Author:
Chen Weitong,Zhang Wei Emma,Yue Lin
Abstract
AbstractPredicting the severity of an illness is crucial in intensive care units (ICUs) if a patient‘s life is to be saved. The existing prediction methods often fail to provide sufficient evidence for time-critical decisions required in dynamic and changing ICU environments. In this research, a new method called MM-RNN (multi-task memory-fused recurrent neural network) was developed to predict the severity of illnesses in intensive care units (ICUs). MM-RNN aims to address this issue by not only predicting illness severity but also generating an evidence-based explanation of how the prediction was made. The architecture of MM-RNN consists of task-specific phased LSTMs and a delta memory network that captures asynchronous feature correlations within and between multiple organ systems. The multi-task nature of MM-RNN allows it to provide an evidence-based explanation of its predictions, along with illness severity scores and a heatmap of the patient’s changing condition. The results of comparison with state-of-the-art methods on real-world clinical data show that MM-RNN delivers more accurate predictions of illness severity with the added benefit of providing evidence-based justifications.
Funder
Chen Start-up, The University of Adelaide
2022 UQAI ECR Seed Fund
Cyber Security research grant, The University of Queensland,
Publisher
Springer Science and Business Media LLC
Subject
Computer Networks and Communications,Hardware and Architecture,Software
Reference47 articles.
1. Binder, H., Blettner, M.: Big data in medical science–a biostatistical view: Part 21 of a series on evaluation of scientific publications. Dtsch. Ärztebl. Int 112(9), 137 (2015)
2. Shann, F., Pearson, G., Slater, A., Wilkinson, K.: Paediatric index of mortality (pim): a mortality prediction model for children in intensive care. Intensive Care Med 23(2), 201–207 (1997)
3. Lipton, Z.C., Kale, D.C., Wetzel, R.:Modeling missing data in clinical time series with rnns. Mach Learn Healthcare (2016)
4. Vincent, J., et al.: The sofa score to describe organ dysfunction/failure. on behalf of the working group on sepsis-related problems of the european society of intensive care medicine. Intensive Care Med 22(7), 707–710 (1996)
5. Knaus, W.A., et al.: The apache iii prognostic system: risk prediction of hospital mortality for critically iii hospitalized adults. Chest 100(6), 1619–1636 (1991)
Cited by
3 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献