Medical Engineering & Physics
Volume 31, Issue 9 , Pages 1049-1055, November 2009

Swallow segmentation with artificial neural networks and multi-sensor fusion

  • Joon Lee

      Affiliations

    • Bloorview Research Institute, Toronto, Canada
    • Toronto Rehabilitation Institute, Toronto, Canada
    • Department of Electrical and Computer Engineering, University of Toronto, Toronto, Canada
  • ,
  • Catriona M. Steele

      Affiliations

    • Toronto Rehabilitation Institute, Toronto, Canada
    • Bloorview Research Institute, Toronto, Canada
    • Department of Speech-Language Pathology, University of Toronto, Toronto, Canada
  • ,
  • Tom Chau

      Affiliations

    • Bloorview Research Institute, Toronto, Canada
    • Institute of Biomaterials and Biomedical Engineering, University of Toronto, Toronto, Canada
    • Corresponding Author InformationCorresponding author.

Received 25 September 2008; received in revised form 2 May 2009; accepted 1 July 2009. published online 31 July 2009.

Abstract 

Swallow segmentation is a critical precursory step to the analysis of swallowing signal characteristics. In an effort to automatically segment swallows, we investigated artificial neural networks (ANN) with information from cervical dual-axis accelerometry, submental MMG, and nasal airflow. Our objectives were (1) to investigate the relationship between segmentation performance and the number of signal sources and (2) to identify the signals or signal combinations most useful for swallow segmentation. Signals were acquired from 17 healthy adults in both discrete and continuous swallowing tasks using five stimuli. Training and test feature vectors were constructed with variances from single or multiple signals, estimated within 200ms moving windows with 50% overlap. Corresponding binary target labels (swallow or non-swallow) were derived by manual segmentation. A separate 3-layer ANN was trained for each participant–signal combination, and all possible signal combinations were investigated. As more signal sources were included, segmentation performance improved in terms of sensitivity, specificity, accuracy, and adjusted accuracy. The combination of all four signal sources achieved the highest mean accuracy and adjusted accuracy of 88.5% and 89.6%, respectively. A–P accelerometry proved to be the most discriminatory source, while the inclusion of MMG or nasal airflow resulted in the least performance improvement. These findings suggest that an ANN, multi-sensor fusion approach to segmentation is worthy of further investigation in swallowing studies.

PACS: 87.85.Ng

Keywords: Deglutition, Swallow, Segmentation, Artificial neural network, Multi-sensor fusion

To access this article, please choose from the options below

Login to an existing account or Register a new account.

  • Purchase this article for 31.50 USD (You must login/register to purchase this article)

    Online access for 24 hours. The PDF version can be downloaded as your permanent record.

  • Subscribe to this title

    Get unlimited online access to this article and all other articles in this title 24/7 for one year.

  • Claim access now

    For current subscribers with Society Membership or Account Number.

  • Visit SciVerse ScienceDirect to see if you have access via your institution.
 

PII: S1350-4533(09)00144-1

doi:10.1016/j.medengphy.2009.07.001

Medical Engineering & Physics
Volume 31, Issue 9 , Pages 1049-1055, November 2009