpolation Methods in the Diagnosis of Carpal Tunnel Syndrome
title_full Comparison of Interpolation Methods in the Diagnosis of Carpal Tunnel Syndrome
title_fullStr Comparison of Interpolation Methods in the Diagnosis of Carpal Tunnel Syndrome
title_full_unstemmed Comparison of Interpolation Methods in the Diagnosis of Carpal Tunnel Syndrome
title_short Comparison of Interpolation Methods in the Diagnosis of Carpal Tunnel Syndrome
title_sort comparison of interpolation methods in the diagnosis of carpal tunnel syndrome
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6158466/
https://www.ncbi.nlm.nih.gov/pubmed/29855424
http://dx.doi.org/10.4274/balkanmedj.2017.1314
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