Nalazite se na CroRIS probnoj okolini. Ovdje evidentirani podaci neće biti pohranjeni u Informacijskom sustavu znanosti RH. Ako je ovo greška, CroRIS produkcijskoj okolini moguće je pristupi putem poveznice www.croris.hr
izvor podataka: crosbi

A novel computational approach applicable to human microbiome studies – urinary tract microbiome example (CROSBI ID 624255)

Prilog sa skupa u zborniku | sažetak izlaganja sa skupa

Diminić, Janko ; Cindrić, Mario ; Perica, Kristina ; Ceprnja, Marina ; Melvan, Ena ; Hranueli, Daslav ; Žučko, Jurica A novel computational approach applicable to human microbiome studies – urinary tract microbiome example // The 2nd Microbiome R and D and Business Collaboration Forum : Europe : abstracts. 2015. str. 1-1

Podaci o odgovornosti

Diminić, Janko ; Cindrić, Mario ; Perica, Kristina ; Ceprnja, Marina ; Melvan, Ena ; Hranueli, Daslav ; Žučko, Jurica

engleski

A novel computational approach applicable to human microbiome studies – urinary tract microbiome example

Peptide mass fingerprinting is a term which describes technique which utilizes ESI or MALDI MS followed by tandem mass spectrometry sequencing. This technique has become a cornerstone for protein identification. Today, applications using peptide mass fingerprinting in biomedical analyses are a major driving force behind its rapid development. However, efficient and accurate analyses of generally big protein tandem mass spectrometry data sets require robust software. In terms of final goal, which is data interpretation, the role of software and underlying algorithms is at least equally important as the technique itself, a fact which is often neglected. High-throughput mass spectrometry instruments can readily generate hundreds of thousands of spectra. This fact combined with the ever growing size of genomic databases imposes tremendous demands for potential successful software solutions. In fact, it is the process of comparing large-scale mass spectrometry data with large databases that remains the toughest bottleneck in proteomics. Here we present a completely novel approach based on natural language processing which is not just another improvement of existing approaches, but represents a paradigm shift. It doesn't rely on peak intensity for database peptide matching and it uses newly developed concept of microbial proteome fingerprints for strain/species identification. Since this new algorithm doesn't rely on sequence alignment but instead utilizes a concept of singular proteome fingerprints rather than sets of unrelated peptides, it proposes an elegant solution for this most troubling step in proteome analyses. Abandoning BLAST and other alignment based methods, results in far superior processing speed, accuracy and sensitivity. The above mentioned algorithm can be used to analyse not only proteomes but also metaproteomes coming from mixed microbe communities as in the case presented – human urine samples taken from a hospital. The method itself is completely generic, not developed with any specific platform in mind, which makes it highly versatile, able to turn any existing device into highly efficient metaproteome analyser without significant costs related to purchase of new equipment.

mass fingerprint ; mass spectrometry sequencing ; protein identification

nije evidentirano

nije evidentirano

nije evidentirano

nije evidentirano

nije evidentirano

nije evidentirano

Podaci o prilogu

1-1.

2015.

objavljeno

Podaci o matičnoj publikaciji

The 2nd Microbiome R and D and Business Collaboration Forum : Europe : abstracts

Podaci o skupu

Microbiome R and D and Business Collaboration Forum : Europe (2 ; 2015)

poster

07.05.2015-08.05.2015

London, Ujedinjeno Kraljevstvo

Povezanost rada

nije evidentirano