An electronic nose (eNose) is a promising device for exhaled breath tests. Principal Component Analysis (PCA) is the most used technique for eNose sensor data analysis, and the use of probabilistic methods is scarce. In this paper, we developed probabilistic models based on the logistic regression framework and compared them to non-probabilistic classification methods in a case study of predicting Acute Liver Failure (ALF) in 16 rats in which ALF was surgically induced. Performance measures included accuracy, AUC and Brier score. Robustness was evaluated by randomly selecting subsets of repeatedly measured sensor values before calculating the model variables. Internal validation for both aspects was obtained by a leave-one-out scheme. The probabilistic methods achieved equally good performance and robustness results when appropriate feature extraction techniques were applied. Since probabilistic models allow employing sound methods for assessing calibration and uncertainty of predictions, they are a proper choice for decision making. Hence we recommend adopting probabilistic classifiers with their associated predictive performance in eNose data analysis.

Comparison of probabilistic versus non-probabilistic electronic nose classification methods in an animal model

COLOMBO, CAMILLA;BELLAZZI, RICCARDO;
2015-01-01

Abstract

An electronic nose (eNose) is a promising device for exhaled breath tests. Principal Component Analysis (PCA) is the most used technique for eNose sensor data analysis, and the use of probabilistic methods is scarce. In this paper, we developed probabilistic models based on the logistic regression framework and compared them to non-probabilistic classification methods in a case study of predicting Acute Liver Failure (ALF) in 16 rats in which ALF was surgically induced. Performance measures included accuracy, AUC and Brier score. Robustness was evaluated by randomly selecting subsets of repeatedly measured sensor values before calculating the model variables. Internal validation for both aspects was obtained by a leave-one-out scheme. The probabilistic methods achieved equally good performance and robustness results when appropriate feature extraction techniques were applied. Since probabilistic models allow employing sound methods for assessing calibration and uncertainty of predictions, they are a proper choice for decision making. Hence we recommend adopting probabilistic classifiers with their associated predictive performance in eNose data analysis.
2015
Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
Bellazzi R.,Sacchi L.,Holmes J.H.,Peek N.
Medical Research, General Topics covers a wide array of topics in medical and biomedical research, with a specific emphasis on human disease, human tissues, and all levels of research into the pathogenesis of clinically significant conditions. Specific medical fields that are characterized by the inclusion of material from several other specializations are also covered here; these include general and internal medicine, tropical medicine, pediatrics, gerontology, epidemiology, and public health. Resources dealing with specific clinical interventions are excluded and are placed in the Medical Research: Diagnosis & Treatment category. Resources that emphasize the specific disease types, or specific systems affected are also excluded and are categorized according to the pathogen or system pathophysiology.
Inglese
contributo
15th Conference on Artificial Intelligence in Medicine, AIME 2015
2015
ita
Internazionale
ELETTRONICO
9105
298
303
6
9783319195506
9783319195506
Springer Verlag
Calibration; Discrimination; Electronic nose; Internal validation; Probabilistic classification; Computer Science (all); Theoretical Computer Science
http://springerlink.com/content/0302-9743/copyright/2005/
none
Colombo, Camilla; Leopold, Jan Hendrik; Bos, Lieuwe D. J.; Bellazzi, Riccardo; Abu Hanna, Ameen
273
info:eu-repo/semantics/conferenceObject
5
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11571/1127092
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