Affiliation:
1. Department of Radiology, Faculty of Medicine University Teknologi MARA, Sungai Buloh, Selangor, Malaysia
2. Department of Biomedical Imaging, University Malaya Research Imaging Centre, Kuala Lumpur, Malaysia
Abstract
Objective:
This study evaluates the effectiveness of artificial intelligence (AI) in mammography in a diverse population from a middle-income nation and
compares it to traditional methods.
Methods:
A retrospective study was conducted on 543 mammograms of 467 Malays, 48 Chinese, and 28 Indians in a middle-income nation. Three breast
radiologists interpreted the examinations independently in two reading sessions (with and without AI support). Breast density and BI-RADS
categories were assessed, comparing the accuracy, sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV)
results.
Results:
Of 543 mammograms, 69.2% had lesions detected. Biopsies were performed on 25%(n=136), with 66(48.5%) benign and 70(51.5%) malignant.
Substantial agreement in density assessment between the radiologist and AI software (κ =0.606, p < 0.001) and the BI-RADS category with and
without AI (κ =0.74, p < 0.001). The performance of the AI software was comparable to the traditional methods. The sensitivity, specificity, PPV,
and NPV or radiologists alone, radiologist + AI, and AI alone were 81.9%,90.4%,56.0%, and 97.1%; 81.0%, 93.1%,55.5%, and 97.0%; and
90.0%,76.5%,36.2%, and 98.1%, respectively. AI software enhances the accuracy of lesion diagnosis and reduces unnecessary biopsies,
particularly for BI-RADS 4 lesions. The AI software results for synthetic were almost similar to the original 2D mammography, with AUC of
0.925 and 0.871, respectively.
Conclusion:
AI software may assist in the accurate diagnosis of breast lesions, enhancing the efficiency of breast lesion diagnosis in a mixed population of
opportunistic screening and diagnostic patients.
Key Messages:
• The use of artificial intelligence (AI) in mammography for population-based breast cancer screening has been validated in high-income nations,
with reported improved diagnostic performance. Our study evaluated the usage of an AI tool in an opportunistic screening setting in a multi-ethnic
and middle-income nation.
• The application of AI in mammography enhances diagnostic accuracy, potentially leading to reduced unnecessary biopsies.
• AI integration into the workflow did not disrupt the performance of trained breast radiologists, as there is a substantial inter-reader agreement for
BI-RADS category assessment and breast density.
Funder
Universiti Teknologi MARA
LESTARI
Publisher
Bentham Science Publishers Ltd.