Cross-validation of Bimodal Health-related Stress Assessment

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Cross-validation of Bimodal Health-related Stress Assessment. / Broek, Egon L.; van der Sluis, Frans; Dijkstra, Ton.

In: Personal and Ubiquitous Computing, Vol. 17, No. 2, 01.02.2013, p. 215-227.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Broek, EL, van der Sluis, F & Dijkstra, T 2013, 'Cross-validation of Bimodal Health-related Stress Assessment', Personal and Ubiquitous Computing, vol. 17, no. 2, pp. 215-227. https://doi.org/10.1007/s00779-011-0468-z

APA

Broek, E. L., van der Sluis, F., & Dijkstra, T. (2013). Cross-validation of Bimodal Health-related Stress Assessment. Personal and Ubiquitous Computing, 17(2), 215-227. https://doi.org/10.1007/s00779-011-0468-z

Vancouver

Broek EL, van der Sluis F, Dijkstra T. Cross-validation of Bimodal Health-related Stress Assessment. Personal and Ubiquitous Computing. 2013 Feb 1;17(2):215-227. https://doi.org/10.1007/s00779-011-0468-z

Author

Broek, Egon L. ; van der Sluis, Frans ; Dijkstra, Ton. / Cross-validation of Bimodal Health-related Stress Assessment. In: Personal and Ubiquitous Computing. 2013 ; Vol. 17, No. 2. pp. 215-227.

Bibtex

@article{8610b59a5f394c3089eb81682c2a4e6c,
title = "Cross-validation of Bimodal Health-related Stress Assessment",
abstract = "This study explores the feasibility of objective and ubiquitous stress assessment. 25 post-traumatic stress disorder patients participated in a controlled storytelling (ST) study and an ecologically valid reliving (RL) study. The two studies were meant to represent an early and a late therapy session, and each consisted of a {"}happy{"} and a {"}stress triggering{"} part. Two instruments were chosen to assess the stress level of the patients at various point in time during therapy: (i) speech, used as an objective and ubiquitous stress indicator and (ii) the subjective unit of distress (SUD), a clinically validated Likert scale. In total, 13 statistical parameters were derived from each of five speech features: amplitude, zero-crossings, power, high-frequency power, and pitch. To model the emotional state of the patients, 28 parameters were selected from this set by means of a linear regression model and, subsequently, compressed into 11 principal components. The SUD and speech model were cross-validated, using 3 machine learning algorithms. Between 90% (2 SUD levels) and 39% (10 SUD levels) correct classification was achieved. The two sessions could be discriminated in 89% (for ST) and 77% (for RL) of the cases. This report fills a gap between laboratory and clinical studies, and its results emphasize the usefulness of Computer Aided Diagnostics (CAD) for mental health care.",
keywords = "Computer aided diagnostics (CAD), Machine learning, Post-traumatic stress disorder (PTSD), Speech, Stress, Validity",
author = "Broek, {Egon L.} and {van der Sluis}, Frans and Ton Dijkstra",
year = "2013",
month = feb,
day = "1",
doi = "10.1007/s00779-011-0468-z",
language = "English",
volume = "17",
pages = "215--227",
journal = "Personal and Ubiquitous Computing",
issn = "1617-4909",
publisher = "Springer",
number = "2",

}

RIS

TY - JOUR

T1 - Cross-validation of Bimodal Health-related Stress Assessment

AU - Broek, Egon L.

AU - van der Sluis, Frans

AU - Dijkstra, Ton

PY - 2013/2/1

Y1 - 2013/2/1

N2 - This study explores the feasibility of objective and ubiquitous stress assessment. 25 post-traumatic stress disorder patients participated in a controlled storytelling (ST) study and an ecologically valid reliving (RL) study. The two studies were meant to represent an early and a late therapy session, and each consisted of a "happy" and a "stress triggering" part. Two instruments were chosen to assess the stress level of the patients at various point in time during therapy: (i) speech, used as an objective and ubiquitous stress indicator and (ii) the subjective unit of distress (SUD), a clinically validated Likert scale. In total, 13 statistical parameters were derived from each of five speech features: amplitude, zero-crossings, power, high-frequency power, and pitch. To model the emotional state of the patients, 28 parameters were selected from this set by means of a linear regression model and, subsequently, compressed into 11 principal components. The SUD and speech model were cross-validated, using 3 machine learning algorithms. Between 90% (2 SUD levels) and 39% (10 SUD levels) correct classification was achieved. The two sessions could be discriminated in 89% (for ST) and 77% (for RL) of the cases. This report fills a gap between laboratory and clinical studies, and its results emphasize the usefulness of Computer Aided Diagnostics (CAD) for mental health care.

AB - This study explores the feasibility of objective and ubiquitous stress assessment. 25 post-traumatic stress disorder patients participated in a controlled storytelling (ST) study and an ecologically valid reliving (RL) study. The two studies were meant to represent an early and a late therapy session, and each consisted of a "happy" and a "stress triggering" part. Two instruments were chosen to assess the stress level of the patients at various point in time during therapy: (i) speech, used as an objective and ubiquitous stress indicator and (ii) the subjective unit of distress (SUD), a clinically validated Likert scale. In total, 13 statistical parameters were derived from each of five speech features: amplitude, zero-crossings, power, high-frequency power, and pitch. To model the emotional state of the patients, 28 parameters were selected from this set by means of a linear regression model and, subsequently, compressed into 11 principal components. The SUD and speech model were cross-validated, using 3 machine learning algorithms. Between 90% (2 SUD levels) and 39% (10 SUD levels) correct classification was achieved. The two sessions could be discriminated in 89% (for ST) and 77% (for RL) of the cases. This report fills a gap between laboratory and clinical studies, and its results emphasize the usefulness of Computer Aided Diagnostics (CAD) for mental health care.

KW - Computer aided diagnostics (CAD), Machine learning, Post-traumatic stress disorder (PTSD), Speech, Stress, Validity

U2 - 10.1007/s00779-011-0468-z

DO - 10.1007/s00779-011-0468-z

M3 - Journal article

VL - 17

SP - 215

EP - 227

JO - Personal and Ubiquitous Computing

JF - Personal and Ubiquitous Computing

SN - 1617-4909

IS - 2

ER -

ID: 212432011