Amino acid encoding for deep learning applications.
Hesham ElAbdYana BrombergAdrienne HoarfrostTobias LenzAndre FrankeMareike WendorffPublished in: BMC bioinformatics (2020)
Our study shows that end-to-end learning is a flexible and powerful method for amino acid encoding. Further, due to the flexibility of deep learning systems, amino acid encoding schemes should be benchmarked against random vectors of the same dimension to disentangle the information content provided by the encoding scheme from the distinguishability effect provided by the scheme.