Detecting and correcting misclassified sequences in the large-scale public databases

Volume: 36, Issue: 18, Pages: 4699 - 4705
Published: Jun 24, 2020
Abstract
Motivation As the cost of sequencing decreases, the amount of data being deposited into public repositories is increasing rapidly. Public databases rely on the user to provide metadata for each submission that is prone to user error. Unfortunately, most public databases, such as non-redundant (NR), rely on user input and do not have methods for identifying errors in the provided metadata, leading to the potential for error propagation. Previous...
Paper Details
Title
Detecting and correcting misclassified sequences in the large-scale public databases
Published Date
Jun 24, 2020
Volume
36
Issue
18
Pages
4699 - 4705
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