positive predictive values of breast imaging reporting and data system (bi-rads®) categories 3, 4 and 5 in breast lesions submitted to percutaneous biopsy

positive predictive values of breast imaging reporting and data system (bi-rads®) categories 3, 4 and 5 in breast lesions submitted to percutaneous biopsy

;Gustavo Machado Badan;Decio Roveda Junior;Carlos Alberto Pecci Ferreira;Felipe Augusto Trocoli Ferreira;Eduardo de Faria Castro Fleury;Mario Sergio Dantas do Amaral Campos;Rodrigo de Oliveira Seleti;Helio da Cruz Junior
india international conference on information processing, iicip 2016 - proceedings 2013 Vol. 46 pp. 209-213
271
badan2013radiologiapositive

Abstract

Objective To evaluate the BI-RADS as a predictive factor of suspicion for malignancy in breast lesions by correlating radiological with histological results and calculating the positive predictive value for categories 3, 4 and 5 in a breast cancer reference center in the city of São Paulo. Materials and Methods Retrospective, analytical and cross-sectional study including 725 patients with mammographic and/or sonographic findings classified as BI-RADS categories 3, 4 and 5 who were referred to the authors' institution to undergo percutaneous biopsy. The tests results were reviewed and the positive predictive value was calculated by means of a specific mathematical equation. Results Positive predictive values found for categories 3, 4 and 5 were respectively the following: 0.74%, 33.08% and 92.95%, for cases submitted to ultrasound-guided biopsy, and 0.00%, 14.90% and 100% for cases submitted to stereotactic biopsy. Conclusion The present study demonstrated high suspicion for malignancy in lesions classified as category 5 and low risk for category 3. As regards category 4, the need for systematic biopsies was observed.

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ID: 211541
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