Book contents
- Frontmatter
- Contents
- List of Contributors
- Foreword
- Acknowledgements
- Part I Growth data and growth studies: characteristics and methodological issues
- Part II Non-parametric and parametric approaches for individual growth
- 7 Kernel estimation, shape-invariant modelling and structural analysis
- 8 Parametric models for postnatal growth
- 9 Parameter estimation in the context of non-linear longitudinal growth models
- Part III Methods for population growth
- Part IV Special topics
- Index
8 - Parametric models for postnatal growth
Published online by Cambridge University Press: 17 August 2009
- Frontmatter
- Contents
- List of Contributors
- Foreword
- Acknowledgements
- Part I Growth data and growth studies: characteristics and methodological issues
- Part II Non-parametric and parametric approaches for individual growth
- 7 Kernel estimation, shape-invariant modelling and structural analysis
- 8 Parametric models for postnatal growth
- 9 Parameter estimation in the context of non-linear longitudinal growth models
- Part III Methods for population growth
- Part IV Special topics
- Index
Summary
Why model growth data?
Growth can be considered as the process that makes children change in size and shape over time. The dynamics of growth is best understood from the analysis of longitudinal data, i.e. from serial measurements taken at regular intervals on the same subject. Table 8.1 gives an example of longitudinal growth data for height of a boy measured at birth and at each birthday thereafter up to the age of 18 years. Such data usually form the basis to estimate the underlying process of growth, which is supposed to be continuous. Recent analysis of frequent measurements of size (at daily or weekly intervals) with high-precision techniques (such as knemometry where measurement error is about 0.1 mm) has shown that the growth process is, at microlevel, not as smooth as we usually assume (Hermanussen, 1998; Lampl, 1999). However, we may readily assume that the growth process is continuous when we are dealing with measurements taken at yearly intervals, or even 3- to 6-monthly intervals, using classical anthropometric techniques. Various mathematical models have been proposed to estimate such a smooth growth curve on the basis of a set of discrete measurements of growth of the same subject over time (Marubini and Milani, 1986; Hauspie, 1989, 1998; Simondon et al., 1992; Bogin, 1999).
- Type
- Chapter
- Information
- Methods in Human Growth Research , pp. 205 - 233Publisher: Cambridge University PressPrint publication year: 2004
- 19
- Cited by