A Step Towards a Better Understanding of Pain Phenotypes: Latent Class Analysis in Chronic Pain Patients Receiving Multimodal Inpatient Treatment

Alexander Obbarius,1 Felix Fischer,1 Gregor Liegl,1 Nina Obbarius,1 Jan van Bebber,1 Tobias Hofmann,1 Matthias Rose1,2 1Department of Psychosomatic Medicine, Center for Internal Medicine and Dermatology, Charité – Universitätsmedizin Berlin, Berlin, Germany; 2Quantitati...

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Main Authors: Obbarius A, Fischer F, Liegl G, Obbarius N, van Bebber J, Hofmann T, Rose M
Format: Article
Language:English
Published: Dove Medical Press 2020-05-01
Series:Journal of Pain Research
Subjects:
Online Access:https://www.dovepress.com/a-step-towards-a-better-understanding-of-pain-phenotypes-latent-class--peer-reviewed-article-JPR
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spelling doaj-f5569d8502f146959707ea289b60f4712020-11-25T02:11:12ZengDove Medical PressJournal of Pain Research1178-70902020-05-01Volume 131023103853766A Step Towards a Better Understanding of Pain Phenotypes: Latent Class Analysis in Chronic Pain Patients Receiving Multimodal Inpatient TreatmentObbarius AFischer FLiegl GObbarius Nvan Bebber JHofmann TRose MAlexander Obbarius,1 Felix Fischer,1 Gregor Liegl,1 Nina Obbarius,1 Jan van Bebber,1 Tobias Hofmann,1 Matthias Rose1,2 1Department of Psychosomatic Medicine, Center for Internal Medicine and Dermatology, Charité – Universitätsmedizin Berlin, Berlin, Germany; 2Quantitative Health Sciences, Outcomes Measurement Science, University of Massachusetts Medical School, Worcester, MA, USACorrespondence: Alexander ObbariusDepartment of Psychosomatic Medicine, Center for Internal Medicine and Dermatology, Charité – Universitätsmedizin Berlin, Charitéplatz 1, 10117 Berlin, GermanyTel +4930450653890Email alexander.obbarius@charite.dePurpose: The number of non-responders to treatment among patients with chronic pain (CP) is high, although intensive multimodal treatment is broadly accessible. One reason is the large variability in manifestations of CP. To facilitate the development of tailored treatment approaches, phenotypes of CP must be identified. In this study, we aim to identify subgroups in patients with CP based on several aspects of self-reported health.Patients and Methods: A latent class analysis (LCA) was carried out in retrospective data from 411 patients with CP of different origins. All patients experienced severe physical and psychosocial consequences and were therefore undergoing multimodal inpatient pain treatment. Self-reported measures of pain (visual analogue scales for pain intensity, frequency, and impairment; Pain Perception Scale), emotional distress (Patient Health Questionnaire, PHQ-9; Generalized Anxiety Disorder Scale, GAD-7) and physical health (Short Form Health Survey; SF-8) were collected immediately after admission and before discharge. Instruments assessed at admission were used as input to the LCA. Resulting classes were compared in terms of patient characteristics and treatment outcome.Results: A model with four latent classes demonstrated the best model fit and interpretability. Classes 1 to 4 included patients with high (54.7%), extreme (17.0%), moderate (15.6%), and low (12.7%) pain burden, respectively. Patients in class 4 showed high levels of emotional distress, whereas emotional distress in the other classes corresponded to the levels of pain burden. While pain as well as physical and mental health improved in class 1, only the levels of depression and anxiety improved in patients in the other groups during multimodal treatment.Conclusion: The specific needs of these subgroups should be taken into account when developing individualized treatment programs. However, the retrospective design limits the significance of the results and replication in prospective studies is desirable.Keywords: chronic pain, phenotyping, patient-reported outcomes, latent class analysis, multimodal treatmenthttps://www.dovepress.com/a-step-towards-a-better-understanding-of-pain-phenotypes-latent-class--peer-reviewed-article-JPRchronic painphenotypingpatient-reported outcomeslatent class analysismultimodal treatment
collection DOAJ
language English
format Article
sources DOAJ
author Obbarius A
Fischer F
Liegl G
Obbarius N
van Bebber J
Hofmann T
Rose M
spellingShingle Obbarius A
Fischer F
Liegl G
Obbarius N
van Bebber J
Hofmann T
Rose M
A Step Towards a Better Understanding of Pain Phenotypes: Latent Class Analysis in Chronic Pain Patients Receiving Multimodal Inpatient Treatment
Journal of Pain Research
chronic pain
phenotyping
patient-reported outcomes
latent class analysis
multimodal treatment
author_facet Obbarius A
Fischer F
Liegl G
Obbarius N
van Bebber J
Hofmann T
Rose M
author_sort Obbarius A
title A Step Towards a Better Understanding of Pain Phenotypes: Latent Class Analysis in Chronic Pain Patients Receiving Multimodal Inpatient Treatment
title_short A Step Towards a Better Understanding of Pain Phenotypes: Latent Class Analysis in Chronic Pain Patients Receiving Multimodal Inpatient Treatment
title_full A Step Towards a Better Understanding of Pain Phenotypes: Latent Class Analysis in Chronic Pain Patients Receiving Multimodal Inpatient Treatment
title_fullStr A Step Towards a Better Understanding of Pain Phenotypes: Latent Class Analysis in Chronic Pain Patients Receiving Multimodal Inpatient Treatment
title_full_unstemmed A Step Towards a Better Understanding of Pain Phenotypes: Latent Class Analysis in Chronic Pain Patients Receiving Multimodal Inpatient Treatment
title_sort step towards a better understanding of pain phenotypes: latent class analysis in chronic pain patients receiving multimodal inpatient treatment
publisher Dove Medical Press
series Journal of Pain Research
issn 1178-7090
publishDate 2020-05-01
description Alexander Obbarius,1 Felix Fischer,1 Gregor Liegl,1 Nina Obbarius,1 Jan van Bebber,1 Tobias Hofmann,1 Matthias Rose1,2 1Department of Psychosomatic Medicine, Center for Internal Medicine and Dermatology, Charité – Universitätsmedizin Berlin, Berlin, Germany; 2Quantitative Health Sciences, Outcomes Measurement Science, University of Massachusetts Medical School, Worcester, MA, USACorrespondence: Alexander ObbariusDepartment of Psychosomatic Medicine, Center for Internal Medicine and Dermatology, Charité – Universitätsmedizin Berlin, Charitéplatz 1, 10117 Berlin, GermanyTel +4930450653890Email alexander.obbarius@charite.dePurpose: The number of non-responders to treatment among patients with chronic pain (CP) is high, although intensive multimodal treatment is broadly accessible. One reason is the large variability in manifestations of CP. To facilitate the development of tailored treatment approaches, phenotypes of CP must be identified. In this study, we aim to identify subgroups in patients with CP based on several aspects of self-reported health.Patients and Methods: A latent class analysis (LCA) was carried out in retrospective data from 411 patients with CP of different origins. All patients experienced severe physical and psychosocial consequences and were therefore undergoing multimodal inpatient pain treatment. Self-reported measures of pain (visual analogue scales for pain intensity, frequency, and impairment; Pain Perception Scale), emotional distress (Patient Health Questionnaire, PHQ-9; Generalized Anxiety Disorder Scale, GAD-7) and physical health (Short Form Health Survey; SF-8) were collected immediately after admission and before discharge. Instruments assessed at admission were used as input to the LCA. Resulting classes were compared in terms of patient characteristics and treatment outcome.Results: A model with four latent classes demonstrated the best model fit and interpretability. Classes 1 to 4 included patients with high (54.7%), extreme (17.0%), moderate (15.6%), and low (12.7%) pain burden, respectively. Patients in class 4 showed high levels of emotional distress, whereas emotional distress in the other classes corresponded to the levels of pain burden. While pain as well as physical and mental health improved in class 1, only the levels of depression and anxiety improved in patients in the other groups during multimodal treatment.Conclusion: The specific needs of these subgroups should be taken into account when developing individualized treatment programs. However, the retrospective design limits the significance of the results and replication in prospective studies is desirable.Keywords: chronic pain, phenotyping, patient-reported outcomes, latent class analysis, multimodal treatment
topic chronic pain
phenotyping
patient-reported outcomes
latent class analysis
multimodal treatment
url https://www.dovepress.com/a-step-towards-a-better-understanding-of-pain-phenotypes-latent-class--peer-reviewed-article-JPR
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