An Open-Access Dataset of Hospitalized Cardiac-Arrest Patients: Machine-Learning-Based Predictions Using Clinical Documentation

Cardiac arrest is a sudden loss of heart function with serious consequences. In developing countries, healthcare professionals use clinical documentation to track patient information. These data are used to predict the development of cardiac arrest. We published a dataset through open access to adva...

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Bibliographic Details
Published inBioMedInformatics Vol. 4; no. 1; pp. 34 - 49
Main Authors Rajapaksha, Lahiru Theekshana Weerasinghe, Vidanagamachchi, Sugandima Mihirani, Gunawardena, Sampath, Thambawita, Vajira
Format Journal Article
LanguageEnglish
Published MDPI AG 01.03.2024
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ISSN2673-7426
2673-7426
DOI10.3390/biomedinformatics4010003

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Summary:Cardiac arrest is a sudden loss of heart function with serious consequences. In developing countries, healthcare professionals use clinical documentation to track patient information. These data are used to predict the development of cardiac arrest. We published a dataset through open access to advance the research domain. While using this dataset, our work revolved around generating and utilizing synthetic data by harnessing the potential of synthetic data vaults. We conducted a series of experiments by employing state-of-the-art machine-learning techniques. These experiments aimed to assess the performance of our developed predictive model in identifying the likelihood of developing cardiac arrest. This approach was effective in identifying the risk of cardiac arrest in in-patients, even in the absence of electronic medical recording systems. The study evaluated 112 patients who had been transferred from the emergency treatment unit to the cardiac medical ward. The developed model achieved 96% accuracy in predicting the risk of developing cardiac arrest. In conclusion, our study showcased the potential of leveraging clinical documentation and synthetic data to create robust predictive models for cardiac arrest. The outcome of this effort could provide valuable insights and tools for healthcare professionals to preemptively address this critical medical condition.
ISSN:2673-7426
2673-7426
DOI:10.3390/biomedinformatics4010003