Medical Engineering & Physics
Volume 28, Issue 9 , Pages 860-875, November 2006

A wavelet based method for automatic detection of slow eye movements: A pilot study

  • Elisa Magosso

      Affiliations

    • Department of Electronics, Computer Science and Systems, University of Bologna, Cesena, Italy
    • Corresponding Author InformationCorresponding author at: Dipartimento di Elettronica, Informatica e Sistemistica, Viale Risorgimento, 2, I-40136 Bologna, Italy. Tel.: +39 051 2093943; fax: +39 051 2093073.
  • ,
  • Federica Provini

      Affiliations

    • Department of Neurological Sciences, Polysomnographic Laboratory, University of Bologna, Bologna, Italy
  • ,
  • Pasquale Montagna

      Affiliations

    • Department of Neurological Sciences, Polysomnographic Laboratory, University of Bologna, Bologna, Italy
  • ,
  • Mauro Ursino

      Affiliations

    • Department of Electronics, Computer Science and Systems, University of Bologna, Cesena, Italy

Received 23 March 2005; received in revised form 11 January 2006; accepted 13 January 2006. published online 22 February 2006.

Abstract 

Electro-oculographic (EOG) activity during the wake-sleep transition is characterized by the appearance of slow eye movements (SEM). The present work describes an algorithm for the automatic localisation of SEM events from EOG recordings. The algorithm is based on a wavelet multiresolution analysis of the difference between right and left EOG tracings, and includes three main steps: (i) wavelet decomposition down to 10 detail levels (i.e., 10 scales), using Daubechies order 4 wavelet; (ii) computation of energy in 0.5s time steps at any level of decomposition; (iii) construction of a non-linear discriminant function expressing the relative energy of high-scale details to both high- and low-scale details. The main assumption is that the value of the discriminant function increases above a given threshold during SEM episodes due to energy redistribution toward higher scales.

Ten EOG recordings from ten male patients with obstructive sleep apnea syndrome were used. All tracings included a period from pre-sleep wakefulness to stage 2 sleep. Two experts inspected the tracings separately to score SEMs. A reference set of SEM (gold standard) were obtained by joint examination by both experts. Parameters of the discriminant function were assigned on three tracings (design set) to minimize the disagreement between the system classification and classification by the two experts; the algorithm was then tested on the remaining seven tracings (test set). Results show that the agreement between the algorithm and the gold standard was 80.44±4.09%, the sensitivity of the algorithm was 67.2±7.37% and the selectivity 83.93±8.65%. However, most errors were not caused by an inability of the system to detect intervals with SEM activity against NON-SEM intervals, but were due to a different localisation of the beginning and end of some SEM episodes.

The proposed method may be a valuable tool for computerized EOG analysis.

Keywords: Biomedical signal processing, Multiresolution decomposition, Polysomnography, Electro-oculogram, Slow eye movements

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(06)00015-4

doi:10.1016/j.medengphy.2006.01.002

Medical Engineering & Physics
Volume 28, Issue 9 , Pages 860-875, November 2006