An automatic tool for quantification of nerve fibers in corneal confocal microscopy images

Objective: We describe and evaluate an automated software tool for nerve-fiber detection and quantification in corneal confocal microscopy (CCM) images, combining sensitive nerve- fiber detection with morphological descriptors. Method: We have evaluated the tool for quantification of Diabetic Sensor...

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Main Authors: Chen, Xin, Graham, Jim, Dabbah, Mohammad, Petropoulos, Ioannis N., Tavakoli, Mitra, Malik, Rayaz
Format: Article
Published: IEEE 2016
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Online Access:https://eprints.nottingham.ac.uk/41795/
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author Chen, Xin
Graham, Jim
Dabbah, Mohammad
Petropoulos, Ioannis N.
Tavakoli, Mitra
Malik, Rayaz
author_facet Chen, Xin
Graham, Jim
Dabbah, Mohammad
Petropoulos, Ioannis N.
Tavakoli, Mitra
Malik, Rayaz
author_sort Chen, Xin
building Nottingham Research Data Repository
collection Online Access
description Objective: We describe and evaluate an automated software tool for nerve-fiber detection and quantification in corneal confocal microscopy (CCM) images, combining sensitive nerve- fiber detection with morphological descriptors. Method: We have evaluated the tool for quantification of Diabetic Sensorimotor Polyneuropathy (DSPN) using both new and previously published morphological features. The evaluation used 888 images from 176 subjects (84 controls and 92 patients with type 1 diabetes). The patient group was further subdivided into those with (n = 63) and without (n = 29) DSPN. Results: We achieve improved nerve- fiber detection over previous results (91.7% sensitivity and specificity in identifying nerve-fiber pixels). Automatic quantification of nerve morphology shows a high correlation with previously reported, manually measured, features. Receiver Operating Characteristic (ROC) analysis of both manual and automatic measurement regimes resulted in similar results in distinguishing patients with DSPN from those without: AUC of about 0.77 and 72% sensitivity-specificity at the equal error rate point. Conclusion: Automated quantification of corneal nerves in CCM images provides a sensitive tool for identification of DSPN. Its performance is equivalent to manual quantification, while improving speed and repeatability. Significance: CCM is a novel in vivo imaging modality that has the potential to be a noninvasive and objective image biomarker for peripheral neuropathy. Automatic quantification of nerve morphology is a major step forward in the early diagnosis and assessment of progression, and, in particular, for use in clinical trials to establish therapeutic benefit in diabetic and other peripheral neuropathies.
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spelling nottingham-417952020-05-04T17:57:23Z https://eprints.nottingham.ac.uk/41795/ An automatic tool for quantification of nerve fibers in corneal confocal microscopy images Chen, Xin Graham, Jim Dabbah, Mohammad Petropoulos, Ioannis N. Tavakoli, Mitra Malik, Rayaz Objective: We describe and evaluate an automated software tool for nerve-fiber detection and quantification in corneal confocal microscopy (CCM) images, combining sensitive nerve- fiber detection with morphological descriptors. Method: We have evaluated the tool for quantification of Diabetic Sensorimotor Polyneuropathy (DSPN) using both new and previously published morphological features. The evaluation used 888 images from 176 subjects (84 controls and 92 patients with type 1 diabetes). The patient group was further subdivided into those with (n = 63) and without (n = 29) DSPN. Results: We achieve improved nerve- fiber detection over previous results (91.7% sensitivity and specificity in identifying nerve-fiber pixels). Automatic quantification of nerve morphology shows a high correlation with previously reported, manually measured, features. Receiver Operating Characteristic (ROC) analysis of both manual and automatic measurement regimes resulted in similar results in distinguishing patients with DSPN from those without: AUC of about 0.77 and 72% sensitivity-specificity at the equal error rate point. Conclusion: Automated quantification of corneal nerves in CCM images provides a sensitive tool for identification of DSPN. Its performance is equivalent to manual quantification, while improving speed and repeatability. Significance: CCM is a novel in vivo imaging modality that has the potential to be a noninvasive and objective image biomarker for peripheral neuropathy. Automatic quantification of nerve morphology is a major step forward in the early diagnosis and assessment of progression, and, in particular, for use in clinical trials to establish therapeutic benefit in diabetic and other peripheral neuropathies. IEEE 2016-06-07 Article PeerReviewed Chen, Xin, Graham, Jim, Dabbah, Mohammad, Petropoulos, Ioannis N., Tavakoli, Mitra and Malik, Rayaz (2016) An automatic tool for quantification of nerve fibers in corneal confocal microscopy images. IEEE Transactions on Biomedical Engineering, 64 (4). pp. 786-794. ISSN 0018-9294 Diabetes Feature extraction Biomedical measurement Microscopy Discrete wavelet transforms Training Morphology http://ieeexplore.ieee.org/document/7484747/ doi:10.1109/TBME.2016.2573642 doi:10.1109/TBME.2016.2573642
spellingShingle Diabetes
Feature extraction
Biomedical measurement
Microscopy
Discrete wavelet transforms
Training
Morphology
Chen, Xin
Graham, Jim
Dabbah, Mohammad
Petropoulos, Ioannis N.
Tavakoli, Mitra
Malik, Rayaz
An automatic tool for quantification of nerve fibers in corneal confocal microscopy images
title An automatic tool for quantification of nerve fibers in corneal confocal microscopy images
title_full An automatic tool for quantification of nerve fibers in corneal confocal microscopy images
title_fullStr An automatic tool for quantification of nerve fibers in corneal confocal microscopy images
title_full_unstemmed An automatic tool for quantification of nerve fibers in corneal confocal microscopy images
title_short An automatic tool for quantification of nerve fibers in corneal confocal microscopy images
title_sort automatic tool for quantification of nerve fibers in corneal confocal microscopy images
topic Diabetes
Feature extraction
Biomedical measurement
Microscopy
Discrete wavelet transforms
Training
Morphology
url https://eprints.nottingham.ac.uk/41795/
https://eprints.nottingham.ac.uk/41795/
https://eprints.nottingham.ac.uk/41795/