» Articles » PMID: 35297371

Implementation of Prognostic Machine Learning Algorithms in Paediatric Chronic Respiratory Conditions: a Scoping Review

Overview
Date 2022 Mar 17
PMID 35297371
Authors
Affiliations
Soon will be listed here.
Abstract

Machine learning (ML) holds great potential for predicting clinical outcomes in heterogeneous chronic respiratory diseases (CRD) affecting children, where timely individualised treatments offer opportunities for health optimisation. This paper identifies rate-limiting steps in ML prediction model development that impair clinical translation and discusses regulatory, clinical and ethical considerations for ML implementation. A scoping review of ML prediction models in paediatric CRDs was undertaken using the PRISMA extension scoping review guidelines. From 1209 results, 25 articles published between 2013 and 2021 were evaluated for features of a good clinical prediction model using the Transparent Reporting of a multivariable prediction model for Individual Prognosis Or Diagnosis (TRIPOD) guidelines.Most of the studies were in asthma (80%), with few in cystic fibrosis (12%), bronchiolitis (4%) and childhood wheeze (4%). There were inconsistencies in model reporting and studies were limited by a lack of validation, and absence of equations or code for replication. Clinician involvement during ML model development is essential and diversity, equity and inclusion should be assessed at each step of the ML pipeline to ensure algorithms do not promote or amplify health disparities among marginalised groups. As ML prediction studies become more frequent, it is important that models are rigorously developed using published guidelines and take account of regulatory frameworks which depend on model complexity, patient safety, accountability and liability.

Citing Articles

Early prediction of pediatric asthma in the Canadian Healthy Infant Longitudinal Development (CHILD) birth cohort using machine learning.

He P, Moraes T, Dai D, Reyna-Vargas M, Dai R, Mandhane P Pediatr Res. 2024; 95(7):1818-1825.

PMID: 38212387 PMC: 11245385. DOI: 10.1038/s41390-023-02988-2.


Defining medical liability when artificial intelligence is applied on diagnostic algorithms: a systematic review.

Cestonaro C, Delicati A, Marcante B, Caenazzo L, Tozzo P Front Med (Lausanne). 2023; 10:1305756.

PMID: 38089864 PMC: 10711067. DOI: 10.3389/fmed.2023.1305756.


Virtual monitoring in CF - the importance of continuous monitoring in a multi-organ chronic condition.

Vagg T, Deasy K, Chapman W, Ranganathan S, Plant B, Shanthikumar S Front Digit Health. 2023; 5:1196442.

PMID: 37214343 PMC: 10192704. DOI: 10.3389/fdgth.2023.1196442.


Implemented machine learning tools to inform decision-making for patient care in hospital settings: a scoping review.

Tricco A, Hezam A, Parker A, Nincic V, Harris C, Fennelly O BMJ Open. 2023; 13(2):e065845.

PMID: 36750280 PMC: 9906263. DOI: 10.1136/bmjopen-2022-065845.


Development of a peripheral blood transcriptomic gene signature to predict bronchopulmonary dysplasia.

Moreira A, Tovar M, Smith A, Lee G, Meunier J, Cheema Z Am J Physiol Lung Cell Mol Physiol. 2022; 324(1):L76-L87.

PMID: 36472344 PMC: 9829478. DOI: 10.1152/ajplung.00250.2022.

References
1.
Leisman D, Harhay M, Lederer D, Abramson M, Adjei A, Bakker J . Development and Reporting of Prediction Models: Guidance for Authors From Editors of Respiratory, Sleep, and Critical Care Journals. Crit Care Med. 2020; 48(5):623-633. PMC: 7161722. DOI: 10.1097/CCM.0000000000004246. View

2.
Char D, Shah N, Magnus D . Implementing Machine Learning in Health Care - Addressing Ethical Challenges. N Engl J Med. 2018; 378(11):981-983. PMC: 5962261. DOI: 10.1056/NEJMp1714229. View

3.
Howrylak J, Fuhlbrigge A, Strunk R, Zeiger R, Weiss S, Raby B . Classification of childhood asthma phenotypes and long-term clinical responses to inhaled anti-inflammatory medications. J Allergy Clin Immunol. 2014; 133(5):1289-300, 1300.e1-12. PMC: 4047642. DOI: 10.1016/j.jaci.2014.02.006. View

4.
Messinger A, Bui N, Wagner B, Szefler S, Vu T, Deterding R . Novel pediatric-automated respiratory score using physiologic data and machine learning in asthma. Pediatr Pulmonol. 2019; 54(8):1149-1155. PMC: 6641986. DOI: 10.1002/ppul.24342. View

5.
Gianfrancesco M, Tamang S, Yazdany J, Schmajuk G . Potential Biases in Machine Learning Algorithms Using Electronic Health Record Data. JAMA Intern Med. 2018; 178(11):1544-1547. PMC: 6347576. DOI: 10.1001/jamainternmed.2018.3763. View