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Published in: BMC Medical Informatics and Decision Making 3/2020

Open Access 01-07-2020 | Stroke | Research

Using predictive process monitoring to assist thrombolytic therapy decision-making for ischemic stroke patients

Authors: Haifeng Xu, Jianfei Pang, Xi Yang, Mei Li, Dongsheng Zhao

Published in: BMC Medical Informatics and Decision Making | Special Issue 3/2020

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Abstract

Background

Although clinical guidelines provide the best practice for medical activities, there are some limitations in using clinical guidelines to assistant decision-making in practical application, such as long update cycle and low compliance of doctors with the guidelines. Driven by data of actual cases, process mining technology provides the possibility to remedy these shortcomings of clinical guidelines.

Methods

We propose a clinical decision support method using predictive process monitoring, which could be complementary with clinical guidelines, to assist medical staff with thrombolytic therapy decision-making for stroke patients. Firstly, we construct a labeled data set of 1191 cases to show whether each case actually need thrombolytic therapy, and whether it conform to the clinical guidelines. After prefix extraction and filtering the control flow of completed cases, the sequences with data flow are encoded, and corresponding prediction models are trained.

Results

Compared with the labeled results, the average accuracy of our prediction models for intravenous thrombolysis and arterial thrombolysis on the test set are 0.96 and 0.91, and AUC are 0.93 and 0.85 respectively. Compared with the recommendation of clinical guidelines, the accuracy, recall and AUC of our predictive models are higher.

Conclusions

The performance and feasibility of this method are verified by taking thrombolytic decision-making of patients with ischemic stroke as an example. When the clinical guidelines are not applicable, doctors could be provided with assistant decision-making by referring to similar historical cases using predictive process monitoring.
Literature
1.
go back to reference Demaerschalk BM. The stroke-thrombolytic predictive instrument provides valid quantitative estimates of outcome probabilities and aids clinical decision-making. Stroke. 2006;37(12):2865–6.CrossRef Demaerschalk BM. The stroke-thrombolytic predictive instrument provides valid quantitative estimates of outcome probabilities and aids clinical decision-making. Stroke. 2006;37(12):2865–6.CrossRef
2.
go back to reference Montani S. Conformance checking of executed clinical guidelines in presence of basic medical knowledge. Business Process Management Workshops-bpm International Workshops. Clermont-Ferrand: DBLP; 2011. Montani S. Conformance checking of executed clinical guidelines in presence of basic medical knowledge. Business Process Management Workshops-bpm International Workshops. Clermont-Ferrand: DBLP; 2011.
3.
go back to reference Mcglynn EA, Asch SM, Adams J, et al. The quality of health care delivered to adults in the United States. N Engl J Med. 2003;348(26):2635–45.CrossRef Mcglynn EA, Asch SM, Adams J, et al. The quality of health care delivered to adults in the United States. N Engl J Med. 2003;348(26):2635–45.CrossRef
4.
go back to reference Levine DM, Linder JA, Landon BE. The quality of outpatient care delivered to adults in the United States, 2002 to 2013. JAMA Intern Med. 2016;176(12):1778–90.CrossRef Levine DM, Linder JA, Landon BE. The quality of outpatient care delivered to adults in the United States, 2002 to 2013. JAMA Intern Med. 2016;176(12):1778–90.CrossRef
5.
go back to reference Shickel B, Tighe PJ, Bihorac A, et al. Deep EHR: a survey of recent advances in deep learning techniques for electronic health record (EHR) analysis. IEEE J Biomed Health Inform. 2018;22(5):1589–604.CrossRef Shickel B, Tighe PJ, Bihorac A, et al. Deep EHR: a survey of recent advances in deep learning techniques for electronic health record (EHR) analysis. IEEE J Biomed Health Inform. 2018;22(5):1589–604.CrossRef
6.
go back to reference Zheng J, Ruijie Z, Huilong D, Haoming L. A review on the patient similarity analysis based on electronic medical records. Chin J Biomed Eng. 2018;37(3):353–66. Zheng J, Ruijie Z, Huilong D, Haoming L. A review on the patient similarity analysis based on electronic medical records. Chin J Biomed Eng. 2018;37(3):353–66.
7.
go back to reference Berner ES, Lande TJL. Overview of Clinical Decision Support Systems. Healthcare Information Management Systems. 3rd ed. New York: Springer-Verlag; 2007. p. 463–77.CrossRef Berner ES, Lande TJL. Overview of Clinical Decision Support Systems. Healthcare Information Management Systems. 3rd ed. New York: Springer-Verlag; 2007. p. 463–77.CrossRef
8.
go back to reference Rossille D, Laurent JF, Burgun A. Modelling a decision-support system for oncology using rule-based and case-based reasoning methodologies. Int J Med Inform. 2005;74(2–4):299–306.CrossRef Rossille D, Laurent JF, Burgun A. Modelling a decision-support system for oncology using rule-based and case-based reasoning methodologies. Int J Med Inform. 2005;74(2–4):299–306.CrossRef
9.
go back to reference Leontjeva A, Conforti R, Francescomarino CD, et al. Complex Symbolic Sequence Encodings for Predictive Monitoring of Business Processes. In: 13th international conference on business process management. Cham: Springer; 2015. p. 297–313.CrossRef Leontjeva A, Conforti R, Francescomarino CD, et al. Complex Symbolic Sequence Encodings for Predictive Monitoring of Business Processes. In: 13th international conference on business process management. Cham: Springer; 2015. p. 297–313.CrossRef
10.
go back to reference Rojas E, Munoz-Gama J. Sepúlveda, Marcos, et al. process mining in healthcare: a literature review. J Biomed Inform. 2016;61:224–36.CrossRef Rojas E, Munoz-Gama J. Sepúlveda, Marcos, et al. process mining in healthcare: a literature review. J Biomed Inform. 2016;61:224–36.CrossRef
11.
go back to reference Wu S, Wu B, Liu M, et al. Stroke in China: advances and challenges in epidemiology, prevention, and management. Lancet Neurol. 2019;18:394–405.CrossRef Wu S, Wu B, Liu M, et al. Stroke in China: advances and challenges in epidemiology, prevention, and management. Lancet Neurol. 2019;18:394–405.CrossRef
12.
go back to reference Powers WJ, Rabinstein AA, Ackerson T, et al. 2018 guidelines for the early Management of Patients with Acute Ischemic Stroke: a guideline for healthcare professionals from the American Heart Association/American Stroke Association. Stroke. 2018;49:46–99.CrossRef Powers WJ, Rabinstein AA, Ackerson T, et al. 2018 guidelines for the early Management of Patients with Acute Ischemic Stroke: a guideline for healthcare professionals from the American Heart Association/American Stroke Association. Stroke. 2018;49:46–99.CrossRef
13.
go back to reference Schwamm LH, Fonarow GC, Reeves MJ, et al. Get with the guidelines-stroke is associated with sustained improvement in Care for Patients Hospitalized with Acute Stroke or transient ischemic attack. Circulation. 2009;119(1):107–15.CrossRef Schwamm LH, Fonarow GC, Reeves MJ, et al. Get with the guidelines-stroke is associated with sustained improvement in Care for Patients Hospitalized with Acute Stroke or transient ischemic attack. Circulation. 2009;119(1):107–15.CrossRef
14.
go back to reference Bin P, Ming L, Liying C. Chinese guidelines for diagnosis and treatment of acute ischemic stroke 2018. Chin J Neurol. 2018;51(9):666–81. Bin P, Ming L, Liying C. Chinese guidelines for diagnosis and treatment of acute ischemic stroke 2018. Chin J Neurol. 2018;51(9):666–81.
15.
go back to reference Reichert M, Weber B, et al. Enabling flexibility in process-aware information systems. Berlin Heidelberg: Springer; 2012. Reichert M, Weber B, et al. Enabling flexibility in process-aware information systems. Berlin Heidelberg: Springer; 2012.
16.
go back to reference Aalst W M P V D. Process mining: Data science in action. Berlin, Heidelberg: Springer; 2016. Aalst W M P V D. Process mining: Data science in action. Berlin, Heidelberg: Springer; 2016.
17.
go back to reference Teinemaa I, Dumas M. La Rosa M, et al. Review and Benchmark. ACM Transactions on Knowledge Discovery from Data: Outcome-Oriented Predictive Process Monitoring; 2017. Teinemaa I, Dumas M. La Rosa M, et al. Review and Benchmark. ACM Transactions on Knowledge Discovery from Data: Outcome-Oriented Predictive Process Monitoring; 2017.
18.
go back to reference Aalst WMPVD, Pesic M, Song M. Beyond Process Mining: From the Past to Present and Future. International Conference on Advanced Information Systems Engineering. Berlin, Heidelberg: Springer; 2010. Aalst WMPVD, Pesic M, Song M. Beyond Process Mining: From the Past to Present and Future. International Conference on Advanced Information Systems Engineering. Berlin, Heidelberg: Springer; 2010.
19.
go back to reference Maggi FM, Di Francescomarino C, Dumas M, et al. Predictive monitoring of business processes. CAiSE. 2014;8484:457–72. Maggi FM, Di Francescomarino C, Dumas M, et al. Predictive monitoring of business processes. CAiSE. 2014;8484:457–72.
20.
go back to reference Di Francescomarino C, Dumas M, Maggi FM, et al. Clustering-based predictive process monitoring. IEEE Trans Serv Comput. 2015;14(8):1–14. Di Francescomarino C, Dumas M, Maggi FM, et al. Clustering-based predictive process monitoring. IEEE Trans Serv Comput. 2015;14(8):1–14.
21.
go back to reference Vineeth GN. Getting started with beautiful soup. Birmingham: Packt Publishing. 2014. Vineeth GN. Getting started with beautiful soup. Birmingham: Packt Publishing. 2014.
22.
go back to reference Lima FO, Silva GS, Furie KL, et al. Field assessment stroke triage for emergency destination a simple and accurate Prehospital scale to detect large vessel occlusion strokes. Stroke. 2016;47(8):1997–2002.CrossRef Lima FO, Silva GS, Furie KL, et al. Field assessment stroke triage for emergency destination a simple and accurate Prehospital scale to detect large vessel occlusion strokes. Stroke. 2016;47(8):1997–2002.CrossRef
23.
go back to reference Cui Z, Chen W, He Y, et al. Optimal Action Extraction for Random Forests and Boosted Trees. Proceedings of the 21th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining; 2015. p. 179–88. Cui Z, Chen W, He Y, et al. Optimal Action Extraction for Random Forests and Boosted Trees. Proceedings of the 21th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining; 2015. p. 179–88.
24.
go back to reference Julian A, Trent H. scikit-learn Cookbook. 2nd ed. Birmingham: Packt Publishing; 2017. Julian A, Trent H. scikit-learn Cookbook. 2nd ed. Birmingham: Packt Publishing; 2017.
25.
go back to reference Xinfeng L, Ming L, Liying C. Chinese guidelines for the endovascular treatment of acute ischemic stroke 2018. Chin J Neurol. 2018;51(9):683–91. Xinfeng L, Ming L, Liying C. Chinese guidelines for the endovascular treatment of acute ischemic stroke 2018. Chin J Neurol. 2018;51(9):683–91.
26.
go back to reference Peleg M. Computer-interpretable clinical guidelines: a methodological review. J Biomed Inform. 2013;10(4):744–63.CrossRef Peleg M. Computer-interpretable clinical guidelines: a methodological review. J Biomed Inform. 2013;10(4):744–63.CrossRef
27.
go back to reference Choi E, Bahadori MT, Kulas JA, et al. RETAIN: An interpretable predictive model for healthcare using reverse time attention mechanism. The 30th Conference on Neural Information Processing Systems. Barcelona: IEEE; 2016. p. 1–9. Choi E, Bahadori MT, Kulas JA, et al. RETAIN: An interpretable predictive model for healthcare using reverse time attention mechanism. The 30th Conference on Neural Information Processing Systems. Barcelona: IEEE; 2016. p. 1–9.
Metadata
Title
Using predictive process monitoring to assist thrombolytic therapy decision-making for ischemic stroke patients
Authors
Haifeng Xu
Jianfei Pang
Xi Yang
Mei Li
Dongsheng Zhao
Publication date
01-07-2020
Publisher
BioMed Central
Keyword
Stroke
DOI
https://doi.org/10.1186/s12911-020-1111-6

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