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A principal components approach to parent-to-newborn body composition associations in South India

A principal components approach to parent-to-newborn body composition associations in South India
A principal components approach to parent-to-newborn body composition associations in South India
Background: size at birth is influenced by environmental factors, like maternal nutrition and parity, and by genes. Birth weight is a composite measure, encompassing bone, fat and lean mass. These may have different determinants. The main purpose of this paper was to use anthropometry and principal components analysis (PCA) to describe maternal and newborn body composition, and associations between them, in an Indian population. We also compared maternal and paternal measurements (body mass index (BMI) and height) as predictors of newborn body composition.
Methods: weight, height, head and mid-arm circumferences, skinfold thicknesses and external pelvic diameters were measured at 30 ± 2 weeks gestation in 571 pregnant women attending the antenatal clinic of the Holdsworth Memorial Hospital, Mysore, India. Paternal height and weight were also measured. At birth, detailed neonatal anthropometry was performed. Unrotated and varimax rotated PCA was applied to the maternal and neonatal measurements.
Results: rotated PCA reduced maternal measurements to 4 independent components (fat, pelvis, height and muscle) and neonatal measurements to 3 components (trunk+head, fat, and leg length). An SD increase in maternal fat was associated with a 0.16 SD increase (?) in neonatal fat (p < 0.001, adjusted for gestation, maternal parity, newborn sex and socio-economic status). Maternal pelvis, height and (for male babies) muscle predicted neonatal trunk+head (? = 0. 09 SD; p = 0.017, ? = 0.12 SD; p = 0.006 and ? = 0.27 SD; p < 0.001). In the mother-baby and father-baby comparison, maternal BMI predicted neonatal fat (? = 0.20 SD; p < 0.001) and neonatal trunk+head (? = 0.15 SD; p = 0.001). Both maternal (? = 0.12 SD; p = 0.002) and paternal height (? = 0.09 SD; p = 0.030) predicted neonatal trunk+head but the associations became weak and statistically non-significant in multivariate analysis. Only paternal height predicted neonatal leg length (? = 0.15 SD; p = 0.003).
Conclusion: principal components analysis is a useful method to describe neonatal body composition and its determinants. Newborn adiposity is related to maternal nutritional status and parity, while newborn length is genetically determined. Further research is needed to understand mechanisms linking maternal pelvic size to fetal growth and the determinants and implications of the components (trunk v leg length) of fetal skeletal growth
1471-2431
16
Veena, Sargoor R.
549cbba2-5ac1-4088-be37-4c1e656bddea
Krishnaveni, Ghattu V.
cd20fca7-d151-43b7-a7b4-d6051d6dd922
Wills, Andrew K.
46f423e1-510f-49e2-9a26-5e846d84f3fd
Hill, Jacqueline C.
2dcef0dd-8dfb-4891-b0d1-4c4cf2a9d4d4
Fall, Caroline H.D.
7171a105-34f5-4131-89d7-1aa639893b18
Veena, Sargoor R.
549cbba2-5ac1-4088-be37-4c1e656bddea
Krishnaveni, Ghattu V.
cd20fca7-d151-43b7-a7b4-d6051d6dd922
Wills, Andrew K.
46f423e1-510f-49e2-9a26-5e846d84f3fd
Hill, Jacqueline C.
2dcef0dd-8dfb-4891-b0d1-4c4cf2a9d4d4
Fall, Caroline H.D.
7171a105-34f5-4131-89d7-1aa639893b18

Veena, Sargoor R., Krishnaveni, Ghattu V., Wills, Andrew K., Hill, Jacqueline C. and Fall, Caroline H.D. (2009) A principal components approach to parent-to-newborn body composition associations in South India. BMC Pediatrics, 9, 16. (doi:10.1186/1471-2431-9-16).

Record type: Article

Abstract

Background: size at birth is influenced by environmental factors, like maternal nutrition and parity, and by genes. Birth weight is a composite measure, encompassing bone, fat and lean mass. These may have different determinants. The main purpose of this paper was to use anthropometry and principal components analysis (PCA) to describe maternal and newborn body composition, and associations between them, in an Indian population. We also compared maternal and paternal measurements (body mass index (BMI) and height) as predictors of newborn body composition.
Methods: weight, height, head and mid-arm circumferences, skinfold thicknesses and external pelvic diameters were measured at 30 ± 2 weeks gestation in 571 pregnant women attending the antenatal clinic of the Holdsworth Memorial Hospital, Mysore, India. Paternal height and weight were also measured. At birth, detailed neonatal anthropometry was performed. Unrotated and varimax rotated PCA was applied to the maternal and neonatal measurements.
Results: rotated PCA reduced maternal measurements to 4 independent components (fat, pelvis, height and muscle) and neonatal measurements to 3 components (trunk+head, fat, and leg length). An SD increase in maternal fat was associated with a 0.16 SD increase (?) in neonatal fat (p < 0.001, adjusted for gestation, maternal parity, newborn sex and socio-economic status). Maternal pelvis, height and (for male babies) muscle predicted neonatal trunk+head (? = 0. 09 SD; p = 0.017, ? = 0.12 SD; p = 0.006 and ? = 0.27 SD; p < 0.001). In the mother-baby and father-baby comparison, maternal BMI predicted neonatal fat (? = 0.20 SD; p < 0.001) and neonatal trunk+head (? = 0.15 SD; p = 0.001). Both maternal (? = 0.12 SD; p = 0.002) and paternal height (? = 0.09 SD; p = 0.030) predicted neonatal trunk+head but the associations became weak and statistically non-significant in multivariate analysis. Only paternal height predicted neonatal leg length (? = 0.15 SD; p = 0.003).
Conclusion: principal components analysis is a useful method to describe neonatal body composition and its determinants. Newborn adiposity is related to maternal nutritional status and parity, while newborn length is genetically determined. Further research is needed to understand mechanisms linking maternal pelvic size to fetal growth and the determinants and implications of the components (trunk v leg length) of fetal skeletal growth

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Published date: 2009

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Local EPrints ID: 69766
URI: http://eprints.soton.ac.uk/id/eprint/69766
ISSN: 1471-2431
PURE UUID: f41716c5-d3fe-44c2-b553-13747258a33b
ORCID for Caroline H.D. Fall: ORCID iD orcid.org/0000-0003-4402-5552

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Date deposited: 04 Dec 2009
Last modified: 14 Mar 2024 02:34

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Contributors

Author: Sargoor R. Veena
Author: Ghattu V. Krishnaveni
Author: Andrew K. Wills
Author: Jacqueline C. Hill

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