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Review
. 2025 Jan 7:4:1422384.
doi: 10.3389/fsysb.2024.1422384. eCollection 2024.

A multi-omics strategy to understand PASC through the RECOVER cohorts: a paradigm for a systems biology approach to the study of chronic conditions

Affiliations
Review

A multi-omics strategy to understand PASC through the RECOVER cohorts: a paradigm for a systems biology approach to the study of chronic conditions

Jun Sun et al. Front Syst Biol. .

Abstract

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.

Keywords: COVID-19; PASC; RECOVER; multi-omics; systems biology.

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Conflict of interest statement

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest. The author(s) declared that they were an editorial board member of Frontiers, at the time of submission. This had no impact on the peer review process and the final decision.

Figures

FIGURE 1
FIGURE 1
A comprehensive multi-omics approach to the mechanism(s) of PASC. From left to right: PASC is a consequence of infection with SARS-CoV-2. Different viral variants or sub-variants (represented in different colors) may have different probability of causing PASC or be associated with different presentations (e.g., due to different ability to cause persistent infection, to trigger pathogenic antibody responses, or to damage vascular endothelium). Vaccines and anti-viral agents can decrease the risk of PASC by interfering with viral persistence and replication. Multiple exposures, including diet, medications, tobacco, alcohol, environmental pollutants and co-morbidities, socioeconomic and psychosocial exposures, as well as sex hormones, can potentially affect the risk and clinical presentations of PASC. The combined effect of these factors results into evolving clinical phenotypes ranging from acute COVID-19 resolution to PASC through a number of mechanisms that can be best understood by simultaneously interrogating the multi-omics landscape of patients, including individual genomics, epigenomics, bulk and single-cell transcriptomics, plasma and cellular proteomics, metabolomics, and microbiome/virome. These different dimensions functionally interact with one another to determine pathogenetic mechanisms (e.g., persistent viral infection, modulated by individual genetics, triggers immune, inflammatory and metabolic changes that are in turn modulated by the intestinal and respiratory microbiomes and potentially by reactivation of other viruses). Insights generated by an integrated multi-omics investigation of patients with well-characterized clinical phenotypes are likely to identify actionable biomarkers (which may discriminate between PASC molecular subtypes), as well as therapeutic targets and prevention strategies. Orthogonal multi-omics tests repeated over time are the most informative approach to capture the pathogenesis of the different clinical presentations of PASC and their evolution over time.

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