Literature DB >> 33323492

Machine Learning for Child and Adolescent Health: A Systematic Review.

Zahra Hoodbhoy1,2, Sarah Masroor Jeelani1,2, Abeer Aziz1, Muhammad Ibrahim Habib3, Bilal Iqbal3, Waqaas Akmal3, Khan Siddiqui4, Babar Hasan5, Mariska Leeflang6, Jai K Das1.   

Abstract

CONTEXT: In the last few decades, data acquisition and processing has seen tremendous amount of growth, thus sparking interest in machine learning (ML) within the health care system.
OBJECTIVE: Our aim for this review is to provide an evidence map of the current available evidence on ML in pediatrics and adolescent medicine and provide insight for future research. DATA SOURCES: A literature search was conducted by using Medline, the Cochrane Library, the Cumulative Index to Nursing and Allied Health Literature Plus, Web of Science Library, and EBSCO Dentistry & Oral Science Source. STUDY SELECTION: Articles in which an ML model was assessed for the diagnosis, prediction, or management of any condition in children and adolescents (0-18 years) were included. DATA EXTRACTION: Data were extracted for year of publication, geographical location, age range, number of participants, disease or condition under investigation, study methodology, reference standard, type, category, and performance of ML algorithms.
RESULTS: The review included 363 studies, with subspecialties such as psychiatry, neonatology, and neurology having the most literature. A majority of the studies were from high-income (82%; n = 296) and upper middle-income countries (15%; n = 56), whereas only 3% (n = 11) were from low middle-income countries. Neural networks and ensemble methods were most commonly tested in the 1990s, whereas deep learning and clustering emerged rapidly in the current decade. LIMITATIONS: Only studies conducted in the English language could be used in this review.
CONCLUSIONS: The interest in ML has been growing across various subspecialties and countries, suggesting a potential role in health service delivery for children and adolescents in the years to come.
Copyright © 2021 by the American Academy of Pediatrics.

Entities:  

Mesh:

Year:  2020        PMID: 33323492     DOI: 10.1542/peds.2020-011833

Source DB:  PubMed          Journal:  Pediatrics        ISSN: 0031-4005            Impact factor:   7.124


  5 in total

1.  Evaluation of the clinical effect of an artificial intelligence-assisted diagnosis and treatment system for neonatal seizures in the real world: a multicenter clinical study protocol.

Authors:  Tian-Tian Xiao; Ya-Lan Dou; De-Yi Zhuang; Xu-Hong Hu; Wen-Qing Kang; Lin Guo; Xiao-Fen Zhao; Peng Zhang; Kai Yan; Wei-Li Yan; Guo-Qiang Cheng; Wen-Hao Zhou
Journal:  Zhongguo Dang Dai Er Ke Za Zhi       Date:  2022-02-15

2.  Towards PErsonalised PRognosis for children with traumatic brain injury: the PEPR study protocol.

Authors:  Cece C Kooper; Jaap Oosterlaan; Hilgo Bruining; Marc Engelen; Petra J W Pouwels; Arne Popma; Job B M van Woensel; Dennis R Buis; Marjan E Steenweg; Maayke Hunfeld; Marsh Königs
Journal:  BMJ Open       Date:  2022-06-29       Impact factor: 3.006

3.  Artificial intelligence, machine learning, and deep learning for clinical outcome prediction.

Authors:  Rowland W Pettit; Robert Fullem; Chao Cheng; Christopher I Amos
Journal:  Emerg Top Life Sci       Date:  2021-12-20

Review 4.  Improving child health through Big Data and data science.

Authors:  Zachary A Vesoulis; Ameena N Husain; F Sessions Cole
Journal:  Pediatr Res       Date:  2022-08-16       Impact factor: 3.953

Review 5.  Sensing and Artificial Intelligent Maternal-Infant Health Care Systems: A Review.

Authors:  Saima Gulzar Ahmad; Tassawar Iqbal; Anam Javaid; Ehsan Ullah Munir; Nasira Kirn; Sana Ullah Jan; Naeem Ramzan
Journal:  Sensors (Basel)       Date:  2022-06-09       Impact factor: 3.847

  5 in total

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