Patterns of Natural Aging and the Role of Senescence Registry
NCT ID: NCT05123859
Last Updated: 2022-08-17
Study Results
The study team has not published outcome measurements, participant flow, or safety data for this trial yet. Check back later for updates.
Basic Information
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COMPLETED
250 participants
OBSERVATIONAL
2022-01-05
2022-08-14
Brief Summary
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Over the past century, life expectancy has increased by 30 years. With that gain has come a dramatic rise in age-related disease and an urgent need to understand, prevent, and treat these conditions. While age-related diseases have diverse phenotypes, there is increasing recognition of common biological underpinnings with cellular senescence as the nexus linking subcellular changes due to epigenetic changes, DNA damage, and mitochondria dysfunction with a decline in health due to multi-morbidity. The molecular changes that shift one's aging trajectory from a 'healthy' state to a 'disease' state are poorly understood; however, there is increasing evidence that senescence plays a key role in this shift. Computational models of natural aging and aging related disease are important tools in understanding the phenomenon of senescence, its regulation and dynamics, and its role in physiological or pathological processes during human aging. These findings will serve as pilot data for future analysis of cellular senescence, as measured by p16INK4 (hereafter referred to as p16) expression, and aging in other cohorts and begin to establish comparisons between p16 and other potentially clinically relevant aging biomarkers such as DNA methylation and plasma proteomics.
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Detailed Description
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Despite the prominence of senescence as an aging mechanism and target of geroscience-based therapies, little is known about the dynamics of senescent cells in humans. Understanding the process of senescence, including its regulation, dynamics, and contribution to physiologic or pathologic processes, is essential for an understanding of aging.
In this registry, the investigators will assess the contribution of senescence, co-morbidities, functional performance, and quality of life to aging. The investigators will determine the ability of these factors to aid in the development of a new stochastic model that will be formulated specifically in the context of T-cell turnover and senescence, thereby providing a cell level description of p16 accumulation and a mechanistic model with parameters characterizing relevant physiological processes. The development of this new model will thus enable a quantitative, predictive, mechanistic study of the role of senescence in aging at both organismal and cellular levels
Conditions
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Study Design
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COHORT
CROSS_SECTIONAL
Study Groups
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age groups
* A total of 30 participants in the 25- to 34-year age group
* A total of 45 participants in the 35- to 44-year age group
* A total of 50 participants in the 45- to 54-year age group
* A total of 50 participants in the 55- to 64-year age group
* A total of 45 participants in the 65- to 74-year age group
* A total of 30 participants in the 75- to 85-year age group
No interventions assigned to this group
Eligibility Criteria
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Inclusion Criteria
* Participants must be capable and willing to provide IRB-approved written informed consent
* Participants must be willing and able to attend all in-person study visits and complete all study assessments and questionnaires
Exclusion Criteria
* Previous or currently undergoing chemotherapy, immunotherapy, or radiation therapy
* History of transplants, including solid organ or bone marrow transplants
* Presence of major active infection for which antibiotics and/or antivirals are prescribed within the last 14 days (chronic or acute, e.g., sepsis, HIV, pneumonia, active COVID infection)
* Dialysis
* Pregnant women
25 Years
85 Years
ALL
Yes
Sponsors
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Georgia Institute of Technology
OTHER
Sapere Bio
INDUSTRY
University of North Carolina, Chapel Hill
OTHER
Responsible Party
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Principal Investigators
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Hyman Muss, MD
Role: PRINCIPAL_INVESTIGATOR
University of North Carolina, Chapel Hill
Locations
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UNC Division of Oncology
Chapel Hill, North Carolina, United States
Countries
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References
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Tsygankov D, Liu Y, Sanoff HK, Sharpless NE, Elston TC. A quantitative model for age-dependent expression of the p16INK4a tumor suppressor. Proc Natl Acad Sci U S A. 2009 Sep 29;106(39):16562-7. doi: 10.1073/pnas.0904405106. Epub 2009 Sep 14.
Other Identifiers
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21-2153
Identifier Type: -
Identifier Source: org_study_id
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