A decision support system for reducing false alarms in ICU

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Title A decision support system for reducing false alarms in ICU
Summary Developing a clinical decision support system using machine learning and biomedical signal analysis techniques for an ICU setting.
Keywords Machine learning, Biomedical signal processing, Clinical decision support, Temporal data analysisProperty "Keywords" has a restricted application area and cannot be used as annotation property by a user.
TimeFrame Winter 2016 / Spring 2017
References 1. Liu C, Zhao L, Tang H, Li Q, Wei S, Li J. Life-threatening false alarm rejection in ICU: using the rule-based and multi-channel information fusion method. Physiological Measurement. 2016;37(8):1298.

2. Konkani A, Oakley B, Bauld TJ. Reducing hospital noise: a review of medical device alarm management. Biomedical Instrumentation & Technology. 2012;46(6):478-87.

3. Cvach M. Monitor alarm fatigue: an integrative review. Biomedical Instrumentation & Technology. 2012;46(4):268-77.

4. Goldberger AL, Amaral LAN, Glass L, Hausdorff JM, Ivanov PC, Mark RG, et al. PhysioBank, PhysioToolkit, and PhysioNet. Circulation. 2000;101(23):e215.

Prerequisites Good knowledge of applied mathematics and signal processing. An ability to implement state-of-the-art algorithms in a suitable programming environment. An interest in machine learning algorithms.
Author
Supervisor Sławomir Nowaczyk, Awais Ashfaq
Level Master
Status Internal Draft


Background: With the advent of advanced patient monitoring systems in healthcare, alarms are ubiquitous and have been a subject of technical and psychological research for decades. False alarms in intensive care monitors have been reported to approach up to 86% (1). These ceaseless noises supplement the already stressful ICU environment causing sleep deprivation, sensory overload, desensitization to alarms, reduced quality of care and a depressed immune system. More about ICU alarm fatigue can be found in (1-3)

Objective: The desired objective of the project is to develop an intelligent decision support system that reduces the number of false alarms using ICU patient data. The datasets include the following:

  • Waveforms: such as multi-channel ECG, multiple blood pressure recordings (like ICP, LAP, CVP, LAP etc.), Plethysmography and Respiratory waveforms.
  • Numeric data: Body temperature, Cardiac Output, Heart Rate, Respiration Rate measured at equal or random intervals.

The student shall explore a wide range of exciting new ideas in the field of multi-channel data fusion and clinical decision support systems such as evidence-based learning, random forests, deep learning etc.

Research Questions:

  • How to combine different heterogeneous sources of temporal information?
  • How to interpret such models to extract the underlying understanding of the classifier output?

Project Plan: The student will have a lot of freedom in choosing the focus of the project, however, the suggested plan is as follows:

  • Investigate state-of-the-art Clinical Decision Support Systems (CDSS) and evaluate how they can be adapted to an ICU setting. These include knowledge based and non-knowledge based CDSS.
  • Explore a wide range of machine learning algorithms that have been studied in the context of non-knowledge based CDSS and look for ways how they may be integrated with the domain knowledge.
  • Develop a working prototype that can classify false alarms among all vital alarms.
  • Test the developed prototype on pre-recorded ICU data, or if possible, in real ICU setting and report suggestions for improvements.

Data needed for the project:

  • Labelled and unlabeled data for semi-supervised learning – available at (4)
  • ICU patient data for testing – available at (4). The developed prototype might also be put to test in real ICU setting in Halland Hospital for quality analysis.

Contact

  • Slawomir Nowaczyk (slawomir.nowaczyk@hh.se)
  • Awais Ashfaq (awais.ashfaq@hh.se)