2019
DOI: 10.1080/0361073x.2019.1586105
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The Effect of Gaussian Noise on Maximum Likelihood Fitting of Gompertz and Weibull Mortality Models with Yeast Lifespan Data

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Cited by 5 publications
(9 citation statements)
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“…This degenerate manifold basically leads to a negative auto-correlation between the two Gompertz parameters along a narrow zone of the iso-average-lifespan curve during numerical fitting of homogeneous populations. We addressed these kinds of potential caveats of numerical fitting in one of our previous studies [11] and in a recent study [40]. Because we are dealing with heterogenous yeast cell populations with diverse genotypes, we think our observed Strehler-Mildvan correlation is not caused by the numerical fitting process.…”
Section: Resultsmentioning
confidence: 99%
“…This degenerate manifold basically leads to a negative auto-correlation between the two Gompertz parameters along a narrow zone of the iso-average-lifespan curve during numerical fitting of homogeneous populations. We addressed these kinds of potential caveats of numerical fitting in one of our previous studies [11] and in a recent study [40]. Because we are dealing with heterogenous yeast cell populations with diverse genotypes, we think our observed Strehler-Mildvan correlation is not caused by the numerical fitting process.…”
Section: Resultsmentioning
confidence: 99%
“…Of course, there is no known reason why a given dataset in survival analysis should be fit by any certain curve or why a model fitting of a biological population necessarily fit another part of lifespan well. Previous and earlier studies shows that mortality models explores the nature of underlying and extrinsic causes of aging [19,20].…”
Section: Ivdiscussionmentioning
confidence: 99%
“…The Weibull model provides a close approximation of the distribution of the lifetime for an object consisting of many parts in which death occurs when any of its parts fail (Collett, 2015;Rinne, 2009;Sharif & Islam, 1980). This model is widely used in life phenomena, from unicellular organisms (Saccharomyces cerevisiae, Liu & Acar, 2018;Guven et al, 2019) to fungi (Penicillium bilaiae, Friesen et al, 2006), plants (Lemna gibba, Chmilar & Laird, 2019), and F I G U R E 1 A hypothetical mortality rate plotted against age showing a change in mortality rate at different stages (a); the Weibull model of the aging process in mortality plotted against age (b), probability density of life span (c), and survivorship plotted against age (d). In (b), (c), and (d), location parameter "a" is 0; scale parameter "b" is 1; and shape parameter "c" is 1.5, 1, and 0.5 for the blue, red, and green lines, respectively animals (Rhodnius neglectus, Rabinovich et al, 2010;Tribolium confusum, Tanaka et al, 2016;Lepidoptera, Carroll & Sherratt, 2017;tyrannosaurs, Ricklefs, 2007;birds and mammals, Pinder et al, 1978;Ricklefs & Scheuerlein, 2002;Homo sapiens, Gurven & Fenelon, 2009;Hawkes et al, 2012).…”
Section: Introductionmentioning
confidence: 99%
“…The Weibull model provides a close approximation of the distribution of the lifetime for an object consisting of many parts in which death occurs when any of its parts fail (Collett, 2015; Rinne, 2009; Sharif & Islam, 1980). This model is widely used in life phenomena, from unicellular organisms ( Saccharomyces cerevisiae , Liu & Acar, 2018; Guven et al., 2019) to fungi ( Penicillium bilaiae , Friesen et al., 2006), plants ( Lemna gibba , Chmilar & Laird, 2019), and animals ( Rhodnius neglectus , Rabinovich et al., 2010; Tribolium confusum , Tanaka et al., 2016; Lepidoptera, Carroll & Sherratt, 2017; tyrannosaurs, Ricklefs, 2007; birds and mammals, Pinder et al., 1978; Ricklefs & Scheuerlein, 2002; Homo sapiens , Gurven & Fenelon, 2009; Hawkes et al., 2012). In the model, the change in mortality rate ( m ) is a function of age ( x ):mx=m0+cb)(xabc1…”
Section: Introductionmentioning
confidence: 99%