Process Mining in Frail Elderly Care: A Literature Review
Nik F. Farid
1,2
, Marc De Kamps
2
and Owen A. Johnson
2
1
School of Computing, College of Arts and Sciences, Universiti Utara Malaysia, Kedah, Malaysia
2
School of Computing, University of Leeds, Leeds, U.K.
Keywords: Frail Elderly, Frailty, Healthcare Service, Process Mining.
Abstract: Process mining has proved to be a valuable technique for extracting process knowledge from data within
information systems. Much work has been conducted in applying process mining to domains such as logistics,
banking, transportation and many areas of the government, including healthcare. Frail elderly people who
have an increased risk of adverse outcomes are amongst the main users of healthcare services and
understanding healthcare processes for the frail elderly is challenging because of their diverse and complex
needs combined with an often high number of co-morbidities. This paper aims to provide an overview of work
applying process mining techniques to improving the care of frail elderly people. We conducted a literature
search using broad criteria to identify 1,047 potential papers followed by a review of titles, abstract and
content which identified eight papers where process mining techniques have been successfully applied to the
care of frail elderly people. Our review shows that, to date, there has been limited application of process
mining to support this important segment of the population. We summarise the results based on five themes
that emerged: types of source data and process; geographical location; analysis methodology; medical
domain; and challenges. Our paper concludes with a discussion on the issues and opportunities for process
mining to improve the care pathways for frail elderly people.
1 INTRODUCTION
The over 60s are the main users of health and social
care (Oliver, 2009) and the number of people over 60
is expected to more than double from 962 million in
2017 to 2.1 billion by 2050 (UN, 2017). While many
adults remain in good health well over 60 there is an
increasing risk of frailty associated with aging. Frailty
is a common clinical condition among the elderly and
is often associated with stress caused by a cumulative
decline in organ and clinical functions over time
(Clegg et al, 2013). The progression of frailty can be
seen as a continuous sequence from normal ageing, to
pre-frail, frailty and finally to severe frailty (Lekan et
al, 2017). An inability to maintain normal body
functions may result in difficulty in managing with
everyday activities independently (Xue, 2011) and
increases the chance of hospitalizations,
institutionalization, and adverse health outcomes
such as falls, delirium and even mortality (Fried et al,
2001; Crandall et al, 2016; Minitski et al, 2001; Eeles
et al, 2012). Frailty progression over time is poorly
understood and there is growing interest in using
electronic health record data to understand and
identify the factors that influence this progression.
One approach can be to visualize frailty progression
using multi-dimensional data including patient
characteristics, diagnoses and medication history
from electronic health records (Chamberlain et al,
2016). Our interest is in the extent to which process
mining of these records could help improve the
understanding of frailty and the pathways of care
designed to support the needs of the frail elderly
population.
Electronic health records (EHRs) and other health
information systems store data associated with the
highly complex processes involved in delivering
health care services to patients and this data can be
used in process mining (Mans et al, 2008). Process
mining is an emerging approach that combines
business process management methods with data
mining technologies (Aalst, 2011). Process mining
aims to explore sequence of logged events over time
and to abstract generalisations of the underlying
process as process models. The approach can help
analysts discover how processes are followed in
practice, measure the conformance of real event logs
to the ideal process to identify deviations, recommend
332
Farid, N., De Kamps, M. and Johnson, O.
Process Mining in Frail Elderly Care: A Literature Review.
DOI: 10.5220/0007392903320339
In Proceedings of the 12th International Joint Conference on Biomedical Engineering Systems and Technologies (BIOSTEC 2019), pages 332-339
ISBN: 978-989-758-353-7
Copyright
c
2019 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
improvements to the process and monitor the
effectiveness of interventions (Aalst, 2011). When
applying process mining to electronic healthcare
record data we treat the pathways of care as a type of
business process (Mans et al, 2008).
The phrase process mining started to appear in the
literature around 2006 based on the work of van der
Aalst (Aalst et al, 2006) which applied data science
to businesses process improvement efforts. A wide
range of tools and approaches have subsequently been
developed and applied to corporate organizations
(Aalst et al, 2007; Aalst, 2015) and to healthcare
(Partington et al, 2015; Weber et al, 2018). Process
mining is generally based on data extracted from
information systems but related work has used data
from sensor devices that record daily activities to
develop interventions (Fatima et al, 2013) and
improve personalized care (Sztyler et al, 2015).
The Process Mining Manifesto (Aalst et al, 2011)
proposed the L* life-cycle methodology for process
mining projects. This approach consists of five
different stages (labelled 0 to 4) which are: 0) plan
and justify; 1) data extraction; 2) creating a control
flow model and connecting an event log; 3) creating
an integrated process model; and 4) providing
operational support. More recently, van Eck et al
(2015) introduced an enhanced approach called
Process Mining Project Methodology (PM
2
).
There are a number of recent literature reviews of
process mining in healthcare (Rojas, 2016; Erdogan
and Tarhan, 2018; Williams et al, 2018) and other
reviews which focus on specific healthcare specialties
such as cancer (Kurniati et al, 2016) and
cardiovascular disease (Kusuma et al, 2018).
However, until now there has been no literature
review specifically examining process mining for the
care of the frail elderly. This paper describes the
approach we adopted to identifying literature relevant
to process mining for frail elderly patients. Eight
papers were found and are discussed here.
To date there has been limited application of
process mining approaches to support this important
segment of the population. Our paper aims to initiate
discussion on the value and potential of process
mining of frail elderly care pathways and identify
opportunities to work in this field of study.
2 METHODOLOGY
The literature review was conducted in October 2018
to identify papers which describe the application of
process mining to care involving frail elderly people.
2.1 Search Process
A four stage approach for search and selection was
used (Figure 1). The first stage covered the search of
papers from medicine, technology and engineering
databases; PubMed, Medline, British Medical Journal
Open, ACM DL, Elsevier, ScienceDirect, database
systems and logic programming (DBLP), Web of
Science and Google Scholar.
Figure 1: Summary of search process.
Keywords for process mining replicated those
used in previous literature reviews (Kurniati et al,
2016; Kusuma et al, 2018). To ensure the search
obtained papers that cover all relevant conditions
related to older people a broad selection of keyword
terms was applied following the Medical Subject
Headings (MeSH) terms used in the PubMed and
Medline databases. MeSH terms provide a
comprehensive vocabulary for journal and articles
indexing in medical studies used to facilitate
searching. An additional eight keywords that are
synonyms of the initial six MeSH terms keywords
were obtained from the thesaurus website
(https://www.thesaurus.com/browse).
The following keywords were used:
("Process mining" OR "workflow
mining" OR "pathway mining") AND
("Frailty" OR "Elderly" OR “Older
Process Mining in Frail Elderly Care: A Literature Review
333
Adults” OR "Ageing" OR "Geriatric" OR
"Palliative" OR “Debility” OR
“Decrepit” OR “Deteriorate” OR
“Vulnerable” OR “Senile” OR
“Impairment” OR “Fallibility” OR
“Senescence”)
We followed the review process adopted by
Kurniati et al, (2016) where paper selections was
conducted based on title, abstract and content
checking. We checked our search results to make sure
that they included the list of papers identified on
processmining.org, the main process mining research
community web site. A careful filtering approach was
performed at each stage to ensure all potentially
relevant papers were identified. For example, papers
were passed to the next stage if insufficient
information was provided in either the title or the
abstract. Finally, an in-depth ancestor search was
conducted to identify additional relevant papers from
references in the final set.
2.2 Selection Process
The initial extracted papers were selected according
to the set of inclusion and exclusion criteria outlined.
2.2.1 Inclusion Criteria
The following were the inclusion criteria when
selecting papers for analysis has been applied to the
frail elderly domain:
IC1: Articles published from year 1998
IC2: Publication language is English
IC3: Articles published are peer-reviewed or
conference proceeding articles
IC4: Articles should include case studies where
process mining technique has been applied into
frail elderly domain
2.2.2 Exclusion Criteria
The following were the exclusion criteria applied
when choosing extracted papers:
EC1: Duplicate publication of initial searched
EC2: Books
EC3: Articles discuss case studies other than in the
frail elderly domain
2.2.3 Quality Assessment Process
The following activities were undertaken to ensure
the quality of the search process. The paper
extraction, analysis and evaluation were done
manually by the first author. Google Scholar searches
were performed in incognito mode to eliminate any
bias that might arise from browsing history that might
influence the search results. The review and the
verification of the selected publications in the final
stage was supervised by all co-authors.
3 RESULT
Eight papers were identified after a comprehensive
search. This section describes the search process and
an analysis of the selected papers. Table 1 provides
an overview of the number of papers initially
extracted and the final selection of published articles
from the different sources. The initial search retrieved
a total number of 1,091 papers from ten different
search engines. We note that zero results were
returned from BMJ Open, Elsevier/Springer, DBLP
and processmining.org sources and most final
selected papers were from the Google Scholar search.
Table 1: The number of retrieved papers.
Sources Initial Extraction Final
Selection
Google Scholar 991 5
PubMed 32 0
BMJ Open 0 0
ScienceDirect 48 1
Elsevier/Springer 0 0
ACM 6 0
Web of Science 11 0
Medline 3 2
DBLP 0 0
processmining.org 0 0
Total 1,091 8
The duplication step removed 44 papers and left
1,047 papers for the next stage. The inclusion and
exclusion criteria were applied to the remaining
papers to carefully select those papers that met with
the aim of the work. Figure 1 details the number of
papers excluded at each stage of the process based on
the inclusion and exclusion criteria.
3.1 Characterisation of Element
Analysis
The review identified eight papers and these are
presented here. A complete list of reviewed papers are
summarised in Appendix 1. A thematic analysis of the
papers identified five themes: (1) data and process
type; (2) geographic analysis; (3) methodology (4)
medical domain; (5) challenges that arose when
conducting the study.
(1) Data and Process Type: the classification of
process and data type followed the approach in Rojas
HEALTHINF 2019 - 12th International Conference on Health Informatics
334
et al, (2016) that divided sources of data extraction by
clinical or administrative healthcare dataset and the
process type categorized as clinical treatment process
or organizational process. However in this literature
review, the most commonly extracted data were from
sensors collected either from elderly behaviour living
in smart environment (Vitali and Pernici, 2015; Tax
et al, 2018); mined process data collected from an
MIT smart home dataset (Tapia et al, 2004) and from
nursing homes as in Llatas et al, (2011), Wolf et al
(2013) and Munstermann et al, (2012) for patients
who require ambulant services. Meanwhile Triki et
al, (2015) analyse data from scenario generators for
elderly people’s daily activities. There are only two
papers that directly study electronic health record
(EHR) data and one related to acute care and simple
one day surgery (Najjar et al, 2018); while Conca et
al, (2018) used administrative data, which identified
different healthcare discipline roles. The nature of the
data will determines the type of analysis possible.
Najjar et al, (2018) investigated the clinical treatment
while Conca et al, (2018) discussed the
organizational process of collaboration between
physicians, nurses and dietician. The other six papers
(Munstermann et al, 2012; Llatas et al, 2011; Tax et
al, 2018; Triki et al, 2015; Wolf et al, 2013; Vitali
and Pernici, 2015) analysed processes which looked
into daily activity of elderly people.
(2) Geographic Analysis: most papers analyse
data from Europe - Wolf et al, (2013) Munstermann
et al, (2012) from Germany; Triki et al, (2015) from
France; Vitali and Pernici, (2015) from Italy and
Llatas et al, (2011) from Spain. The other papers were
Najjar et al, (2018) from Canada, Conca et al, (2018)
from Chile and Tax et al, (2018) from the
Netherlands, but the source of data was from the
USA.
(3) Methodology: none of the papers described
followed the process mining methodologies of the L*
life cycle or PM
2
. All papers reported that they had
developed their own methodology. It was evident that
each had carried out process mining using clustering
techniques from event logs generated from either
EHRs or from sensor devices.
(4) Medical Domain: three different care
processes within the medical domain have been
investigated. Two papers (Llatas et al, 2011; Wolf et
al, 2013) analysed processes to detect or reduce the
progression of dementia. Najjar et al, (2018) obtained
data from patients who suffered from heart diseases,
whereas Concas et al, (2018) collected data from
patients who had Type 2 diabetes mellitus. The other
papers (Triki et al, 2015; Tax et al, 2018; Vitali and
Pernici, 2015; Munstermann et al, 2012) did not
describe the medical domain associated with their
work.
(5) Challenges: the challenges could be
categorized as technique, data and team limitations
from sensor devices as in Kurniati et al, (2016). The
papers working with sensor data experienced data
quality issues related to granularity (Triki et al, 2015;
Llatas et al, 2011; Wolf et al, 2013; Vitali and Pernici,
2015; Tax et al, 2018; Munstermann et al, 2012). The
other limitation was data that was incomplete or
inconsistent. This was the main issue in Conca et al,
(2018). Najjar et al, (2018) suggested pre-processing
of the extracted pathway data through multiple
iterations to narrow the model to specific elements of
interest. Conca et al, (2018) used a medical expert to
help address their process mining challenges.
3.2 Evaluation of Experimental Result
Most of the case studied in the papers concerned
traces collected from sensor devices (Wolf et al,
2013; Tax et al, 2016; Vitali and Pernici, 2015;
Munstermann et al, 2012; Llatas et al, 2011). Two
papers conducted experiments using EHR data
(Najjar et al, 2018; Conca et al, 2018) and one used a
scenario generator (Triki et al, 2015). There are two
papers that applied a clustering algorithm to cluster
set of events such as Hidden Markov Model (Najjar
et al, 2018) and a combination of flow disintegration
functionality and measuring dissimilarity based on
heuristic topological editing distance (Conca et al,
2018). Llatas et al, (2011) used a workflow mining
technique based on the Workflow Instance Acceptor
Algorithm. Wolf et al, (2013) employed classification
techniques on sensor data for activity recognition of
traces before labelling the recorded activities to be
modelled as processes. Triki et al, (2015) generated a
variety of simulations to describe different models.
Vitali and Pernici, (2015) constructed a methodology
to understand the connection between process and
events.
There are two papers that performed evaluation on
the proposed algorithms. Wolf et al, (2013) showed
that their subjective logic condition evaluator was
outperformed by both a fuzzy event assignment
method and a method that combines the FlowCon and
FlexCon algorithms. Tax et al, (2016) describes the
effect of proposed algorithms on the computation
time. Munstermann et al, (2012) used a dynamic
threshold for an F
2
-measure that combines both
precision and recall to differentiate between the
abnormal and normal days of activities. A set of
abnormal traces were artificially created from normal
sensor data by simulating four different types of
Process Mining in Frail Elderly Care: A Literature Review
335
errors - swap, remove, delay and repeated activities.
Both papers (Llatas et al, 2011; Conca et al, 2018)
employed the PALIA process discovery application
to create visualizations of the process model. The
paper by Triki et al, (2015) represented process flow
as a Petri Net. Najjar et al, (2018) created a
hierarchical visualisation of clustered processes
based on frequency analysis using abstraction and
pruning.
4 DISCUSSION
4.1 A Lack of Focus on the Frail
Elderly
Most of the finally selected papers are very recent and
this suggests that work using process mining for the
care of older adults has started to gain attention only
recently. We noted that, during the literature search,
a number of papers on assisting the living of elderly
people were also identified. Although many of these
were excluded due to our focus on process mining
techniques, it is evident that this is an important
theme where process mining could help. Several of
the process mining papers use sensor data to detect
changes in behaviour concerning the daily activities
(Munstermann et al, 2012; Triki et al, 2015; Vitali
and Pernici, 2015). Smart living environments for
elderly people can be fitted with home sensors, and
monitoring using wearable devices can include not
only the elderly but also their carers (Wolf et al, 2013)
and this allows very rich data to be gathered for
process analysis. For example, the data gathered and
analysed in nursing homes conducted by Llatas et al,
(2011) helped to detect abnormal behaviour by
elderly people who suffer from dementia and
cognitive impairment.
Some of the papers presented additional
visualizations of processes. Tax et al, (2018) used a
plot of the events from the log file as a dotted chart
with coloured dots representing events over time.
Conca et al, (2018) created process models from the
collaboration patterns they found. Najjar et al, (2018)
used the percentage of participation, referral and self-
referral to describe significant patterns.
Our search has some limitations. The review was
limited to papers on the recent status of process
mining related to frail elderly patients. The inclusion
and exclusion decisions were made by a single
reviewer. Google Scholar matching for search criteria
can have variability in its results. However the search
was comprehensive and followed well established
methods.
To date there has been no work that directly
addresses the care and management of the condition
of frailty in elderly patients. This despite the growing
number of older adults globally and the growing
recognition in the medical world that frailty demands
specific attention as a complex set of diseases and
needs. Kim and Jang (2018) have argued that,
historically, medical attention has often focused on
single diseases and the study and management of
frailty introduces a more holistic approach centred on
the patients, their experience of a range of often
interconnected diseases and the specific needs that
frail individuals have to maintain the best possible
quality of life.
5 CONCLUSION
Process mining is an emerging field within data
science and presents a fresh set of methods for
process improvement in healthcare. Our group are
developing methods for meaningful care pathway
analysis using clinical reference groups and
multidisciplinary domain experts to iteratively
improve understanding of current pathways and
identify potential improvements.
This paper has reviewed the small number of
papers that use process mining of both sensor data and
electronic health records for older adults and those
with frailty. These demonstrate the potential for
process mining to play an important role in improving
our understanding of how best to manage the care of
the frail elderly. However the opportunities for
researchers to apply process mining to improve frailty
care has not yet been explored in any detail. Our
review of the literature shows that novel approaches
are just starting to emerge. Our next step is to use
primary care data from the UK NHS to examine how
care pathways vary between different categories of
frailty over time and the relationship this has to
prescribing patterns.
ACKNOWLEDGEMENTS
The first author would like to thank the Ministry of
Higher Education of Malaysia for the sponsorship and
all the support given throughout the research. All
authors gratefully acknowledge support from the
Connected Health Cities (CHC) programme
commissioned by the Northern Health Science
Alliance (NHSA) and funded by the UK Department
of Health.
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336
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APPENDIX
Table 2.
Paper Summary
Authors Year Setting Domain Data Sources Case
Persp
ective
Challenges No of
population
Najjar et
al.
2018 Quebec,
Canada
Heart
failure
EHR of acute
care and one
day surgery
Yes Data (pre-
processing) and
team limitation
180,027
Conca et
al.
2018 Chile,
Santiago
Type 2
Diabetes
EHR of
administrative
data
No Data
(inconsistent
and/or
incomplete) and
team limitation
2,843
Llatas et
al.
2018 Spain Dementia Nursing home Yes Data limitation
- (high
granularity)
One
Tax et al. 2018 Eindhoven,
Netherlands
Elderly
behaviour
Secondary
data (Tapia &
et al., 2004)
of elderly
living in smart
environment
Yes
Data limitation
- (high
granularity)
Four
different
datasets
with
number of
events
ranging
from 220 to
1,962
Vitali and
Pernici
2016 Milano,
Italy
Elderly
behaviour
Sensor
collected from
smart living
environment
of home care
Yes Data limitation
- (high
granularity)
One person
with nine
classificatio
n of events
Triki et
al.
2015 Toulouse,
France
Elderly
behaviour
(outdoors)
Scenario
generator of
elderly e.g.
outdoor
activities
Yes Data limitation
- (high
granularity)
One person
Several
scenarios
consist of
three actors
Wolf et
al.
2013 Mainkofen,
Germany
Dementia Geriatric ward
of nursing
home
Yes Data limitation
- (high
granularity)
135
randomly
selected
person
Munsterm
ann et al.
2012 Duisburg,
Germany
Elderly
behaviour
Patient who
uses ambulant
service
Yes Data limitation
- (high
granularity)
Five
Process Mining in Frail Elderly Care: A Literature Review
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