Literature DB >> 8469019

A comparison of methods for estimating mortality parameters from survival data.

D L Wilson1.   

Abstract

The Gompertz mortality function, Rm = R0e alpha t, is frequently used to describe changes in mortality rate (Rm) with time (t). In this paper, four methods for determining the best fit values of the two parameters, R0 and alpha, are compared. Three of the four methods use the Gompertz mortality function with mortality rate estimates derived from survival data to determine the best fit values for the two parameters. All three confront problems. The fourth method uses the Gompertz survival function, which can be derived from the Gompertz mortality function and which allows one to use survival data directly. It thereby avoids the problems and generally gives the best estimates for the two parameters. The use of the mortality function, with mortality rate estimates, confronts four distinct problems. One of these is caused by time intervals when zero organisms die. A second is caused by errors produced in estimating mortality rates from survival data. If too high a proportion of a population die in a given time interval, the mortality rate estimates are too low. A third problem is the sensitivity of the mortality-equation-based analyses to values at the end of the survival curve, where scatter in mortality values tends to be greater. A final problem occurs when time intervals greater than one time unit (day, week, year, etc.) are used in the analysis. Such problems with the use of mortality rates to estimate parameter values are revealed when the calculated parameters are used to produce a survival curve, or when known values of R0 and alpha are used to generate survival data. This paper introduces a non-linear regression analysis, using a Simplex algorithm to fit parameters R0 and alpha in the Gompertz Survival function and concludes that it gives more reliable and consistent results with a variety of data than do three methods that use the mortality function.

Mesh:

Year:  1993        PMID: 8469019     DOI: 10.1016/0047-6374(93)90014-i

Source DB:  PubMed          Journal:  Mech Ageing Dev        ISSN: 0047-6374            Impact factor:   5.432


  7 in total

1.  Practical methodology of evaluation of mortality curves and detection of aging-related interventions.

Authors:  S Doubal; P Klemera
Journal:  Age (Omaha)       Date:  1997-10

2.  Life span extensions associated with upregulation of gene expression of antioxidant enzymes in Caenorhabdms elegans; studies of mutation in the AGE-1, PI3 kinase homologue and short-term exposure to hyperoxia.

Authors:  Y Honda; S Honda
Journal:  J Am Aging Assoc       Date:  2001-10

3.  Life span extensions associated with upregulation of gene expression of antioxidant enzymes in Caenorhabditis elegans; studies of mutation in the age-1, PI3 kinase homologue and short-term exposure to hyperoxia.

Authors:  Y Honda; S Honda
Journal:  J Am Aging Assoc       Date:  2002-01

4.  Application of a low molecular weight antifungal protein from Penicillium chrysogenum (PAF) to treat pulmonary aspergillosis in mice.

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Journal:  Emerg Microbes Infect       Date:  2016-11-09       Impact factor: 7.163

5.  An aging-independent replicative lifespan in a symmetrically dividing eukaryote.

Authors:  Eric C Spivey; Stephen K Jones; James R Rybarski; Fatema A Saifuddin; Ilya J Finkelstein
Journal:  Elife       Date:  2017-01-31       Impact factor: 8.140

6.  Genomic instability is associated with natural life span variation in Saccharomyces cerevisiae.

Authors:  Hong Qin; Meng Lu; David S Goldfarb
Journal:  PLoS One       Date:  2008-07-16       Impact factor: 3.240

7.  Within- and between-strain variability in longevity of inbred and outbred rats under the same environmental conditions.

Authors:  O Ghirardi; R Cozzolino; D Guaraldi; A Giuliani
Journal:  Exp Gerontol       Date:  1995 Sep-Oct       Impact factor: 4.032

  7 in total

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