In April 2016 Manchester eScholar was replaced by the University of Manchester’s new Research Information Management System, Pure. In the autumn the University’s research outputs will be available to search and browse via a new Research Portal. Until then the University’s full publication record can be accessed via a temporary portal and the old eScholar content is available to search and browse via this archive.

Related resources

Full-text held externally

University researcher(s)

Automated quantification of Neuropad improves its diagnostic ability in patients with diabetic neuropathy

Ponirakis G, Fadavi H, Petropoulos IN, Azmi S, Ferousi M, Dabbah MA, Kheyami A, Alam U, Asghar O, Marshall A, Tavakoli M, Al-Ahmar A, Javed S, Jeziorska M, Malik RA

Journal of Diabetes Research. 2015;.

Access to files

Full-text and supplementary files are not available from Manchester eScholar. Full-text is available externally using the following links:

Full-text held externally

Abstract

Neuropad is currently a categorical visual screening test that identifies diabetic patients at risk of foot ulceration. The diagnostic performance of Neuropad was compared between the categorical and continuous (image-analysis (Sudometrics)) outputs to diagnose diabetic peripheral neuropathy (DPN). 110 subjects with type 1 and 2 diabetes underwent assessment with Neuropad, Neuropathy Disability Score (NDS), peroneal motor nerve conduction velocity (PMNCV), sural nerve action potential (SNAP), Deep Breathing-Heart Rate Variability (DB-HRV), intraepidermal nerve fibre density (IENFD), and corneal confocal microscopy (CCM). 46/110 patients had DPN according to the Toronto consensus. The continuous output displayed high sensitivity and specificity for DB-HRV (91%, 83%), CNFD (88%, 78%), and SNAP (88%, 83%), whereas the categorical output showed high sensitivity but low specificity. The optimal cut-off points were 90% for the detection of autonomic dysfunction (DB-HRV) and 80% for small fibre neuropathy (CNFD). The diagnostic efficacy of the continuous Neuropad output for abnormal DB-HRV (AUC: 91%, P=0.0003 ) and CNFD (AUC: 82%, P=0.01) was better than for PMNCV (AUC: 60% ). The categorical output showed no significant difference in diagnostic efficacy for these same measures. An image analysis algorithm generating a continuous output (Sudometrics) improved the diagnostic ability of Neuropad, particularly in detecting autonomic and small fibre neuropathy

Bibliographic metadata

Type of resource:
Content type:
Publication status:
Published
Publication type:
Published date:
Accepted date:
2015-04-27
Submitted date:
2015-01-18
Language:
eng
Abbreviated journal title:
ISSN:
Article number:
847854
Digital Object Identifier:
10.1155/2015/847854
Attached files embargo period:
Immediate release
Attached files release date:
1st December, 2015
Access state:
Active

Institutional metadata

University researcher(s):
Academic department(s):

Record metadata

Manchester eScholar ID:
uk-ac-man-scw:280996
Created by:
Jeziorska, Maria
Created:
1st December, 2015, 13:53:30
Last modified by:
Jeziorska, Maria
Last modified:
1st December, 2015, 13:53:30

Can we help?

The library chat service will be available from 11am-3pm Monday to Friday (excluding Bank Holidays). You can also email your enquiry to us.