Приказ основних података о документу

dc.creatorBoljanić, Tanja
dc.creatorMiljković, Nadica
dc.creatorLazarević, Ljiljana
dc.creatorKnežević, Goran
dc.creatorMilašinović, Goran
dc.date.accessioned2022-02-23T13:47:48Z
dc.date.available2022-02-23T13:47:48Z
dc.date.issued2021
dc.identifier.issn1082-720X
dc.identifier.urihttp://reff.f.bg.ac.rs/handle/123456789/3506
dc.description.abstractBackground: Based on the known relationship between the human emotion and standard surface electrocardiogram (ECG), we explored the relationship between features extracted from standard ECG recorded during relaxation and seven personality traits (Honesty/humility, Emotionality, eXtraversion, Agreeableness, Conscientiousness, Openness, and Disintegration) by using the machine learning (ML) approach which learns from the ECG-based features and predicts the appropriate personality trait by adopting an automated software algorithm. Methods: A total of 71 healthy university students participated in the study. For quantification of 62 ECG-based parameters (heart rate variability, as well as temporal and amplitude-based parameters) for each ECG record, we used computation procedures together with publicly available data and code. Among 62 parameters, 34 were segregated into separate features according to their diagnostic relevance in clinical practice. To examine the feature influence on personality trait classification and to perform classification, we used random forest ML algorithm. Results: Classification accuracy when clinically relevant ECG features were employed was high for Disintegration (81.3%) and Honesty/humility (75.0%) and moderate to high for Openness (73.3%) and Conscientiousness (70%), while it was low for Agreeableness (56.3%), eXtraversion (47.1%), and Emotionality (43.8%). When all calculated features were used, the classification accuracies were the same or lower, except for the eXtraversion (52.9%). Correlation analysis for selected features is presented. Conclusions: Results indicate that clinically relevant features might be applicable for personality traits prediction, although no remarkable differences were found among selected groups of parameters. Physiological associations of established relationships should be further explored.sr
dc.language.isoensr
dc.publisherWileysr
dc.relationinfo:eu-repo/grantAgreement/MESTD/Technological Development (TD or TR)/33020/RS//sr
dc.relationinfo:eu-repo/grantAgreement/MESTD/Basic Research (BR or ON)/179018/RS//sr
dc.rightsopenAccesssr
dc.rights.urihttps://creativecommons.org/licenses/by/4.0/
dc.sourceAnnals of Noninvasive Electrocardiologysr
dc.subjectdisintegrationsr
dc.subjectECGsr
dc.subjectHEXACOsr
dc.subjectmachine learningsr
dc.subjectpersonality traitssr
dc.subjectrandom forestsr
dc.titleRelationship between electrocardiogram-based features and personality traits: Machine learning approachsr
dc.typearticlesr
dc.rights.licenseBYsr
dc.citation.issue1
dc.citation.rankM23
dc.citation.spagee12919
dc.citation.volume27
dc.identifier.doi10.1111/anec.12919
dc.identifier.fulltexthttp://reff.f.bg.ac.rs/bitstream/id/7990/Relationship_2021.pdf
dc.identifier.scopus2-s2.0-85119978513
dc.identifier.wos000722943100001
dc.type.versionpublishedVersionsr


Документи

Thumbnail

Овај документ се појављује у следећим колекцијама

Приказ основних података о документу