Utilize este identificador para referenciar este registo: https://hdl.handle.net/1822/33769

TítuloClassifying heart sounds using SAX motifs, random forests and text mining techniques
Autor(es)Gomes, Elsa Ferreira
Jorge, Alípio M.
Azevedo, Paulo J.
Palavras-chaveHeart sound classification
Motif discovery
Time series analysis
SAX
Random forest
Text mining
Cost analysis
Data2014
EditoraAssociation for Computing Machinery
Resumo(s)In this paper we describe an approach to classifying heart sounds (classes Normal, Murmur and Extra-systole) that is based on the discretization of sound signals using the SAX (Symbolic Aggregate Approximation) representation. The ability of automatically classifying heart sounds or at least support human decision in this task is socially relevant to spread the reach of medical care using simple mobile devices or digital stethoscopes. In our approach, sounds are firrst pre-processed using signal processing techniques (decimate, low-pass filter, normalize, Shannon envelope). Then the pre-processed symbols are transformed into sequences of discrete SAX symbols. These sequences are subject to a process of motif discovery. Frequent sequences of symbols (motifs) are adopted as features. Each sound is then characterized by the frequent motifs that occur in it and their respective frequency. This is similar to the term frequency (TF) model used in text mining. In this paper we compare the TF model with the application of the TFIDF (Term frequency - Inverse Document Frequency) and the use of bi-grams (frequent size two sequences of motifs). Results show the ability of the motifs based TF approach to separate classes and the relative value of the TFIDF and the bi-grams variants. The separation of the Extra-systole class is overly dificult and much better results are obtained for separating the Murmur class. Empirical validation is conducted using real data collected in noisy environments. We have also assessed the cost-reduction potential of the proposed methods by considering a fixed cost model and using a cost sensitive meta algorithm.
TipoArtigo em ata de conferência
URIhttps://hdl.handle.net/1822/33769
ISBN9781450326278
DOI10.1145/2628194.2628240
Arbitragem científicayes
AcessoAcesso aberto
Aparece nas coleções:HASLab - Artigos em atas de conferências internacionais (texto completo)

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