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Joint estimation of growth and survival from mark–recapture data to improve estimates of senescence in wild populations
Author(s) -
Reinke Beth A.,
Hoekstra Luke,
Bronikowski Anne M.,
Janzen Fredric J.,
Miller David
Publication year - 2020
Publication title -
ecology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.144
H-Index - 294
eISSN - 1939-9170
pISSN - 0012-9658
DOI - 10.1002/ecy.2877
Subject(s) - mark and recapture , painted turtle , estimator , senescence , estimation , biology , vital rates , statistics , population , hazard , demography , ecology , population growth , mathematics , turtle (robot) , management , sociology , economics , microbiology and biotechnology
Abstract Understanding age‐dependent patterns of survival is fundamental to predicting population dynamics, understanding selective pressures, and estimating rates of senescence. However, quantifying age‐specific survival in wild populations poses significant logistical and statistical challenges. Recent work has helped to alleviate these constraints by demonstrating that age‐specific survival can be estimated using mark–recapture data even when age is unknown for all or some individuals. However, previous approaches do not incorporate auxiliary information that can improve age estimates of individuals. We introduce a survival estimator that combines a von Bertalanffy growth model, age‐specific hazard functions, and a Cormack‐Jolly‐Seber mark–recapture model into a single hierarchical framework. This approach allows us to obtain information about age and its uncertainty based on size and growth for individuals of unknown age when estimating age‐specific survival. Using both simulated and real‐world data for two painted turtle ( Chrysemys picta ) populations, we demonstrate that this additional information substantially reduces the bias of age‐specific hazard rates, which allows for the testing of hypotheses related to aging. Estimating patterns of senescence is just one practical application of jointly estimating survival and growth; other applications include obtaining better estimates of the timing of recruitment and improved understanding of life‐history trade‐offs between growth and survival.