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Published in: BMC Medical Informatics and Decision Making 1/2019

Open Access 01-12-2019 | Acute Coronary Syndrome | Research article

Utilizing dynamic treatment information for MACE prediction of acute coronary syndrome

Authors: Huilong Duan, Zhoujian Sun, Wei Dong, Zhengxing Huang

Published in: BMC Medical Informatics and Decision Making | Issue 1/2019

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Abstract

Background

Main adverse cardiac events (MACE) are essentially composite endpoints for assessing safety and efficacy of treatment processes of acute coronary syndrome (ACS) patients. Timely prediction of MACE is highly valuable for improving the effects of ACS treatments. Most existing tools are specific to predict MACE by mainly using static patient features and neglecting dynamic treatment information during learning.

Methods

We address this challenge by developing a deep learning-based approach to utilize a large volume of heterogeneous electronic health record (EHR) for predicting MACE after ACS. Specifically, we obtain the deep representation of dynamic treatment features from EHR data, using the bidirectional recurrent neural network. And then, the extracted latent representation of treatment features can be utilized to predict whether a patient occurs MACE in his or her hospitalization.

Results

We validate the effectiveness of our approach on a clinical dataset containing 2930 ACS patient samples with 232 static feature types and 2194 dynamic feature types. The performance of our best model for predicting MACE after ACS remains robust and reaches 0.713 and 0.764 in terms of AUC and Accuracy, respectively, and has over 11.9% (1.2%) and 1.9% (7.5%) performance gain of AUC (Accuracy) in comparison with both logistic regression and a boosted resampling model presented in our previous work, respectively. The results are statistically significant.

Conclusions

We hypothesize that our proposed model adapted to leverage dynamic treatment information in EHR data appears to boost the performance of MACE prediction for ACS, and can readily meet the demand clinical prediction of other diseases, from a large volume of EHR in an open-ended fashion.
Literature
1.
go back to reference Amsterdam EA, Wenger NK, Brindis RG, Casey DE, Ganiats TG, Holmes DR, Jaffe AS, Jneid H, Kelly RF, Kontos MC, Levine GN, Liebson PR, Mukherjee D, Peterson ED, Sabatine MS, Smalling RW, Zieman SJ. 2014 AHA/ACC Guideline for the Management of Patients With Non-ST-Elevation Acute Coronary Syndromes: A Report of the American College of Cardiology/American Heart Association Task Force on Practice Guidelines. Circulation. 2014;130(25):e344–426.PubMed Amsterdam EA, Wenger NK, Brindis RG, Casey DE, Ganiats TG, Holmes DR, Jaffe AS, Jneid H, Kelly RF, Kontos MC, Levine GN, Liebson PR, Mukherjee D, Peterson ED, Sabatine MS, Smalling RW, Zieman SJ. 2014 AHA/ACC Guideline for the Management of Patients With Non-ST-Elevation Acute Coronary Syndromes: A Report of the American College of Cardiology/American Heart Association Task Force on Practice Guidelines. Circulation. 2014;130(25):e344–426.PubMed
2.
go back to reference Goodman SG, et al. The expanded global registry of acute coronary events: baseline characteristics, management practices, and hospital outcomes of patients with acute coronary syndromes. Am Heart J. 2009;158(2):193–201.CrossRef Goodman SG, et al. The expanded global registry of acute coronary events: baseline characteristics, management practices, and hospital outcomes of patients with acute coronary syndromes. Am Heart J. 2009;158(2):193–201.CrossRef
3.
go back to reference Antman EM, et al. The TIMI risk score for unstable angina/non-ST elevation MI: a method for prognostication and therapeutic decision making. J Am Med Assoc. 2000;284(7):835–42.CrossRef Antman EM, et al. The TIMI risk score for unstable angina/non-ST elevation MI: a method for prognostication and therapeutic decision making. J Am Med Assoc. 2000;284(7):835–42.CrossRef
4.
go back to reference Mega JL, et al. Rivaroxaban in patients with a recent acute coronary syndrome. N Engl J Med. 2012;366(1):9–19.CrossRef Mega JL, et al. Rivaroxaban in patients with a recent acute coronary syndrome. N Engl J Med. 2012;366(1):9–19.CrossRef
5.
go back to reference Mozaffarian D, et al. American Heart Association statistics committee and stroke statistics – 2015 update: a report from the American Heart Association. Circulation. 2015;131(4):e29–322.PubMed Mozaffarian D, et al. American Heart Association statistics committee and stroke statistics – 2015 update: a report from the American Heart Association. Circulation. 2015;131(4):e29–322.PubMed
6.
go back to reference Weiwei Chen, et al. Report on Cardiovascular Disease in China 2014,Encyclopedia of China Publishing House, 2015, ISBN 978-7-5000-9510-1. Weiwei Chen, et al. Report on Cardiovascular Disease in China 2014,Encyclopedia of China Publishing House, 2015, ISBN 978-7-5000-9510-1.
7.
go back to reference Ohira T, Iso H. Cardiovascular disease epidemiology in Asia: an overview. Circ J. 2013;77:1646–52.CrossRef Ohira T, Iso H. Cardiovascular disease epidemiology in Asia: an overview. Circ J. 2013;77:1646–52.CrossRef
8.
go back to reference Brindle PM, et al. The accuracy and impact of risk assessment in the primary prevention of cardiovascular disease: a systematic review. Heart. 2006;92(12):1752–9.CrossRef Brindle PM, et al. The accuracy and impact of risk assessment in the primary prevention of cardiovascular disease: a systematic review. Heart. 2006;92(12):1752–9.CrossRef
9.
go back to reference Goff DC, et al. 2013 ACC/AHA guideline on the assessment of cardiovascular risk: a report of the American College of Cardiology/American Heart Association task force on practice guidelines. Circulation. 2014;129:S49–73.CrossRef Goff DC, et al. 2013 ACC/AHA guideline on the assessment of cardiovascular risk: a report of the American College of Cardiology/American Heart Association task force on practice guidelines. Circulation. 2014;129:S49–73.CrossRef
10.
go back to reference Boersma E, et al. Predictors of outcome in patients with acute coronary syndromes without persistent ST-segment elevation. Results from an international trial of 9461 patients. Circulation. 2000;101(22):2557–67.CrossRef Boersma E, et al. Predictors of outcome in patients with acute coronary syndromes without persistent ST-segment elevation. Results from an international trial of 9461 patients. Circulation. 2000;101(22):2557–67.CrossRef
11.
go back to reference D. Hu, et al. Utilizing Chinese admission records for MACE prediction of acute coronary syndrome, international journal of environmental research and public health, 13(9):912, 2016. D. Hu, et al. Utilizing Chinese admission records for MACE prediction of acute coronary syndrome, international journal of environmental research and public health, 13(9):912, 2016.
12.
go back to reference Huang Z, et al. MACE prediction of acute coronary syndrome via boosted resampling classification using electronic medical records. J Biomed Inform. 2017;66:161–70.CrossRef Huang Z, et al. MACE prediction of acute coronary syndrome via boosted resampling classification using electronic medical records. J Biomed Inform. 2017;66:161–70.CrossRef
14.
go back to reference Ye S. Coronary event. In: Gellman MD, Turner JR, editors. Encyclopedia of Behavioral Medicine. New York, NY: Springer New York; 2013. p. 503.CrossRef Ye S. Coronary event. In: Gellman MD, Turner JR, editors. Encyclopedia of Behavioral Medicine. New York, NY: Springer New York; 2013. p. 503.CrossRef
15.
go back to reference Raghavendra U, et al. Deep convolution neural network for accurate diagnosis of glaucoma using digital fundus images. Inf Sci. 2018;441:41–9.CrossRef Raghavendra U, et al. Deep convolution neural network for accurate diagnosis of glaucoma using digital fundus images. Inf Sci. 2018;441:41–9.CrossRef
16.
go back to reference Raghavendra U, et al. Automated identification of shockable and non-shockable life-threatening ventricular arrhythmias using convolutional neural network. Futur Gener Comput Syst. 2018;79(3):952–9. Raghavendra U, et al. Automated identification of shockable and non-shockable life-threatening ventricular arrhythmias using convolutional neural network. Futur Gener Comput Syst. 2018;79(3):952–9.
17.
go back to reference Raghavendra U, et al. Application of deep convolutional neural network for automated detection of myocardial infarction using ECG signals. Inf Sci. 2017;415:190–8. Raghavendra U, et al. Application of deep convolutional neural network for automated detection of myocardial infarction using ECG signals. Inf Sci. 2017;415:190–8.
18.
go back to reference Cho K, Van Merrienboer B, Gulcehre C, et al. Learning phrase representations using RNN encoder-decoder for statistical machine translation. In empirical methods in natural language processing (EMNLP). 2014:1724–1734. Doha, Qatar. Cho K, Van Merrienboer B, Gulcehre C, et al. Learning phrase representations using RNN encoder-decoder for statistical machine translation. In empirical methods in natural language processing (EMNLP). 2014:1724–1734. Doha, Qatar.
19.
go back to reference Karpathy A, Li F. Deep visual-semantic alignments for generating image descriptions. Computer vision and pattern recognition (CVPR), 2015:3128–3137. Boston, MA, USA. Karpathy A, Li F. Deep visual-semantic alignments for generating image descriptions. Computer vision and pattern recognition (CVPR), 2015:3128–3137. Boston, MA, USA.
20.
go back to reference Hochreiter S, Schmidhuber J. Long short-term memory. Neural Comput. 1997;9(8):1735–80.CrossRef Hochreiter S, Schmidhuber J. Long short-term memory. Neural Comput. 1997;9(8):1735–80.CrossRef
21.
go back to reference D.R. Cox. Regression models and life-tables, journal of the Royal Statistical Society, series B (methodological), 34(2):187–220, 1972. D.R. Cox. Regression models and life-tables, journal of the Royal Statistical Society, series B (methodological), 34(2):187–220, 1972.
22.
go back to reference O. Melamud, J. Goldberger, and I. Dagan. Context2vec: learning generic context embedding with bidirectional LSTM. In CoNLL, 2016. O. Melamud, J. Goldberger, and I. Dagan. Context2vec: learning generic context embedding with bidirectional LSTM. In CoNLL, 2016.
23.
go back to reference Adams TD, Gress RE, Smith SC, et al. Long-term mortality after gastric bypass surgery. N Engl J Med. 2007;357(8):753–61.CrossRef Adams TD, Gress RE, Smith SC, et al. Long-term mortality after gastric bypass surgery. N Engl J Med. 2007;357(8):753–61.CrossRef
24.
go back to reference Pai JK, Pischon T, Ma J, et al. Inflammatory markers and the risk of coronary heart disease in men and women. N Engl J Med. 2004;351(25):2599–610.CrossRef Pai JK, Pischon T, Ma J, et al. Inflammatory markers and the risk of coronary heart disease in men and women. N Engl J Med. 2004;351(25):2599–610.CrossRef
25.
go back to reference Zhengxing Huang, Zhenxiao Ge, Wei Dong and Huilong Duan, Utilizing electronic health records to predict multi-type major adverse cardiovascular events after acute coronary syndrome, Knowledge and Information Systems, 2018. Zhengxing Huang, Zhenxiao Ge, Wei Dong and Huilong Duan, Utilizing electronic health records to predict multi-type major adverse cardiovascular events after acute coronary syndrome, Knowledge and Information Systems, 2018.
26.
go back to reference Ponikowski P, Voors AA, Anker SD, et al. ESC guidelines for the diagnosis and treatment of acute and chronic heart failure: the task force for the diagnosis and treatment of acute and chronic heart failure of the European Society of Cardiology (ESC) developed with the special contribution of the heart failure association (HFA) of the ESC. Eur Heart J. 2016;37:2129–200.CrossRef Ponikowski P, Voors AA, Anker SD, et al. ESC guidelines for the diagnosis and treatment of acute and chronic heart failure: the task force for the diagnosis and treatment of acute and chronic heart failure of the European Society of Cardiology (ESC) developed with the special contribution of the heart failure association (HFA) of the ESC. Eur Heart J. 2016;37:2129–200.CrossRef
27.
go back to reference Blumenthal D, Tavenner M. The “meaningful use” regulation for electronic health records. N Engl J Med. 2010 Aug 5;363(6):501–4.CrossRef Blumenthal D, Tavenner M. The “meaningful use” regulation for electronic health records. N Engl J Med. 2010 Aug 5;363(6):501–4.CrossRef
28.
go back to reference Bandyopadhyay S, et al. Data mining for censored time-to-event data: a Bayesian network model for predicting cardiovascular risk from electronic health record data, Data Mining Knowl. Discovery. 2015;29(4):1033–69. Bandyopadhyay S, et al. Data mining for censored time-to-event data: a Bayesian network model for predicting cardiovascular risk from electronic health record data, Data Mining Knowl. Discovery. 2015;29(4):1033–69.
29.
go back to reference Van Hoorde K, Van Huffel S, Timmerman D, Bourne T, Van Calster B. A spline-based tool to assess and visualize the calibration of multiclass risk predictions. J Biomed Inform. 2015;54:283–93.CrossRef Van Hoorde K, Van Huffel S, Timmerman D, Bourne T, Van Calster B. A spline-based tool to assess and visualize the calibration of multiclass risk predictions. J Biomed Inform. 2015;54:283–93.CrossRef
30.
go back to reference Huang Z, Dong W, Duan H, Liu J. A regularized deep learning approach for clinical risk prediction of acute coronary syndrome using electronic health records. IEEE Trans Biomed Eng. 2018;65(5):956–68.CrossRef Huang Z, Dong W, Duan H, Liu J. A regularized deep learning approach for clinical risk prediction of acute coronary syndrome using electronic health records. IEEE Trans Biomed Eng. 2018;65(5):956–68.CrossRef
31.
go back to reference Li H, et al. Identifying informative risk factors and predicting bone disease progression via deep belief networks. Methods. 2014;69(3):257–65.CrossRef Li H, et al. Identifying informative risk factors and predicting bone disease progression via deep belief networks. Methods. 2014;69(3):257–65.CrossRef
32.
go back to reference Huang Z, et al. Predictive monitoring of clinical pathways. Expert Syst Appl. 2016;56:227–41.CrossRef Huang Z, et al. Predictive monitoring of clinical pathways. Expert Syst Appl. 2016;56:227–41.CrossRef
33.
go back to reference Emilio Soria Olivas et al. Handbook of Research on Machine Learning Applications and Trends: Algorithms, Methods, and Techniques, Hershey, IGI-global, 2009. Emilio Soria Olivas et al. Handbook of Research on Machine Learning Applications and Trends: Algorithms, Methods, and Techniques, Hershey, IGI-global, 2009.
34.
go back to reference Van Calster B, Nieboer D, Vergouwe Y, De Cock B, Pencina MJ, Steyerberg EW. A calibration hierarchy for risk models was defined: from utopia to empirical data. J Clin Epidemiol. 2016;74:167–76.CrossRef Van Calster B, Nieboer D, Vergouwe Y, De Cock B, Pencina MJ, Steyerberg EW. A calibration hierarchy for risk models was defined: from utopia to empirical data. J Clin Epidemiol. 2016;74:167–76.CrossRef
35.
go back to reference Choi E, Schuetz A, Stewart WF, Sun J. Using recurrent neural network models for early detection of heart failure onset. J Am Med Inform Assoc. 2017;24(2):361–70.PubMed Choi E, Schuetz A, Stewart WF, Sun J. Using recurrent neural network models for early detection of heart failure onset. J Am Med Inform Assoc. 2017;24(2):361–70.PubMed
Metadata
Title
Utilizing dynamic treatment information for MACE prediction of acute coronary syndrome
Authors
Huilong Duan
Zhoujian Sun
Wei Dong
Zhengxing Huang
Publication date
01-12-2019
Publisher
BioMed Central
Published in
BMC Medical Informatics and Decision Making / Issue 1/2019
Electronic ISSN: 1472-6947
DOI
https://doi.org/10.1186/s12911-018-0730-7

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