Predicting neurological outcome after out-of-hospital cardiac arrest with cumulative information; development and internal validation of an artificial neural network algorithm

Author:

Andersson PederORCID,Johnsson Jesper,Björnsson Ola,Cronberg Tobias,Hassager Christian,Zetterberg Henrik,Stammet Pascal,Undén Johan,Kjaergaard Jesper,Friberg Hans,Blennow Kaj,Lilja Gisela,Wise Matt P.,Dankiewicz Josef,Nielsen Niklas,Frigyesi Attila

Abstract

Abstract Background Prognostication of neurological outcome in patients who remain comatose after cardiac arrest resuscitation is complex. Clinical variables, as well as biomarkers of brain injury, cardiac injury, and systemic inflammation, all yield some prognostic value. We hypothesised that cumulative information obtained during the first three days of intensive care could produce a reliable model for predicting neurological outcome following out-of-hospital cardiac arrest (OHCA) using artificial neural network (ANN) with and without biomarkers. Methods We performed a post hoc analysis of 932 patients from the Target Temperature Management trial. We focused on comatose patients at 24, 48, and 72 h post-cardiac arrest and excluded patients who were awake or deceased at these time points. 80% of the patients were allocated for model development (training set) and 20% for internal validation (test set). To investigate the prognostic potential of different levels of biomarkers (clinically available and research-grade), patients’ background information, and intensive care observation and treatment, we created three models for each time point: (1) clinical variables, (2) adding clinically accessible biomarkers, e.g., neuron-specific enolase (NSE) and (3) adding research-grade biomarkers, e.g., neurofilament light (NFL). Patient outcome was the dichotomised Cerebral Performance Category (CPC) at six months; a good outcome was defined as CPC 1–2 whilst a poor outcome was defined as CPC 3–5. The area under the receiver operating characteristic curve (AUROC) was calculated for all test sets. Results AUROC remained below 90% when using only clinical variables throughout the first three days in the ICU. Adding clinically accessible biomarkers such as NSE, AUROC increased from 82 to 94% (p < 0.01). The prognostic accuracy remained excellent from day 1 to day 3 with an AUROC at approximately 95% when adding research-grade biomarkers. The models which included NSE after 72 h and NFL on any of the three days had a low risk of false-positive predictions while retaining a low number of false-negative predictions. Conclusions In this exploratory study, ANNs provided good to excellent prognostic accuracy in predicting neurological outcome in comatose patients post OHCA. The models which included NSE after 72 h and NFL on all days showed promising prognostic performance.

Funder

Royal Physiographic Society of Lund

Stig and Ragna Gorthon Foundation

Thelma Zoega Foundation

VO FoU Skånevård Sund

The European regional Development Fund throug the Interreg IV A OKS program

Region Skåne

The Swedish Research Council

The European Research Council

Swedish State Support for Clinical Research

Alzheimer's Drug Discovery Foundation

AD Strategic Fund and the Alzheimer´s Association

The European Union´s Horizon 2020 research and innovation programme under the Marie Sklodowska-Curie gran agreement

The UK Dementia Research Institute at UCL

The Swedish Alzheimer Foundation

Hjärnfonden

The Swedish state under the agreement between the Swedish government and the County Councils

European Union Joint Program for Neurodegenerative Disorders

Governmental funding of clinical research within the NHS

Hjärt-Lungfonden

Arbetsmarknadens försäkringsaktiebolag, AFA-Insurance Foundation

Regional Research Support, Region Skåne

Governmental funding of clinical research within the Swedish NHS

Krapperup Foundation

Thure Carlsson Foundation

Hans-Gabriel and Alice Trolle-Wachtmeister Foundation for Medical Research

Skånes universitetssjukhus

TrygFonden

The European Clinical Research Infrastructure Network

Lund University

Publisher

Springer Science and Business Media LLC

Subject

Critical Care and Intensive Care Medicine

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