Curvelet based automatic segmentation of supraspinatus tendon from ultrasound image: A focused assistive diagnostic method

Background: Disorders of rotator cuff tendons results in acute pain limiting the normal range of motion for shoulder. Of all the tendons in rotator cuff, supraspinatus (SSP) tendon is affected first of any pathological changes. Diagnosis of SSP tendon using ultrasound is considered to be operator de...

Full description

Saved in:
Bibliographic Details
Main Authors: Gupta, R., Elamvazuthi, I., Dass, S.C., Faye, I., Vasant, Pa., George, J., Izza, F.
Format: Article
Published: BioMed Central 2014
Subjects:
Online Access:http://eprints.um.edu.my/15415/
Tags: Add Tag
No Tags, Be the first to tag this record!
id my.um.eprints.15415
record_format eprints
spelling my.um.eprints.154152015-12-29T02:21:26Z http://eprints.um.edu.my/15415/ Curvelet based automatic segmentation of supraspinatus tendon from ultrasound image: A focused assistive diagnostic method Gupta, R. Elamvazuthi, I. Dass, S.C. Faye, I. Vasant, Pa. George, J. Izza, F. R Medicine Background: Disorders of rotator cuff tendons results in acute pain limiting the normal range of motion for shoulder. Of all the tendons in rotator cuff, supraspinatus (SSP) tendon is affected first of any pathological changes. Diagnosis of SSP tendon using ultrasound is considered to be operator dependent with its accuracy being related to operator's level of experience. Methods: The automatic segmentation of SSP tendon ultrasound image was performed to provide focused and more accurate diagnosis. The image processing techniques were employed for automatic segmentation of SSP tendon. The image processing techniques combines curvelet transform and mathematical concepts of logical and morphological operators along with area filtering. The segmentation assessment was performed using true positives rate, false positives rate and also accuracy of segmentation. The specificity and sensitivity of the algorithm was tested for diagnosis of partial thickness tears (PTTs) and full thickness tears (FTTs). The ultrasound images of SSP tendon were taken from medical center with the help of experienced radiologists. The algorithm was tested on 116 images taken from 51 different patients. Results: The accuracy of segmentation of SSP tendon was calculated to be 95.61% in accordance with the segmentation performed by radiologists, with true positives rate of 91.37% and false positives rate of 8.62%. The specificity and sensitivity was found to be 93.6%, 94% and 95%, 95.6% for partial thickness tears and full thickness tears respectively. The proposed methodology was successfully tested over a database of more than 116 US images, for which radiologist assessment and validation was performed. Conclusions: The segmentation of SSP tendon from ultrasound images helps in focused, accurate and more reliable diagnosis which has been verified with the help of two experienced radiologists. The specificity and sensitivity for accurate detection of partial and full thickness tears has been considerably increased after segmentation when compared with existing literature. BioMed Central 2014 Article PeerReviewed Gupta, R. and Elamvazuthi, I. and Dass, S.C. and Faye, I. and Vasant, Pa. and George, J. and Izza, F. (2014) Curvelet based automatic segmentation of supraspinatus tendon from ultrasound image: A focused assistive diagnostic method. BioMedical Engineering OnLine, 13.
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic R Medicine
spellingShingle R Medicine
Gupta, R.
Elamvazuthi, I.
Dass, S.C.
Faye, I.
Vasant, Pa.
George, J.
Izza, F.
Curvelet based automatic segmentation of supraspinatus tendon from ultrasound image: A focused assistive diagnostic method
description Background: Disorders of rotator cuff tendons results in acute pain limiting the normal range of motion for shoulder. Of all the tendons in rotator cuff, supraspinatus (SSP) tendon is affected first of any pathological changes. Diagnosis of SSP tendon using ultrasound is considered to be operator dependent with its accuracy being related to operator's level of experience. Methods: The automatic segmentation of SSP tendon ultrasound image was performed to provide focused and more accurate diagnosis. The image processing techniques were employed for automatic segmentation of SSP tendon. The image processing techniques combines curvelet transform and mathematical concepts of logical and morphological operators along with area filtering. The segmentation assessment was performed using true positives rate, false positives rate and also accuracy of segmentation. The specificity and sensitivity of the algorithm was tested for diagnosis of partial thickness tears (PTTs) and full thickness tears (FTTs). The ultrasound images of SSP tendon were taken from medical center with the help of experienced radiologists. The algorithm was tested on 116 images taken from 51 different patients. Results: The accuracy of segmentation of SSP tendon was calculated to be 95.61% in accordance with the segmentation performed by radiologists, with true positives rate of 91.37% and false positives rate of 8.62%. The specificity and sensitivity was found to be 93.6%, 94% and 95%, 95.6% for partial thickness tears and full thickness tears respectively. The proposed methodology was successfully tested over a database of more than 116 US images, for which radiologist assessment and validation was performed. Conclusions: The segmentation of SSP tendon from ultrasound images helps in focused, accurate and more reliable diagnosis which has been verified with the help of two experienced radiologists. The specificity and sensitivity for accurate detection of partial and full thickness tears has been considerably increased after segmentation when compared with existing literature.
format Article
author Gupta, R.
Elamvazuthi, I.
Dass, S.C.
Faye, I.
Vasant, Pa.
George, J.
Izza, F.
author_facet Gupta, R.
Elamvazuthi, I.
Dass, S.C.
Faye, I.
Vasant, Pa.
George, J.
Izza, F.
author_sort Gupta, R.
title Curvelet based automatic segmentation of supraspinatus tendon from ultrasound image: A focused assistive diagnostic method
title_short Curvelet based automatic segmentation of supraspinatus tendon from ultrasound image: A focused assistive diagnostic method
title_full Curvelet based automatic segmentation of supraspinatus tendon from ultrasound image: A focused assistive diagnostic method
title_fullStr Curvelet based automatic segmentation of supraspinatus tendon from ultrasound image: A focused assistive diagnostic method
title_full_unstemmed Curvelet based automatic segmentation of supraspinatus tendon from ultrasound image: A focused assistive diagnostic method
title_sort curvelet based automatic segmentation of supraspinatus tendon from ultrasound image: a focused assistive diagnostic method
publisher BioMed Central
publishDate 2014
url http://eprints.um.edu.my/15415/
_version_ 1643690048330137600
score 13.160551