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Newborn Skin Maturity Medical Device Validation for Gestational Age Prediction: Clinical Trial

BACKGROUND: Early access to antenatal care and high-cost technologies for pregnancy dating challenge early neonatal risk assessment at birth in resource-constrained settings. To overcome the absence or inaccuracy of postnatal gestational age (GA), we developed a new medical device to assess GA based...

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Autores principales: Reis, Zilma Silveira Nogueira, Romanelli, Roberta Maia de Castro, Guimarães, Rodney Nascimento, Gaspar, Juliano de Souza, Neves, Gabriela Silveira, do Vale, Marynea Silva, Nader, Paulo de Jesus, de Moura, Martha David Rocha, Vitral, Gabriela Luíza Nogueira, dos Reis, Marconi Augusto Aguiar, Pereira, Marcia Margarida Mendonça, Marques, Patrícia Franco, Nader, Silvana Salgado, Harff, Augusta Luize, Beleza, Ludmylla de Oliveira, de Castro, Maria Eduarda Canellas, Souza, Rayner Guilherme, Pappa, Gisele Lobo, de Aguiar, Regina Amélia Pessoa Lopes
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9494223/
https://www.ncbi.nlm.nih.gov/pubmed/36069805
http://dx.doi.org/10.2196/38727
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author Reis, Zilma Silveira Nogueira
Romanelli, Roberta Maia de Castro
Guimarães, Rodney Nascimento
Gaspar, Juliano de Souza
Neves, Gabriela Silveira
do Vale, Marynea Silva
Nader, Paulo de Jesus
de Moura, Martha David Rocha
Vitral, Gabriela Luíza Nogueira
dos Reis, Marconi Augusto Aguiar
Pereira, Marcia Margarida Mendonça
Marques, Patrícia Franco
Nader, Silvana Salgado
Harff, Augusta Luize
Beleza, Ludmylla de Oliveira
de Castro, Maria Eduarda Canellas
Souza, Rayner Guilherme
Pappa, Gisele Lobo
de Aguiar, Regina Amélia Pessoa Lopes
author_facet Reis, Zilma Silveira Nogueira
Romanelli, Roberta Maia de Castro
Guimarães, Rodney Nascimento
Gaspar, Juliano de Souza
Neves, Gabriela Silveira
do Vale, Marynea Silva
Nader, Paulo de Jesus
de Moura, Martha David Rocha
Vitral, Gabriela Luíza Nogueira
dos Reis, Marconi Augusto Aguiar
Pereira, Marcia Margarida Mendonça
Marques, Patrícia Franco
Nader, Silvana Salgado
Harff, Augusta Luize
Beleza, Ludmylla de Oliveira
de Castro, Maria Eduarda Canellas
Souza, Rayner Guilherme
Pappa, Gisele Lobo
de Aguiar, Regina Amélia Pessoa Lopes
author_sort Reis, Zilma Silveira Nogueira
collection PubMed
description BACKGROUND: Early access to antenatal care and high-cost technologies for pregnancy dating challenge early neonatal risk assessment at birth in resource-constrained settings. To overcome the absence or inaccuracy of postnatal gestational age (GA), we developed a new medical device to assess GA based on the photobiological properties of newborns’ skin and predictive models. OBJECTIVE: This study aims to validate a device that uses the photobiological model of skin maturity adjusted to the clinical data to detect GA and establish its accuracy in discriminating preterm newborns. METHODS: A multicenter, single-blinded, and single-arm intention-to-diagnosis clinical trial evaluated the accuracy of a novel device for the detection of GA and preterm newborns. The first-trimester ultrasound, a second comparator ultrasound, and data regarding the last menstrual period (LMP) from antenatal reports were used as references for GA at birth. The new test for validation was performed using a portable multiband reflectance photometer device that assessed the skin maturity of newborns and used machine learning models to predict GA, adjusted for birth weight and antenatal corticosteroid therapy exposure. RESULTS: The study group comprised 702 pregnant women who gave birth to 781 newborns, of which 366 (46.9%) were preterm newborns. As the primary outcome, the GA as predicted by the new test was in line with the reference GA that was calculated by using the intraclass correlation coefficient (0.969, 95% CI 0.964-0.973). The paired difference between predicted and reference GAs was −1.34 days, with Bland-Altman limits of −21.2 to 18.4 days. As a secondary outcome, the new test achieved 66.6% (95% CI 62.9%-70.1%) agreement with the reference GA within an error of 1 week. This agreement was similar to that of comparator-LMP-GAs (64.1%, 95% CI 60.7%-67.5%). The discrimination between preterm and term newborns via the device had a similar area under the receiver operating characteristic curve (0.970, 95% CI 0.959-0.981) compared with that for comparator-LMP-GAs (0.957, 95% CI 0.941-0.974). In newborns with absent or unreliable LMPs (n=451), the intent-to-discriminate analysis showed correct preterm versus term classifications with the new test, which achieved an accuracy of 89.6% (95% CI 86.4%-92.2%), while the accuracy for comparator-LMP-GA was 69.6% (95% CI 65.3%-73.7%). CONCLUSIONS: The assessment of newborn’s skin maturity (adjusted by learning models) promises accurate pregnancy dating at birth, even without the antenatal ultrasound reference. Thus, the novel device could add value to the set of clinical parameters that direct the delivery of neonatal care in birth scenarios where GA is unknown or unreliable. INTERNATIONAL REGISTERED REPORT IDENTIFIER (IRRID): RR2-10.1136/bmjopen-2018-027442
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spelling pubmed-94942232022-09-23 Newborn Skin Maturity Medical Device Validation for Gestational Age Prediction: Clinical Trial Reis, Zilma Silveira Nogueira Romanelli, Roberta Maia de Castro Guimarães, Rodney Nascimento Gaspar, Juliano de Souza Neves, Gabriela Silveira do Vale, Marynea Silva Nader, Paulo de Jesus de Moura, Martha David Rocha Vitral, Gabriela Luíza Nogueira dos Reis, Marconi Augusto Aguiar Pereira, Marcia Margarida Mendonça Marques, Patrícia Franco Nader, Silvana Salgado Harff, Augusta Luize Beleza, Ludmylla de Oliveira de Castro, Maria Eduarda Canellas Souza, Rayner Guilherme Pappa, Gisele Lobo de Aguiar, Regina Amélia Pessoa Lopes J Med Internet Res Original Paper BACKGROUND: Early access to antenatal care and high-cost technologies for pregnancy dating challenge early neonatal risk assessment at birth in resource-constrained settings. To overcome the absence or inaccuracy of postnatal gestational age (GA), we developed a new medical device to assess GA based on the photobiological properties of newborns’ skin and predictive models. OBJECTIVE: This study aims to validate a device that uses the photobiological model of skin maturity adjusted to the clinical data to detect GA and establish its accuracy in discriminating preterm newborns. METHODS: A multicenter, single-blinded, and single-arm intention-to-diagnosis clinical trial evaluated the accuracy of a novel device for the detection of GA and preterm newborns. The first-trimester ultrasound, a second comparator ultrasound, and data regarding the last menstrual period (LMP) from antenatal reports were used as references for GA at birth. The new test for validation was performed using a portable multiband reflectance photometer device that assessed the skin maturity of newborns and used machine learning models to predict GA, adjusted for birth weight and antenatal corticosteroid therapy exposure. RESULTS: The study group comprised 702 pregnant women who gave birth to 781 newborns, of which 366 (46.9%) were preterm newborns. As the primary outcome, the GA as predicted by the new test was in line with the reference GA that was calculated by using the intraclass correlation coefficient (0.969, 95% CI 0.964-0.973). The paired difference between predicted and reference GAs was −1.34 days, with Bland-Altman limits of −21.2 to 18.4 days. As a secondary outcome, the new test achieved 66.6% (95% CI 62.9%-70.1%) agreement with the reference GA within an error of 1 week. This agreement was similar to that of comparator-LMP-GAs (64.1%, 95% CI 60.7%-67.5%). The discrimination between preterm and term newborns via the device had a similar area under the receiver operating characteristic curve (0.970, 95% CI 0.959-0.981) compared with that for comparator-LMP-GAs (0.957, 95% CI 0.941-0.974). In newborns with absent or unreliable LMPs (n=451), the intent-to-discriminate analysis showed correct preterm versus term classifications with the new test, which achieved an accuracy of 89.6% (95% CI 86.4%-92.2%), while the accuracy for comparator-LMP-GA was 69.6% (95% CI 65.3%-73.7%). CONCLUSIONS: The assessment of newborn’s skin maturity (adjusted by learning models) promises accurate pregnancy dating at birth, even without the antenatal ultrasound reference. Thus, the novel device could add value to the set of clinical parameters that direct the delivery of neonatal care in birth scenarios where GA is unknown or unreliable. INTERNATIONAL REGISTERED REPORT IDENTIFIER (IRRID): RR2-10.1136/bmjopen-2018-027442 JMIR Publications 2022-09-07 /pmc/articles/PMC9494223/ /pubmed/36069805 http://dx.doi.org/10.2196/38727 Text en ©Zilma Silveira Nogueira Reis, Roberta Maia de Castro Romanelli, Rodney Nascimento Guimarães, Juliano de Souza Gaspar, Gabriela Silveira Neves, Marynea Silva do Vale, Paulo de Jesus Nader, Martha David Rocha de Moura, Gabriela Luíza Nogueira Vitral, Marconi Augusto Aguiar dos Reis, Marcia Margarida Mendonça Pereira, Patrícia Franco Marques, Silvana Salgado Nader, Augusta Luize Harff, Ludmylla de Oliveira Beleza, Maria Eduarda Canellas de Castro, Rayner Guilherme Souza, Gisele Lobo Pappa, Regina Amélia Pessoa Lopes de Aguiar. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 07.09.2022. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in the Journal of Medical Internet Research, is properly cited. The complete bibliographic information, a link to the original publication on https://www.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
Reis, Zilma Silveira Nogueira
Romanelli, Roberta Maia de Castro
Guimarães, Rodney Nascimento
Gaspar, Juliano de Souza
Neves, Gabriela Silveira
do Vale, Marynea Silva
Nader, Paulo de Jesus
de Moura, Martha David Rocha
Vitral, Gabriela Luíza Nogueira
dos Reis, Marconi Augusto Aguiar
Pereira, Marcia Margarida Mendonça
Marques, Patrícia Franco
Nader, Silvana Salgado
Harff, Augusta Luize
Beleza, Ludmylla de Oliveira
de Castro, Maria Eduarda Canellas
Souza, Rayner Guilherme
Pappa, Gisele Lobo
de Aguiar, Regina Amélia Pessoa Lopes
Newborn Skin Maturity Medical Device Validation for Gestational Age Prediction: Clinical Trial
title Newborn Skin Maturity Medical Device Validation for Gestational Age Prediction: Clinical Trial
title_full Newborn Skin Maturity Medical Device Validation for Gestational Age Prediction: Clinical Trial
title_fullStr Newborn Skin Maturity Medical Device Validation for Gestational Age Prediction: Clinical Trial
title_full_unstemmed Newborn Skin Maturity Medical Device Validation for Gestational Age Prediction: Clinical Trial
title_short Newborn Skin Maturity Medical Device Validation for Gestational Age Prediction: Clinical Trial
title_sort newborn skin maturity medical device validation for gestational age prediction: clinical trial
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9494223/
https://www.ncbi.nlm.nih.gov/pubmed/36069805
http://dx.doi.org/10.2196/38727
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