Core protocol

  • 文章类型: Clinical Trial Protocol
    背景:脑白质萎缩症“白质消失”(VWM)是一种孤儿疾病,具有神经系统衰退和高死亡率。目前,VWM没有批准的治疗方法,但是在理解病理生理学方面的进展导致了有希望的治疗方法的确定。几种研究性药物正在或即将进入临床试验阶段。VWM的临床试验提出了严峻的挑战,由于VWM具有发作性病程;疾病表型高度异质性,仅在早期发作时才可预测;并且研究能力受到患者人数少的限制。为了应对这些挑战并加速治疗,VWM联盟,一群具有VWM专业知识的学术临床医生,决定开发一个核心协议作为试验的模板,为了改进试验设计并促进控制数据的共享,同时允许对其他试验细节的灵活性。核心协议的总体目标是收集安全性,耐受性,以及用于治疗评估和上市许可的疗效数据。
    方法:要开发核心协议,VWM财团指定了一个委员会,包括VWM联盟的临床医生成员,家庭和病人团体倡导者,和统计专家,临床试验设计和与工业联盟。我们起草了三个针对特定年龄的协议,分层为更同质的患者组,年龄≥18岁,≥6至<18年和<6年。我们选择双盲,随机化,≥6岁患者的安慰剂对照设计;<6岁患者的开放标签非随机自然史对照设计。协议描述了研究人群,年龄特定的终点,纳入和排除标准,学习时间表,样本量测定,和统计方面的考虑。
    结论:核心方案提供了跨试验的共享一致性,启用共享控件池,并减少每次试验所需的患者总数,限制服用安慰剂的患者数量。所有VWM临床试验都建议遵守核心方案。其他试验组成部分,如主要结果的选择,药代动力学,药效学,和生物标志物是灵活的,不受核心协议的约束。每个赞助商都负责他们的审判执行,而控制数据由共享的研究组织处理。该核心协议有利于VWM中并行和连续试验的效率,我们希望加快VWM治疗的时间。
    背景:NA。从科学和伦理的角度来看,强烈建议所有使用该核心方案的介入试验在临床试验登记册中进行登记.
    BACKGROUND: The leukodystrophy \"Vanishing White Matter\" (VWM) is an orphan disease with neurological decline and high mortality. Currently, VWM has no approved treatments, but advances in understanding pathophysiology have led to identification of promising therapies. Several investigational medicinal products are either in or about to enter clinical trial phase. Clinical trials in VWM pose serious challenges, as VWM has an episodic disease course; disease phenotype is highly heterogeneous and predictable only for early onset; and study power is limited by the small patient numbers. To address these challenges and accelerate therapy delivery, the VWM Consortium, a group of academic clinicians with expertise in VWM, decided to develop a core protocol to function as a template for trials, to improve trial design and facilitate sharing of control data, while permitting flexibility regarding other trial details. Overall aims of the core protocol are to collect safety, tolerability, and efficacy data for treatment assessment and marketing authorization.
    METHODS: To develop the core protocol, the VWM Consortium designated a committee, including clinician members of the VWM Consortium, family and patient group advocates, and experts in statistics, clinical trial design and alliancing with industries. We drafted three age-specific protocols, to stratify into more homogeneous patient groups, of ages ≥ 18 years, ≥ 6 to < 18 years and < 6 years. We chose double-blind, randomized, placebo-controlled design for patients aged ≥ 6 years; and open-label non-randomized natural-history-controlled design for patients < 6 years. The protocol describes study populations, age-specific endpoints, inclusion and exclusion criteria, study schedules, sample size determinations, and statistical considerations.
    CONCLUSIONS: The core protocol provides a shared uniformity across trials, enables a pool of shared controls, and reduces the total number of patients necessary per trial, limiting the number of patients on placebo. All VWM clinical trials are suggested to adhere to the core protocol. Other trial components such as choice of primary outcome, pharmacokinetics, pharmacodynamics, and biomarkers are flexible and unconstrained by the core protocol. Each sponsor is responsible for their trial execution, while the control data are handled by a shared research organization. This core protocol benefits the efficiency of parallel and consecutive trials in VWM, and we hope accelerates time to availability of treatments for VWM.
    BACKGROUND: NA. From a scientific and ethical perspective, it is strongly recommended that all interventional trials using this core protocol are registered in a clinical trial register.
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  • 文章类型: Journal Article
    临床试验,以最大的诚信高效地进行,是确定有效疫苗的关键组成部分,疗法,以及解决COVID-19危机迫切需要的其他干预措施。然而,以产生令人信服的结果所必需的严格性启动和实施试验是一个复杂而耗时的过程。平衡严密性和效率需要依靠采用灵活功能的设计来应对快速变化的环境,测量导致转化行动的有效终点,并及时传播发现。我们描述了创建具有共享学习潜在效用的基础设施所涉及的挑战。
    我们已经建立了一个共享的基础设施,在多个试验中借力。基础结构包括端点注册表,以帮助选择适当的端点,促进建立数据和安全监控委员会的登记册,常见的数据收集仪器,一个专门的COVID-19设计和分析团队,和实用的平台协议,在其他元素中。
    作者依靠共享基础设施进行了六项临床试验,他们作为数据协调中心,并拥有一个由15名致力于COVID-19的成员组成的设计和分析团队。作者建立了一个务实的平台,以同时研究具有适应性特征的门诊病人的多种治疗方法,以增加或减少治疗臂。
    共享基础架构提供了以更少的资源以更强大的方式评估疾病的有吸引力的机会,在时间和资源效率至关重要的大流行期间尤其受到重视。共享基础设施最重要的元素是务实的平台。虽然这可能是最具挑战性的要素,它可能为患者和研究人员提供最大的好处。
    Clinical trials, conducted efficiently and with the utmost integrity, are a key component in identifying effective vaccines, therapies, and other interventions urgently needed to solve the COVID-19 crisis. Yet launching and implementing trials with the rigor necessary to produce convincing results is a complicated and time-consuming process. Balancing rigor and efficiency involves relying on designs that employ flexible features to respond to a fast-changing landscape, measuring valid endpoints that result in translational actions and disseminating findings in a timely manner. We describe the challenges involved in creating infrastructure with potential utility for shared learning.
    We have established a shared infrastructure that borrows strength across multiple trials. The infrastructure includes an endpoint registry to aid in selecting appropriate endpoints, a registry to facilitate establishing a Data & Safety Monitoring Board, common data collection instruments, a COVID-19 dedicated design and analysis team, and a pragmatic platform protocol, among other elements.
    The authors have relied on the shared infrastructure for six clinical trials for which they serve as the Data Coordinating Center and have a design and analysis team comprising 15 members who are dedicated to COVID-19. The authors established a pragmatic platform to simultaneously investigate multiple treatments for the outpatient with adaptive features to add or drop treatment arms.
    The shared infrastructure provides appealing opportunities to evaluate disease in a more robust manner with fewer resources and is especially valued during a pandemic where efficiency in time and resources is crucial. The most important element of the shared infrastructure is the pragmatic platform. While it may be the most challenging of the elements to establish, it may provide the greatest benefit to both patients and researchers.
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