J Shanghai Jiaotong Univ Sci ›› 2022, Vol. 27 ›› Issue (1): 112-120.doi: 10.1007/s12204-021-2331-3
收稿日期:
2021-05-08
出版日期:
2022-01-28
发布日期:
2022-01-14
通讯作者:
JIANG Hong?(姜虹),jianghongjiuyuan@126.com
XIA Ming (夏明), XU Tianyi (徐天意), JIANG Hong∗ (姜虹)
Received:
2021-05-08
Online:
2022-01-28
Published:
2022-01-14
中图分类号:
. [J]. J Shanghai Jiaotong Univ Sci, 2022, 27(1): 112-120.
XIA Ming (夏明), XU Tianyi (徐天意), JIANG Hong∗ (姜虹). Progress and Perspective of Artificial Intelligence and Machine Learning of Prediction in Anesthesiology[J]. J Shanghai Jiaotong Univ Sci, 2022, 27(1): 112-120.
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