Logo des Robert Koch-InstitutLogo des Robert Koch-Institut
Publikationsserver des Robert Koch-Institutsedoc
de|en
Publikation anzeigen 
  • edoc Startseite
  • Artikel in Fachzeitschriften
  • Artikel in Fachzeitschriften
  • Publikation anzeigen
  • edoc Startseite
  • Artikel in Fachzeitschriften
  • Artikel in Fachzeitschriften
  • Publikation anzeigen
JavaScript is disabled for your browser. Some features of this site may not work without it.
Gesamter edoc-ServerBereiche & SammlungenTitelAutorSchlagwortDiese SammlungTitelAutorSchlagwort
PublizierenEinloggenRegistrierenHilfe
StatistikNutzungsstatistik
Gesamter edoc-ServerBereiche & SammlungenTitelAutorSchlagwortDiese SammlungTitelAutorSchlagwort
PublizierenEinloggenRegistrierenHilfe
StatistikNutzungsstatistik
Publikation anzeigen 
  • edoc Startseite
  • Artikel in Fachzeitschriften
  • Artikel in Fachzeitschriften
  • Publikation anzeigen
  • edoc Startseite
  • Artikel in Fachzeitschriften
  • Artikel in Fachzeitschriften
  • Publikation anzeigen
2022-08-17Zeitschriftenartikel
Machine Learning Algorithms for Classification of MALDI-TOF MS Spectra from Phylogenetically Closely Related Species Brucella melitensis, Brucella abortus and Brucella suis
Dematheis, Flavia
Walter, Mathias C.
Lang, Daniel
Antwerpen, Markus
Scholz, Holger C.
Pfalzgraf, Marie-Theres
Mantel, Enrico
Hinz, Christin
Wölfel, Roman
Zange, Sabine
(1) Background: MALDI-TOF mass spectrometry (MS) is the gold standard for microbial fingerprinting, however, for phylogenetically closely related species, the resolution power drops down to the genus level. In this study, we analyzed MALDI-TOF spectra from 44 strains of B. melitensis, B. suis and B. abortus to identify the optimal classification method within popular supervised and unsupervised machine learning (ML) algorithms. (2) Methods: A consensus feature selection strategy was applied to pinpoint from among the 500 MS features those that yielded the best ML model and that may play a role in species differentiation. Unsupervised k-means and hierarchical agglomerative clustering were evaluated using the silhouette coefficient, while the supervised classifiers Random Forest, Support Vector Machine, Neural Network, and Multinomial Logistic Regression were explored in a fine-tuning manner using nested k-fold cross validation (CV) with a feature reduction step between the two CV loops. (3) Results: Sixteen differentially expressed peaks were identified and used to feed ML classifiers. Unsupervised and optimized supervised models displayed excellent predictive performances with 100% accuracy. The suitability of the consensus feature selection strategy for learning system accuracy was shown. (4) Conclusion: A meaningful ML approach is here introduced, to enhance Brucella spp. classification using MALDI-TOF MS data.
Dateien zu dieser Publikation
Thumbnail
Machine Learning Algorithms for Classification of MALDI-TOF MS Spectra from Phylogenetically Closely Related Species Brucella melitensis, Brucella abortus and Brucella suis.pdf — PDF — 1.503 Mb
MD5: c3b3000f0251261fceeb25a28dca7abb
Zitieren
BibTeX
EndNote
RIS
(CC BY 3.0 DE) Namensnennung 3.0 Deutschland(CC BY 3.0 DE) Namensnennung 3.0 Deutschland
Zur Langanzeige
Nutzungsbedingungen Impressum Leitlinien Datenschutzerklärung Kontakt

Das Robert Koch-Institut ist ein Bundesinstitut im

Geschäftsbereich des Bundesministeriums für Gesundheit

© Robert Koch Institut

Alle Rechte vorbehalten, soweit nicht ausdrücklich anders vermerkt.