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Deep learning model uses hand images to improve acromegaly detection

April 13, 2026 By Matthew Solan 2 min read
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Objective:

To evaluate a deep learning model's ability to identify acromegaly from hand photographs while maintaining patient privacy, which is crucial for ethical medical practices.

Key Findings:
  • The model achieved 89% sensitivity and 91% specificity, with an F1 score of 0.89 and AUROC of 0.96, showing consistent performance across age, remission status, and sex.
  • It outperformed 10 board-certified endocrinologists, whose F1 scores ranged from 0.43 to 0.63, with subgroup analyses indicating sensitivity and specificity of 89% and 90% in younger patients and 86% and 95% in older patients.
Interpretation:

The deep learning model demonstrates significant potential for accurate acromegaly detection based on external physical traits, aiding healthcare providers without specialized training.

Limitations:
  • Incomplete biochemical confirmation in some control participants may affect the reliability of results.
  • Higher prevalence of acromegaly than in general practice limits generalizability.
  • Study limited to Japanese patients from specialist centers may not reflect broader populations.
Conclusion:

The study highlights the promise of AI in enhancing diagnostic accuracy for acromegaly while preserving patient anonymity, potentially improving healthcare delivery.

AACE Endocrine AI is published by Conexiant under a license arrangement with the American Association of Clinical Endocrinology, Inc. (AACE®). The ideas and opinions expressed in AACE Endocrine AI do not necessarily reflect those of Conexiant or AACE. For more information, see Policies.

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