通过RECOVER队列了解PASC的多组学策略:慢性病研究系统生物学方法的范例。

IF 2.3
Frontiers in systems biology Pub Date : 2025-01-07 eCollection Date: 2024-01-01 DOI:10.3389/fsysb.2024.1422384
Jun Sun, Masanori Aikawa, Hassan Ashktorab, Noam D Beckmann, Michael L Enger, Joaquin M Espinosa, Xiaowu Gai, Benjamin D Horne, Paul Keim, Jessica Lasky-Su, Rebecca Letts, Cheryl L Maier, Meisha Mandal, Lauren Nichols, Nadia R Roan, Mark W Russell, Jacqueline Rutter, George R Saade, Kumar Sharma, Stephanie Shiau, Stephen N Thibodeau, Samuel Yang, Lucio Miele
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引用次数: 0

摘要

SARS-CoV-2感染急性后后遗症(PASC或“长COVID”)包括与广泛发病率和医疗成本上升相关的多种慢性疾病。PASC具有高度可变的临床表现,可能包括多种分子亚型,但从分子和机制的角度来看,它仍然知之甚少。这阻碍了合理靶向治疗策略的发展。美国国立卫生研究院赞助的“研究COVID以增强康复”(RECOVER)计划包括几项回顾性/前瞻性观察队列研究,分别招募成人、孕妇和儿科患者。RECOVER成立了一个“组学”多学科工作组,包括临床医生、病理学家、实验室科学家和数据科学家,负责开发应用尖端系统生物学技术的建议,以实现RECOVER的目标。工作组在14个月内每两周召开一次会议,评估已发表的证据,检查每种“组学”技术对PASC研究的可能贡献,并提出研究设计建议。组学工作组建议通过集中实验室对整个RECOVER队列的参与者生物标本进行综合、纵向、同步的系统生物学研究,而不是使用一种或几种分析技术进行多个较小的研究。由此产生的多维分子数据集应与通过RECOVER进行的深度临床表型,以及可能导致PASC临床表现的人口统计学、合并症、健康的社会决定因素、暴露和生活方式因素等信息相关联。这种方法将最小化实验室到实验室的技术差异,最大化类发现的样本量,并能够将尽可能多的相关变量合并到统计模型中。我们的许多建议已经被NIH通过同行评议过程考虑过了,结果创建了一个系统生物学小组,目前正在设计我们提出的研究。这种系统生物学策略与现代数据科学方法相结合,将极大地提高我们准确识别疾病亚型、发现生物标志物和确定精确治疗的治疗靶点的前景。结果数据集应提供给科学界进行二次分析。只要有可能,在大型观察性研究的研究设计中应采用类似的系统生物学方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multi-omics strategy to understand PASC through the RECOVER cohorts: a paradigm for a systems biology approach to the study of chronic conditions.

Post-Acute Sequelae of SARS-CoV-2 infection (PASC or "Long COVID"), includes numerous chronic conditions associated with widespread morbidity and rising healthcare costs. PASC has highly variable clinical presentations, and likely includes multiple molecular subtypes, but it remains poorly understood from a molecular and mechanistic standpoint. This hampers the development of rationally targeted therapeutic strategies. The NIH-sponsored "Researching COVID to Enhance Recovery" (RECOVER) initiative includes several retrospective/prospective observational cohort studies enrolling adult, pregnant adult and pediatric patients respectively. RECOVER formed an "OMICS" multidisciplinary task force, including clinicians, pathologists, laboratory scientists and data scientists, charged with developing recommendations to apply cutting-edge system biology technologies to achieve the goals of RECOVER. The task force met biweekly over 14 months, to evaluate published evidence, examine the possible contribution of each "omics" technique to the study of PASC and develop study design recommendations. The OMICS task force recommended an integrated, longitudinal, simultaneous systems biology study of participant biospecimens on the entire RECOVER cohorts through centralized laboratories, as opposed to multiple smaller studies using one or few analytical techniques. The resulting multi-dimensional molecular dataset should be correlated with the deep clinical phenotyping performed through RECOVER, as well as with information on demographics, comorbidities, social determinants of health, the exposome and lifestyle factors that may contribute to the clinical presentations of PASC. This approach will minimize lab-to-lab technical variability, maximize sample size for class discovery, and enable the incorporation of as many relevant variables as possible into statistical models. Many of our recommendations have already been considered by the NIH through the peer-review process, resulting in the creation of a systems biology panel that is currently designing the studies we proposed. This system biology strategy, coupled with modern data science approaches, will dramatically improve our prospects for accurate disease subtype identification, biomarker discovery and therapeutic target identification for precision treatment. The resulting dataset should be made available to the scientific community for secondary analyses. Analogous system biology approaches should be built into the study designs of large observational studies whenever possible.

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