Statistical considerations in evaluating pharmacogenomics-based clinical effect for confirmatory trials

被引:25
|
作者
Wang, Sue-Jane [1 ]
O'Neill, Robert T.
Hung, H. M. James [1 ]
机构
[1] US FDA, Off Biostat, Off Translat Sci, Ctr Drug Evaluat & Res,Div Biometr 1, Silver Spring, MD 20993 USA
关键词
BIOMARKER;
D O I
10.1177/1740774510375455
中图分类号
R-3 [医学研究方法]; R3 [基础医学];
学科分类号
1001 ;
摘要
Background The current practice for seeking genomically favorable patients in randomized controlled clinical trials using genomic convenience samples. Purpose To discuss the extent of imbalance, confounding, bias, design efficiency loss, type I error, and type II error that can occur in the evaluation of the convenience samples, particularly when they are small samples. To articulate statistical considerations for a reasonable sample size to minimize the chance of imbalance, and, to highlight the importance of replicating the subgroup finding in independent studies. Methods Four case examples reflecting recent regulatory experiences are used to underscore the problems with convenience samples. Probability of imbalance for a pre-specified subgroup is provided to elucidate sample size needed to minimize the chance of imbalance. We use an example drug development to highlight the level of scientific rigor needed, with evidence replicated for a pre-specified subgroup claim. Results The convenience samples evaluated ranged from 18% to 38% of the intent-to-treat samples with sample size ranging from 100 to 5000 patients per arm. The baseline imbalance can occur with probability higher than 25%. Mild to moderate multiple confounders yielding the same directional bias in favor of the treated group can make treatment group incomparable at baseline and result in a false positive conclusion that there is a treatment difference. Conversely, if the same directional bias favors the placebo group or there is loss in design efficiency, the type II error can increase substantially. Limitations Pre-specification of a genomic subgroup hypothesis is useful only for some degree of type I error control. Conclusion Complete ascertainment of genomic samples in a randomized controlled trial should be the first step to explore if a favorable genomic patient subgroup suggests a treatment effect when there is no clear prior knowledge and understanding about how the mechanism of a drug target affects the clinical outcome of interest. When stratified randomization based on genomic biomarker status cannot be implemented in designing a pharmacogenomics confirmatory clinical trial, if there is one genomic biomarker prognostic for clinical response, as a general rule of thumb, a sample size of at least 100 patients may be needed to be considered for the lower prevalence genomic subgroup to minimize the chance of an imbalance of 20% or more difference in the prevalence of the genomic marker. The sample size may need to be at least 150, 350, and 1350, respectively, if an imbalance of 15%, 10% and 5% difference is of concern. Clinical Trials 2010; 7: 525-536. http://ctj.sagepub.com
引用
收藏
页码:525 / 536
页数:12
相关论文
共 50 条
  • [21] A MISCELLANY OF STATISTICAL AND OTHER CONSIDERATIONS FOR CLINICAL-TRIALS
    MANTEL, N
    CONTROLLED CLINICAL TRIALS, 1980, 1 (01): : 3 - 11
  • [22] An investigator's introduction to statistical considerations in clinical trials
    Winter, Kathryn
    Pugh, Stephanie L.
    UROLOGIC ONCOLOGY-SEMINARS AND ORIGINAL INVESTIGATIONS, 2019, 37 (05) : 305 - 312
  • [23] Statistical Considerations in the Design of Biosimilar Cancer Clinical Trials
    Ahn, Chul
    Lee, Seung-Chun
    KOREAN JOURNAL OF APPLIED STATISTICS, 2011, 24 (03) : 495 - 503
  • [24] Practical Guide to Statistical Considerations in Clinical Trials in Surgery
    de Jonge, Stijn W.
    Kaji, Amy H.
    Itani, Kamal M. F.
    JAMA SURGERY, 2023, 158 (01) : 89 - 90
  • [25] Statistical considerations of chemoprevention clinical trials in prostate cancer
    Sylvester, R
    Collette, L
    EUROPEAN UROLOGY, 1999, 35 (5-6) : 519 - 522
  • [26] Statistical Considerations for Quantitative Imaging Measures in Clinical Trials
    Lu, Ying
    BIOPHARMACEUTICAL APPLIED STATISTICS SYMPOSIUM, VOL 3: PHARMACEUTICAL APPLICATIONS, 2018, : 219 - 240
  • [27] Concept End Points Informing Design Considerations for Confirmatory Clinical Trials in Osteoarthritis
    Kim, Yura
    Levin, Gregory
    Nikolov, Nikolay P.
    Abugov, Robert
    Rothwell, Rebecca
    ARTHRITIS CARE & RESEARCH, 2022, 74 (07) : 1154 - 1162
  • [28] Sample Size Re-estimation Designs In Confirmatory Clinical Trials-Current State, Statistical Considerations, and Practical Guidance
    Pritchett, Yili L.
    Menon, Sandeep
    Marchenko, Olga
    Antonijevic, Zoran
    Miller, Eva
    Sanchez-Kam, Matilde
    Morgan-Bouniol, Caroline C.
    Ha Nguyen
    Prucka, William R.
    STATISTICS IN BIOPHARMACEUTICAL RESEARCH, 2015, 7 (04): : 309 - 321
  • [29] Research design considerations for confirmatory chronic pain clinical trials: IMMPACT recommendations
    Dworkin, Robert H.
    Turk, Dennis C.
    Peirce-Sandner, Sarah
    Baron, Ralf
    Bellamy, Nicholas
    Burke, Laurie B.
    Chappell, Amy
    Chartier, Kevin
    Cleeland, Charles S.
    Costello, Ann
    Cowan, Penney
    Dimitrova, Rozalina
    Ellenberg, Susan
    Farrar, John T.
    French, Jacqueline A.
    Gilron, Ian
    Hertz, Sharon
    Jadad, Alejandro R.
    Jay, Gary W.
    Kalliomaki, Jarkko
    Katz, Nathaniel P.
    Kerns, Robert D.
    Manning, Donald C.
    McDermott, Michael P.
    McGrath, Patrick J.
    Narayana, Arvind
    Porter, Linda
    Quessy, Steve
    Rappaport, Bob A.
    Rauschkolb, Christine
    Reeve, Bryce B.
    Rhodes, Thomas
    Sampaio, Cristina
    Simpson, David M.
    Stauffer, Joseph W.
    Stucki, Gerold
    Tobias, Jeffrey
    White, Richard E.
    Witter, James
    PAIN, 2010, 149 (02) : 177 - 193
  • [30] Statistical Considerations for Planning Clinical Trials with Quantitative Imaging Biomarkers
    Obuchowski, Nancy A.
    Mozley, P. David
    Matthews, Dawn
    Buckler, Andrew
    Bullen, Jennifer
    Jackson, Edward
    JNCI-JOURNAL OF THE NATIONAL CANCER INSTITUTE, 2019, 111 (01): : 19 - 26