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Artificial intelligence in computer-aided diagnosis of abdomen diseases

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Correspondence to Yi Zhu.

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Gao, F., Zhu, Y. & Zhang, J. Artificial intelligence in computer-aided diagnosis of abdomen diseases. Sci. China Life Sci. 62, 1396–1399 (2019). https://doi.org/10.1007/s11427-019-1556-7

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