Healthcare industry generates streams of data in different problem domains. Analysis of such data requires stream analytics tools and techniques to generate useful insights. Stream analytics involve analysis of time variant events. The specific patterns in the events can indicate some imminent outcomes such as state of a heart, etc. Therefore, novel ways to find specific patterns in the events generated by multiple sources are required. A key requirement for applying any such method is data preparation and organization to enable such analysis. In this paper, we extend the CRISP-DM process to include data preparation approaches for sequence mining. We present progression analysis, an approach for converting multidimensional time variant stre...
Analysing sequential medical data to detect hidden patterns has recently received great attention in...
With the introduction of electronic medical records, a large amount of patients’ medical data has be...
AbstractObjectiveIn order to derive data-driven insights, we develop Care Pathway Explorer, a system...
Event sequences, such as patients ’ medical histories or users ’ se-quences of product reviews, trac...
The standardization and wider use of electronic medical records (EMR) creates opportunities for bett...
Clinical pathways are highly variable and although many patients may follow similar pathway each ind...
Abstract Background The exponential growth of digital healthcare data is fueling the development of ...
Knowledge of how diseases progress and transform is crucial for clinical decision making. Frequent p...
In this work we present the results of a workflow mining approach to analyze complex temporal datase...
This research presents a methodology for health data analytics through a case study for modelling ca...
The impact of the COVID-19 pandemic involved the disruption of the processes of care and the need fo...
This thesis is available online through Linköping University Electronic Press: www.ep.liu.se Event-b...
Abstract. Sequential pattern mining is an approach to extract corre-lations among temporal data. Man...
The impact of the COVID-19 pandemic involved the disruption of the processes of care and the need fo...
Event data is present in a variety of domains such as electronic health records, daily living activ...
Analysing sequential medical data to detect hidden patterns has recently received great attention in...
With the introduction of electronic medical records, a large amount of patients’ medical data has be...
AbstractObjectiveIn order to derive data-driven insights, we develop Care Pathway Explorer, a system...
Event sequences, such as patients ’ medical histories or users ’ se-quences of product reviews, trac...
The standardization and wider use of electronic medical records (EMR) creates opportunities for bett...
Clinical pathways are highly variable and although many patients may follow similar pathway each ind...
Abstract Background The exponential growth of digital healthcare data is fueling the development of ...
Knowledge of how diseases progress and transform is crucial for clinical decision making. Frequent p...
In this work we present the results of a workflow mining approach to analyze complex temporal datase...
This research presents a methodology for health data analytics through a case study for modelling ca...
The impact of the COVID-19 pandemic involved the disruption of the processes of care and the need fo...
This thesis is available online through Linköping University Electronic Press: www.ep.liu.se Event-b...
Abstract. Sequential pattern mining is an approach to extract corre-lations among temporal data. Man...
The impact of the COVID-19 pandemic involved the disruption of the processes of care and the need fo...
Event data is present in a variety of domains such as electronic health records, daily living activ...
Analysing sequential medical data to detect hidden patterns has recently received great attention in...
With the introduction of electronic medical records, a large amount of patients’ medical data has be...
AbstractObjectiveIn order to derive data-driven insights, we develop Care Pathway Explorer, a system...