Forecasting patient vital signs in irregular time-series with neural networks using Markov Chain principles
Analyzing patient health through irregular time series vital sign data demands inno vative methods beyond conventional imputation techniques. This study introduces a novel approach diverging from prevailing attention-based models to explicitly capture temporal patient evolution. We adopt a paradig...
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sg-ntu-dr.10356-1751422024-04-26T15:41:00Z Forecasting patient vital signs in irregular time-series with neural networks using Markov Chain principles Choy, Xin Yun Fan Xiuyi School of Computer Science and Engineering xyfan@ntu.edu.sg Computer and Information Science Medicine, Health and Life Sciences Patient vital signs Neural network Markov chain Machine learning Analyzing patient health through irregular time series vital sign data demands inno vative methods beyond conventional imputation techniques. This study introduces a novel approach diverging from prevailing attention-based models to explicitly capture temporal patient evolution. We adopt a paradigm where patients are viewed as dy namic systems evolving over time, with their vital signs encapsulating the system’s states. Our conceptual framework draws parallels to a Markov chain, exploring the transitions between states within a unit of time. To navigate the challenge of a vast state space, we employ a neural network to model expected transitions. Our method portrays the patient’s progression within one unit of time as the system evolves from one state to another, and forecasts states into the future. We outline the training process using irregular time series data and demonstrate its efficacy through analysis on two large vital sign data sets. Comparative analysis against attention-based models emphasizes the effectiveness and efficiency of our approach. This research heralds a promising avenue for patient vital sign analysis, providing insights into temporal patient evolution without relying on imputation methods, thereby enhancing predictive accuracy and interpretability of models. Bachelor's degree 2024-04-22T04:30:21Z 2024-04-22T04:30:21Z 2024 Final Year Project (FYP) Choy, X. Y. (2024). Forecasting patient vital signs in irregular time-series with neural networks using Markov Chain principles. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/175142 https://hdl.handle.net/10356/175142 en application/pdf Nanyang Technological University |
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Computer and Information Science Medicine, Health and Life Sciences Patient vital signs Neural network Markov chain Machine learning Choy, Xin Yun Forecasting patient vital signs in irregular time-series with neural networks using Markov Chain principles |
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Analyzing patient health through irregular time series vital sign data demands inno vative methods beyond conventional imputation techniques. This study introduces a
novel approach diverging from prevailing attention-based models to explicitly capture
temporal patient evolution. We adopt a paradigm where patients are viewed as dy namic systems evolving over time, with their vital signs encapsulating the system’s
states. Our conceptual framework draws parallels to a Markov chain, exploring the
transitions between states within a unit of time. To navigate the challenge of a vast state
space, we employ a neural network to model expected transitions. Our method portrays
the patient’s progression within one unit of time as the system evolves from one state
to another, and forecasts states into the future. We outline the training process using
irregular time series data and demonstrate its efficacy through analysis on two large
vital sign data sets. Comparative analysis against attention-based models emphasizes
the effectiveness and efficiency of our approach. This research heralds a promising
avenue for patient vital sign analysis, providing insights into temporal patient evolution
without relying on imputation methods, thereby enhancing predictive accuracy and
interpretability of models. |
author2 |
Fan Xiuyi |
author_facet |
Fan Xiuyi Choy, Xin Yun |
format |
Final Year Project |
author |
Choy, Xin Yun |
author_sort |
Choy, Xin Yun |
title |
Forecasting patient vital signs in irregular time-series with neural networks using Markov Chain principles |
title_short |
Forecasting patient vital signs in irregular time-series with neural networks using Markov Chain principles |
title_full |
Forecasting patient vital signs in irregular time-series with neural networks using Markov Chain principles |
title_fullStr |
Forecasting patient vital signs in irregular time-series with neural networks using Markov Chain principles |
title_full_unstemmed |
Forecasting patient vital signs in irregular time-series with neural networks using Markov Chain principles |
title_sort |
forecasting patient vital signs in irregular time-series with neural networks using markov chain principles |
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Nanyang Technological University |
publishDate |
2024 |
url |
https://hdl.handle.net/10356/175142 |
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1800916397267615744 |