TY - JOUR
T1 - Investigating intraindividual pain variability
T2 - Methods, applications, issues, and directions
AU - Mun, Chung Jung
AU - Suk, Hye Won
AU - Davis, Mary C.
AU - Karoly, Paul
AU - Finan, Patrick
AU - Tennen, Howard
AU - Jensen, Mark P.
N1 - Funding Information:
Funding for the research reported here was supported by NIH NINDS T32 NS070201 (C.J.M. for post-doctoral training), NIH R01AR41687 (awarded to M.C.D.), and Sogang University Research Grant 201810026.01 (awarded to H.W.S.).
Publisher Copyright:
© 2019 Lippincott Williams and Wilkins. All rights reserved.
PY - 2019/11/1
Y1 - 2019/11/1
N2 - Pain is a dynamic experience subject to substantial individual differences. Intensive longitudinal designs best capture the dynamical ebb and flow of the pain experience across time and settings. Thanks to the development of innovative and efficient data collection technologies, conducting an intensive longitudinal pain study has become increasingly feasible. However, the majority of longitudinal studies have tended to examine average level of pain as a predictor or as an outcome, while conceptualizing intraindividual pain variation as noise, error, or a nuisance factor. Such an approach may miss the opportunity to understand how fluctuations in pain over time are associated with pain processing, coping, other indices of adjustment, and treatment response. The present review introduces the 4 most frequently used intraindividual variability indices: The intraindividualSD/variance, autocorrelation, the mean square of successive difference, and probability of acute change. In addition, we discuss recent development in dynamic structural equation modeling in a nontechnical manner. We also consider some notable methodological issues, present a real-world example of intraindividual variability analysis, and offer suggestions for future research. Finally,we provide statistical software syntax for calculating the aforementioned intraindividual pain variability indices so that researchers can easily apply them in their research. We believe that investigating intraindividual variability of pain will provide a new perspective for understanding the complexmechanisms underlying pain coping and adjustment, as well as for enhancing efforts in precision pain medicine. Audio accompanying this abstract is available online as supplemental digital content at http://links.lww.com/PAIN/A817.
AB - Pain is a dynamic experience subject to substantial individual differences. Intensive longitudinal designs best capture the dynamical ebb and flow of the pain experience across time and settings. Thanks to the development of innovative and efficient data collection technologies, conducting an intensive longitudinal pain study has become increasingly feasible. However, the majority of longitudinal studies have tended to examine average level of pain as a predictor or as an outcome, while conceptualizing intraindividual pain variation as noise, error, or a nuisance factor. Such an approach may miss the opportunity to understand how fluctuations in pain over time are associated with pain processing, coping, other indices of adjustment, and treatment response. The present review introduces the 4 most frequently used intraindividual variability indices: The intraindividualSD/variance, autocorrelation, the mean square of successive difference, and probability of acute change. In addition, we discuss recent development in dynamic structural equation modeling in a nontechnical manner. We also consider some notable methodological issues, present a real-world example of intraindividual variability analysis, and offer suggestions for future research. Finally,we provide statistical software syntax for calculating the aforementioned intraindividual pain variability indices so that researchers can easily apply them in their research. We believe that investigating intraindividual variability of pain will provide a new perspective for understanding the complexmechanisms underlying pain coping and adjustment, as well as for enhancing efforts in precision pain medicine. Audio accompanying this abstract is available online as supplemental digital content at http://links.lww.com/PAIN/A817.
KW - Autocorrelation
KW - Chronic pain
KW - Daily diary
KW - Dynamic structural equation modeling
KW - Instability
KW - Intensive longitudinal design
KW - Intraindividual variability
KW - Pain dynamics
KW - Pain variability
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U2 - 10.1097/j.pain.0000000000001626
DO - 10.1097/j.pain.0000000000001626
M3 - Review article
C2 - 31145212
AN - SCOPUS:85073577233
SN - 0304-3959
VL - 160
SP - 2415
EP - 2429
JO - Pain
JF - Pain
IS - 11
ER -