scholarly journals Genetic variability and potential effects on clinical trial outcomes: perspectives in Parkinson’s disease

2018 ◽  
Author(s):  
Hampton Leonard ◽  
Cornelis Blauwendraat ◽  
Lynne Krohn ◽  
Faraz Faghri ◽  
Hirotaka Iwaki ◽  
...  

SummaryBackgroundImproper randomization in clinical trials can result in the failure of the trial to meet its primary end-point. The last ∼10 years have revealed that common and rare genetic variants are an important disease factor and sometimes account for a substantial portion of disease risk variance. However, the burden of common genetic risk variants is not often considered in the randomization of clinical trials and can therefore lead to additional unwanted variance between trial arms. We simulated clinical trials to estimate false negative and false positive rates and investigated differences in single variants and mean genetic risk scores (GRS) between trial arms to investigate the potential effect of genetic variance on clinical trial outcomes at different sample sizes.MethodsSingle variant and genetic risk score analyses were conducted in a clinical trial simulation environment using data from 5851 Parkinson’s Disease patients as well as two simulated virtual cohorts based on public data. The virtual cohorts included a GBA variant cohort and a two variant interaction cohort. Data was resampled at different sizes (n = 200-5000 for the Parkinson’s Disease cohort) and (n = 50-800 and n = 50-2000 for virtual cohorts) for 1000 iterations and randomly assigned to the two arms of a trial. False negative and false positive rates were estimated using simulated clinical trials, and percent difference in genetic risk score and allele frequency was calculated to quantify disparity between arms.FindingsSignificant genetic differences between the two arms of a trial are found at all sample sizes. Approximately 90% of the iterations had at least one statistically significant difference in individual risk SNPs between each trial arm. Approximately 10% of iterations had a statistically significant difference between trial arms in polygenic risk score mean or variance. For significant iterations at sample size 200, the average percent difference for mean GRS between trial arms was 130.87%, decreasing to 29.87% as sample size reached 5000. In the GBA only simulations we see an average 18.86% difference in GRS scores between trial arms at n = 50, decreasing to 3.09% as sample size reaches 2000. Balancing patients by genotype reduced mean percent difference in GRS between arms to 36.71% for the main cohort and 2.00% for the GBA cohort at n = 200. When adding a drug effect to the simulations, we found that unbalanced genetics with an effect on the chosen measurable clinical outcome can result in high false negative rates among trials, especially at small sample sizes. At a sample size of n = 50 and a targeted drug effect of −0.5 points in UPDRS per year, we discovered 33.9% of trials resulted in false negatives.InterpretationsOur data support the hypothesis that within genetically unmatched clinical trials, particularly those below 1000 participants, heterogeneity could confound true therapeutic effects as expected. This is particularly important in the changing environment of drug approvals. Clinical trials should undergo pre-trial genetic adjustment or, at the minimum, post-trial adjustment and analysis for failed trials. Clinical trial arms should be balanced on genetic risk variants, as well as cumulative variant distributions represented by GRS, in order to ensure the maximum reduction in trial arm disparities. The reduction in variance after balancing allows smaller sample sizes to be utilized without risking the large disparities between trial arms witnessed in typical randomized trials. As the cost of genotyping will likely be far less than greatly increasing sample size, genetically balancing trial arms can lead to more cost-effective clinical trials as well as better outcomes.

2021 ◽  
Vol 39 (15_suppl) ◽  
pp. 1082-1082
Author(s):  
Kinisha Gala ◽  
Ankit Kalucha ◽  
Samuel Martinet ◽  
Anushri Goel ◽  
Kalpana Devi Narisetty ◽  
...  

1082 Background: Primary endpoints of clinical trials frequently include subgroup-analyses. Several solid cancers such as aTNBC are heterogeneous, which can lead to unpredictable control arm performance impairing accurate assumptions for sample size calculations. We explore the value of a comprehensive clinical trial results repository in assessing control arm heterogeneity with aTNBC as the pilot. Methods: We identified P2/3 trials reporting median overall survival (mOS) and/or median progression-free survival (mPFS) in unselected aTNBC through a systematic search of PubMed, clinical trials databases and conference proceedings. Trial arms with sample sizes ≤25 or evaluating drugs no longer in development were excluded. Due to inconsistency among PD-L1 assays, PD-L1 subgroup analyses were not assessed separately. The primary aim was a descriptive analysis of control arm mOS and mPFS across all randomized trials in first line (1L) aTNBC. Secondary aims were to investigate time-to-event outcomes in control arms in later lines and to assess time-trends in aTNBC experimental and control arm outcomes. Results: We included 33 trials published between June 2013-Feb 2021. The mOS of control arms in 1L was 18.7mo (range 12.6-22.8) across 5 trials with single agent (nab-) paclitaxel [(n)P], and 18.1mo (similar range) for 7 trials including combination regimens (Table). The mPFS of control arms in 1L was 4.9mo (range 3.8-5.6) across 5 trials with single-agent (n)P, and 5.6mo (range 3.8-6.1) across 8 trials including combination regimens. Control arm mOS was 13.1mo (range 9.4-17.4) for 3 trials in first and second line (1/2L) and 8.7mo (range 6.7-10.8) across 5 trials in 2L and beyond. R2 for the mOS best-fit lines across control and experimental arms over time was 0.09, 0.01 and 0.04 for 1L, 1/2L and 2L and beyond, respectively. Conclusions: Median time-to-event outcomes of control arms in 1L aTNBC show considerable heterogeneity, even among trials with comparable regimens and large sample sizes. Disregarding important prognostic factors at stratification can lead to imbalances between arms, which may jeopardize accurate sample size calculations, trial results and interpretation. Optimizing stratification and assumptions for power calculations is of utmost importance in aTNBC and beyond. A digitized trial results repository with precisely defined patient populations and treatment settings could improve accuracy of assumptions during clinical trial design.[Table: see text]


2005 ◽  
Vol 2 (6) ◽  
pp. 509-518 ◽  
Author(s):  
Paulo Guimaraes ◽  
Karl Kieburtz ◽  
Christopher G Goetz ◽  
Jordan J Elm ◽  
Yuko Y Palesch ◽  
...  

2020 ◽  
Vol 15 (5) ◽  
pp. 443-451
Author(s):  
Lauren Olsen ◽  
Lindsay DePalma ◽  
John H. Evans

Empirical studies have found that altruism and self-interest are the two primary motivations for enrollment in clinical trials. Some studies have shown that in some cases these two motivations are contingent upon each other, which complicates our understanding of motivation. In this study, we interviewed 27 people with Parkinson’s disease about their willingness to enroll in a hypothetical clinical trial. Through inductive, grounded theory analysis of the interview transcripts, we find four different contingent relationships between altruism and self-interest. It is important for ethicists to be aware of these more complex motivations because some are ethically problematic and others not. Moreover, practitioners need to be aware of these contingent relationships so that they can understand the motivations of the research participants.


2016 ◽  
Vol 31 (4) ◽  
pp. 487-490 ◽  
Author(s):  
Lasse Pihlstrøm ◽  
Kristina Rebekka Morset ◽  
Espen Grimstad ◽  
Valeria Vitelli ◽  
Mathias Toft

2021 ◽  
pp. 1-6
Author(s):  
Roger A. Barker ◽  
Emma V. Cutting ◽  
Danielle M. Daft

There is much excitement around the use of advanced therapy medicinal products (ATMPs), including cell and gene treatments, in Parkinson’s disease (PD). However, taking an ATMP to clinical trials in patients with PD is complex. As such it is important from an investigator’s perspective that they ask themselves two key questions before embarking on such work: firstly, why are you doing it, and, secondly, do you understand what is needed to conduct a clinical trial with that product. In this article, we briefly discuss these two questions.


2021 ◽  
Author(s):  
Emily Calmon Londero ◽  
Ana Beatriz Cazé Cerón

Introduction: Body movement is synchronized by external rhythmic stimuli in conjunction with physiological control, based on an internal timing process. In this perspective, music therapy can be a potential therapeutic tool for the treatment of individuals with movement disorders as it bypasses an internal rhythm motor deficit. Objective: To evaluate the benefit of music therapy in the treatment of movement disorders in patients with Parkinson’s disease (PD). Methods: This study is a literary review, which used the PubMed platform, in April 2021, with the formula: (MOVEMENT DISORDERS) AND (MUSIC THERAPY). As search criteria, articles were selected from meta-analyzes, reviews and randomized clinical trials, published in the last 10 years, in English and studies carried out in humans. Results: 21 articles were found, 6 articles were selected according to the eligibility criteria. Most studies show an improvement in movement disorders when rhythmic musical stimuli are associated with motor interventions, such as the use of treadmills. A randomized clinical trial with 50 patients with idiopathic PD was divided into two groups, one with a treadmill and with rhythmic auditory stimuli and another with a treadmill and without auditory stimuli. Among the outcomes analyzed, the improvement in movement speed was the most beneficial aspect, with an improvement in quality of life and cognitive functions. Conclusion: It is evident that the use of music therapy in the treatment of movement disorders in patients with PD improves motor symptoms. However, the studies have a small sample size and differ in terms of the method of music therapy, the period of intervention and the scales used to assess improvement. Therefore, it is important that randomized, multicenter clinical trials with a larger sample size are carried out to prove the benefits of music therapy in a patient with Parkinson’s disease.


2021 ◽  
pp. 1-13
Author(s):  
Kevin McFarthing ◽  
Gary Rafaloff ◽  
Marco Baptista ◽  
Richard K. Wyse ◽  
Simon R. W. Stott

Background: Despite the COVID-19 pandemic, there has been considerable activity in the clinical development of novel and improved drug-based therapies for the neurodegenerative condition of Parkinson’s disease (PD) during 2020. The agents that were investigated can be divided into “symptomatic” (alleviating the features of the condition) and “disease modifying” (attempting to address the underlying biology of PD) treatments, ST and DMT respectively, with further categorisation possible based on mechanism of action and class of therapy. Objective: Our goal in this report was to provide an overview of the pharmacological therapies –both ST and DMT - in clinical trials for PD during 2020–2021, with the aim of creating greater awareness and involvement in the clinical trial process. We also hope to stimulate collaboration amongst commercial and academic researchers as well as between the research and patient communities. Methods: We conducted a review of clinical trials of drug therapies for PD using trial data obtained from the ClinicalTrials.gov and World Health Organisation (WHO) registries, and performed a breakdown analysis of studies that were active as of February 18th 2021. We also assessed active drug development projects that had completed one clinical phase but were yet to start the next. Results: We identified 142 trials on ClinicalTrials.gov and 14 studies on the WHO registries that met our analysis criteria. Of these 156 trials, 91 were ST and 65 were DMT, Of the 145 trials registered on ClinicalTrials.gov in our 2020 analysis, 45 fell off the list and 42 were added. Despite this change, the balance of ST to DMT; the distribution across phases; the profile of therapeutic categories; and the proportion of repurposed therapies (33.5%); all remained very similar. There are only two DMTs in phase 3, and we identified 33 in-between-phase projects. Conclusions: Despite the effects of the coronavirus pandemic, investment and effort in clinical trials for PD appears to remain strong. There has been little change in the profile of the clinical trial landscape even though, over the past year, there has been considerable change to the content of the list.


2019 ◽  
Vol 57 (5) ◽  
pp. 331-338 ◽  
Author(s):  
Hampton Leonard ◽  
Cornelis Blauwendraat ◽  
Lynne Krohn ◽  
Faraz Faghri ◽  
Hirotaka Iwaki ◽  
...  

BackgroundClassical randomisation of clinical trial patients creates a source of genetic variance that may be contributing to the high failure rate seen in neurodegenerative disease trials. Our objective was to quantify genetic difference between randomised trial arms and determine how imbalance can affect trial outcomes.Methods5851 patients with Parkinson’s disease of European ancestry data and two simulated virtual cohorts based on public data were used. Data were resampled at different sizes for 1000 iterations and randomly assigned to the two arms of a simulated trial. False-negative and false-positive rates were estimated using simulated clinical trials, and per cent difference in genetic risk score (GRS) and allele frequency was calculated to quantify variance between arms.Results5851 patients with Parkinson’s disease (mean (SD) age, 61.02 (12.61) years; 2095 women (35.81%)) as well as simulated patients from virtually created cohorts were used in the study. Approximately 90% of the iterations had at least one statistically significant difference in individual risk SNPs between each trial arm. Approximately 5%–6% of iterations had a statistically significant difference between trial arms in mean GRS. For significant iterations, the average per cent difference for mean GRS between trial arms was 130.87%, 95% CI 120.89 to 140.85 (n=200). Glucocerebrocidase (GBA) gene-only simulations see an average 18.86%, 95% CI 18.01 to 19.71 difference in GRS scores between trial arms (n=50). When adding a drug effect of −0.5 points in MDS-UPDRS per year at n=50, 33.9% of trials resulted in false negatives.ConclusionsOur data support the hypothesis that within genetically unmatched clinical trials, genetic heterogeneity could confound true therapeutic effects as expected. Clinical trials should undergo pretrial genetic adjustment or, at the minimum, post-trial adjustment and analysis for failed trials.


Author(s):  
Alison Hall ◽  
Samuel R. Weaver ◽  
Lindsey J. Compton ◽  
Winston D. Byblow ◽  
Ned Jenkinson ◽  
...  

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