Matches in SemOpenAlex for { <https://semopenalex.org/work/W2750930592> ?p ?o ?g. }
- W2750930592 abstract "Abstract Background Metagenomic approaches became increasingly popular in the past decades due to decreasing costs of DNA sequencing and bioinformatics development. So far, however, the recovery of long genes coding for secondary metabolism still represents a big challenge. Often, the quality of metagenome assemblies is poor, especially in environments with a high microbial diversity where sequence coverage is low and complexity of natural communities high. Recently, new and improved algorithms for binning environmental reads and contigs have been developed to overcome such limitations. Some of these algorithms use a similarity detection approach to classify the obtained reads into taxonomical units and to assemble draft genomes. This approach, however, is quite limited since it can classify exclusively sequences similar to those available (and well classified) in the databases. In this work, we used draft genomes from Lake Stechlin, north-eastern Germany, recovered by MetaBat, an efficient binning tool that integrates empirical probabilistic distances of genome abundance, and tetranucleotide frequency for accurate metagenome binning. These genomes were screened for secondary metabolism genes, such as polyketide synthases (PKS) and non-ribosomal peptide synthases (NRPS), using the Anti-SMASH and NAPDOS workflows. Results With this approach we were able to identify 243 secondary metabolite clusters from 121 genomes recovered from the lake samples. A total of 18 NRPS, 19 PKS and 3 hybrid PKS/NRPS clusters were found. In addition, it was possible to predict the partial structure of several secondary metabolite clusters allowing for taxonomical classifications and phylogenetic inferences. Conclusions Our approach revealed a great potential to recover and study secondary metabolites genes from any aquatic ecosystem." @default.
- W2750930592 created "2017-09-15" @default.
- W2750930592 creator A5009350958 @default.
- W2750930592 creator A5013625127 @default.
- W2750930592 creator A5024614936 @default.
- W2750930592 creator A5077082326 @default.
- W2750930592 date "2017-08-31" @default.
- W2750930592 modified "2023-09-26" @default.
- W2750930592 title "Recovering genomic clusters of secondary metabolites from lakes: a Metagenomics 2.0 approach" @default.
- W2750930592 cites W1535893202 @default.
- W2750930592 cites W1544835748 @default.
- W2750930592 cites W1584734454 @default.
- W2750930592 cites W1584790813 @default.
- W2750930592 cites W1594018618 @default.
- W2750930592 cites W1759358249 @default.
- W2750930592 cites W1820747488 @default.
- W2750930592 cites W1853082296 @default.
- W2750930592 cites W1908709110 @default.
- W2750930592 cites W1950654622 @default.
- W2750930592 cites W1964782046 @default.
- W2750930592 cites W1968248059 @default.
- W2750930592 cites W1969961481 @default.
- W2750930592 cites W1970207313 @default.
- W2750930592 cites W1972469511 @default.
- W2750930592 cites W1974450649 @default.
- W2750930592 cites W1978552700 @default.
- W2750930592 cites W1986720636 @default.
- W2750930592 cites W1989348205 @default.
- W2750930592 cites W1989370495 @default.
- W2750930592 cites W1991388144 @default.
- W2750930592 cites W1995319942 @default.
- W2750930592 cites W1996038715 @default.
- W2750930592 cites W1997401532 @default.
- W2750930592 cites W2008733674 @default.
- W2750930592 cites W2013619747 @default.
- W2750930592 cites W2017055764 @default.
- W2750930592 cites W2027277404 @default.
- W2750930592 cites W2027322754 @default.
- W2750930592 cites W2029517000 @default.
- W2750930592 cites W2033659239 @default.
- W2750930592 cites W2038414047 @default.
- W2750930592 cites W2056560532 @default.
- W2750930592 cites W2058043600 @default.
- W2750930592 cites W2061278426 @default.
- W2750930592 cites W2069968206 @default.
- W2750930592 cites W2072465905 @default.
- W2750930592 cites W2072970694 @default.
- W2750930592 cites W2073073672 @default.
- W2750930592 cites W2076406422 @default.
- W2750930592 cites W2076653573 @default.
- W2750930592 cites W2085427903 @default.
- W2750930592 cites W2087594916 @default.
- W2750930592 cites W2087656399 @default.
- W2750930592 cites W2089859322 @default.
- W2750930592 cites W2106985417 @default.
- W2750930592 cites W2112149046 @default.
- W2750930592 cites W2112364185 @default.
- W2750930592 cites W2113679889 @default.
- W2750930592 cites W2116895571 @default.
- W2750930592 cites W2120060505 @default.
- W2750930592 cites W2144550002 @default.
- W2750930592 cites W2153109441 @default.
- W2750930592 cites W2153554955 @default.
- W2750930592 cites W2159107028 @default.
- W2750930592 cites W2163166295 @default.
- W2750930592 cites W2168937569 @default.
- W2750930592 cites W2172595679 @default.
- W2750930592 cites W2173732482 @default.
- W2750930592 cites W2174438066 @default.
- W2750930592 cites W2184926799 @default.
- W2750930592 cites W2283205656 @default.
- W2750930592 cites W2294353708 @default.
- W2750930592 cites W2300793657 @default.
- W2750930592 cites W2304674135 @default.
- W2750930592 cites W2345730070 @default.
- W2750930592 cites W2350171339 @default.
- W2750930592 cites W2410794842 @default.
- W2750930592 cites W2438067399 @default.
- W2750930592 cites W2461463370 @default.
- W2750930592 cites W2464271760 @default.
- W2750930592 cites W2600736805 @default.
- W2750930592 cites W3103855632 @default.
- W2750930592 cites W347580108 @default.
- W2750930592 doi "https://doi.org/10.1101/183061" @default.
- W2750930592 hasPublicationYear "2017" @default.
- W2750930592 type Work @default.
- W2750930592 sameAs 2750930592 @default.
- W2750930592 citedByCount "0" @default.
- W2750930592 crossrefType "posted-content" @default.
- W2750930592 hasAuthorship W2750930592A5009350958 @default.
- W2750930592 hasAuthorship W2750930592A5013625127 @default.
- W2750930592 hasAuthorship W2750930592A5024614936 @default.
- W2750930592 hasAuthorship W2750930592A5077082326 @default.
- W2750930592 hasBestOaLocation W27509305921 @default.
- W2750930592 hasConcept C104317684 @default.
- W2750930592 hasConcept C141231307 @default.
- W2750930592 hasConcept C15151743 @default.
- W2750930592 hasConcept C193252679 @default.
- W2750930592 hasConcept C51679486 @default.
- W2750930592 hasConcept C54355233 @default.