DocumentCode :
1217769
Title :
Multiwavelet grading of pathological images of prostate
Author :
Jafari-Khouzani, Kourosh ; Soltanian-Zadeh, Hamid
Author_Institution :
Dept. of Radiol., Henry Ford Health Syst., Detroit, MI, USA
Volume :
50
Issue :
6
fYear :
2003
fDate :
6/1/2003 12:00:00 AM
Firstpage :
697
Lastpage :
704
Abstract :
Histological grading of pathological images is used to determine the level of malignancy of cancerous tissues. This is a very important task in prostate cancer prognosis, since it is used for treatment planning. If infection of cancer is not rejected by noninvasive diagnostic techniques like magnetic resonance imaging, computed tomography scan, and ultrasound, then biopsy specimens of tissue are tested. For prostate, biopsied tissue is stained by hematoxyline and eosine method and viewed by pathologists under a microscope to determine its histological grade. Human grading is very subjective due to interobserver and intraobserver variations and in some cases difficult and time-consuming. Thus, an automatic and repeatable technique is needed for grading. The Gleason grading system is the most common method for histological grading of prostate tissue samples. According to this system, each cancerous specimen is assigned one of five grades. Although some automatic systems have been developed for analysis of pathological images, Gleason grading has not yet been automated; the goal of this research is to automate it. To this end, we calculate energy and entropy features of multiwavelet coefficients of the image. Then, we select most discriminative features by simulated annealing and use a k-nearest neighbor classifier to classify each image to appropriate grade (class). The leaving-one-out technique is used for error rate estimation. We also obtain the results using features extracted by wavelet packets and co-occurrence matrices and compare them with the multiwavelet method. Experimental results show the superiority of the multiwavelet transforms compared with other techniques. For multiwavelets, critically sampled preprocessing outperforms repeated-row preprocessing and has less sensitivity to noise for second level of decomposition. The first level of decomposition is very sensitive to noise and, thus, should not be used for feature extraction. The best multiwavelet me- - thod grades prostate pathological images correctly 97% of the time.
Keywords :
biological organs; biological tissues; biomedical optical imaging; cancer; entropy; feature extraction; image classification; image resolution; image texture; medical image processing; tumours; wavelet transforms; Gleason grading system; automatic repeatable technique; biopsied tissue; biopsy specimens; cancer infection; cancerous tissues; co-occurrence matrices; computed tomography scan; critically sampled preprocessing; decomposition; discriminative features; energy features; entropy features; eosine; error rate estimation; feature extraction; hematoxyline; histological grading; human grading; interobserver variations; intraobserver variations; k-nearest neighbor classifier; leaving-one-out technique; magnetic resonance imaging; malignancy level; multiwavelet coefficients; multiwavelet grading; multiwavelet transforms; noise; noninvasive diagnostic techniques; pathological images; pathologists; prostate cancer prognosis; repeated-row preprocessing; simulated annealing; treatment planning; ultrasound; wavelet packets; Biopsy; Computed tomography; Feature extraction; Magnetic resonance imaging; Microscopy; Noise level; Pathology; Prostate cancer; Testing; Ultrasonic imaging; Algorithms; Humans; Image Enhancement; Image Interpretation, Computer-Assisted; Male; Pattern Recognition, Automated; Prostatic Neoplasms; Signal Processing, Computer-Assisted;
fLanguage :
English
Journal_Title :
Biomedical Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9294
Type :
jour
DOI :
10.1109/TBME.2003.812194
Filename :
1203808
Link To Document :
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