CapsNet-TIS: Predicting translation initiation site based on multi-feature fusion and improved capsule network (2024)

CapsNet-TIS: Predicting translation initiation site based on multi-feature fusion and improved capsule network (1) https://doi.org/10.1016/j.gene.2024.148598

Journal: Gene, 2024, p.148598

Publisher: Elsevier BV

Authors: Yu Chen, Guojun Sheng, Gang Wang

Funder National Natural Science Foundation of China

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Journal indexed in Scopus Yes
Journal indexed in Web of Science Yes
CapsNet-TIS: Predicting translation initiation site based on multi-feature fusion and improved capsule network (2024)

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