Process mining of routine electronic healthcare records can help inform the management of care pathways. Combining process mining with simulation creates a rich set of tools for care pathway improvement. Healthcare process mining creates insight into the reality of patients’ journeys through care pathways while healthcare process simulation can help communicate those insights and explore “what if” options for improvement. In this paper, we outline the ClearPath method, which extends the PM2 process mining method with a process simulation approach that address issues of poor quality and missing data and supports rich stakeholder engagement. We review the literature that informed the development of ClearPath and illustrate the method with case studies of pathways for alcohol-related illness, giant-cell arteritis and functional neurological symptoms. We designed an evidence template that we use to underpin the fidelity of our simulation models by tracing each model element back to literature sources, data and process mining outputs and insights from qualitative research. Our approach may be of benefit to others using process-oriented data science to improve healthcare.
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Autor | Johnson, Owen A. Ba Dhafari, Thamer Kurniati, Angelina Fox, Frank Rojas, Eric |
Título | The ClearPath Method for Care Pathway Process Mining and Simulation |
Fecha de publicación | 2019 |
Resumen | Process mining of routine electronic healthcare records can help inform the management of care pathways. Combining process mining with simulation creates a rich set of tools for care pathway improvement. Healthcare process mining creates insight into the reality of patients’ journeys through care pathways while healthcare process simulation can help communicate those insights and explore “what if” options for improvement. In this paper, we outline the ClearPath method, which extends the PM2 process mining method with a process simulation approach that address issues of poor quality and missing data and supports rich stakeholder engagement. We review the literature that informed the development of ClearPath and illustrate the method with case studies of pathways for alcohol-related illness, giant-cell arteritis and functional neurological symptoms. We designed an evidence template that we use to underpin the fidelity of our simulation models by tracing each model element back to literature sources, data and process mining outputs and insights from qualitative research. Our approach may be of benefit to others using process-oriented data science to improve healthcare. |
Derechos | acceso abierto |
DOI | 10.1007/978-3-030-11641-5_19 |
Enlace | https://doi.org/10.1007/978-3-030-11641-5_19 http://www.scopus.com/inward/record.url?eid=2-s2.0-85061384142&partnerID=MN8TOARS |
Id de publicación en WoS | WOS:001288517800019 |
Palabra clave | Healthcare Care pathways Process mining Process simulation |
Temática | Medicina y salud |
Tipo de documento | contribución de congreso |