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. 2021 Jan 25;22:30. doi: 10.1186/s12859-021-03960-9

Table 1.

The results of predicting real-value distance map and multi-class distance map at the same time versus predicting real-value distance separately on 43 CASP13 hard domains

L/5 (Precision) L/2 (Precision) L (Precision) MSE Pearson coefficient
Experiment 1 0.699 0.580 0.446 1.151 0.979
Experiment 2 0.687 0.558 0.430 1.282 0.978

MSE: average mean square error between predicted distances and true distances; Pearson coefficient: the Pearson’s correlation between predicted distance and true distance

Experiment 1: real-value distance prediction by training real-value distance prediction and multi-class distance prediction simultaneously

Experiment 2: real-value distance prediction by training real-value distance prediction alone. The two experiments used the same input features PLM and the same model architecture PLM_Net