Title: Efficacy of Mammography in Detecting Breast Masses Using Histopathology as Gold Standard

Authors: Dr Niya Ann Kurien, Dr Viji Krishnan

 DOI:  https://dx.doi.org/10.18535/jmscr/v5i4.57

Abstract

Background: Early detection is an essential step in decreasing the morbidity and mortality of breast cancer. Mammography is a proven effective tool for early breast cancer detection. The aim and objective of this study is to assess the efficacy of mammography in the evaluation of breast masses based on the Breast Imaging Reporting and Data System (BI-RADS) for differentiating between benign and malignant breast lesions keeping histopathology as gold standard

Materials and Methods: The present study is an analytical study of patients presenting with breast masses, with age group ranging between 31 to 89 years referred to the department of radio-diagnosis Findings of mammogram along with BI-RADS category were correlated with histopathological findings, keeping it as gold standard.

Results: Based on the BI-RADS 50 study cases were categorized and confirmed with histopathology, keeping it as gold standard. The diagnostic accuracy  of BI-RADS IV &BI-RADS V was 96% and88 %  and was found to be very high .The  kappa value also shows statistical significance which  were 0.92 and 0.75 respectively for  BIRADS V and  BIRADS IV and V.

Conclusion: This study proves the diagnostic accuracy of mammography as a method of choice to evaluate breast masses keeping histopathology as gold standard.

Keywords: Breast masses, Mammography, histopathology.

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Corresponding Author

Dr Viji Krishnan

Associate Professor, Department of Biochemistry, JMMC & RI, Thrissur, Kerala

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