Machine learning risk score for prediction of gestational diabetes in early pregnancy in Tianjin, China
Diabetes/Metabolism Research and Reviews2020Vol. 37(5), pp. e3397–e3397
Citations Over TimeTop 10% of 2020 papers
Hongwei Liu, Jing Li, Junhong Leng, Hui Wang, Jinnan Liu, Weiqin Li, Hongyan Liu, Shuo Wang, Jun Ma, Juliana C.N. Chan, Zhijie Yu, Gang Hu, Changping Li, Xilin Yang
Abstract
The XGBoost model achieved better performance than the logistic model.
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