Quantitative Image Analysis Reveals Distinct Structural Transitions during Aging in Caenorhabditis elegans Tissues
Quantitative Image Analysis Reveals Distinct Structural Transitions during Aging in Caenorhabditis elegans Tissues
Aging is associated with functional and structural declines in many body systems, even in the absence of underlying disease. In particular, skeletal muscles experience severe declines during aging, a phenomenon termed sarcopenia. Despite the high incidence and severity of sarcopenia, little is known about contributing factors and development. Many studies focus on functional aspects of aging-related tissue decline, while structural details remain understudied. Traditional approaches for quantifying structural changes have assessed individual markers at discrete intervals. Such approaches are inadequate for the complex changes associated with aging. An alternative is to consider changes in overall morphology rather than in specific markers. We have used this approach to quantitatively track tissue architecture during adulthood and aging in the C. elegans pharynx, the neuromuscular feeding organ. Using pattern recognition to analyze aged-grouped pharynx images, we identified discrete step-wise transitions between distinct morphologies. The morphology state transitions were maintained in mutants with pharynx neurotransmission defects, although the pace of the transitions was altered. Longitudinal measurements of pharynx function identified a predictive relationship between mid-life pharynx morphology and function at later ages. These studies demonstrate for the first time that adult tissues undergo distinct structural transitions reflecting postdevelopmental events. The processes that underlie these architectural changes may contribute to increased disease risk during aging, and may be targets for factors that alter the aging rate. This work further demonstrates that pattern analysis of an image series offers a novel and generally accessible approach for quantifying morphological changes and identifying structural biomarkers.
- National Institute of Health Pakistan
- National Institutes of Health United States
Aging, Serotonin, Time Factors, Science, Q, Longevity, R, Models, Biological, Gene Expression Regulation, Image Processing, Computer-Assisted, Medicine, Animals, Pharynx, Caenorhabditis elegans, Caenorhabditis elegans Proteins, Biomarkers, Cellular Senescence, Genes, Helminth, Research Article
Aging, Serotonin, Time Factors, Science, Q, Longevity, R, Models, Biological, Gene Expression Regulation, Image Processing, Computer-Assisted, Medicine, Animals, Pharynx, Caenorhabditis elegans, Caenorhabditis elegans Proteins, Biomarkers, Cellular Senescence, Genes, Helminth, Research Article
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