Selected Publication:
SHR
Neuro
Cancer
Cardio
Lipid
Metab
Microb
Baumgartner, C; Böhm, C; Baumgartner, D.
Modelling of classification rules on metabolic patterns including machine learning and expert knowledge.
J Biomed Inform. 2005; 38(2): 89-98.
Doi: 10.1016/j.jbi.2004.08.009
Web of Science
PubMed
FullText
FullText_MUG
- Co-authors Med Uni Graz
-
Baumgartner Daniela
- Altmetrics:
- Dimensions Citations:
- Plum Analytics:
- Scite (citation analytics):
- Abstract:
-
Machine learning has a great potential to mine potential markers from high-dimensional metabolic data without any a priori knowledge. Exemplarily, we investigated metabolic patterns of three severe metabolic disorders, PAHD, MCADD, and 3-MCCD, on which we constructed classification models for disease screening and diagnosis using a decision tree paradigm and logistic regression analysis (LRA). For the LRA model-building process we assessed the relevance of established diagnostic flags, which have been developed from the biochemical knowledge of newborn metabolism, and compared the models' error rates with those of the decision tree classifier. Both approaches yielded comparable classification accuracy in terms of sensitivity (>95.2%), while the LRA models built on flags showed significantly enhanced specificity. The number of false positive cases did not exceed 0.001%.
- Find related publications in this database (using NLM MeSH Indexing)
-
Algorithms -
-
Artificial Intelligence -
-
Biomarkers - metabolism
-
Cluster Analysis -
-
Computer Simulation -
-
Decision Support Techniques -
-
Diagnosis, Computer-Assisted - methods
-
Expert Systems -
-
Gene Expression Profiling - methods
-
Humans -
-
Infant, Newborn -
-
Mass Screening -
-
Mass Spectrometry - methods
-
Metabolic Diseases - diagnosis
-
Metabolic Diseases - metabolism
-
Models, Biological -
-
Neonatal Screening - methods
-
Pattern Recognition, Automated - methods
-
Reproducibility of Results -
-
Sensitivity and Specificity -
- Find related publications in this database (Keywords)
-
machine learning
-
classification rules
-
metabolic patterns
-
expert knowledge
-
metabolic disorders