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Automatic Nonnutritive Suck Waveform Discrimination and Feature Extraction in Preterm Infants

Background and Objective: The emergence of the nonnutritive suck (NNS) pattern in preterm infants reflects the integrity of the brain and is used by clinicians in the neonatal intensive care unit (NICU) to assess feeding readiness and oromotor development. A critical need exists for an integrated so...

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Autores principales: Liao, Chunxiao, Rosner, Austin O., Maron, Jill L., Song, Dongli, Barlow, Steven M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6378788/
https://www.ncbi.nlm.nih.gov/pubmed/30863456
http://dx.doi.org/10.1155/2019/7496591
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author Liao, Chunxiao
Rosner, Austin O.
Maron, Jill L.
Song, Dongli
Barlow, Steven M.
author_facet Liao, Chunxiao
Rosner, Austin O.
Maron, Jill L.
Song, Dongli
Barlow, Steven M.
author_sort Liao, Chunxiao
collection PubMed
description Background and Objective: The emergence of the nonnutritive suck (NNS) pattern in preterm infants reflects the integrity of the brain and is used by clinicians in the neonatal intensive care unit (NICU) to assess feeding readiness and oromotor development. A critical need exists for an integrated software platform that provides NNS signal preprocessing, adaptive waveform discrimination, feature detection, and batch processing of big data sets across multiple NICU sites. Thus, the goal was to develop and describe a cross-platform graphical user interface (GUI) and terminal application known as NeoNNS for single and batch file time series and frequency-domain analyses of NNS compression pressure waveforms using analysis parameters derived from previous research on NNS dynamics. Methods. NeoNNS was implemented with Python and the Tkinter GUI package. The NNS signal-processing pipeline included a low-pass filter, asymmetric regression baseline correction, NNS peak detection, and NNS burst classification. Data visualizations and parametric analyses included time- and frequency-domain view, NNS spatiotemporal index view, and feature cluster analysis to model oral feeding readiness. Results. 568 suck assessment files sampled from 30 extremely preterm infants were processed in the batch mode (<50 minutes) to generate time- and frequency-domain analyses of infant NNS pressure waveform data. NNS cycle discrimination and NNS burst classification yield quantification of NNS waveform features as a function of postmenstrual age. Hierarchical cluster analysis (based on the Tsfresh python package and NeoNNS) revealed the capability to label NNS records for feeding readiness. Conclusions. NeoNNS provides a versatile software platform to rapidly quantify the dynamics of NNS development in time and frequency domains at cribside over repeated sessions for an individual baby or among large numbers of preterm infants at multiple hospital sites to support big data analytics. The hierarchical cluster feature analysis facilitates modeling of feeding readiness based on quantitative features of the NNS compression pressure waveform.
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spelling pubmed-63787882019-03-12 Automatic Nonnutritive Suck Waveform Discrimination and Feature Extraction in Preterm Infants Liao, Chunxiao Rosner, Austin O. Maron, Jill L. Song, Dongli Barlow, Steven M. Comput Math Methods Med Research Article Background and Objective: The emergence of the nonnutritive suck (NNS) pattern in preterm infants reflects the integrity of the brain and is used by clinicians in the neonatal intensive care unit (NICU) to assess feeding readiness and oromotor development. A critical need exists for an integrated software platform that provides NNS signal preprocessing, adaptive waveform discrimination, feature detection, and batch processing of big data sets across multiple NICU sites. Thus, the goal was to develop and describe a cross-platform graphical user interface (GUI) and terminal application known as NeoNNS for single and batch file time series and frequency-domain analyses of NNS compression pressure waveforms using analysis parameters derived from previous research on NNS dynamics. Methods. NeoNNS was implemented with Python and the Tkinter GUI package. The NNS signal-processing pipeline included a low-pass filter, asymmetric regression baseline correction, NNS peak detection, and NNS burst classification. Data visualizations and parametric analyses included time- and frequency-domain view, NNS spatiotemporal index view, and feature cluster analysis to model oral feeding readiness. Results. 568 suck assessment files sampled from 30 extremely preterm infants were processed in the batch mode (<50 minutes) to generate time- and frequency-domain analyses of infant NNS pressure waveform data. NNS cycle discrimination and NNS burst classification yield quantification of NNS waveform features as a function of postmenstrual age. Hierarchical cluster analysis (based on the Tsfresh python package and NeoNNS) revealed the capability to label NNS records for feeding readiness. Conclusions. NeoNNS provides a versatile software platform to rapidly quantify the dynamics of NNS development in time and frequency domains at cribside over repeated sessions for an individual baby or among large numbers of preterm infants at multiple hospital sites to support big data analytics. The hierarchical cluster feature analysis facilitates modeling of feeding readiness based on quantitative features of the NNS compression pressure waveform. Hindawi 2019-02-04 /pmc/articles/PMC6378788/ /pubmed/30863456 http://dx.doi.org/10.1155/2019/7496591 Text en Copyright © 2019 Chunxiao Liao et al. http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Liao, Chunxiao
Rosner, Austin O.
Maron, Jill L.
Song, Dongli
Barlow, Steven M.
Automatic Nonnutritive Suck Waveform Discrimination and Feature Extraction in Preterm Infants
title Automatic Nonnutritive Suck Waveform Discrimination and Feature Extraction in Preterm Infants
title_full Automatic Nonnutritive Suck Waveform Discrimination and Feature Extraction in Preterm Infants
title_fullStr Automatic Nonnutritive Suck Waveform Discrimination and Feature Extraction in Preterm Infants
title_full_unstemmed Automatic Nonnutritive Suck Waveform Discrimination and Feature Extraction in Preterm Infants
title_short Automatic Nonnutritive Suck Waveform Discrimination and Feature Extraction in Preterm Infants
title_sort automatic nonnutritive suck waveform discrimination and feature extraction in preterm infants
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6378788/
https://www.ncbi.nlm.nih.gov/pubmed/30863456
http://dx.doi.org/10.1155/2019/7496591
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