Mammographic screenings are widely known for their accessibility, cost-efficiency, and dependable accuracy in detecting abnormalities. However, with over 100 million mammograms taken globally each year, each requiring at least two specialist reviews—the sheer volume creates significant challenges for radiologists, leading to delays in report generation, missed screenings, and an increased risk of diagnostic errors. A study by the National Cancer Institute suggests screening mammograms underdiagnose about 20% of breast cancers.
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