Chen et al., 2013 - Google Patents
Recognizing short coding sequences of prokaryotic genome using a novel iteratively adaptive sparse partial least squares algorithmChen et al., 2013
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- 2813853028091173600
- Author
- Chen S
- Zhang C
- Song K
- Publication year
- Publication venue
- Biology Direct
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Snippet
Background Significant efforts have been made to address the problem of identifying short genes in prokaryotic genomes. However, most known methods are not effective in detecting short genes. Because of the limited information contained in short DNA sequences, it is very …
- 229920001405 Coding region 0 title abstract description 34
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