4.0 Article

Artificial Intelligence-Assisted Electrocardiography for Early Diagnosis of Thyrotoxic Periodic Paralysis

期刊

JOURNAL OF THE ENDOCRINE SOCIETY
卷 5, 期 9, 页码 -

出版社

ENDOCRINE SOC
DOI: 10.1210/jendso/bvab120

关键词

artificial intelligence; electrocardiogram; deep learning; thyrotoxic periodic paralysis; hypokalemia

资金

  1. Ministry of Science and Technology
  2. MOST [108-3111-Y-016-009, 109-3111-Y016-002]
  3. Tri-Service General Hospital [TSGH-C107-007-007-S02]
  4. National Science and Technology Development Fund Management Association, Taiwan
  5. Cheng Hsin General Hospital, Taiwan [CHNDMC-109-19, CHNDMC-110-15]

向作者/读者索取更多资源

The study demonstrates that the AI-ECG system can reliably identify hypokalemia in patients with paralysis, and combining it with routine blood chemistries provides valuable decision support for the early diagnosis of TPP.
Context: Thyrotoxic periodic paralysis (TPP) characterized by acute weakness, hypokalemia, and hyperthyroidism is a medical emergency with a great challenge in early diagnosis since most TPP patients do not have overt symptoms. Objective: This work aims to assess artificial intelligence (AI)-assisted electrocardiography (ECG) combined with routine laboratory data in the early diagnosis of TPP. Methods: A deep learning model (DLM) based on ECG12Net, an 82-layer convolutional neural network, was constructed to detect hypokalemia and hyperthyroidism. The development cohort consisted of 39 ECGs from patients with TPP and 502 ECGs of hypokalemic controls; the validation cohort consisted of 11 ECGs of TPP patients and 36 ECGs of non-TPP individuals with weakness. The AI-ECG-based TPP diagnostic process was then consecutively evaluated in 22 male patients with TTP-like features. Results: In the validation cohort, the DLM-based ECG system detected all cases of hypokalemia in TPP patients with a mean absolute error of 0.26 mEq/L and diagnosed TPP with an area under curve (AUC) of approximately 80%, surpassing the best standard ECG parameter (AUC = 0.7285 for the QR interval). Combining the AI predictions with the estimated glomerular filtration rate and serum chloride boosted the diagnostic accuracy of the algorithm to AUC 0.986. In the prospective study, the integrated AI and routine laboratory diagnostic system had a PPV of 100% and F-measure of 87.5%. Conclusion: An AI-ECG system reliably identifies hypokalemia in patients with paralysis, and integration with routine blood chemistries provides valuable decision support for the early diagnosis of TPP.

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