TY - JOUR
T1 - A clinical informatics approach to bronchopulmonary dysplasia
T2 - current barriers and future possibilities
AU - Moreira, Alvaro G.
AU - Husain, Ameena
AU - Knake, Lindsey A.
AU - Aziz, Khyzer
AU - Simek, Kelsey
AU - Valadie, Charles T.
AU - Pandillapalli, Nisha Reddy
AU - Trivino, Vanessa
AU - Barry, James S.
N1 - Publisher Copyright:
2024 Moreira, Husain, Knake, Aziz, Simek, Valadie, Pandillapalli, Trivino and Barry.
PY - 2024/3/11
Y1 - 2024/3/11
N2 - Bronchopulmonary dysplasia (BPD) is a complex, multifactorial lung disease affecting preterm neonates that can result in long-term pulmonary and non-pulmonary complications. Current therapies mainly focus on symptom management after the development of BPD, indicating a need for innovative approaches to predict and identify neonates who would benefit most from targeted or earlier interventions. Clinical informatics, a subfield of biomedical informatics, is transforming healthcare by integrating computational methods with patient data to improve patient outcomes. The application of clinical informatics to develop and enhance clinical therapies for BPD presents opportunities by leveraging electronic health record data, applying machine learning algorithms, and implementing clinical decision support systems. This review highlights the current barriers and the future potential of clinical informatics in identifying clinically relevant BPD phenotypes and developing clinical decision support tools to improve the management of extremely preterm neonates developing or with established BPD. However, the full potential of clinical informatics in advancing our understanding of BPD with the goal of improving patient outcomes cannot be achieved unless we address current challenges such as data collection, storage, privacy, and inherent data bias.
AB - Bronchopulmonary dysplasia (BPD) is a complex, multifactorial lung disease affecting preterm neonates that can result in long-term pulmonary and non-pulmonary complications. Current therapies mainly focus on symptom management after the development of BPD, indicating a need for innovative approaches to predict and identify neonates who would benefit most from targeted or earlier interventions. Clinical informatics, a subfield of biomedical informatics, is transforming healthcare by integrating computational methods with patient data to improve patient outcomes. The application of clinical informatics to develop and enhance clinical therapies for BPD presents opportunities by leveraging electronic health record data, applying machine learning algorithms, and implementing clinical decision support systems. This review highlights the current barriers and the future potential of clinical informatics in identifying clinically relevant BPD phenotypes and developing clinical decision support tools to improve the management of extremely preterm neonates developing or with established BPD. However, the full potential of clinical informatics in advancing our understanding of BPD with the goal of improving patient outcomes cannot be achieved unless we address current challenges such as data collection, storage, privacy, and inherent data bias.
KW - bronchopulmonary dysplasia
KW - chronic lung disease
KW - clinical decision
KW - informatics
KW - premature neonate
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U2 - 10.3389/fped.2024.1221863
DO - 10.3389/fped.2024.1221863
M3 - Review article
C2 - 38410770
AN - SCOPUS:85185951895
SN - 2296-2360
VL - 12
JO - Frontiers in Pediatrics
JF - Frontiers in Pediatrics
M1 - 1221863
ER -