Using the Kaiser Score As a Clinical Decision Rule for Breast Lesion Classification: Does Computer-Assisted Curve Type Analysis Improve Diagnosis?
European journal of radiology(2024)
摘要
Purpose: We aimed to investigate the effect of using visual or automatic enhancement curve type assessment on the diagnostic performance of the Kaiser Score (KS), a clinical decision rule for breast MRI. Method: This IRB-approved retrospective study analyzed consecutive conventional BI-RADS 0, 4 or 5 patients who underwent biopsy after 1.5T breast MRI according to EUSOBI recommendations between 2013 and 2015. The KS includes five criteria (spiculations; signal intensity (SI)-time curve type; margins of the lesion; internal enhancement; and presence of edema) resulting in scores from 1 (=lowest) to 11 (=highest risk of breast cancer). Enhancement curve types (Persistent, Plateau or Wash -out) were assessed by two radiologists independently visually and using a pixel -wise color -coded computed parametric map of curve types. KS diagnostic performance differences between readings were compared by ROC analysis. Results: In total 220 lesions (147 benign, 73 malignant) including mass (n = 148) and non -mass lesions (n = 72) were analyzed. KS reading performance in distinguishing benign from malignant lesions did not differ between visual analysis and parametric map (P = 0.119; visual: AUC 0.875, sensitivity 95 %, specificity 63 %; and map: AUC 0.901, sensitivity 97 %, specificity 65 %). Additionally, analyzing mass and non -mass lesions separately, showed no difference between parametric map based and visual curve type -based KS analysis as well (P = 0.130 and P = 0.787). Conclusions: The performance of the Kaiser Score is largely independent of the curve type assessment methodology, confirming its robustness as a clinical decision rule for breast MRI in any type of breast lesion in clinical routine.
更多查看译文
关键词
Breast neoplasms,MRI,Clinical decision rule,Contrast media,Kinetics
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要