Estimation of gestational age from fundal height: A solution for resource-poor settings

Many women in resource-poor settings lack access to reliable gestational age assessment because they do not know their last menstrual period; there is no ultrasound (US) and methods of newborn gestational age dating are not practised by birth attendants. A bespoke multiple-measures model was develop...

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Main Authors: Lisa J. White, Sue J. Lee, Kasia Stepniewska, Julie A. Simpson, Saw Lu Mu Dwell, Ratree Arunjerdja, Pratap Singhasivanon, Nicholas J. White, Francois Nosten, Rose McGready
Other Authors: Nuffield Department of Clinical Medicine
Format: Article
Published: 2018
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Online Access:https://repository.li.mahidol.ac.th/handle/123456789/13776
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spelling th-mahidol.137762018-06-11T11:56:38Z Estimation of gestational age from fundal height: A solution for resource-poor settings Lisa J. White Sue J. Lee Kasia Stepniewska Julie A. Simpson Saw Lu Mu Dwell Ratree Arunjerdja Pratap Singhasivanon Nicholas J. White Francois Nosten Rose McGready Nuffield Department of Clinical Medicine Mahidol University University of Melbourne Shoklo Malaria Research Unit Biochemistry, Genetics and Molecular Biology Chemical Engineering Engineering Materials Science Many women in resource-poor settings lack access to reliable gestational age assessment because they do not know their last menstrual period; there is no ultrasound (US) and methods of newborn gestational age dating are not practised by birth attendants. A bespoke multiple-measures model was developed to predict the expected date of delivery determined by US. The results are compared with both a linear and a nonlinear model. Prospectively collected early US and serial symphysis-pubis fundal height (SFH) data were used in the models. The data were collected from Karen and Burmese women attending antenatal care on the Thai-Burmese border. The multiple-measures model performed best, resulting in a range of accuracy depending on the number of SFH measures recorded per mother (for example six SFH measurements resulted in a prediction accuracy of ±2 weeks). SFH remains the proxy for gestational age in much of the resource-poor world. While more accurate measures should be encouraged, we demonstrate that a formula that incorporates at least three SFH measures from an individual mother and the slopes between them provide a significant increase in the accuracy of prediction compared with the linear and nonlinear formulae also using multiple SFH measures. © 2011 The Royal Society. 2018-06-11T04:38:24Z 2018-06-11T04:38:24Z 2012-03-07 Article Journal of the Royal Society Interface. Vol.9, No.68 (2012), 503-510 10.1098/rsif.2011.0376 17425662 17425689 2-s2.0-84863175565 https://repository.li.mahidol.ac.th/handle/123456789/13776 Mahidol University SCOPUS https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=84863175565&origin=inward
institution Mahidol University
building Mahidol University Library
continent Asia
country Thailand
Thailand
content_provider Mahidol University Library
collection Mahidol University Institutional Repository
topic Biochemistry, Genetics and Molecular Biology
Chemical Engineering
Engineering
Materials Science
spellingShingle Biochemistry, Genetics and Molecular Biology
Chemical Engineering
Engineering
Materials Science
Lisa J. White
Sue J. Lee
Kasia Stepniewska
Julie A. Simpson
Saw Lu Mu Dwell
Ratree Arunjerdja
Pratap Singhasivanon
Nicholas J. White
Francois Nosten
Rose McGready
Estimation of gestational age from fundal height: A solution for resource-poor settings
description Many women in resource-poor settings lack access to reliable gestational age assessment because they do not know their last menstrual period; there is no ultrasound (US) and methods of newborn gestational age dating are not practised by birth attendants. A bespoke multiple-measures model was developed to predict the expected date of delivery determined by US. The results are compared with both a linear and a nonlinear model. Prospectively collected early US and serial symphysis-pubis fundal height (SFH) data were used in the models. The data were collected from Karen and Burmese women attending antenatal care on the Thai-Burmese border. The multiple-measures model performed best, resulting in a range of accuracy depending on the number of SFH measures recorded per mother (for example six SFH measurements resulted in a prediction accuracy of ±2 weeks). SFH remains the proxy for gestational age in much of the resource-poor world. While more accurate measures should be encouraged, we demonstrate that a formula that incorporates at least three SFH measures from an individual mother and the slopes between them provide a significant increase in the accuracy of prediction compared with the linear and nonlinear formulae also using multiple SFH measures. © 2011 The Royal Society.
author2 Nuffield Department of Clinical Medicine
author_facet Nuffield Department of Clinical Medicine
Lisa J. White
Sue J. Lee
Kasia Stepniewska
Julie A. Simpson
Saw Lu Mu Dwell
Ratree Arunjerdja
Pratap Singhasivanon
Nicholas J. White
Francois Nosten
Rose McGready
format Article
author Lisa J. White
Sue J. Lee
Kasia Stepniewska
Julie A. Simpson
Saw Lu Mu Dwell
Ratree Arunjerdja
Pratap Singhasivanon
Nicholas J. White
Francois Nosten
Rose McGready
author_sort Lisa J. White
title Estimation of gestational age from fundal height: A solution for resource-poor settings
title_short Estimation of gestational age from fundal height: A solution for resource-poor settings
title_full Estimation of gestational age from fundal height: A solution for resource-poor settings
title_fullStr Estimation of gestational age from fundal height: A solution for resource-poor settings
title_full_unstemmed Estimation of gestational age from fundal height: A solution for resource-poor settings
title_sort estimation of gestational age from fundal height: a solution for resource-poor settings
publishDate 2018
url https://repository.li.mahidol.ac.th/handle/123456789/13776
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