An updated overview of radiomics-based artificial intelligence (AI) methods in breast cancer screening and diagnosis
- URL: http://arxiv.org/abs/2406.14735v1
- Date: Thu, 20 Jun 2024 21:01:11 GMT
- Title: An updated overview of radiomics-based artificial intelligence (AI) methods in breast cancer screening and diagnosis
- Authors: Reza Elahi, Mahdis Nazari,
- Abstract summary: Current imaging methods for diagnosing breast cancer (BC) are associated with limited sensitivity and specificity and modest positive predictive power.
Recent progress in image analysis using artificial intelligence (AI) has created great promise to improve BC diagnosis and subtype differentiation.
Radiomics have been developed to improve sensitivity and specificity of early BC diagnosis and classification.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Current imaging methods for diagnosing BC are associated with limited sensitivity and specificity and modest positive predictive power. The recent progress in image analysis using artificial intelligence (AI) has created great promise to improve breast cancer (BC) diagnosis and subtype differentiation. In this case, novel quantitative computational methods, such as radiomics, have been developed to improve the sensitivity and specificity of early BC diagnosis and classification. The potential of radiomics in improving the diagnostic efficacy of imaging studies has been shown in several studies. In this review article, we discuss the radiomics workflow and current hand-crafted radiomics methods in the diagnosis and classification of BC based on most recent studies on different imaging modalities, e.g. MRI, mammography, contrast-enhanced spectral mammography (CESM), ultrasound imaging, and digital breast tumosynthesis (DBT). We also discuss current challenges and potential strategies to improve the specificity and sensitivity of radiomics in breast cancer to help achieve a higher level of BC classification and diagnosis in the clinical setting. The growing field of AI incorporation with imaging information has opened a great opportunity to provide a higher level of care for BC patients.
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