Correction to: Predicting protein inter-residue contacts using composite likelihood maximization and deep learning
Haicang ZhangQi ZhangFusong JuJianwei ZhuYujuan GaoZiwei XieMinghua DengShiwei SunWei‐Mou ZhengDongbo Bu
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Following publication of the original article [1], the author explained that there are several errors in the original article.Keywords:
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