Point-of-care nerve conduction device predicts the severity of diabetic polyneuropathy: A quantitative, but easy-to-use, prediction model.
Diabetic neuropathies
Electromyography
Point-of-care testing
Journal
Journal of diabetes investigation
ISSN: 2040-1124
Titre abrégé: J Diabetes Investig
Pays: Japan
ID NLM: 101520702
Informations de publication
Date de publication:
Apr 2021
Apr 2021
Historique:
revised:
28
07
2020
received:
25
06
2020
accepted:
07
08
2020
pubmed:
18
8
2020
medline:
1
2
2022
entrez:
18
8
2020
Statut:
ppublish
Résumé
A gold standard in the diagnosis of diabetic polyneuropathy (DPN) is a nerve conduction study. However, as a nerve conduction study requires expensive equipment and well-trained technicians, it is largely avoided when diagnosing DPN in clinical settings. Here, we validated a novel diagnostic method for DPN using a point-of-care nerve conduction device as an alternative way of diagnosis using a standard electromyography system. We used a multiple regression analysis to examine associations of nerve conduction parameters obtained from the device, DPNCheck™, with the severity of DPN categorized by the Baba classification among 375 participants with type 2 diabetes. A nerve conduction study using a conventional electromyography system was implemented to differentiate the severity in the Baba classification. The diagnostic properties of the device were evaluated using a receiver operating characteristic curve. A multiple regression model to predict the severity of DPN was generated using sural nerve conduction data obtained from the device as follows: the severity of DPN = 2.046 + 0.509 × ln(age [years]) - 0.033 × (nerve conduction velocity [m/s]) - 0.622 × ln(amplitude of sensory nerve action potential [µV]), r = 0.649. Using a cut-off value of 1.3065 in the model, moderate-to-severe DPN was effectively diagnosed (area under the receiver operating characteristic curve 0.871, sensitivity 70.1%, specificity 87.7%, positive predictive value 83.0%, negative predictive value 77.3%, positive likelihood ratio 5.67, negative likelihood ratio 0.34). Nerve conduction parameters in the sural nerve acquired by the handheld device successfully predict the severity of DPN.
Identifiants
pubmed: 32799422
doi: 10.1111/jdi.13386
pmc: PMC8015817
doi:
Types de publication
Controlled Clinical Trial
Journal Article
Langues
eng
Sous-ensembles de citation
IM
Pagination
583-591Informations de copyright
© 2020 The Authors. Journal of Diabetes Investigation published by Asian Association for the Study of Diabetes (AASD) and John Wiley & Sons Australia, Ltd.
Références
Diabet Med. 2018 Jul;35(7):887-894
pubmed: 29608799
Diabet Med. 2008 Jul;25(7):818-25
pubmed: 18644069
J Diabetes Investig. 2020 Jan;11(1):5-16
pubmed: 31677343
J Diabetes Investig. 2018 Sep;9(5):1173-1181
pubmed: 29430866
Diabetes. 2017 Jul;66(7):2007-2018
pubmed: 28408435
J Diabetes Investig. 2019 Sep;10(5):1291-1298
pubmed: 30659760
Diabetes Care. 2010 Oct;33(10):2285-93
pubmed: 20876709
Diabet Med. 2009 Mar;26(3):240-6
pubmed: 19317818
Diabetologia. 2000 Jul;43(7):915-21
pubmed: 10952465
Diabetes. 2013 Nov;62(11):3677-86
pubmed: 24158999
Neurology. 1992 Jun;42(6):1164-70
pubmed: 1603343
Neurology. 2009 Jan 13;72(2):177-84
pubmed: 19056667
Diabetes Care. 2017 Jan;40(1):136-154
pubmed: 27999003
Brain. 1985 Dec;108 ( Pt 4):861-80
pubmed: 4075076
PLoS One. 2014 Jan 22;9(1):e86515
pubmed: 24466129
Muscle Nerve. 2010 Aug;42(2):157-64
pubmed: 20658599
Diabetes Care. 2006 Sep;29(9):2023-7
pubmed: 16936147
Diabetes Care. 2001 Feb;24(2):250-6
pubmed: 11213874
J Neurol. 1998 Feb;245(2):81-6
pubmed: 9507412
J Peripher Nerv Syst. 2016 Mar;21(1):15-21
pubmed: 26663481
Tohoku J Exp Med. 1983 Dec;141 Suppl:479-83
pubmed: 6680523
PLoS One. 2018 Apr 30;13(4):e0196647
pubmed: 29709021
J Diabetes Investig. 2017 Sep;8(5):646-655
pubmed: 28267267