A Context-Aware Miner for Medical Processes

Medical process mining is gaining much attention in recent years, but the available mining algorithms can hardly cope with medical application peculiarities, that require to properly contextualize process patterns. Indeed, most approaches lose the connection between a mined pattern and the relevant...

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Main Authors: Luca Canensi, Giorgio Leonardi, Stefania Montani, Paolo Terenziani
Format: Article
Language:English
Published: Italian e-Learning Association 2018-01-01
Series:Je-LKS : Journal of e-Learning and Knowledge Society
Subjects:
Online Access:https://www.je-lks.org/ojs/index.php/Je-LKS_EN/article/view/1453
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spelling doaj-20715437f35a4ce7b0d298d0f14107f32020-11-25T02:03:48ZengItalian e-Learning AssociationJe-LKS : Journal of e-Learning and Knowledge Society1826-62231971-88292018-01-0114110.20368/1971-8829/1453A Context-Aware Miner for Medical ProcessesLuca CanensiGiorgio LeonardiStefania Montani0Paolo TerenzianiUniversity of Piemonte OrientaleMedical process mining is gaining much attention in recent years, but the available mining algorithms can hardly cope with medical application peculiarities, that require to properly contextualize process patterns. Indeed, most approaches lose the connection between a mined pattern and the relevant portion of the input event log, and can have a limited precision, i.e., they can mine incorrect paths, never appearing in the input log traces. These issues can be very harmful in medical applications, where it is vital that mining results are reliable as much as possible, and properly reference the contextual information, in order to facilitate the work of physicians and hospital managers in guaranteeing the highest quality of service to patients. In this paper, we propose a novel approach to medical process mining that operates in a context-aware fashion. We show on a set of critical examples how our algorithm is able to cope with all the issues sketched above. In the future, we plan to test the approach on a real-world medical dataset, and to extend the framework in order to support ef cient and exible trace querying as well.https://www.je-lks.org/ojs/index.php/Je-LKS_EN/article/view/1453Process MiningMedical Applications
collection DOAJ
language English
format Article
sources DOAJ
author Luca Canensi
Giorgio Leonardi
Stefania Montani
Paolo Terenziani
spellingShingle Luca Canensi
Giorgio Leonardi
Stefania Montani
Paolo Terenziani
A Context-Aware Miner for Medical Processes
Je-LKS : Journal of e-Learning and Knowledge Society
Process Mining
Medical Applications
author_facet Luca Canensi
Giorgio Leonardi
Stefania Montani
Paolo Terenziani
author_sort Luca Canensi
title A Context-Aware Miner for Medical Processes
title_short A Context-Aware Miner for Medical Processes
title_full A Context-Aware Miner for Medical Processes
title_fullStr A Context-Aware Miner for Medical Processes
title_full_unstemmed A Context-Aware Miner for Medical Processes
title_sort context-aware miner for medical processes
publisher Italian e-Learning Association
series Je-LKS : Journal of e-Learning and Knowledge Society
issn 1826-6223
1971-8829
publishDate 2018-01-01
description Medical process mining is gaining much attention in recent years, but the available mining algorithms can hardly cope with medical application peculiarities, that require to properly contextualize process patterns. Indeed, most approaches lose the connection between a mined pattern and the relevant portion of the input event log, and can have a limited precision, i.e., they can mine incorrect paths, never appearing in the input log traces. These issues can be very harmful in medical applications, where it is vital that mining results are reliable as much as possible, and properly reference the contextual information, in order to facilitate the work of physicians and hospital managers in guaranteeing the highest quality of service to patients. In this paper, we propose a novel approach to medical process mining that operates in a context-aware fashion. We show on a set of critical examples how our algorithm is able to cope with all the issues sketched above. In the future, we plan to test the approach on a real-world medical dataset, and to extend the framework in order to support ef cient and exible trace querying as well.
topic Process Mining
Medical Applications
url https://www.je-lks.org/ojs/index.php/Je-LKS_EN/article/view/1453
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