TY - JOUR
T1 - Clinical validation of grouping conservative treatments in neck pain for use in a network meta-analysis
T2 - a Delphi consensus study
AU - Ishaq, Iqra
AU - Skinner, Ian W.
AU - Mehta, Poonam
AU - Walton, David M.
AU - Bier, Jasper
AU - Verhagen, Arianne P.
N1 - © 2023. The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature.
PY - 2024/1
Y1 - 2024/1
N2 - Background: A network meta-analysis aims to help clinicians make clinical decisions on the most effective treatment for a certain condition. Neck pain is multifactorial, with various classification systems and treatment options. Classifying patients and grouping interventions in clinically relevant treatment nodes for a NMA is essential, but this process is poorly defined. Objective: Our aim is to obtain consensus among experts on neck pain classifications and the grouping of interventions into nodes for a future network meta-analysis. Design: A Delphi consensus study involving neck pain experts worldwide. Methods: We invited authors of neck pain clinical practice guidelines published from 2014 onwards. The Delphi baseline questionnaire was developed based on the findings of a scoping review, including four items on classifications and 19 nodes. Participants were asked to record their level of agreement on a seven-point Likert scale or using Yes/No/Not sure answer options for the various statements. We used descriptive analysis to summarise the responses on each statement with content analysis of the free-text comments. Results: In total, 18/80 experts (22.5%) agreed to participate in one or more Delphi rounds. We needed three rounds to reach consensus for two classification of neck pain: one based on aetiology and one on duration. In addition, we also reached consensus on the grouping of interventions, including a definition of each node, with the number of nodes reduced to 17. Conclusion: With this consensus we clinically validated two neck pain classifications and grouped conservative treatments into 17 well-defined and clinically relevant nodes.
AB - Background: A network meta-analysis aims to help clinicians make clinical decisions on the most effective treatment for a certain condition. Neck pain is multifactorial, with various classification systems and treatment options. Classifying patients and grouping interventions in clinically relevant treatment nodes for a NMA is essential, but this process is poorly defined. Objective: Our aim is to obtain consensus among experts on neck pain classifications and the grouping of interventions into nodes for a future network meta-analysis. Design: A Delphi consensus study involving neck pain experts worldwide. Methods: We invited authors of neck pain clinical practice guidelines published from 2014 onwards. The Delphi baseline questionnaire was developed based on the findings of a scoping review, including four items on classifications and 19 nodes. Participants were asked to record their level of agreement on a seven-point Likert scale or using Yes/No/Not sure answer options for the various statements. We used descriptive analysis to summarise the responses on each statement with content analysis of the free-text comments. Results: In total, 18/80 experts (22.5%) agreed to participate in one or more Delphi rounds. We needed three rounds to reach consensus for two classification of neck pain: one based on aetiology and one on duration. In addition, we also reached consensus on the grouping of interventions, including a definition of each node, with the number of nodes reduced to 17. Conclusion: With this consensus we clinically validated two neck pain classifications and grouped conservative treatments into 17 well-defined and clinically relevant nodes.
KW - Delphi consensus
KW - Neck pain
KW - Network meta-analysis
KW - Nodes
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UR - https://rdcu.be/dPCSt
U2 - 10.1007/s00586-023-08025-4
DO - 10.1007/s00586-023-08025-4
M3 - Article
C2 - 37943373
AN - SCOPUS:85176143770
SN - 0940-6719
VL - 33
SP - 166
EP - 175
JO - European Spine Journal
JF - European Spine Journal
ER -