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Comparison of classification methods in breath analysis by electronic nose

Authors :
Leopold, Jh
Bos, Ld
Sterk, Pj
Schultz, Mj
Fens, N
Horvath, I
Bikov, A
Montuschi, Paolo
Di Natale, C
Yates, Dh
Abu Hanna, A.
Montuschi, Paolo (ORCID:0000-0001-5589-1750)
Leopold, Jh
Bos, Ld
Sterk, Pj
Schultz, Mj
Fens, N
Horvath, I
Bikov, A
Montuschi, Paolo
Di Natale, C
Yates, Dh
Abu Hanna, A.
Montuschi, Paolo (ORCID:0000-0001-5589-1750)
Publication Year :
2015

Abstract

Currently, many different methods are being used for pre-processing, statistical analysis and validation of data obtained by electronic nose technology from exhaled air. These various methods, however, have never been thoroughly compared. We aimed to empirically evaluate and compare the influence of different dimension reduction, classification and validation methods found in published studies on the diagnostic performance in several datasets. Our objective was to facilitate the selection of appropriate statistical methods and to support reviewers in this research area. We reviewed the literature by searching Pubmed up to the end of 2014 for all human studies using an electronic nose and methodological quality was assessed using the QUADAS-2 tool tailored to our review. Forty-six studies were evaluated regarding the range of different approaches to dimension reduction, classification and validation. From forty-six reviewed articles only seven applied external validation in an independent dataset, mostly with a case-control design. We asked their authors to share the original datasets with us. Four of the seven datasets were available for re-analysis. Published statistical methods for eNose signal analysis found in the literature review were applied to the training set of each dataset. The performance (area under the receiver operating characteristics curve (ROC-AUC)) was calculated for the training cohort (in-set) and after internal validation (leave-one-out cross validation). The methods were also applied to the external validation set to assess the external validity of the performance. Risk of bias was high in most studies due to non-random selection of patients. Internal validation resulted in a decrease in ROC-AUCs compared to in-set performance: -0.15,-0.14,-0.1,-0.11 in dataset 1 through 4, respectively. External validation resulted in lower ROC-AUC compared to internal validation in dataset 1 (-0.23) and 3 (-0.09). ROC-AUCs did not decrease in dataset 2 (+0.0

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1145015922
Document Type :
Electronic Resource