The Impact of AI on Reducing Diagnostic Errors in Pathology
Abstract
This study examines the effectiveness of AI in reducing diagnostic errors within pathology. Utilizing deep learning algorithms to analyze histopathological images, our findings reveal a marked reduction in misdiagnoses compared to traditional methods. This research underscores the potential of AI to enhance accuracy and reliability in pathology, ultimately improving patient outcomes.
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