Predicting COVID-19 disease progression and patient outcomes based on temporal deep learning
Abstract Background The coronavirus disease 2019 (COVID-19) pandemic has caused health concerns worldwide since December 2019. From the beginning of infection, patients will progress through different symptom stages, such as fever, dyspnea or even death. Identifying disease progression and predictin...
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doaj-ec95a2b2f4e540188a58fe488efe163c2021-02-14T12:43:44ZengBMCBMC Medical Informatics and Decision Making1472-69472021-02-0121111610.1186/s12911-020-01359-9Predicting COVID-19 disease progression and patient outcomes based on temporal deep learningChenxi Sun0Shenda Hong1Moxian Song2Hongyan Li3Zhenjie Wang4School of Electronics Engineering and Computer Science, Peking UniversityNational Institute of Health Data Science, Peking UniversitySchool of Electronics Engineering and Computer Science, Peking UniversitySchool of Electronics Engineering and Computer Science, Peking UniversityInstitute of Population Research, Peking UniversityAbstract Background The coronavirus disease 2019 (COVID-19) pandemic has caused health concerns worldwide since December 2019. From the beginning of infection, patients will progress through different symptom stages, such as fever, dyspnea or even death. Identifying disease progression and predicting patient outcome at an early stage helps target treatment and resource allocation. However, there is no clear COVID-19 stage definition, and few studies have addressed characterizing COVID-19 progression, making the need for this study evident. Methods We proposed a temporal deep learning method, based on a time-aware long short-term memory (T-LSTM) neural network and used an online open dataset, including blood samples of 485 patients from Wuhan, China, to train the model. Our method can grasp the dynamic relations in irregularly sampled time series, which is ignored by existing works. Specifically, our method predicted the outcome of COVID-19 patients by considering both the biomarkers and the irregular time intervals. Then, we used the patient representations, extracted from T-LSTM units, to subtype the patient stages and describe the disease progression of COVID-19. Results Using our method, the accuracy of the outcome of prediction results was more than 90% at 12 days and 98, 95 and 93% at 3, 6, and 9 days, respectively. Most importantly, we found 4 stages of COVID-19 progression with different patient statuses and mortality risks. We ranked 40 biomarkers related to disease and gave the reference values of them for each stage. Top 5 is Lymph, LDH, hs-CRP, Indirect Bilirubin, Creatinine. Besides, we have found 3 complications - myocardial injury, liver function injury and renal function injury. Predicting which of the 4 stages the patient is currently in can help doctors better assess and cure the patient. Conclusions To combat the COVID-19 epidemic, this paper aims to help clinicians better assess and treat infected patients, provide relevant researchers with potential disease progression patterns, and enable more effective use of medical resources. Our method predicted patient outcomes with high accuracy and identified a four-stage disease progression. We hope that the obtained results and patterns will aid in fighting the disease.https://doi.org/10.1186/s12911-020-01359-9COVID-19Disease progressionOutcome early predictionIrregularly sampled time seriesTime-aware long short-term memory |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Chenxi Sun Shenda Hong Moxian Song Hongyan Li Zhenjie Wang |
spellingShingle |
Chenxi Sun Shenda Hong Moxian Song Hongyan Li Zhenjie Wang Predicting COVID-19 disease progression and patient outcomes based on temporal deep learning BMC Medical Informatics and Decision Making COVID-19 Disease progression Outcome early prediction Irregularly sampled time series Time-aware long short-term memory |
author_facet |
Chenxi Sun Shenda Hong Moxian Song Hongyan Li Zhenjie Wang |
author_sort |
Chenxi Sun |
title |
Predicting COVID-19 disease progression and patient outcomes based on temporal deep learning |
title_short |
Predicting COVID-19 disease progression and patient outcomes based on temporal deep learning |
title_full |
Predicting COVID-19 disease progression and patient outcomes based on temporal deep learning |
title_fullStr |
Predicting COVID-19 disease progression and patient outcomes based on temporal deep learning |
title_full_unstemmed |
Predicting COVID-19 disease progression and patient outcomes based on temporal deep learning |
title_sort |
predicting covid-19 disease progression and patient outcomes based on temporal deep learning |
publisher |
BMC |
series |
BMC Medical Informatics and Decision Making |
issn |
1472-6947 |
publishDate |
2021-02-01 |
description |
Abstract Background The coronavirus disease 2019 (COVID-19) pandemic has caused health concerns worldwide since December 2019. From the beginning of infection, patients will progress through different symptom stages, such as fever, dyspnea or even death. Identifying disease progression and predicting patient outcome at an early stage helps target treatment and resource allocation. However, there is no clear COVID-19 stage definition, and few studies have addressed characterizing COVID-19 progression, making the need for this study evident. Methods We proposed a temporal deep learning method, based on a time-aware long short-term memory (T-LSTM) neural network and used an online open dataset, including blood samples of 485 patients from Wuhan, China, to train the model. Our method can grasp the dynamic relations in irregularly sampled time series, which is ignored by existing works. Specifically, our method predicted the outcome of COVID-19 patients by considering both the biomarkers and the irregular time intervals. Then, we used the patient representations, extracted from T-LSTM units, to subtype the patient stages and describe the disease progression of COVID-19. Results Using our method, the accuracy of the outcome of prediction results was more than 90% at 12 days and 98, 95 and 93% at 3, 6, and 9 days, respectively. Most importantly, we found 4 stages of COVID-19 progression with different patient statuses and mortality risks. We ranked 40 biomarkers related to disease and gave the reference values of them for each stage. Top 5 is Lymph, LDH, hs-CRP, Indirect Bilirubin, Creatinine. Besides, we have found 3 complications - myocardial injury, liver function injury and renal function injury. Predicting which of the 4 stages the patient is currently in can help doctors better assess and cure the patient. Conclusions To combat the COVID-19 epidemic, this paper aims to help clinicians better assess and treat infected patients, provide relevant researchers with potential disease progression patterns, and enable more effective use of medical resources. Our method predicted patient outcomes with high accuracy and identified a four-stage disease progression. We hope that the obtained results and patterns will aid in fighting the disease. |
topic |
COVID-19 Disease progression Outcome early prediction Irregularly sampled time series Time-aware long short-term memory |
url |
https://doi.org/10.1186/s12911-020-01359-9 |
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