Machine learning models for neurocognitive outcome prediction in preterm born infants

被引:1
作者
van Boven, Menne R. [1 ,2 ,3 ]
Bennis, Frank C. [2 ,3 ,4 ]
Onland, Wes [1 ,3 ]
Aarnoudse-Moens, Cornelieke S. H. [1 ,3 ,5 ]
Frings, Max [6 ]
Tran, Kevin [6 ]
Katz, Trixie A. [1 ,3 ]
Romijn, Michelle [1 ,3 ]
Hoogendoorn, Mark [4 ]
van Kaam, Anton H. [1 ,3 ]
Leemhuis, Aleid G. [1 ]
Oosterlaan, Jaap [2 ,3 ]
Konigs, Marsh [2 ,3 ]
机构
[1] Locat Univ Amsterdam, Emma Childrens Hosp Amsterdam UMC, Dept Neonatol, Meibergdreef 9, Amsterdam, Netherlands
[2] locat Univ Amsterdam, Emma Childrens Hosp Amsterdam UMC, Follow Me program & Emma Neurosci Grp, Meibergdreef 9, Amsterdam, Netherlands
[3] Amsterdam Reprod & Dev Res Inst, Amsterdam, Netherlands
[4] Vrije Univ Amsterdam, Fac Sci, Dept Comp Sci, Quantitat Data Analyt Grp, Amsterdam, Netherlands
[5] Locat Univ Amsterdam, Emma Childrens Hosp Amsterdam UMC, Psychosocial Dept, Meibergdreef 9, Amsterdam, Netherlands
[6] Univ Amsterdam, Fac Sci, Data Sci, Amsterdam, Netherlands
关键词
INTELLIGENCE; CHILDREN; METAANALYSIS; MORTALITY;
D O I
10.1038/s41390-025-03815-6
中图分类号
R72 [儿科学];
学科分类号
100202 ;
摘要
Background: Outcome prediction after preterm birth is important for long-term neonatal care, but has proven notoriously challenging for neurocognitive outcome. This study investigated the potential of machine learning to improve neurocognitive outcome prediction at two and five years of corrected age in preterm infants, using readily available predictors from the neonatal setting. Methods: Predictors originating from the antenatal and neonatal period of preterm infants born <30 weeks gestation were used to predict adverse neurocognitive outcome on the Bayley Scale and Wechsler Preschool and Primary Scale of Intelligence. Machine learning models were compared to conventional logistic regression and validated using internal cross-validation. Results: Best performing models were a random forest (two-year outcome) and a support vector machine (five-year outcome) with an area under the receiver operating characteristic curve (AUC) of 0.682 and 0.695 respectively, reaching high negative predictive values (95% and 91%, respectively). These models performed significantly better than the conventional models. Conclusions: The models reached moderate overall predictive performance, yet with promising potential for early identification of children without adverse neurocognitive outcome. Machine learning modestly improved neurocognitive outcome prediction. Future research may harvest the predictive potential of a wider variety of routine (clinical) data, such as vital sign time series.
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页数:8
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共 44 条
[21]   Precision Medicine, AI, and the Future of Personalized Health Care [J].
Johnson, Kevin B. ;
Wei, Wei-Qi ;
Weeraratne, Dilhan ;
Frisse, Mark E. ;
Misulis, Karl ;
Rhee, Kyu ;
Zhao, Juan ;
Snowdon, Jane L. .
CTS-CLINICAL AND TRANSLATIONAL SCIENCE, 2021, 14 (01) :86-93
[22]   Predicting 2-year neurodevelopmental outcomes in extremely preterm infants using graphical network and machine learning approaches [J].
Juul, Sandra E. ;
Wood, Thomas R. ;
German, Kendell ;
Law, Janessa B. ;
Kolnik, Sarah E. ;
Puia-Dumitrescu, Mihai ;
Mietzsch, Ulrike ;
Gogcu, Semsa ;
Comstock, Bryan A. ;
Li, Sijia ;
Mayock, Dennis E. ;
Heagerty, Patrick J. .
ECLINICALMEDICINE, 2023, 56
[23]   Key challenges for delivering clinical impact with artificial intelligence [J].
Kelly, Christopher J. ;
Karthikesalingam, Alan ;
Suleyman, Mustafa ;
Corrado, Greg ;
King, Dominic .
BMC MEDICINE, 2019, 17 (01)
[24]   Personalised medicine: not just in our genes [J].
Kitsios, Georgios D. ;
Kent, David M. .
BMJ-BRITISH MEDICAL JOURNAL, 2012, 344
[25]   Childhood IQ and Adult Mental Disorders: A Test of the Cognitive Reserve Hypothesis [J].
Koenen, Karestan C. ;
Moffitt, Terrie E. ;
Roberts, Andrea L. ;
Martin, Laurie T. ;
Kubzansky, Laura ;
Harrington, HonaLee ;
Poulton, Richie ;
Caspi, Avshalom .
AMERICAN JOURNAL OF PSYCHIATRY, 2009, 166 (01) :50-57
[26]   Clinical Risk Index for Babies score for the prediction of neurodevelopmental outcomes at 3 years of age in infants of very low birthweight [J].
Lodha, Abhay ;
Sauve, Reg ;
Chen, Sophie ;
Tang, Selphee ;
Christianson, Heather .
DEVELOPMENTAL MEDICINE AND CHILD NEUROLOGY, 2009, 51 (11) :895-900
[27]   Machine Learning and Artificial Intelligence in Pediatric Research: Current State, Future Prospects, and Examples in Perioperative and Critical Care [J].
Lonsdale, Hannah ;
Jalali, Ali ;
Ahumada, Luis ;
Matava, Clyde .
JOURNAL OF PEDIATRICS, 2020, 221 :S3-S10
[28]   Guidelines for Developing and Reporting Machine Learning Predictive Models in Biomedical Research: A Multidisciplinary View [J].
Luo, Wei ;
Phung, Dinh ;
Tran, Truyen ;
Gupta, Sunil ;
Rana, Santu ;
Karmakar, Chandan ;
Shilton, Alistair ;
Yearwood, John ;
Dimitrova, Nevenka ;
Ho, Tu Bao ;
Venkatesh, Svetha ;
Berk, Michael .
JOURNAL OF MEDICAL INTERNET RESEARCH, 2016, 18 (12)
[29]   Receiver Operating Characteristic Curve in Diagnostic Test Assessment [J].
Mandrekar, Jayawant N. .
JOURNAL OF THORACIC ONCOLOGY, 2010, 5 (09) :1315-1316
[30]   A comparison of random forest and its Gini importance with standard chemometric methods for the feature selection and classification of spectral data [J].
Menze, Bjoern H. ;
Kelm, B. Michael ;
Masuch, Ralf ;
Himmelreich, Uwe ;
Bachert, Peter ;
Petrich, Wolfgang ;
Hamprecht, Fred A. .
BMC BIOINFORMATICS, 2009, 10