Cargando…

The criticality Index-mortality: A dynamic machine learning prediction algorithm for mortality prediction in children cared for in an ICU

BACKGROUND: The Criticality Index-Mortality uses physiology, therapy, and intensity of care to compute mortality risk for pediatric ICU patients. If the frequency of mortality risk computations were increased to every 3 h with model performance that could improve the assessment of severity of illnes...

Descripción completa

Detalles Bibliográficos
Autores principales: Patel, Anita K, Trujillo-Rivera, Eduardo, Morizono, Hiroki, Pollack, Murray M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9752098/
https://www.ncbi.nlm.nih.gov/pubmed/36533242
http://dx.doi.org/10.3389/fped.2022.1023539
_version_ 1784850636223807488
author Patel, Anita K
Trujillo-Rivera, Eduardo
Morizono, Hiroki
Pollack, Murray M.
author_facet Patel, Anita K
Trujillo-Rivera, Eduardo
Morizono, Hiroki
Pollack, Murray M.
author_sort Patel, Anita K
collection PubMed
description BACKGROUND: The Criticality Index-Mortality uses physiology, therapy, and intensity of care to compute mortality risk for pediatric ICU patients. If the frequency of mortality risk computations were increased to every 3 h with model performance that could improve the assessment of severity of illness, it could be utilized to monitor patients for significant mortality risk change. OBJECTIVES: To assess the performance of a dynamic method of updating mortality risk every 3 h using the Criticality Index-Mortality methodology and identify variables that are significant contributors to mortality risk predictions. POPULATION: There were 8,399 pediatric ICU admissions with 312 (3.7%) deaths from January 1, 2018 to February 29, 2020. We randomly selected 75% of patients for training, 13% for validation, and 12% for testing. MODEL: A neural network was trained to predict hospital survival or death during or following an ICU admission. Variables included age, gender, laboratory tests, vital signs, medications categories, and mechanical ventilation variables. The neural network was calibrated to mortality risk using nonparametric logistic regression. RESULTS: Discrimination assessed across all time periods found an AUROC of 0.851 (0.841–0.862) and an AUPRC was 0.443 (0.417–0.467). When assessed for performance every 3 h, the AUROCs had a minimum value of 0.778 (0.689–0.867) and a maximum value of 0.885 (0.841,0.862); the AUPRCs had a minimum value 0.148 (0.058–0.328) and a maximum value of 0.499 (0.229–0.769). The calibration plot had an intercept of 0.011, a slope of 0.956, and the R(2) was 0.814. Comparison of observed vs. expected proportion of deaths revealed that 95.8% of the 543 risk intervals were not statistically significantly different. Construct validity assessed by death and survivor risk trajectories analyzed by mortality risk quartiles and 7 high and low risk diseases confirmed a priori clinical expectations about the trajectories of death and survivors. CONCLUSIONS: The Criticality Index-Mortality computing mortality risk every 3 h for pediatric ICU patients has model performance that could enhance the clinical assessment of severity of illness. The overall Criticality Index-Mortality framework was effectively applied to develop an institutionally specific, and clinically relevant model for dynamic risk assessment of pediatric ICU patients.
format Online
Article
Text
id pubmed-9752098
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-97520982022-12-16 The criticality Index-mortality: A dynamic machine learning prediction algorithm for mortality prediction in children cared for in an ICU Patel, Anita K Trujillo-Rivera, Eduardo Morizono, Hiroki Pollack, Murray M. Front Pediatr Pediatrics BACKGROUND: The Criticality Index-Mortality uses physiology, therapy, and intensity of care to compute mortality risk for pediatric ICU patients. If the frequency of mortality risk computations were increased to every 3 h with model performance that could improve the assessment of severity of illness, it could be utilized to monitor patients for significant mortality risk change. OBJECTIVES: To assess the performance of a dynamic method of updating mortality risk every 3 h using the Criticality Index-Mortality methodology and identify variables that are significant contributors to mortality risk predictions. POPULATION: There were 8,399 pediatric ICU admissions with 312 (3.7%) deaths from January 1, 2018 to February 29, 2020. We randomly selected 75% of patients for training, 13% for validation, and 12% for testing. MODEL: A neural network was trained to predict hospital survival or death during or following an ICU admission. Variables included age, gender, laboratory tests, vital signs, medications categories, and mechanical ventilation variables. The neural network was calibrated to mortality risk using nonparametric logistic regression. RESULTS: Discrimination assessed across all time periods found an AUROC of 0.851 (0.841–0.862) and an AUPRC was 0.443 (0.417–0.467). When assessed for performance every 3 h, the AUROCs had a minimum value of 0.778 (0.689–0.867) and a maximum value of 0.885 (0.841,0.862); the AUPRCs had a minimum value 0.148 (0.058–0.328) and a maximum value of 0.499 (0.229–0.769). The calibration plot had an intercept of 0.011, a slope of 0.956, and the R(2) was 0.814. Comparison of observed vs. expected proportion of deaths revealed that 95.8% of the 543 risk intervals were not statistically significantly different. Construct validity assessed by death and survivor risk trajectories analyzed by mortality risk quartiles and 7 high and low risk diseases confirmed a priori clinical expectations about the trajectories of death and survivors. CONCLUSIONS: The Criticality Index-Mortality computing mortality risk every 3 h for pediatric ICU patients has model performance that could enhance the clinical assessment of severity of illness. The overall Criticality Index-Mortality framework was effectively applied to develop an institutionally specific, and clinically relevant model for dynamic risk assessment of pediatric ICU patients. Frontiers Media S.A. 2022-12-01 /pmc/articles/PMC9752098/ /pubmed/36533242 http://dx.doi.org/10.3389/fped.2022.1023539 Text en © 2022 Patel, Trujillo-Rivera, Morizono and Pollack. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY) (https://creativecommons.org/licenses/by/4.0/) . The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Pediatrics
Patel, Anita K
Trujillo-Rivera, Eduardo
Morizono, Hiroki
Pollack, Murray M.
The criticality Index-mortality: A dynamic machine learning prediction algorithm for mortality prediction in children cared for in an ICU
title The criticality Index-mortality: A dynamic machine learning prediction algorithm for mortality prediction in children cared for in an ICU
title_full The criticality Index-mortality: A dynamic machine learning prediction algorithm for mortality prediction in children cared for in an ICU
title_fullStr The criticality Index-mortality: A dynamic machine learning prediction algorithm for mortality prediction in children cared for in an ICU
title_full_unstemmed The criticality Index-mortality: A dynamic machine learning prediction algorithm for mortality prediction in children cared for in an ICU
title_short The criticality Index-mortality: A dynamic machine learning prediction algorithm for mortality prediction in children cared for in an ICU
title_sort criticality index-mortality: a dynamic machine learning prediction algorithm for mortality prediction in children cared for in an icu
topic Pediatrics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9752098/
https://www.ncbi.nlm.nih.gov/pubmed/36533242
http://dx.doi.org/10.3389/fped.2022.1023539
work_keys_str_mv AT patelanitak thecriticalityindexmortalityadynamicmachinelearningpredictionalgorithmformortalitypredictioninchildrencaredforinanicu
AT trujilloriveraeduardo thecriticalityindexmortalityadynamicmachinelearningpredictionalgorithmformortalitypredictioninchildrencaredforinanicu
AT morizonohiroki thecriticalityindexmortalityadynamicmachinelearningpredictionalgorithmformortalitypredictioninchildrencaredforinanicu
AT pollackmurraym thecriticalityindexmortalityadynamicmachinelearningpredictionalgorithmformortalitypredictioninchildrencaredforinanicu
AT patelanitak criticalityindexmortalityadynamicmachinelearningpredictionalgorithmformortalitypredictioninchildrencaredforinanicu
AT trujilloriveraeduardo criticalityindexmortalityadynamicmachinelearningpredictionalgorithmformortalitypredictioninchildrencaredforinanicu
AT morizonohiroki criticalityindexmortalityadynamicmachinelearningpredictionalgorithmformortalitypredictioninchildrencaredforinanicu
AT pollackmurraym criticalityindexmortalityadynamicmachinelearningpredictionalgorithmformortalitypredictioninchildrencaredforinanicu