Accuracy and learning curves of inexperienced observers for manual segmentation of electromyograms

Detalhes bibliográficos
Autor(a) principal: de Sá Ferreira, Arthur
Data de Publicação: 2017
Outros Autores: Silva Guimarães, Fernando, Ribeiro Magalhães, Manuel Armando, Coeli Souza e Silva, Regina
Tipo de documento: Artigo
Idioma: eng
Título da fonte: Fisioterapia em Movimento
Texto Completo: https://periodicos.pucpr.br/fisio/article/view/21584
Resumo: Introduction:The shape-varying format of surface electromyograms introduces errors in the detection of contraction events. Objective: To investigate the accuracy and learning curves of inexperienced observers to detect the quantity of contraction events in surface electromyograms. Materials and methods: Six observers performed manual segmentation in 1200 shape-varying waveforms simulated using a phenomenological model with variable events, smooth changes in amplitude, marked on-off timing, and variable signal-to-noise ratio (0-39 dB). Segmentation was organized in four sessions with 15 blocks of 20 signals each. Accuracy and learning curves were modeled per block by linear and power regression models and tested for difference among sessions. Cut-off values of signal-to-noise ratio for optimal manual segmentation were also estimated. Results: The accuracy curve showed no significant linear trend throughout blocks and no difference among sessions 1-2-3-4 (87% [85; 89], 87% [85; 89], 87% [85; 89], 87% [81; 88]; p = 0.691). Accuracy was low for detection of 1 event (AUC = 0.40; sensitivity = 44%; specificity = 43%; cut-off = 12.9 dB) but was high and affected by the signal-to-noise ratio for detection of two events (AUC = 0.82; sensitivity = 77%; specificity = 76%; cut-off = 7.0 dB). The learning curve showed a significant power regression (p < 0.001) with decreasing values of learning percentages (time duration to complete the task) among sessions 1-2-3-4 (86.5% [68; 94], 76% [68; 91], 62% [38; 77], and 57% [52; 75]; p = 0.002). Conclusion: Inexperienced observers exhibit high, not trainable accuracy and a practice-dependent shortening in the time spent to detect the quantity of contraction events in simulated surface electromyograms.
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spelling Accuracy and learning curves of inexperienced observers for manual segmentation of electromyogramsIntroduction:The shape-varying format of surface electromyograms introduces errors in the detection of contraction events. Objective: To investigate the accuracy and learning curves of inexperienced observers to detect the quantity of contraction events in surface electromyograms. Materials and methods: Six observers performed manual segmentation in 1200 shape-varying waveforms simulated using a phenomenological model with variable events, smooth changes in amplitude, marked on-off timing, and variable signal-to-noise ratio (0-39 dB). Segmentation was organized in four sessions with 15 blocks of 20 signals each. Accuracy and learning curves were modeled per block by linear and power regression models and tested for difference among sessions. Cut-off values of signal-to-noise ratio for optimal manual segmentation were also estimated. Results: The accuracy curve showed no significant linear trend throughout blocks and no difference among sessions 1-2-3-4 (87% [85; 89], 87% [85; 89], 87% [85; 89], 87% [81; 88]; p = 0.691). Accuracy was low for detection of 1 event (AUC = 0.40; sensitivity = 44%; specificity = 43%; cut-off = 12.9 dB) but was high and affected by the signal-to-noise ratio for detection of two events (AUC = 0.82; sensitivity = 77%; specificity = 76%; cut-off = 7.0 dB). The learning curve showed a significant power regression (p < 0.001) with decreasing values of learning percentages (time duration to complete the task) among sessions 1-2-3-4 (86.5% [68; 94], 76% [68; 91], 62% [38; 77], and 57% [52; 75]; p = 0.002). Conclusion: Inexperienced observers exhibit high, not trainable accuracy and a practice-dependent shortening in the time spent to detect the quantity of contraction events in simulated surface electromyograms.Editora PUCPRESS2017-09-15info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersionapplication/pdfhttps://periodicos.pucpr.br/fisio/article/view/2158410.1590/S0103-51502013000300009Fisioterapia em Movimento (Physical Therapy in Movement); Vol. 26 No. 3 (2013)Fisioterapia em Movimento; v. 26 n. 3 (2013)1980-5918reponame:Fisioterapia em Movimentoinstname:Pontifícia Universidade Católica do Paraná (PUC-PR)instacron:PUC_PRenghttps://periodicos.pucpr.br/fisio/article/view/21584/20690Copyright (c) 2022 PUCPRESSinfo:eu-repo/semantics/openAccessde Sá Ferreira, ArthurSilva Guimarães, FernandoRibeiro Magalhães, Manuel ArmandoCoeli Souza e Silva, Regina2022-03-07T19:00:53Zoai:ojs.periodicos.pucpr.br:article/21584Revistahttps://periodicos.pucpr.br/fisioPRIhttps://periodicos.pucpr.br/fisio/oairubia.farias@pucpr.br||revista.fisioterapia@pucpr.br1980-59180103-5150opendoar:2022-03-07T19:00:53Fisioterapia em Movimento - Pontifícia Universidade Católica do Paraná (PUC-PR)false
dc.title.none.fl_str_mv Accuracy and learning curves of inexperienced observers for manual segmentation of electromyograms
title Accuracy and learning curves of inexperienced observers for manual segmentation of electromyograms
spellingShingle Accuracy and learning curves of inexperienced observers for manual segmentation of electromyograms
de Sá Ferreira, Arthur
title_short Accuracy and learning curves of inexperienced observers for manual segmentation of electromyograms
title_full Accuracy and learning curves of inexperienced observers for manual segmentation of electromyograms
title_fullStr Accuracy and learning curves of inexperienced observers for manual segmentation of electromyograms
title_full_unstemmed Accuracy and learning curves of inexperienced observers for manual segmentation of electromyograms
title_sort Accuracy and learning curves of inexperienced observers for manual segmentation of electromyograms
author de Sá Ferreira, Arthur
author_facet de Sá Ferreira, Arthur
Silva Guimarães, Fernando
Ribeiro Magalhães, Manuel Armando
Coeli Souza e Silva, Regina
author_role author
author2 Silva Guimarães, Fernando
Ribeiro Magalhães, Manuel Armando
Coeli Souza e Silva, Regina
author2_role author
author
author
dc.contributor.author.fl_str_mv de Sá Ferreira, Arthur
Silva Guimarães, Fernando
Ribeiro Magalhães, Manuel Armando
Coeli Souza e Silva, Regina
description Introduction:The shape-varying format of surface electromyograms introduces errors in the detection of contraction events. Objective: To investigate the accuracy and learning curves of inexperienced observers to detect the quantity of contraction events in surface electromyograms. Materials and methods: Six observers performed manual segmentation in 1200 shape-varying waveforms simulated using a phenomenological model with variable events, smooth changes in amplitude, marked on-off timing, and variable signal-to-noise ratio (0-39 dB). Segmentation was organized in four sessions with 15 blocks of 20 signals each. Accuracy and learning curves were modeled per block by linear and power regression models and tested for difference among sessions. Cut-off values of signal-to-noise ratio for optimal manual segmentation were also estimated. Results: The accuracy curve showed no significant linear trend throughout blocks and no difference among sessions 1-2-3-4 (87% [85; 89], 87% [85; 89], 87% [85; 89], 87% [81; 88]; p = 0.691). Accuracy was low for detection of 1 event (AUC = 0.40; sensitivity = 44%; specificity = 43%; cut-off = 12.9 dB) but was high and affected by the signal-to-noise ratio for detection of two events (AUC = 0.82; sensitivity = 77%; specificity = 76%; cut-off = 7.0 dB). The learning curve showed a significant power regression (p < 0.001) with decreasing values of learning percentages (time duration to complete the task) among sessions 1-2-3-4 (86.5% [68; 94], 76% [68; 91], 62% [38; 77], and 57% [52; 75]; p = 0.002). Conclusion: Inexperienced observers exhibit high, not trainable accuracy and a practice-dependent shortening in the time spent to detect the quantity of contraction events in simulated surface electromyograms.
publishDate 2017
dc.date.none.fl_str_mv 2017-09-15
dc.type.driver.fl_str_mv info:eu-repo/semantics/article
info:eu-repo/semantics/publishedVersion
format article
status_str publishedVersion
dc.identifier.uri.fl_str_mv https://periodicos.pucpr.br/fisio/article/view/21584
10.1590/S0103-51502013000300009
url https://periodicos.pucpr.br/fisio/article/view/21584
identifier_str_mv 10.1590/S0103-51502013000300009
dc.language.iso.fl_str_mv eng
language eng
dc.relation.none.fl_str_mv https://periodicos.pucpr.br/fisio/article/view/21584/20690
dc.rights.driver.fl_str_mv Copyright (c) 2022 PUCPRESS
info:eu-repo/semantics/openAccess
rights_invalid_str_mv Copyright (c) 2022 PUCPRESS
eu_rights_str_mv openAccess
dc.format.none.fl_str_mv application/pdf
dc.publisher.none.fl_str_mv Editora PUCPRESS
publisher.none.fl_str_mv Editora PUCPRESS
dc.source.none.fl_str_mv Fisioterapia em Movimento (Physical Therapy in Movement); Vol. 26 No. 3 (2013)
Fisioterapia em Movimento; v. 26 n. 3 (2013)
1980-5918
reponame:Fisioterapia em Movimento
instname:Pontifícia Universidade Católica do Paraná (PUC-PR)
instacron:PUC_PR
instname_str Pontifícia Universidade Católica do Paraná (PUC-PR)
instacron_str PUC_PR
institution PUC_PR
reponame_str Fisioterapia em Movimento
collection Fisioterapia em Movimento
repository.name.fl_str_mv Fisioterapia em Movimento - Pontifícia Universidade Católica do Paraná (PUC-PR)
repository.mail.fl_str_mv rubia.farias@pucpr.br||revista.fisioterapia@pucpr.br
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