MCPL-Based FT-LSTM: Medical Representation Learning-Based Clinical Prediction Model for Time Series Events

Large collections of electronic medical records (EMRs) provide us with a vast source of information on medical practice. However, the utilization of these data to support clinical decisions is still limited. Extracting useful patterns from such data is particularly challenging because the data are v...

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Main Authors: Lutong Wang, Hong Wang, Yongqiang Song, Qian Wang
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8725589/
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spelling doaj-48c061b059d645b484ec7b8e7dc4fd7e2021-03-29T23:49:21ZengIEEEIEEE Access2169-35362019-01-017702537026410.1109/ACCESS.2019.29196838725589MCPL-Based FT-LSTM: Medical Representation Learning-Based Clinical Prediction Model for Time Series EventsLutong Wang0https://orcid.org/0000-0002-5054-3332Hong Wang1Yongqiang Song2Qian Wang3School of Information Science and Engineering, Shandong Normal University, Jinan, ChinaSchool of Information Science and Engineering, Shandong Normal University, Jinan, ChinaSchool of Information Science and Engineering, Shandong Normal University, Jinan, ChinaSchool of Information Science and Engineering, Shandong Normal University, Jinan, ChinaLarge collections of electronic medical records (EMRs) provide us with a vast source of information on medical practice. However, the utilization of these data to support clinical decisions is still limited. Extracting useful patterns from such data is particularly challenging because the data are variable longitudinal, sparse, and heterogeneous. Therefore, in this paper, we propose the MCPL-based FT-LSTM, a clinical event prediction method based on medical concept representation learning. On one hand, inspired by FASTTEXT, we have developed an interpretative vector representation of medical events in EMRs, which enables us to capture the medical concept information effectively so that the patient's clinical data can be represented more reasonably. On the other hand, we propose a novel time-controlled long short-term memory (LSTM) prediction model, which adds time-control units to the original LSTM model. The model can describe the variable time intervals in EMRs, better capture long-term, and short-term information, and eliminate the strong dependence of clinical data on timestamps; thus, improving the model's prediction performance for clinical events. Through extensive experiments on the MIMICIII dataset, we demonstrate that the MCPL-based FT-LSTM achieves higher precision in the field of clinical event prediction, which is of great significance for the medical information research.https://ieeexplore.ieee.org/document/8725589/Electronic medical recordsFT-LSTMword vector representationmedical conceptvariable time interval
collection DOAJ
language English
format Article
sources DOAJ
author Lutong Wang
Hong Wang
Yongqiang Song
Qian Wang
spellingShingle Lutong Wang
Hong Wang
Yongqiang Song
Qian Wang
MCPL-Based FT-LSTM: Medical Representation Learning-Based Clinical Prediction Model for Time Series Events
IEEE Access
Electronic medical records
FT-LSTM
word vector representation
medical concept
variable time interval
author_facet Lutong Wang
Hong Wang
Yongqiang Song
Qian Wang
author_sort Lutong Wang
title MCPL-Based FT-LSTM: Medical Representation Learning-Based Clinical Prediction Model for Time Series Events
title_short MCPL-Based FT-LSTM: Medical Representation Learning-Based Clinical Prediction Model for Time Series Events
title_full MCPL-Based FT-LSTM: Medical Representation Learning-Based Clinical Prediction Model for Time Series Events
title_fullStr MCPL-Based FT-LSTM: Medical Representation Learning-Based Clinical Prediction Model for Time Series Events
title_full_unstemmed MCPL-Based FT-LSTM: Medical Representation Learning-Based Clinical Prediction Model for Time Series Events
title_sort mcpl-based ft-lstm: medical representation learning-based clinical prediction model for time series events
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description Large collections of electronic medical records (EMRs) provide us with a vast source of information on medical practice. However, the utilization of these data to support clinical decisions is still limited. Extracting useful patterns from such data is particularly challenging because the data are variable longitudinal, sparse, and heterogeneous. Therefore, in this paper, we propose the MCPL-based FT-LSTM, a clinical event prediction method based on medical concept representation learning. On one hand, inspired by FASTTEXT, we have developed an interpretative vector representation of medical events in EMRs, which enables us to capture the medical concept information effectively so that the patient's clinical data can be represented more reasonably. On the other hand, we propose a novel time-controlled long short-term memory (LSTM) prediction model, which adds time-control units to the original LSTM model. The model can describe the variable time intervals in EMRs, better capture long-term, and short-term information, and eliminate the strong dependence of clinical data on timestamps; thus, improving the model's prediction performance for clinical events. Through extensive experiments on the MIMICIII dataset, we demonstrate that the MCPL-based FT-LSTM achieves higher precision in the field of clinical event prediction, which is of great significance for the medical information research.
topic Electronic medical records
FT-LSTM
word vector representation
medical concept
variable time interval
url https://ieeexplore.ieee.org/document/8725589/
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AT yongqiangsong mcplbasedftlstmmedicalrepresentationlearningbasedclinicalpredictionmodelfortimeseriesevents
AT qianwang mcplbasedftlstmmedicalrepresentationlearningbasedclinicalpredictionmodelfortimeseriesevents
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