Monday, August 22 |
07:30 - 08:45 |
Breakfast (Restaurant Hotel Hacienda Los Laureles) |
08:45 - 09:00 |
Introduction and Welcome (Conference Room San Felipe) |
09:00 - 10:30 |
Session 1, Chair: Layla Parast (Zoom) |
09:00 - 09:30 |
Layla Parast: Workshop Background, Overview, Goals, and Structure ↓ In this talk, I will review the workshop background and motivation, provide an overview of the workshop schedule, describe the goals of the workshop, and describe the structure of the talks, panels, and last-day activities. In addition, I will give a brief overview of the history of surrogate marker work and the current status of available methods and use in practice. I will describe what I think are the open questions in this area, and barriers to practical use of statistical methods to validate and use surrogate markers. (Zoom) |
09:30 - 10:30 |
Geert Molenberghs: The Statistical Evaluation of Surrogate Endpoints in Clinical Trials ↓ Both humanitarian and commercial considerations have spurred intensive search for methods to reduce the time and cost required to develop new therapies. The identification and use of surrogate endpoints, i.e. measures that can replace or supplement other endpoints in evaluations of experimental treatments or interventions, is a general strategy that has stimulated much enthusiasm. Surrogate endpoints are useful when they can be measured earlier, more conveniently, or more frequently than the "true" endpoints of primary interest. Regulatory agencies around the globe, particularly in the United States, Europe, and Japan, are introducing provisions and policies relating to the use of surrogate endpoints in registration studies. But how can one establish the adequacy of a surrogate, in the sense that treatment effectiveness on the surrogate will accurately predict treatment effect on the intended, and more important, true outcome? What kind of evidence is needed, and what statistical methods portray that evidence most appropriately? The definition of validity, as well as formal sets of criteria, have been proposed, including use of the proportion explained, jointly the within-treatment partial association of true and surrogate responses, and the treatment effect on the surrogate relative to that on the true outcome. In a multi-centre setting, these quantities can be generalized to individual-level and trial-level measures of surrogacy. Consequently, a meta-analytic framework studying surrogacy at both the trial and individual-patient levels has been proposed. A number of variations of this theme have been developed, depending on the type of endpoint for the true and surrogate endpoint and on the focus of the evaluation exercise. The framework commonly used will be sketched, also against the background of alternatives. A perspective will be given on further and ongoing developments. (Zoom) |
10:30 - 11:00 |
Coffee Break (Conference Room San Felipe) |
11:00 - 12:30 |
Session 2, Chair: Layla Parast (Zoom) |
11:00 - 11:30 |
Marc Buyse: Statistical Evaluation of Surrogate Endpoints ↓ Context: With the large number of promising new treatments that are currently available for testing, clinical trials need to detect treatment benefits and harms as quickly as possible. In parallel with the need for speed in clinical development, advances in molecular biology, high throughput technologies and imaging techniques provide investigators with an ever growing number of biomarkers which can potentially be used to replace clinical endpoints in the comparison of new treatments with established standards of care.
Objective: This talk will discuss the type of statistical evidence required for an intermediate endpoint (possibly based on a biomarker) to be an acceptable surrogate endpoint in clinical trials. [1]
Methods: Historically, the first formal definition of surrogacy is due to Ross Prentice. This definition, and the accompanying criteria, have had a huge role in focusing attention on the need for a formal statistical approach to surrogate validation. The validation approach most commonly used currently requires a meta-analysis of several randomized trials to investigate the association between the surrogate and the true endpoint, and the association between treatment effects on these endpoints. An acceptable surrogate must be prognostic for the true endpoint (“individual-level association”), and the treatment effect on the surrogate must be predictive of the treatment effect on the true endpoint (“trial-level association”). Information theory can be used to assess the quality of a potential surrogate at both the individual and trial levels. For the planning of future trials, the “surrogate threshold effect” can be estimated as the minimum effect on the surrogate biomarker that would predict a statistically significant effect on the clinical endpoint. SAS and R software has been developed to implement all these ideas. [2] A very different line of research has evolved from concepts of causal inference, using either principal stratification, or mediation analysis. Causal inference can shed light on statistical associations found in a meta-analysis, and as such the two approaches can complement each other for a full assessment of surrogacy.
Results: The potential and limitation of all these approaches will be illustrated using patient level data from clinical trials of treatments for HER2-positive early breast cancer.
Conclusion: The search for surrogate endpoints will continue unabated in the future. A rigorous statistical assessment of surrogacy is possible but typically requires access to patient-level data from several (peferably many) randomized clinical trials.
References
1. Burzykowski T, Molenberghs G, Buyse M. (eds.) The Evaluation of Surrogate Endpoints. Springer (408 p.), New York, 2005.
2. Alonso A, Bigirumurame T, Burzykowski T, Buyse M, Molenberghs G, Muchene L, Perualila NJ, Shkedy Z, Van der Elst W. Applied Surrogate Endpoint Evaluation Methods with SAS and R. Chapman and Hall/CRC Press, New York, 2017. (Zoom) |
11:30 - 12:00 |
Mark van der Laan: The Oracle Surrogate and Sequential Adaptive Designs that Learn Optimal Individualized Treatment Rules by Utilizing Surrogate Outcomes (Zoom) |
12:00 - 12:30 |
Open Discussion (Zoom) |
12:30 - 14:00 |
Lunch (Restaurant Hotel Hacienda Los Laureles) |
14:00 - 15:30 |
Session 3, Chair: Layla Parast (Zoom) |
14:00 - 14:30 |
Larry Han: Challenges of surrogate markers in real-world data ↓ In comparative effectiveness research (CER), leveraging short-term surrogates to infer treatment effects on long-term outcomes can guide policymakers in evaluating new treatments. Numerous statistical procedures for identifying surrogates have been proposed for randomized clinical trials (RCTs), but no methods currently exist to evaluate the proportion of treatment effect (PTE) explained by surrogates in real-world data (RWD), which have become increasingly common with the rise of algorithm-derived outcomes. To address this knowledge gap, we propose inverse probability weighted (IPW) and doubly robust (DR) estimators of an optimal transformation of the surrogate and the corresponding PTE measure. We demonstrate that the proposed estimators are consistent and asymptotically normal, and the DR estimator is consistent when either the propensity score model or outcome regression model is correctly specified. Our proposed estimators are evaluated through extensive simulation studies. In two RWD settings, we show that our method can identify and validate surrogate markers for inflammatory bowel disease (IBD). (Zoom) |
14:30 - 15:00 |
Tyler VanderWeele: Criteria for the Use of Surrogates ↓ The use of such surrogates can give rise to paradoxical situations in which the effect of the treatment on the surrogate is positive, the surrogate and outcome are strongly positively correlated, but the effect of the treatment on the outcome is negative, a phenomenon sometimes referred to as the "surrogate paradox." Results are given for consistent surrogates on sufficient conditions that ensure the surrogate paradox is not manifest. It is shown that for the surrogate paradox to be manifest it must be the case that either there is (i) a direct effect of treatment on the outcome not through the surrogate and in the opposite direction as that through the surrogate or (ii) confounding for the effect of the surrogate on the outcome, or (iii) a lack of transitivity so that treatment does not positively affect the surrogate for all the same individuals for whom the surrogate positively affects the outcome. These conditions give rise to criteria under which the use of a surrogate might be considered reasonable. (Zoom) |
15:00 - 15:30 |
Aline Talhouk: Surrogate markers in endometrial cancer prevention trials ↓ Endometrial Cancer, or cancer of the uterus, is the most common gynecological cancer in the developed world with incidence increasing due to increasing prevalence of risk factors such as obesity. Risk-reducing interventions to prevent endometrial cancer are being proposed, but waiting to observe the impact on incidence of cancer as a primary endpoint may be too long for needed policy change and action in this disease. I discuss possible surrogates including advantages and disadvantages and propose a novel approach that uses causal learning to burrow surrogate markers of diabetes, a condition highly related to endometrial cancer. (Zoom) |
15:30 - 16:30 |
Panel Discussion: Transportability, Connection Between Frameworks, and Practical Steps for Validation, Chair: Layla Parast, Panelists: Denis Agniel, Michael Elliott, Tanya Garcia, Larry Han (Zoom) |
16:30 - 17:00 |
Coffee Break (Conference Room San Felipe) |
18:30 - 20:30 |
Dinner (Restaurant Hotel Hacienda Los Laureles) |