BMC Medical Informatics and Decision Making | |
Identification of disease states associated with coagulopathy in trauma | |
Research Article | |
Linda Petzold1  Yuanyang Zhang1  Tie Bo Wu2  Mitchell Cohen3  Bernie J. Daigle4  | |
[1] Department of Computer Science, University of California, Santa Barbara, USA;Department of Mechanical Engineering, University of California, Santa Barbara, USA;Department of Surgery, University of California, San Francisco, USA;Departments of Biological Sciences and Computer Science, University of Memphis, Memphis, USA; | |
关键词: Trauma; Coagulopathy; State identification; Hidden Markov model; Missing data; | |
DOI : 10.1186/s12911-016-0360-x | |
received in 2015-10-09, accepted in 2016-09-03, 发布年份 2016 | |
来源: Springer | |
【 摘 要 】
BackgroundTrauma is the leading cause of death between the ages of 1 to 44 in the United States. Blood loss is the primary cause of these deaths. The discrimination of states through which patients transition would be helpful in understanding the disease process, and in identification of critical states and appropriate interventions. Even though these states are strongly associated with patients’ blood composition data, there has not been a way to directly identify them. Statistical tools such as hidden Markov models can be used to infer the discrete latent states from the blood composition data.MethodsWe applied a hidden Markov model to time-series multivariate patient measurements from the UCSF/ San Francisco General Hospital and Trauma Center. Ten blood factor related measurements were used to identify the model: factors II, V, VII, VIII, IX, X, antithrombin III, protein C, prothrombin time and partial thromboplastin time. Missing data in the time-series dataset was considered in the hidden Markov model. The number of states was determined by minimizing the Bayesian information criterion across different numbers of states.ResultsAfter preprocessing, 1090 patients with a total number of 2176 time point measurements were included in the analysis. The hidden Markov model identified 6 disease states and 3 stages. We analyzed their relationships to the blood composition data and the coagulation cascade. The states are very indicative of the disease progression status of patients.ConclusionsSix disease states and 3 stages associated with Coagulopathy in trauma were identified in our study. The hidden Markov model can be useful in identifying latent states by using patients’ time-series multivariate data. The information obtained from the states and stages can be useful in the clinical setting.
【 授权许可】
CC BY
© The Author(s) 2016
【 预 览 】
Files | Size | Format | View |
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RO202311098764547ZK.pdf | 922KB | download | |
12864_2017_4186_Article_IEq1.gif | 1KB | Image | download |
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