Application of Sequence Embedding in Protein Sequence-Based Predictions

14 Oct 2021  ·  Nabil Ibtehaz, Daisuke Kihara ·

In sequence-based predictions, conventionally an input sequence is represented by a multiple sequence alignment (MSA) or a representation derived from MSA, such as a position-specific scoring matrix. Recently, inspired by the development in natural language processing, several applications of sequence embedding have been observed. Here, we review different approaches of protein sequence embeddings and their applications including protein contact prediction, secondary structure, prediction, and function prediction.

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