1. What are the contributions mentioned in the paper "Scoring protein sequence alignments using deep learning" ?
In this work, the authors describe a method to predict the quality of a protein ’ s SA.. The authors created their own dataset by generating a variety of SAs for a set of 1,351 representative proteins and investigated various deep learning architectures to predict the local distance difference test ( lDDT ) scores of distance maps predicted with SAs as the input.. Using two independent test datasets consisting of CASP13 and CASP14 targets, the authors show that their method is effective for scoring and ranking SAs when a pool of SAs is available for a protein sequence.. With an example, the authors further discuss that SA selection using their method can lead to improved structure prediction.
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