COMPUTER-AIDED MAMMOGRAPHIC SCREENING FOR SPICULATED LESIONS

被引:238
作者
KEGELMEYER, WP
PRUNEDA, JM
BOURLAND, PD
HILLIS, A
RIGGS, MW
NIPPER, ML
机构
[1] SANDIA NATL LABS,LIVERMORE,CA
[2] TEXAS A&M UNIV,HLTH SCI CTR,COLL MED,SCOTT & WHITE CLIN & MEM HOSP,DEPT RADIOL,TEMPLE,TX 76508
[3] TEXAS A&M UNIV,HLTH SCI CTR,COLL MED,SCOTT & WHITE CLIN & MEM HOSP,DEPT BIOSTAT,TEMPLE,TX 76508
[4] TEXAS A&M UNIV,HLTH SCI CTR,COLL MED,SCOTT SHERWOOD & BRINDLEY FDN,TEMPLE,TX
关键词
BREAST NEOPLASMS; DIAGNOSIS; COMPUTERS; DIAGNOSTIC AID; IMAGES; DIGITIZATION; ENHANCEMENT;
D O I
10.1148/radiology.191.2.8153302
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
PURPOSE: To study the use of a computer vision method as a second reader for the detection of spiculated lesions on screening mammograms. MATERIALS AND METHODS: An algorithmic computer process for the detection of spiculated lesions on digitized screen-film mammograms was applied to 85 four-view clinical cases: 36 cases with cancer proved by means of biopsy and 49 cases with negative findings at examination and follow-up. The computer detections were printed as film with added outlines that indicated the suspected cancers. Four radiologists screened the 85 cases twice, once without and once with the computer reports as ancillary films. RESULTS: The algorithm alone achieved 100% sensitivity, with a specificity of 82%. The computer reports increased the average radiologist sensitivity by 9.7% (P = .005), moving from 80.6% to 90.3%, with no decrease in average specificity. CONCLUSION: The study demonstrated that computer analysis of mammograms can provide a substantial and statistically significant increase in radiologist screening efficacy.
引用
收藏
页码:331 / 337
页数:7
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