TY - JOUR
T1 - Tissue classification with generalized spectrum parameters
AU - Donohue, K. D.
AU - Huang, L.
AU - Burks, T.
AU - Forsberg, F.
AU - Piccoli, C. W.
PY - 2001
Y1 - 2001
N2 - This paper presents performance comparisons between breast tumor classifiers based on parameters from a conventional texture analysis (CTA) and the generalized spectrum (GS). The computations of GS-based parameters from radiofrequency (RF) ultrasonic scans and their relationship to underlying scatterer properties are described. Clinical experiments demonstrate classifier performances using 22 benign and 24 malignant breast mass regions taken from 40 patients. Linear classifiers based on parameters from the front edge, back edge and interior tumor regions are examined. Results show significantly better performances for GS-based classifiers, with improvements in empirical receiver operating characteristic (ROC) areas of greater than 10%. The ROC curves show GS-based classifiers achieving a 90% sensitivity level at 50% specificity when applied to the back-edge tumor regions, an 80% sensitivity level at 65% specificity when applied to the front-edge tumor regions, and a 100% sensitivity level at 45% specificity when applied to the interior tumor regions.
AB - This paper presents performance comparisons between breast tumor classifiers based on parameters from a conventional texture analysis (CTA) and the generalized spectrum (GS). The computations of GS-based parameters from radiofrequency (RF) ultrasonic scans and their relationship to underlying scatterer properties are described. Clinical experiments demonstrate classifier performances using 22 benign and 24 malignant breast mass regions taken from 40 patients. Linear classifiers based on parameters from the front edge, back edge and interior tumor regions are examined. Results show significantly better performances for GS-based classifiers, with improvements in empirical receiver operating characteristic (ROC) areas of greater than 10%. The ROC curves show GS-based classifiers achieving a 90% sensitivity level at 50% specificity when applied to the back-edge tumor regions, an 80% sensitivity level at 65% specificity when applied to the front-edge tumor regions, and a 100% sensitivity level at 45% specificity when applied to the interior tumor regions.
KW - Breast tissue
KW - Generalized spectrum
KW - Texture analysis
KW - Tissue characterization
KW - Tumor discrimination
KW - Ultrasound imaging
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U2 - 10.1016/S0301-5629(01)00468-9
DO - 10.1016/S0301-5629(01)00468-9
M3 - Article
C2 - 11750750
AN - SCOPUS:0035660740
SN - 0301-5629
VL - 27
SP - 1505
EP - 1514
JO - Ultrasound in Medicine and Biology
JF - Ultrasound in Medicine and Biology
IS - 11
ER -