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      Developing Appropriate Methods for Cost-Effectiveness Analysis of Cluster Randomized Trials

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          Abstract

          Aim. Cost-effectiveness analyses (CEAs) may use data from cluster randomized trials (CRTs), where the unit of randomization is the cluster, not the individual. However, most studies use analytical methods that ignore clustering. This article compares alternative statistical methods for accommodating clustering in CEAs of CRTs. Methods. Our simulation study compared the performance of statistical methods for CEAs of CRTs with 2 treatment arms. The study considered a method that ignored clustering—seemingly unrelated regression (SUR) without a robust standard error (SE)—and 4 methods that recognized clustering—SUR and generalized estimating equations (GEEs), both with robust SE, a “2-stage” nonparametric bootstrap (TSB) with shrinkage correction, and a multilevel model (MLM). The base case assumed CRTs with moderate numbers of balanced clusters (20 per arm) and normally distributed costs. Other scenarios included CRTs with few clusters, imbalanced cluster sizes, and skewed costs. Performance was reported as bias, root mean squared error (rMSE), and confidence interval (CI) coverage for estimating incremental net benefits (INBs). We also compared the methods in a case study. Results. Each method reported low levels of bias. Without the robust SE, SUR gave poor CI coverage (base case: 0.89 v. nominal level: 0.95). The MLM and TSB performed well in each scenario (CI coverage, 0.92–0.95). With few clusters, the GEE and SUR (with robust SE) had coverage below 0.90. In the case study, the mean INBs were similar across all methods, but ignoring clustering underestimated statistical uncertainty and the value of further research. Conclusions. MLMs and the TSB are appropriate analytical methods for CEAs of CRTs with the characteristics described. SUR and GEE are not recommended for studies with few clusters.

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          Determinants of the intracluster correlation coefficient in cluster randomized trials: the case of implementation research.

          The objective of this research was to identify determinants of the magnitude of intracluster correlation coefficients (ICCs) in cluster randomized trials from the field of implementation research. A survey of experts was conducted to generate a priori hypotheses of factors that might affect ICC size. Hypotheses were tested on empirical estimates of ICCs calculated from 21 implementation research datasets, mainly from the UK. Effects of setting (primary or secondary care), type of variable (process or outcome), type of measurement (objective or subjective), prevalence of outcome and size of cluster were tested. In total, 220 ICCs were available (range 0 to 0.415). Significant differences in ICC magnitude were found. The ICCs were significantly higher for process than for outcome variables, and for secondary care outcomes compared with primary care outcomes. The effects of prevalence and size were less clear cut. There was no evidence to suggest that type of measurement affected ICC size. In conclusion, accurate estimates of ICCs are essential for sample size calculations for cluster randomized trials of professional behaviour change interventions. This study demonstrates that ICCs are sensitive to a number of trial factors, particularly setting and outcome type. These factors must be considered when planning such cluster randomized trials.
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            Effect of educational outreach to nurses on tuberculosis case detection and primary care of respiratory illness: pragmatic cluster randomised controlled trial.

            To develop and implement an educational outreach programme for the integrated case management of priority respiratory diseases (practical approach to lung health in South Africa; PALSA) and to evaluate its effects on respiratory care and detection of tuberculosis among adults attending primary care clinics. Pragmatic cluster randomised controlled trial, with clinics as the unit of randomisation. 40 primary care clinics, staffed by nurse practitioners, in the Free State province, South Africa. 1999 patients aged 15 or over with cough or difficult breathing (1000 in intervention clinics, 999 in control clinics). Between two and six educational outreach sessions delivered to nurse practitioners by usual trainers from the health department. The emphasis was on key messages drawn from the customised clinical practice guideline for the outreach programme, with illustrative support materials. Sputum screening for tuberculosis, tuberculosis case detection, inhaled corticosteroid prescriptions for obstructive lung disease, and antibiotic prescriptions for respiratory tract infections. All clinics and almost all patients (92.8%, 1856/1999) completed the trial. Although sputum testing for tuberculosis was similar between the groups (22.6% in outreach group v 19.3% in control group; odds ratio 1.22, 95% confidence interval 0.83 to 1.80), the case detection of tuberculosis was higher in the outreach group (6.4% v 3.8%; 1.72, 1.04 to 2.85). Prescriptions for inhaled corticosteroids were also higher (13.7% v 7.7%; 1.90, 1.14 to 3.18) but the number of antibiotic prescriptions was similar (39.7% v 39.4%; 1.01, 0.74 to 1.38). Combining educational outreach with integrated case management provides a promising model for improving quality of care and control of priority respiratory diseases, without extra staff, in resource poor settings. Current controlled trials ISRCTN13438073.
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              Intraclass correlation coefficients for cluster randomized trials in primary care: data from the MRC Trial of the Assessment and Management of Older People in the Community.

              The cluster randomized trial, in which groups rather than individuals are allocated to different interventions, is an increasingly popular design. In cluster trials observations on individuals within the same cluster may be correlated, and this lack of independence must be taken into account when designing a new trial. We present intraclass correlation coefficients derived from the Medical Research Council Trial of the Assessment and Management of Older People in the Community. This is a UK-based randomized trial comparing different methods of multidimensional screening for people aged 75 years and over. One hundred six general practices and over 30,000 individuals are taking part. Estimates of the intraclass correlation coefficients were obtained using one-way analysis of variance. This is by far the broadest collection of intraclass correlation coefficients for older people at the level of the primary care clinic published to date. The intraclass correlation coefficients presented will be useful in calculating sample sizes for cluster randomized trials and surveys at the primary care clinic level. In conjunction with other papers presenting collections of intraclass correlation coefficients, this paper should help to improve the quality of cluster randomized trials and hence help lead to more reliable estimates of the effectiveness of health care interventions.
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                Author and article information

                Journal
                Med Decis Making
                Med Decis Making
                MDM
                spmdm
                Medical Decision Making
                SAGE Publications (Sage CA: Los Angeles, CA )
                0272-989X
                1552-681X
                March 2012
                March 2012
                : 32
                : 2
                : 350-361
                Affiliations
                [1-0272989X11418372]Department of Health Services Research and Policy, London School of Hygiene and Tropical Medicine, London, UK (MG, ESWN, RG)
                [2-0272989X11418372]Modeling and Simulation Group, Novartis Pharma AG, Basel, Switzerland (RN)
                [3-0272989X11418372]Department of Medical Statistics, London School of Hygiene and Tropical Medicine, London, UK (JC)
                [4-0272989X11418372]MRC Biostatistics Unit, Cambridge, UK (SGT)
                Author notes
                [*]Richard Grieve, PhD, Department of Health Services Research and Policy, London School of Hygiene and Tropical Medicine, 15-17 Tavistock Place, London, WC1H 9SH; telephone: (020) 7927-2255; fax: (020) 7927-2701; e-mail: richard.grieve@ 123456lshtm.ac.uk .
                Article
                10.1177_0272989X11418372
                10.1177/0272989X11418372
                3757919
                22016450
                2db77962-7db4-44d4-ad19-7c525853f344

                This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.

                History
                : 9 March 2011
                : 18 June 2011
                Categories
                Original Articles
                Custom metadata
                March–April 2012

                Medicine
                cost-effectiveness analysis,randomized trial methodology,statistical methods
                Medicine
                cost-effectiveness analysis, randomized trial methodology, statistical methods

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