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Challenges in Evaluating Screening & Prevention Interventions. Jack Cuzick Cancer Research UK. Screening & Prevention Trials. Large Multicentre, International Long Compliance, contamination Expensive Consent Trial Mechanics. Classical Approach.
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Challenges in EvaluatingScreening & Prevention Interventions Jack Cuzick Cancer Research UK
Screening & Prevention Trials • Large • Multicentre, International • Long • Compliance, contamination • Expensive • Consent • Trial Mechanics
Classical Approach • Randomised Population Based Trial • Intent-to-Treat Analysis of Mortality Strengths Unbiased Directly applicable to population Weaknesses Expensive follow-up Requires high compliance, low contamination
Simplifications • Make Trials More ‘Routine’ • Surrogate Endpoints • Target High-Risk Individuals
Informed Consent • Can require more time than intervention • Should be relaxed when comparing new intervention at least as effective as conventional • Need for ‘Community Consent’ • Data Protection Act • Research vs Implementation Studies
Cluster Randomisation • Can minimize consent issues • Requires well-defined population • Good compliance essential • Preselect based on likely compliance if possible • Aim for >60 ‘matched’ cluster • Minimise between cluster variation
Reciprocal Trials • Avoids issues of untreated controls • Two outcomes for same exposure • Ex-smokers CT screening for lung cancers vs Aggressive cardiovascular interventions (BP and cholesterol) • Two unlinked types of screening Colorectal vs (ovary/prostate)
Compliance (& Contamination) Compliance • Acceptance of other screening on offer • Pre-questionnaires • Run-in procedures Contamination • Availability of intervention • Positive correlation with compliance
Selection of Compliant PopulationBefore Randomisation Strengths • Increase of power • Efficiency of trial resources Weaknesses • Generalizability • Greater risk of contamination
Analysis allowing for non-compliance Strengths • Estimate of screening effect in compliers • Extrapolation to different levels of compliance • Appropriate confidence intervals (larger) Weakness • Auxillary to ITT population analysis
Randomised Option Treatment Control Insist (Group A) Contaminators Accept only if offered (Group B) True Comparison Group Patient’s behaviour regarding treatment Refuse (Group C) Non - compliers
A Hypothetical Example – Binary Outcome
Potentially Dangerous Modifications • Non-randomised comparisons • Historical Controls • Compliers vs Non-compliers • Case-Control Studies • Survival or stage changes in screen detected • cancers • Lead time bias • Length bias • Subgroup Analysis
Ignore subsequent cancers x Group 1 Group 2 Group 3 Group 4 Group 5 x x x Phased Introduction x x x x • Phasing period > lead time • Prevaluated screen problematic if incidence age dependent • must include prevaluated screen • Ideally exit screen for all (e.g. groups 1, 3, 5)
Evaluating Service ScreeningCase-Control Audit • Focus on screening failuresCervix – stage Ib+ Breast – deaths (or stage 2) Colon – Duke’s B or greater • Compare screening histories of failures (cases) to programme in general (controls) • Require well-defined target population • Evaluate • Coverage • Screening interval • Follow-up • Misreading • True ‘false negatives’ • Problems with screen-detected cancers
Evaluating Service Screening Modelling – Process Parameters • Need surrogate for mortality reduction • Previous trials for validation • Early (easy) vs late (hard) markers • High detection rate of early lesions • Reduced detection of advanced lesions on subsequent screens • Reduced interval cancer rate • Reduced overall rate of advanced lesions
Intermediate Endpoints/Biomarkers Strengths • More power • Earlier results • Modelling of different strategies Weaknesses • Need for validation • Treatments specifically armed at biomarker
Surrogates for Breast Cancer Risk • Mammographic Density • Oestradiol • Insulin-like growth factor II (?) • Cytology • Weight (loss)
Risk-Benefit Ratio • Critical in Screening or Prevention – • well population • Side-effects early and patient-specific • Benefits late and non-individual specific • Costs Individual - Travel, time off work, anxiety (reassurance) Health System - Screening Test Further Evaluation Treatment - (Potential Cost & Reduction) Programme Management & Evaluation