Literature DB >> 35906317

Artificial intelligence-based clinical decision support in pediatrics.

Sriram Ramgopal1, L Nelson Sanchez-Pinto2,3, Christopher M Horvat4, Michael S Carroll5, Yuan Luo3, Todd A Florin6.   

Abstract

Machine learning models may be integrated into clinical decision support (CDS) systems to identify children at risk of specific diagnoses or clinical deterioration to provide evidence-based recommendations. This use of artificial intelligence models in clinical decision support (AI-CDS) may have several advantages over traditional "rule-based" CDS models in pediatric care through increased model accuracy, with fewer false alerts and missed patients. AI-CDS tools must be appropriately developed, provide insight into the rationale behind decisions, be seamlessly integrated into care pathways, be intuitive to use, answer clinically relevant questions, respect the content expertise of the healthcare provider, and be scientifically sound. While numerous machine learning models have been reported in pediatric care, their integration into AI-CDS remains incompletely realized to date. Important challenges in the application of AI models in pediatric care include the relatively lower rates of clinically significant outcomes compared to adults, and the lack of sufficiently large datasets available necessary for the development of machine learning models. In this review article, we summarize key concepts related to AI-CDS, its current application to pediatric care, and its potential benefits and risks. IMPACT: The performance of clinical decision support may be enhanced by the utilization of machine learning-based algorithms to improve the predictive performance of underlying models. Artificial intelligence-based clinical decision support (AI-CDS) uses models that are experientially improved through training and are particularly well suited toward high-dimensional data. The application of AI-CDS toward pediatric care remains limited currently but represents an important area of future research.
© 2022. The Author(s), under exclusive licence to the International Pediatric Research Foundation, Inc.

Entities:  

Year:  2022        PMID: 35906317     DOI: 10.1038/s41390-022-02226-1

Source DB:  PubMed          Journal:  Pediatr Res        ISSN: 0031-3998            Impact factor:   3.953


  59 in total

1.  Use of a computerized decision aid for developmental surveillance and screening: a randomized clinical trial.

Authors:  Aaron E Carroll; Nerissa S Bauer; Tamara M Dugan; Vibha Anand; Chandan Saha; Stephen M Downs
Journal:  JAMA Pediatr       Date:  2014-09       Impact factor: 16.193

2.  Accuracy of a computerized clinical decision-support system for asthma assessment and management.

Authors:  Laura J Hoeksema; Alia Bazzy-Asaad; Edwin A Lomotan; Diana E Edmonds; Gabriela Ramírez-Garnica; Richard N Shiffman; Leora I Horwitz
Journal:  J Am Med Inform Assoc       Date:  2011-05-01       Impact factor: 4.497

3.  Clinical decision support system.

Authors:  G Goertzel
Journal:  Ann N Y Acad Sci       Date:  1969-09-30       Impact factor: 5.691

Review 4.  Big Data and Data Science in Critical Care.

Authors:  L Nelson Sanchez-Pinto; Yuan Luo; Matthew M Churpek
Journal:  Chest       Date:  2018-05-09       Impact factor: 9.410

5.  Development and impact of a computerized pediatric antiinfective decision support program.

Authors:  C J Mullett; R S Evans; J C Christenson; J M Dean
Journal:  Pediatrics       Date:  2001-10       Impact factor: 7.124

Review 6.  Effect of clinical decision-support systems: a systematic review.

Authors:  Tiffani J Bright; Anthony Wong; Ravi Dhurjati; Erin Bristow; Lori Bastian; Remy R Coeytaux; Gregory Samsa; Vic Hasselblad; John W Williams; Michael D Musty; Liz Wing; Amy S Kendrick; Gillian D Sanders; David Lobach
Journal:  Ann Intern Med       Date:  2012-07-03       Impact factor: 25.391

7.  Identification of children at very low risk of clinically-important brain injuries after head trauma: a prospective cohort study.

Authors:  Nathan Kuppermann; James F Holmes; Peter S Dayan; John D Hoyle; Shireen M Atabaki; Richard Holubkov; Frances M Nadel; David Monroe; Rachel M Stanley; Dominic A Borgialli; Mohamed K Badawy; Jeff E Schunk; Kimberly S Quayle; Prashant Mahajan; Richard Lichenstein; Kathleen A Lillis; Michael G Tunik; Elizabeth S Jacobs; James M Callahan; Marc H Gorelick; Todd F Glass; Lois K Lee; Michael C Bachman; Arthur Cooper; Elizabeth C Powell; Michael J Gerardi; Kraig A Melville; J Paul Muizelaar; David H Wisner; Sally Jo Zuspan; J Michael Dean; Sandra L Wootton-Gorges
Journal:  Lancet       Date:  2009-09-14       Impact factor: 79.321

8.  Development and Validation of a Calculator for Estimating the Probability of Urinary Tract Infection in Young Febrile Children.

Authors:  Nader Shaikh; Alejandro Hoberman; Stephanie W Hum; Anastasia Alberty; Gysella Muniz; Marcia Kurs-Lasky; Douglas Landsittel; Timothy Shope
Journal:  JAMA Pediatr       Date:  2018-06-01       Impact factor: 16.193

Review 9.  Clinical Decision Support and Implications for the Clinician Burnout Crisis.

Authors:  Ivana Jankovic; Jonathan H Chen
Journal:  Yearb Med Inform       Date:  2020-08-21

10.  Real-Time Effort Driven Ventilator Management: A Pilot Study.

Authors:  Justin C Hotz; Dinnel Bornstein; Kristen Kohler; Erin Smith; Anil Suresh; Margaret Klein; Anoopindar Bhalla; Christopher J Newth; Robinder G Khemani
Journal:  Pediatr Crit Care Med       Date:  2020-11       Impact factor: 3.971

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