Identifying back pain subgroups: developing and applying approaches using individual patient data collected within clinical trials

Author:

Patel Shilpa1,Hee Siew Wan1,Mistry Dipesh1,Jordan Jake23,Brown Sally4,Dritsaki Melina15,Ellard David R1,Friede Tim6,Lamb Sarah E15,Lord Joanne27,Madan Jason1,Morris Tom8,Stallard Nigel1,Tysall Colin4,Willis Adrian1,Underwood Martin1,

Affiliation:

1. Warwick Medical School, University of Warwick, Coventry, UK

2. Brunel University, Health Economics Research Group, Uxbridge, UK

3. Surrey Health Economic Centre, School of Economics, University of Surrey, Guildford, UK

4. Universities/User Teaching and Research Action Partnership (UNTRAP), University of Warwick, Coventry, UK

5. Centre for Rehabilitation Research, Nuffield Department of Orthopaedics, Rheumatology and Musculoskeletal Sciences, University of Oxford, Oxford, UK

6. Department of Medical Statistics, University Medical Centre Göttingen, Göttingen, Germany

7. Southampton Health Technology Assessments Centre (SHTAC), University of Southampton, Southampton, UK

8. Leicester Clinical Trials Unit, Diabetes Research Centre, University of Leicester, Leicester, UK

Abstract

BackgroundThere is good evidence that therapist-delivered interventions have modest beneficial effects for people with low back pain (LBP). Identification of subgroups of people with LBP who may benefit from these different treatment approaches is an important research priority.Aim and objectivesTo improve the clinical effectiveness and cost-effectiveness of LBP treatment by providing patients, their clinical advisors and health-service purchasers with better information about which participants are most likely to benefit from which treatment choices. Our objectives were to synthesise what is already known about the validity, reliability and predictive value of possible treatment moderators (patient factors that predict response to treatment) for therapist-delivered interventions; develop a repository of individual participant data from randomised controlled trials (RCTs) testing therapist-delivered interventions for LBP; determine which participant characteristics, if any, predict clinical response to different treatments for LBP; and determine which participant characteristics, if any, predict the most cost-effective treatments for LBP. Achieving these objectives required substantial methodological work, including the development and evaluation of some novel statistical approaches. This programme of work was not designed to analyse the main effect of interventions and no such interpretations should be made.MethodsFirst, we reviewed the literature on treatment moderators and subgroups. We initially invited investigators of trials of therapist-delivered interventions for LBP with > 179 participants to share their data with us; some further smaller trials that were offered to us were also included. Using these trials we developed a repository of individual participant data of therapist-delivered interventions for LBP. Using this data set we sought to identify which participant characteristics, if any, predict response to different treatments (moderators) for clinical effectiveness and cost-effectiveness outcomes. We undertook an analysis of covariance to identify potential moderators to apply in our main analyses. Subsequently, we developed and applied three methods of subgroup identification: recursive partitioning (interaction trees and subgroup identification based on a differential effect search); adaptive risk group refinement; and an individual participant data indirect network meta-analysis (NWMA) to identify subgroups defined by multiple parameters.ResultsWe included data from 19 RCTs with 9328 participants (mean age 49 years, 57% females). Our prespecified analyses using recursive partitioning and adaptive risk group refinement performed well and allowed us to identify some subgroups. The differences in the effect size in the different subgroups were typically small and unlikely to be clinically meaningful. Increasing baseline severity on the outcome of interest was the strongest driver of subgroup identification that we identified. Additionally, we explored the application of Bayesian indirect NWMA. This method produced varying probabilities that a particular treatment choice would be most likely to be effective for a specific patient profile.ConclusionsThese data lack clinical effectiveness or cost-effectiveness justification for the use of baseline characteristics in the development of subgroups for back pain. The methodological developments from this work have the potential to be applied in other clinical areas. The pooled repository database will serve as a valuable resource to the LBP research community.FundingThe National Institute for Health Research Programme Grants for Applied Research programme. This project benefited from facilities funded through Birmingham Science City Translational Medicine Clinical Research and Infrastructure Trials Platform, with support from Advantage West Midlands (AWM) and the Wolfson Foundation.

Funder

National Institute for Health Research

Birmingham Science City Translational Medicine Clinical Research and Infrastructure Trials Platform

Advantage West Midlands

Wolfson Foundation

Publisher

National Institute for Health Research

Subject

Automotive Engineering

Reference193 articles.

1. Epidemiology of low back pain;Andersson;Acta Orthop Scand Suppl,1998

2. Cost, controversy, crisis: low back pain and the health of the public;Deyo;Ann Rev Publ Health,1991

3. Does back pain prevalence really decrease with increasing age? A systematic review;Dionne;Age Ageing,2006

4. Refining the measurement of the economic burden of chronic diseases in Canada;Rapoport;CDIC,2004

5. Back pain in Britain: comparison of two prevalence surveys at an interval of 10 years;Palmer;BMJ,2000

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