Cargando…
A differential process mining analysis of COVID-19 management for cancer patients
During the acute phase of the COVID-19 pandemic, hospitals faced a challenge to manage patients, especially those with other comorbidities and medical needs, such as cancer patients. Here, we use Process Mining to analyze real-world therapeutic pathways in a cohort of 1182 cancer patients of the Lau...
Autores principales: | , , , , , , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Frontiers Media S.A.
2022
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9768429/ https://www.ncbi.nlm.nih.gov/pubmed/36568192 http://dx.doi.org/10.3389/fonc.2022.1043675 |
_version_ | 1784854165892104192 |
---|---|
author | Cuendet, Michel A. Gatta, Roberto Wicky, Alexandre Gerard, Camille L. Dalla-Vale, Margaux Tavazzi, Erica Michielin, Grégoire Delyon, Julie Ferahta, Nabila Cesbron, Julien Lofek, Sébastien Huber, Alexandre Jankovic, Jeremy Demicheli, Rita Bouchaab, Hasna Digklia, Antonia Obeid, Michel Peters, Solange Eicher, Manuela Pradervand, Sylvain Michielin, Olivier |
author_facet | Cuendet, Michel A. Gatta, Roberto Wicky, Alexandre Gerard, Camille L. Dalla-Vale, Margaux Tavazzi, Erica Michielin, Grégoire Delyon, Julie Ferahta, Nabila Cesbron, Julien Lofek, Sébastien Huber, Alexandre Jankovic, Jeremy Demicheli, Rita Bouchaab, Hasna Digklia, Antonia Obeid, Michel Peters, Solange Eicher, Manuela Pradervand, Sylvain Michielin, Olivier |
author_sort | Cuendet, Michel A. |
collection | PubMed |
description | During the acute phase of the COVID-19 pandemic, hospitals faced a challenge to manage patients, especially those with other comorbidities and medical needs, such as cancer patients. Here, we use Process Mining to analyze real-world therapeutic pathways in a cohort of 1182 cancer patients of the Lausanne University Hospital following COVID-19 infection. The algorithm builds trees representing sequences of coarse-grained events such as Home, Hospitalization, Intensive Care and Death. The same trees can also show probability of death or time-to-event statistics in each node. We introduce a new tool, called Differential Process Mining, which enables comparison of two patient strata in each node of the tree, in terms of hits and death rate, together with a statistical significance test. We thus compare management of COVID-19 patients with an active cancer in the first vs. second COVID-19 waves to quantify hospital adaptation to the pandemic. We also compare patients having undergone systemic therapy within 1 year to the rest of the cohort to understand the impact of an active cancer and/or its treatment on COVID-19 outcome. This study demonstrates the value of Process Mining to analyze complex event-based real-world data and generate hypotheses on hospital resource management or on clinical patient care. |
format | Online Article Text |
id | pubmed-9768429 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2022 |
publisher | Frontiers Media S.A. |
record_format | MEDLINE/PubMed |
spelling | pubmed-97684292022-12-22 A differential process mining analysis of COVID-19 management for cancer patients Cuendet, Michel A. Gatta, Roberto Wicky, Alexandre Gerard, Camille L. Dalla-Vale, Margaux Tavazzi, Erica Michielin, Grégoire Delyon, Julie Ferahta, Nabila Cesbron, Julien Lofek, Sébastien Huber, Alexandre Jankovic, Jeremy Demicheli, Rita Bouchaab, Hasna Digklia, Antonia Obeid, Michel Peters, Solange Eicher, Manuela Pradervand, Sylvain Michielin, Olivier Front Oncol Oncology During the acute phase of the COVID-19 pandemic, hospitals faced a challenge to manage patients, especially those with other comorbidities and medical needs, such as cancer patients. Here, we use Process Mining to analyze real-world therapeutic pathways in a cohort of 1182 cancer patients of the Lausanne University Hospital following COVID-19 infection. The algorithm builds trees representing sequences of coarse-grained events such as Home, Hospitalization, Intensive Care and Death. The same trees can also show probability of death or time-to-event statistics in each node. We introduce a new tool, called Differential Process Mining, which enables comparison of two patient strata in each node of the tree, in terms of hits and death rate, together with a statistical significance test. We thus compare management of COVID-19 patients with an active cancer in the first vs. second COVID-19 waves to quantify hospital adaptation to the pandemic. We also compare patients having undergone systemic therapy within 1 year to the rest of the cohort to understand the impact of an active cancer and/or its treatment on COVID-19 outcome. This study demonstrates the value of Process Mining to analyze complex event-based real-world data and generate hypotheses on hospital resource management or on clinical patient care. Frontiers Media S.A. 2022-12-07 /pmc/articles/PMC9768429/ /pubmed/36568192 http://dx.doi.org/10.3389/fonc.2022.1043675 Text en Copyright © 2022 Cuendet, Gatta, Wicky, Gerard, Dalla-Vale, Tavazzi, Michielin, Delyon, Ferahta, Cesbron, Lofek, Huber, Jankovic, Demicheli, Bouchaab, Digklia, Obeid, Peters, Eicher, Pradervand and Michielin https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms. |
spellingShingle | Oncology Cuendet, Michel A. Gatta, Roberto Wicky, Alexandre Gerard, Camille L. Dalla-Vale, Margaux Tavazzi, Erica Michielin, Grégoire Delyon, Julie Ferahta, Nabila Cesbron, Julien Lofek, Sébastien Huber, Alexandre Jankovic, Jeremy Demicheli, Rita Bouchaab, Hasna Digklia, Antonia Obeid, Michel Peters, Solange Eicher, Manuela Pradervand, Sylvain Michielin, Olivier A differential process mining analysis of COVID-19 management for cancer patients |
title | A differential process mining analysis of COVID-19 management for cancer patients |
title_full | A differential process mining analysis of COVID-19 management for cancer patients |
title_fullStr | A differential process mining analysis of COVID-19 management for cancer patients |
title_full_unstemmed | A differential process mining analysis of COVID-19 management for cancer patients |
title_short | A differential process mining analysis of COVID-19 management for cancer patients |
title_sort | differential process mining analysis of covid-19 management for cancer patients |
topic | Oncology |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9768429/ https://www.ncbi.nlm.nih.gov/pubmed/36568192 http://dx.doi.org/10.3389/fonc.2022.1043675 |
work_keys_str_mv | AT cuendetmichela adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT gattaroberto adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT wickyalexandre adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT gerardcamillel adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT dallavalemargaux adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT tavazzierica adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT michielingregoire adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT delyonjulie adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT ferahtanabila adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT cesbronjulien adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT lofeksebastien adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT huberalexandre adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT jankovicjeremy adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT demichelirita adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT bouchaabhasna adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT digkliaantonia adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT obeidmichel adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT peterssolange adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT eichermanuela adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT pradervandsylvain adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT michielinolivier adifferentialprocessmininganalysisofcovid19managementforcancerpatients AT cuendetmichela differentialprocessmininganalysisofcovid19managementforcancerpatients AT gattaroberto differentialprocessmininganalysisofcovid19managementforcancerpatients AT wickyalexandre differentialprocessmininganalysisofcovid19managementforcancerpatients AT gerardcamillel differentialprocessmininganalysisofcovid19managementforcancerpatients AT dallavalemargaux differentialprocessmininganalysisofcovid19managementforcancerpatients AT tavazzierica differentialprocessmininganalysisofcovid19managementforcancerpatients AT michielingregoire differentialprocessmininganalysisofcovid19managementforcancerpatients AT delyonjulie differentialprocessmininganalysisofcovid19managementforcancerpatients AT ferahtanabila differentialprocessmininganalysisofcovid19managementforcancerpatients AT cesbronjulien differentialprocessmininganalysisofcovid19managementforcancerpatients AT lofeksebastien differentialprocessmininganalysisofcovid19managementforcancerpatients AT huberalexandre differentialprocessmininganalysisofcovid19managementforcancerpatients AT jankovicjeremy differentialprocessmininganalysisofcovid19managementforcancerpatients AT demichelirita differentialprocessmininganalysisofcovid19managementforcancerpatients AT bouchaabhasna differentialprocessmininganalysisofcovid19managementforcancerpatients AT digkliaantonia differentialprocessmininganalysisofcovid19managementforcancerpatients AT obeidmichel differentialprocessmininganalysisofcovid19managementforcancerpatients AT peterssolange differentialprocessmininganalysisofcovid19managementforcancerpatients AT eichermanuela differentialprocessmininganalysisofcovid19managementforcancerpatients AT pradervandsylvain differentialprocessmininganalysisofcovid19managementforcancerpatients AT michielinolivier differentialprocessmininganalysisofcovid19managementforcancerpatients |