» Articles » PMID: 34580243

Continuous Cardiorespiratory Monitoring is a Dominant Source of Predictive Signal in Machine Learning for Risk Stratification and Clinical Decision Support

Overview
Journal Physiol Meas
Date 2021 Sep 28
PMID 34580243
Citations 7
Authors
Affiliations
Soon will be listed here.
Abstract

Beaulieu-Jones and coworkers propose a litmus test for the field of predictive analytics-performance improvements must be demonstrated to be the result of non-clinician-initiated data, otherwise, there should be caution in assuming that predictive models could improve clinical decision-making (Beaulieu-Jones2021). They demonstrate substantial prognostic information in unsorted physician orders made before the first midnight of hospital admission, and we are persuaded that it is fair to ask-if the physician thought of it first, what exactly is machine learning for in-patient risk stratification learning about? While we want predictive analytics to represent the leading indicators of a patient's illness, does it instead merely reflect the lagging indicators of clinicians' actions? We propose that continuous cardiorespiratory monitoring-'routine telemetry data,' in Beaulieu-Jones' terms-represents the most valuable non-clinician-initiated predictive signal present in patient data, and the value added to patient care justifies the efforts and expense required. Here, we present a clinical and a physiological point of view to support our contention.

Citing Articles

Dynamics of ventilatory pattern variability and Cardioventilatory Coupling during systemic inflammation in rats.

Campanaro C, Nethery D, Guo F, Kaffashi F, Loparo K, Jacono F Front Netw Physiol. 2023; 3:1038531.

PMID: 37583625 PMC: 10423997. DOI: 10.3389/fnetp.2023.1038531.


Individual illness dynamics: An analysis of children with sepsis admitted to the pediatric intensive care unit.

Kausch S, Sullivan B, Spaeder M, Keim-Malpass J PLOS Digit Health. 2023; 1(3):e0000019.

PMID: 36812513 PMC: 9931234. DOI: 10.1371/journal.pdig.0000019.


Predictive Modeling for Readmission to Intensive Care: A Systematic Review.

Ruppert M, Loftus T, Small C, Li H, Ozrazgat-Baslanti T, Balch J Crit Care Explor. 2023; 5(1):e0848.

PMID: 36699252 PMC: 9829260. DOI: 10.1097/CCE.0000000000000848.


Beyond prediction: Off-target uses of artificial intelligence-based predictive analytics in a learning health system.

Keim-Malpass J, Moorman L, Monfredi O, Clark M, Bourque J Learn Health Syst. 2023; 7(1):e10323.

PMID: 36654806 PMC: 9835046. DOI: 10.1002/lrh2.10323.


Signatures of illness in children requiring unplanned intubation in the pediatric intensive care unit: A retrospective cohort machine-learning study.

Spaeder M, Moorman J, Moorman L, Adu-Darko M, Keim-Malpass J, Lake D Front Pediatr. 2022; 10:1016269.

PMID: 36440325 PMC: 9682496. DOI: 10.3389/fped.2022.1016269.