Transforming Dermatopathology With AI: Addressing Bias, Enhancing Interpretability, and Shaping Future Diagnostics
<h3>Background</h3><p dir="ltr">Artificial intelligence (AI) is transforming dermatopathology by enhancing diagnostic accuracy, efficiency, and precision medicine. Despite its promise, challenges such as dataset biases, underrepresentation of diverse populations, and limi...
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| Main Author: | Diala Ra'Ed Kamal Kakish (22330627) (author) |
|---|---|
| Other Authors: | Jehad Feras AlSamhori (17746809) (author), Andy Noel Ramirez Fajardo (22330630) (author), Lana N. Qaqish (22330633) (author), Layan Ahmed Jaber (22330636) (author), Rawan Abujudeh (22330639) (author), Mohammad Hathal Mahmoud Al‐Zuriqat (22330642) (author), Amina Yahya Mohammed (22330645) (author), Abdulqadir J. Nashwan (11659453) (author) |
| Published: |
2025
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| Subjects: | |
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