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A generalized deep learning model for heart failure diagnosis using dynamic and static ultrasound.

Zeye LiuYuan HuangHang LiWenchao LiFengwen ZhangWenbin OuyangShouzheng WangZhiling LuoJinduo WangYan ChenRuibing XiaYakun LiXiangbin Pan
Published in: Journal of translational internal medicine (2023)
A new deep spatio-temporal convolution model was constructed to identify patients with HF with reduced EF accurately (< 40%) using dynamic and static cardiac ultrasound images. The model outperformed the diagnostic performance of most senior specialists. This may be the first HF-related AI diagnostic model compatible with multi-dimensional cardiac ultrasound data, and may thereby contribute to the improvement of HF diagnosis. Additionally, the model enables patients to carry "on-the-go" static ultrasound reports for referral and reexamination, thus saving healthcare resources.
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