<!DOCTYPE article PUBLIC "-//NLM//DTD JATS (Z39.96) Journal Archiving and Interchange DTD v1.0 20120330//EN" "JATS-archivearticle1.dtd">
<article xmlns:xlink="http://www.w3.org/1999/xlink">
  <front>
    <journal-meta />
    <article-meta>
      <title-group>
        <article-title>Towards a Data-Centric Framework for Modelling, Managing and Mining BPM Processes over Pandemic Events⋆</article-title>
      </title-group>
      <contrib-group>
        <contrib contrib-type="author">
          <string-name>Alfredo Cuzzocrea</string-name>
          <email>alfredo.cuzzocrea@unical.it</email>
          <xref ref-type="aff" rid="aff1">1</xref>
          <xref ref-type="aff" rid="aff4">4</xref>
          <xref ref-type="aff" rid="aff5">5</xref>
          <xref ref-type="aff" rid="aff6">6</xref>
        </contrib>
        <contrib contrib-type="author">
          <string-name>Islam Belmerabet</string-name>
          <email>islam.belmerabet@unical.it</email>
          <xref ref-type="aff" rid="aff1">1</xref>
          <xref ref-type="aff" rid="aff4">4</xref>
        </contrib>
        <contrib contrib-type="author">
          <string-name>Carlo Combi</string-name>
          <email>carlo.combi@univr.it</email>
          <xref ref-type="aff" rid="aff2">2</xref>
          <xref ref-type="aff" rid="aff4">4</xref>
        </contrib>
        <contrib contrib-type="author">
          <string-name>Enrico Franconi</string-name>
          <email>franconi@inf.unibz.it</email>
          <xref ref-type="aff" rid="aff3">3</xref>
          <xref ref-type="aff" rid="aff4">4</xref>
        </contrib>
        <contrib contrib-type="author">
          <string-name>Paolo Terenziani</string-name>
          <email>paolo.terenziani@unipmn.it</email>
          <xref ref-type="aff" rid="aff0">0</xref>
          <xref ref-type="aff" rid="aff4">4</xref>
        </contrib>
        <aff id="aff0">
          <label>0</label>
          <institution>DISIT Department, University of Piemonte Orientale</institution>
          ,
          <addr-line>Alessandria</addr-line>
          ,
          <country country="IT">Italy</country>
        </aff>
        <aff id="aff1">
          <label>1</label>
          <institution>Department of Computer Science, University of Paris City</institution>
          ,
          <addr-line>Paris</addr-line>
          ,
          <country country="FR">France</country>
        </aff>
        <aff id="aff2">
          <label>2</label>
          <institution>Department of Computer Science, University of Verona</institution>
          ,
          <addr-line>Verona</addr-line>
          ,
          <country country="IT">Italy</country>
        </aff>
        <aff id="aff3">
          <label>3</label>
          <institution>Faculty of Engineering, Free University of Bozen-Bolzano</institution>
          ,
          <addr-line>Bolzano</addr-line>
          ,
          <country country="IT">Italy</country>
        </aff>
        <aff id="aff4">
          <label>4</label>
          <institution>Published in the Proceedings of the Workshops of the EDBT/ICDT 2025 Joint Conference</institution>
        </aff>
        <aff id="aff5">
          <label>5</label>
          <institution>This research has been made in the context of the Excellence Chair in Big Data Management and Analytics at University of Paris City</institution>
          ,
          <addr-line>Paris</addr-line>
          ,
          <country country="FR">France</country>
        </aff>
        <aff id="aff6">
          <label>6</label>
          <institution>iDEA Lab, University of Calabria</institution>
          ,
          <addr-line>Rende</addr-line>
          ,
          <country country="IT">Italy</country>
        </aff>
      </contrib-group>
      <abstract>
        <p>The COVID-19 pandemic exposed significant shortcomings in the ability of modern healthcare information systems to manage and mitigate pandemics, especially when faced with unforeseen events. This paper addresses these shortcomings by introducing PROTECTION, a cutting-edge data-centric framework aimed at enhancing pandemic control and prevention, specifically focusing on BPM processes. PROTECTION offers a comprehensive approach to handling pandemic-related complexities. We provide an overview of PROTECTION's structure and main functions.</p>
      </abstract>
      <kwd-group>
        <kwd>eol&gt;Process Modelling</kwd>
        <kwd>Pandemic Events</kwd>
        <kwd>Pandemic Control and Prevention</kwd>
        <kwd>1</kwd>
      </kwd-group>
    </article-meta>
  </front>
  <body>
    <sec id="sec-1">
      <title>1. Introduction</title>
      <p>Pandemics changed our daily life in many different
aspects and, focusing on healthcare and clinical
aspects, highlighted the need to manage Knowledge-,
Decision- and Data-Intensive (KDDI) processes related
to the care of swab-positive patients and to the
definition of public health policies with the double
goal of preventing and controlling the pandemic
spread. Besides the short-term support, for which
Information and Communication and Artificial
Intelligence techniques can provide methodologies
and tools for collecting, analyzing, storing, sharing,
and visualizing pandemic-related information, recent
pandemic events like COVID-19 also push for
longterm research efforts devoted to study and proposal
of new approaches able to support healthcare and
clinical organizations in planning and analyzing
activities, specifically-focused to care, monitor, and
prevent pandemic events.</p>
      <p>In such context, process modeling, management,
and mining play a leading role in effectively
supporting pandemic control policies at large, with a
special emphasis on the integration of these
methodologies with the emerging big data trend, thus
achieving the innovative definition of KDDI process
modeling, management, and mining for pandemic
scenarios, like in recent COVID-19 related studies.</p>
      <p>From this last long-term perspective, we propose
PROTECTION, a framework for supporting
datacentric process modeling, management, and mining
for pandemic prevention and control. PROTECTION
focuses the attention on methodological issues in
modeling, managing and mining healthcare/clinical
KDDI processes for the management of worldwide
pandemics.</p>
      <p>More into detail, our proposed framework’s
longterm aims are towards providing:
1.
2.
3.</p>
      <p>clinical stakeholders with a set of
methodologies/tools to manage KDDI
processes for the prevention and
management of worldwide pandemics;
healthcare decision-makers with
methodologies/tools for monitoring KDDI
processes and resource consumption in their
organizations to control the care quality and
the social impact of such pandemic-related
processes;
software designers with a set of building
blocks and methodologies to support the
efficient development of KDDI process
systems devoted to managing worldwide
pandemics.</p>
      <p>Copyright © 2025 for this paper by its authors. Use permitted under
Creative Commons License Attribution 4.0 International (CC BY 4.0).</p>
      <p>As regards the proper conceptual/software
structure, PROTECTION is articulated into the
following research assets/components:
1.
2.</p>
      <p>clinical and healthcare KDDI process
modeling and management to represent
knowledge of the target application scenario,
plus its conceptual interconnections;
clinical and healthcare KDDI process mining,
to both discover implicit processes (or
process fragments) and to perform an
“aposteriori” comparison between designed
and actual processes;
specific software architecture for: (i)
modelling, managing, and evaluating
healthcare and clinical KDDI processes for
preventing and managing pandemic events,
and (ii) continuous KDDI process mining to
monitor actual processes and obtain useful
feedback for improvement.</p>
      <p>Following this main vision, this paper introduces
and discusses the framework PROTECTION. In more
detail, we describe the anatomy and main
functionalities of PROTECTION, discussing how the
proposed framework can effectively deal with the
complex domain of pandemic control and prevention.</p>
    </sec>
    <sec id="sec-2">
      <title>2. PROTECTION: The Overall View</title>
      <p>In this Section, we provide the reference architecture
of PROTECTION, which has the final goal of capturing
the many facets of pandemic prevention and control,
as also demonstrated by the recent worldwide
COVID19 epidemic. The proposed architecture is modular in
nature, and it unveils the complex interaction of
process modeling, management methods, and data
mining approaches in the context of treating such
pandemics.</p>
      <p>PROTECTION looks at pandemic events through a
scientific lens, and it aims to uncover the fundamental
processes that regulate their transmission patterns,
the efficacy of various intervention strategies, and the
critical role of data-driven methods in shaping public
health policy. Through rigorous analysis, this study
not only elucidates the complexity inherent in
pandemic management but also emphasizes the
importance of adaptable methods based on strong
analytical frameworks, with respect to the specific
case studies of pandemic prevention and control.
Despite this, the main research results can be
extended towards other different context such as
general bio-informatics, vaccine campaigns,
cancerrelated population screenings, workplace health
promotion and well-being initiatives, etc.</p>
      <p>Big Data Sources Layer. Healthcare data logs, often
derivable also from Electronic Healthcare/Medical
Records, include valuable information such as patient
demographics, clinical symptoms, laboratory findings,
treatment procedures, and utilization trends. Using
such comprehensive facts, we can build complex
models that reflect the pandemic spatio-temporal
development, evaluate the success of containment
methods, and improve resource allocation in
healthcare settings. Furthermore, using healthcare
data logs allows for the inclusion of real-time
information, permitting dynamic-modeling techniques
that react to changing epidemiological patterns and
healthcare demands. The rigorous examination of
these massive data sources provides useful insights
for optimizing pandemic response efforts and
improving public health preparedness measures.
Big Data Storage Layer. Cloud data lakes provide
scalable and cost-effective storage for
pandemicmanagement data sources such as epidemiological
surveillance, genomic sequences, healthcare records,
and social media sentiment analysis. Using the
flexibility and accessibility of Cloud infrastructures,
we can seamlessly combine diverse information,
allowing for holistic modeling techniques that reflect
the complex interaction of numerous factors
influencing disease transmission and response tactics.
Implementing Cloud data lakes provides a sound
background in empowering data-driven insights,
therefore helping to the refinement of our process
modeling framework and to the optimization of
pandemic mitigation efforts.</p>
      <p>Process Modeling Layer. Such a layer allows
stakeholders to suitably represent healthcare and
clinical processes that can be related either to the
application of clinical guidelines or the specific care
pathways within a specific healthcare organization.
Such processes need to be suitably considered and
modeled because both contain clinical tasks that need
the support of data analysis tools and can be suitably
inferred through process mining to explicitly describe
such kind of organizational knowledge.</p>
      <p>KDDI Processes Layer. Incorporating
knowledgedriven decision-making processes within data-intensive
techniques applied on extensive Cloud data lakes is a
very effective approach that can be adopted in this
layer of PROTECTION. By leveraging advanced
methodologies, such as machine learning algorithms,
statistical modeling, and natural language processing,
we can extract valuable insights from the diverse and
voluminous big datasets stored within these
repositories. By harnessing the capabilities of big data
analytics tools and techniques coupled with the
explicit representation of knowledge-driven
decisionmaking processes, we can also gain a comprehensive
understanding of the pandemic dynamics. This
facilitates informed decision-making in public health
policy formulation, resource allocation, and
intervention strategies aimed at mitigating the spread
of pandemics and minimizing their impact on society.
Big Data Analytics Layer. We can successfully
manage and analyze massive amounts of
heterogeneous big data stored in PROTECTION
repositories by employing advanced approaches such
as distributed computing frameworks (e.g., Hadoop,
Spark, Hive, etc.), scalable data processing engines, and
Cloud-native analytics services. Indeed, machine
learning algorithms, deep learning models, and
statistical techniques enable the extraction of
significant insights from a wide range of datasets,
including genomic sequences, clinical data, mobility
patterns, sentiment analysis from social media
platforms, and epidemiological records. These
analytics tools and methodologies enable us to
uncover hidden patterns, correlations, and helpful
insights, which are crucial for driving evidence-based
decision-making and establishing successful public
health initiatives in response to pandemics. In
particular, the strategy of PROTECTION consists of
exploiting recent multidimensional big data analytics
methodologies, given their proven effectiveness in
several application scenarios, including healthcare
analytics. Summarizing, these methodologies
predicate the application of knowledge discovery
techniques over multidimensionally-shaped big
datasets, to get the whole benefits from powerful
multidimensional modelling paradigms.</p>
    </sec>
    <sec id="sec-3">
      <title>3. Related Work</title>
      <p>In this Section, we provide a comprehensive analysis
of research proposals that are related to our work.
Indeed, we can identify three relevant research areas
that really influence our actions, namely: (i) pandemic
data source modeling, (ii) clinical guidelines and care
pathways representation and management
formalisms, and (iii) process modeling and mining.</p>
      <sec id="sec-3-1">
        <title>3.1. Pandemic Data Source Modelling</title>
        <p>
          How do we model pandemic data sources? This
challenging question can be investigated by carefully
looking at the recent COVID-19 pandemic outbreak.
Indeed, this critical event has attracted a lot of
research in many intertwined fields, from healthcare
and medicine to bioinformatics, data science to
artificial intelligence, risk analysis to multi-parameter
optimization, and so forth. Therefore, the issue of
modelling and making publicly available
COVID-19related data and information (e.g., [
          <xref ref-type="bibr" rid="ref1 ref2 ref3">1,2,3</xref>
          ]) has
observed a great effort from the worldwide scientific
community. Among these emerging data sources,
which contains directions for modelling pandemic
data with specific reference to COVID-19, we can
identify the following ones.
        </p>
        <p>
          First, the European Centre for Disease Prevention
and Control, an agency of the European Union,
provides a huge amount of open healthcare data
repositories describing the worldwide history of this
pandemic [
          <xref ref-type="bibr" rid="ref4">4</xref>
          ]. One of the main sources related to the
evolution of the pandemic is the COVID-19 Data
Repository at Johns Hopkins University [
          <xref ref-type="bibr" rid="ref5">5</xref>
          ]. Another
example of a repository of multiple datasets related to
healthcare and social COVID-related issues is [
          <xref ref-type="bibr" rid="ref6">6</xref>
          ]. As
for the Italian context, the Istituto Superiore di Sanità
provides information and historical data about the
COVID-19 healthcare situation [
          <xref ref-type="bibr" rid="ref3">3</xref>
          ]. Second, open
clinical data repositories are also relevant to the scope
of PROTECTION. Indeed, even though clinical datasets
related to COVID-19 are complex to build and share
for scientific purposes, some attempts have been
made to allow scientists to analyze such data (e.g.,
[
          <xref ref-type="bibr" rid="ref7 ref8 ref9">7,8,9</xref>
          ]). Further, since the treatment and prevention
of COVID-19 patients received attention from
worldwide healthcare institutions, which are
providing a sort of continuously-evolving
recommendations, these can be freely interpreted as
authoritative clinical and healthcare guidelines, which
turn out to be effective under the form of procedures
or technical guidance for different social, healthcare
and clinical contexts (e.g., [
          <xref ref-type="bibr" rid="ref10 ref11 ref12">10,11,12</xref>
          ]). Finally, even
bibliographic repositories are important sources of
knowledge and information. Indeed, different
publishers and health organizations launched
different initiatives to achieve some shared effort to
put at disposal the most recent scientific articles about
COVID-19 (e.g., [
          <xref ref-type="bibr" rid="ref2">2</xref>
          ]).
        </p>
      </sec>
      <sec id="sec-3-2">
        <title>3.2. Clinical Guidelines and Care Pathways</title>
        <p>
          Clinical guidelines (GLs) consist of therapeutic and
diagnostic recommendations encoding the “best
practice” to care for specific patient categories. GLs
are “systematically developed statements to assist
practitioner and patient decisions about appropriate
health care in specific clinical circumstances”. Care
pathways (CPs) are instead defined as “structured
multidisciplinary care plans which detail essential
steps in the care of patients with a specific clinical
problem” [
          <xref ref-type="bibr" rid="ref13">13</xref>
          ]. CPs are often the concrete application
of GLs, where it is necessary to explicitly identify
decision-based activities and all the complex clinical
knowledge and data needed to suitably perform the
planned activities. GLs and CPs are very relevant in
PROTECTION, as they support knowledge modelling
in clinical and healthcare processes.
        </p>
        <p>
          Several formalisms and tools have been proposed
to represent, execute, and verify GLs, often integrating
formalized medical knowledge with data and
workflow aspects and supporting monitoring of GLs
over time (e.g., [
          <xref ref-type="bibr" rid="ref14">14</xref>
          ]). A review of the state-of-the-art
for these models for Decision Support Systems (DSS)
has been published in [
          <xref ref-type="bibr" rid="ref15">15</xref>
          ] and [
          <xref ref-type="bibr" rid="ref16">16</xref>
          ]. When GLs are
instantiated into a CP, their execution by various
actors needs to be coordinated, and this may be done
both by computerized guideline systems and Business
Process Management (BPM) systems (e.g., [
          <xref ref-type="bibr" rid="ref17 ref18 ref19">17,18,19</xref>
          ]).
        </p>
      </sec>
      <sec id="sec-3-3">
        <title>3.3. Process Modeling and Mining</title>
        <p>
          Clinical process management may also benefit
from BPM systems [
          <xref ref-type="bibr" rid="ref19 ref20">19, 20</xref>
          ], which can rely on a
growing general interest and work on many
proprietary and open-source tools. A plethora of data
and information is generated within the execution of
the clinical processes, thus fostering the adoption of
BPM-like approaches to model and verify the
observed behavior. The intrinsic complexity of the
health field calls for models that reflect adaptivity to
change and that are able to deal with incomplete
information, i.e., models that enjoy flexibility. At the
same time, the involved entities are expected to agree
with the specific medical/healthcare knowledge,
regulations, norms, business rules, protocols, and
temporal constraints (e.g., [
          <xref ref-type="bibr" rid="ref21">21</xref>
          ]). Such GL systems
(either BPM-based or not) require medical knowledge
formalization, often relying on Ontologies. They have
been extensively used in the medical domain for many
years but still deserve research efforts, in particular
focusing on process-aware knowledge representation
and on data-intensive process models (e.g.,
[
          <xref ref-type="bibr" rid="ref23 ref24 ref25 ref26">23,24,25,26</xref>
          ]). Finally, data from already-executed
CPs would help to allow the discovery of “actual”
processes, as well as their emerging correlations with
healthcare and clinical data. Comparing designed and
“actual” processes may help discover either errors in
following a clinical guideline or new, partially
unknown, best practices that could be suitably
integrated into clinical guidelines/pathways. Recent
approaches treating complex processes try to take
advantage of distributed architectures tackling the
aspects of both mining new processes (e.g., [
          <xref ref-type="bibr" rid="ref27">27</xref>
          ]),
complex multidimensional process mining (e.g., [
          <xref ref-type="bibr" rid="ref28">28</xref>
          ]),
and monitoring the compliance of process executions
(e.g., [
          <xref ref-type="bibr" rid="ref29 ref30">29,30</xref>
          ]).
        </p>
      </sec>
    </sec>
    <sec id="sec-4">
      <title>4. PROTECTION: Methodology</title>
      <p>The proposed framework PROTECTION is part of a
long-term computer science and artificial intelligence
project focusing on theoretical, methodological, and
application-oriented aspects for developing KDDI
process systems able to deal with the complex domain
of pandemic control and prevention. In this Section,
we describe some important aspects of the emerging
methodology induced by the overall PROTECTION
proposal.</p>
      <p>From a long-term perspective, our proposed
research addresses methodological issues in
modeling, managing, and mining KDDI processes for
pandemic management in healthcare and clinical
organizations, focusing on KDDI pathways and
guidelines. Particularly, the proposed framework
focuses on process modeling, management, and
mining methodologies in order to effectively support
pandemic control policies at large, with a special
emphasis on the integration of these methodologies
with the emerging big data trend, thus achieving the
innovative definition of so-called data-centric process
modeling, management and mining for pandemic
scenarios. As a proof of concept, PROTECTION targets
the management of pandemics.</p>
      <p>While a lot of attention has arose on both
healthcare and clinical data analysis and mining for
pandemic management, little attention has been paid
to some more long-term perspectives, mainly focusing
on KDDI processes that use and generate such data.
The main goal of PROTECTION is to propose a
methodological approach and some related software
tools to face future pandemics by considering the
healthcare and clinical processes to be enacted to fight
the pandemics. Summarizing, from an attention to
data, we put the focus on KDDI processes, which have
to be suitably designed and executed to take such a
critical pandemic under control by a seamless
integration of knowledge- decision- and data-related
aspects.</p>
      <p>
        The information sources used to evaluate and tune
the PROTECTION framework are both from
openaccess repositories and from some specific clinical
and healthcare datasets. As for clinical/healthcare
guidelines and pathways, we considered guidelines
for patients from the US and Europe [
        <xref ref-type="bibr" rid="ref10 ref4">4,10</xref>
        ]. We also
used the technical guidance from WHO related to both
the clinical and healthcare actions for pandemics [
        <xref ref-type="bibr" rid="ref11">11</xref>
        ].
As for healthcare datasets, we considered the
historyoriented dataset from Johns Hopkins University [
        <xref ref-type="bibr" rid="ref5">5</xref>
        ]
for the worldwide healthcare monitoring of the
pandemic. Moreover, we considered specific
healthcare datasets related to the pharmacological
monitoring of patients receiving therapies with
monoclonal antibodies and the forthcoming
pharmacovigilance activity related to
pandemicrelated vaccines. As for clinical datasets, we used
some clinical data repositories from the pandemic
research database [
        <xref ref-type="bibr" rid="ref9">9</xref>
        ] containing electronic medical
records of (mainly) ambulatory patients.
      </p>
      <p>In summary, the main aspects of the proposed
PROTECTION framework are as follows:</p>
      <p>-Modeling and analyzing healthcare KDDI
processes dealing with the management of pandemics.
Such processes must be designed and changed
according to the possibly exponential diffusion of
pandemics. They are characterized by many
decisionand knowledge-intensive tasks. Here, integration with
data (e.g., medical records, healthcare population
data, and so on) and temporal constraints have to be
considered. The simulation of such processes needs to
be considered to estimate feasibility, resource
allocation, and so on. Different technical questions
have to be addressed in this direction: How can
medical knowledge of pandemic-related clinical
guidelines be represented? How do we merge and
evaluate healthcare and clinical guidelines for
pandemic prevention and patient management? How
do healthcare processes change according to the
evolution of the pandemic? May we specialize
healthcare pandemic control processes according to
data from the vaccine pharmacovigilance?</p>
      <p>-Pandemic-related process mining is used to
discover process models from logs. Whenever it is not
possible to have log files to be analyzed in order to
mine process models, the main idea is to consider
both medical and healthcare records as an indirect
kind of log, where therapeutic and specialized exams
represent actions, main diagnoses represent
(possibly) intermediate states of patients, and
decisions for different allowed
therapies/interventions/pathways represent
knowledge-intensive decisional tasks. Here questions
are: May we discover some recurrent patterns of
therapeutic actions/decisions not considered in the
guidelines? Are the tasks recorded in medical records
confirming the main indications of clinical and
healthcare guidelines? Are there some suggestions in
guidelines never considered in the medical records?
May we suggest improvements to the guidelines
based on the task patterns discovered from medical
records? May we discover specific recurring care
patterns for specific high-risk patients undergoing
monoclonal antibody therapies?</p>
      <p>Reaching such goals would lead to significant
advantages for the National Healthcare System (NHS)
in promptly managing and preventing pandemic
events. The progressive adoption of ICT techniques, in
fact, can play a strategic role in the current
rationalization process aimed at guaranteeing
highquality services while reducing costs, even in a
pandemic event, where the management and
prevention have to be enacted and monitored in a fast
and dynamic way, to promptly react to diseases
spreading with an exponential increase. Such a
framework motivates the growing attention towards
clinical and healthcare process definition and
analysis.</p>
      <p>PROTECTION pursues such goals through the
development of several advanced and innovative
research activities. In particular, process management
in the clinical and healthcare domains is a significant
topic, and we aim to bring new challenges in the
following research areas: ontological tools, languages
based on different kinds of logics, data models, and
design tools for capturing events and temporal
constraints, temporal extensions of GLs and CPs
representation formalisms, constraint-based
temporal reasoning, design-time and run-time GL
verification, multidimensional analysis of healthcare
processes, declarative and incremental process
mining methods.</p>
      <p>It should be noted here that, even if the
abovementioned aspects are strictly related, they have been
considered in isolation and not yet applied
cooperatively to managing worldwide pandemics.
Starting from this limitation, PROTECTION aims to
provide a set of methodologies and prototype
software tools for the process-oriented prevention
and management of worldwide pandemics.</p>
    </sec>
    <sec id="sec-5">
      <title>5. Conclusions</title>
      <p>This paper has proposed PROTECTION, an innovative
data-centric
process-modelling-managing-andmining framework for pandemic control and
prevention that is based on the well-known KDDI
processes paradigm. Future work is actually focused
on further experimentally testing the capabilities of
the framework.</p>
    </sec>
    <sec id="sec-6">
      <title>Acknowledgements</title>
      <p>This research is supported by the ICSC National
Research Centre for High Performance Computing,
Big Data and Quantum Computing within the
NextGenerationEU program (Project Code: PNRR
CN00000013).</p>
    </sec>
  </body>
  <back>
    <ref-list>
      <ref id="ref1">
        <mixed-citation>
          [1]
          <string-name>
            <surname>Open-Access Data</surname>
          </string-name>
          and Computational Resources to Address COVID-
          <volume>19</volume>
          . https://datascience.nih.gov/covid-19
          <string-name>
            <surname>-</surname>
          </string-name>
          openaccess-resources.
        </mixed-citation>
      </ref>
      <ref id="ref2">
        <mixed-citation>
          [2]
          <string-name>
            <given-names>The</given-names>
            <surname>World Health Organization</surname>
          </string-name>
          ,
          <source>Global Research on Coronavirus Disease (COVID19)</source>
          . https://www.who.int/emergencies/disease s/novel-coronavirus
          <article-title>-2019/global-researchon-novel-coronavirus-2019-ncov</article-title>
          .
        </mixed-citation>
      </ref>
      <ref id="ref3">
        <mixed-citation>
          <article-title>[3] Epidemiology for Public Health. Istituto Superiore di Sanità</article-title>
          . https://www.epicentro.iss.it/coronavirus/.
        </mixed-citation>
      </ref>
      <ref id="ref4">
        <mixed-citation>
          <article-title>[4] European Centre for Disease Prevention and Control, Coronavirus Threats</article-title>
          and Outbreaks: COVID-19 Pandemic. https://www.ecdc.europa.eu/en/covid-19- pandemic.
        </mixed-citation>
      </ref>
      <ref id="ref5">
        <mixed-citation>
          [5]
          <string-name>
            <given-names>Johns</given-names>
            <surname>Hopkins</surname>
          </string-name>
          University, COVID-19
          <article-title>Data Repository by the Center for Systems Science</article-title>
          and Engineering (CSSE). https://github.com/CSSEGISandData/COVI D-
          <volume>19</volume>
          .
        </mixed-citation>
      </ref>
      <ref id="ref6">
        <mixed-citation>
          [6]
          <string-name>
            <surname>The</surname>
            <given-names>COVID</given-names>
          </string-name>
          <article-title>-19 Data Repository</article-title>
          . https://www.openicpsr.org/openicpsr/cov id19.
        </mixed-citation>
      </ref>
      <ref id="ref7">
        <mixed-citation>
          [7]
          <string-name>
            <given-names>Carbon</given-names>
            <surname>Health</surname>
          </string-name>
          and
          <article-title>Braid Health, Coronavirus Disease 2019 Clinical Data Repository</article-title>
          . https://covidclinicaldata.org.
        </mixed-citation>
      </ref>
      <ref id="ref8">
        <mixed-citation>
          <article-title>[8] Data Science for COVID-19 (DS4C) in South Korea</article-title>
          . https://www.kaggle.com/kimjihoo/corona virusdataset.
        </mixed-citation>
      </ref>
      <ref id="ref9">
        <mixed-citation>[9] COVID-19 Research Database. https://covid19researchdatabase.org/.</mixed-citation>
      </ref>
      <ref id="ref10">
        <mixed-citation>
          [10]
          <string-name>
            <surname>NIH</surname>
          </string-name>
          ,
          <string-name>
            <surname>Coronavirus</surname>
            <given-names>Disease 2019</given-names>
          </string-name>
          (
          <article-title>COVID-19) Treatment Guidelines</article-title>
          . https://pubmed.ncbi.
          <source>nlm.nih.gov/3934869</source>
          <volume>1</volume>
          /.
        </mixed-citation>
      </ref>
      <ref id="ref11">
        <mixed-citation>
          [11] WHO, Country &amp; Technical Guidance - Coronavirus
          <source>Disease (COVID-19)</source>
          . https://www.who.int/emergencies/disease s/novel-coronavirus-2019/technicalguidance-publications.
        </mixed-citation>
      </ref>
      <ref id="ref12">
        <mixed-citation>
          [12]
          <string-name>
            <given-names>European</given-names>
            <surname>Respiratory</surname>
          </string-name>
          <string-name>
            <surname>Society</surname>
          </string-name>
          , COVID-
          <volume>19</volume>
          : Guidelines and
          <string-name>
            <given-names>Recommendations</given-names>
            <surname>Directory</surname>
          </string-name>
          . https://www.ersnet.org/covid19/covid-19
          <string-name>
            <surname>-</surname>
          </string-name>
          guidelines-andrecommendations-directory/.
        </mixed-citation>
      </ref>
      <ref id="ref13">
        <mixed-citation>
          [13]
          <string-name>
            <surname>Campbell</surname>
            ,
            <given-names>H.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Hotchkiss</surname>
            ,
            <given-names>R.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Bradshaw</surname>
            ,
            <given-names>N.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Porteous</surname>
            ,
            <given-names>M.</given-names>
          </string-name>
          :
          <article-title>Integrated Care Pathways</article-title>
          .
          <source>British Medical Journal</source>
          <volume>316</volume>
          (
          <issue>7125</issue>
          ),
          <fpage>133</fpage>
          -
          <lpage>137</lpage>
          (
          <year>1998</year>
          ).
        </mixed-citation>
      </ref>
      <ref id="ref14">
        <mixed-citation>
          [14]
          <string-name>
            <surname>Combi</surname>
            ,
            <given-names>C.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Keravnou-Papailiou</surname>
            ,
            <given-names>E.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Shahar</surname>
            ,
            <given-names>Y.</given-names>
          </string-name>
          :
          <source>Temporal Information Systems in Medicine. Springer Science &amp; Business Media</source>
          (
          <year>2010</year>
          ).
        </mixed-citation>
      </ref>
      <ref id="ref15">
        <mixed-citation>
          [15]
          <string-name>
            <surname>Peleg</surname>
            ,
            <given-names>M.</given-names>
          </string-name>
          :
          <article-title>Computer-Interpretable Clinical Guidelines: A Methodological Review</article-title>
          .
          <source>Journal of Biomedical Informatics</source>
          <volume>46</volume>
          (
          <issue>4</issue>
          ),
          <fpage>744</fpage>
          -
          <lpage>763</lpage>
          (
          <year>2013</year>
          ).
        </mixed-citation>
      </ref>
      <ref id="ref16">
        <mixed-citation>
          [16]
          <string-name>
            <surname>Wright</surname>
            ,
            <given-names>A.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Sittig</surname>
            ,
            <given-names>D. F.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Ash</surname>
            ,
            <given-names>J. S.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Feblowitz</surname>
            ,
            <given-names>J.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Meltzer</surname>
            ,
            <given-names>S.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>McMullen</surname>
            ,
            <given-names>C.</given-names>
          </string-name>
          , et al.:
          <article-title>Development and Evaluation of a Comprehensive Clinical Decision Support Taxonomy: Comparison of Front-End Tools in Commercial and Internally Developed Electronic Health Record Systems</article-title>
          .
          <source>Journal of the American Medical Informatics Association</source>
          <volume>18</volume>
          (
          <issue>3</issue>
          ),
          <fpage>232</fpage>
          -
          <lpage>242</lpage>
          (
          <year>2011</year>
          ).
        </mixed-citation>
      </ref>
      <ref id="ref17">
        <mixed-citation>
          [17]
          <string-name>
            <surname>Peleg</surname>
            ,
            <given-names>M.:</given-names>
          </string-name>
          <article-title>Clinical Decision Support: The Road Ahead</article-title>
          . Guidelines and
          <string-name>
            <given-names>Workflow</given-names>
            <surname>Models</surname>
          </string-name>
          . San Diego, US, Elsevier,
          <fpage>281</fpage>
          -
          <lpage>306</lpage>
          (
          <year>2007</year>
          ).
        </mixed-citation>
      </ref>
      <ref id="ref18">
        <mixed-citation>
          [18]
          <string-name>
            <surname>Quaglini</surname>
            ,
            <given-names>S.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Stefanelli</surname>
            ,
            <given-names>M.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Lanzola</surname>
            ,
            <given-names>G.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Caporusso</surname>
            ,
            <given-names>V.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Panzarasa</surname>
            ,
            <given-names>S.</given-names>
          </string-name>
          :
          <source>Flexible Guideline-Based Patient Careflow Systems. Artificial Intelligence in Medicine</source>
          <volume>22</volume>
          (
          <issue>1</issue>
          ),
          <fpage>65</fpage>
          -
          <lpage>80</lpage>
          (
          <year>2001</year>
          ).
        </mixed-citation>
      </ref>
      <ref id="ref19">
        <mixed-citation>
          [19]
          <string-name>
            <surname>Combi</surname>
            ,
            <given-names>C.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Oliboni</surname>
            ,
            <given-names>B.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Zardini</surname>
            ,
            <given-names>A.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Zerbato</surname>
            ,
            <given-names>F.</given-names>
          </string-name>
          :
          <article-title>A Methodological Framework for the Integrated Design of Decision-Intensive Care Pathways-An Application to the Management of COPD Patients</article-title>
          .
          <source>Journal of Healthcare Informatics Research</source>
          <volume>1</volume>
          ,
          <fpage>157</fpage>
          -
          <lpage>217</lpage>
          (
          <year>2017</year>
          ).
        </mixed-citation>
      </ref>
      <ref id="ref20">
        <mixed-citation>
          [20]
          <string-name>
            <surname>Combi</surname>
            ,
            <given-names>C.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Gambini</surname>
            ,
            <given-names>M.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Migliorini</surname>
            ,
            <given-names>S.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Posenato</surname>
          </string-name>
          , R.:
          <article-title>Representing Business Processes through a Temporal Data-Centric Workflow Modeling Language: An Application to the Management of Clinical Pathways</article-title>
          .
          <source>IEEE Trans. on Sys., Man, and Cybernetics: Systems</source>
          <volume>44</volume>
          (
          <issue>9</issue>
          ),
          <fpage>1182</fpage>
          -
          <lpage>1203</lpage>
          (
          <year>2014</year>
          ).
        </mixed-citation>
      </ref>
      <ref id="ref21">
        <mixed-citation>
          [21]
          <string-name>
            <surname>Chesani</surname>
            ,
            <given-names>F.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Mello</surname>
            ,
            <given-names>P.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Montali</surname>
            ,
            <given-names>M.</given-names>
          </string-name>
          :
          <article-title>Abductive Reasoning on Compliance Monitoring: Balancing Flexibility and Regulation</article-title>
          .
          <source>In Foundations of Intelligent Systems: 23rd International Symposium, ISMIS</source>
          <year>2017</year>
          , pp.
          <fpage>3</fpage>
          -
          <lpage>16</lpage>
          , (
          <year>2017</year>
          ).
        </mixed-citation>
      </ref>
      <ref id="ref22">
        <mixed-citation>
          [22]
          <string-name>
            <surname>Austin</surname>
            ,
            <given-names>C.A.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Mohottige</surname>
            ,
            <given-names>D.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Sudore</surname>
            ,
            <given-names>R.L.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Smith</surname>
            ,
            <given-names>A.K.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Hanson</surname>
          </string-name>
          , L.C.:
          <article-title>Tools to Promote Shared Decision Making in Serious Illness: A Systematic Review</article-title>
          .
          <source>JAMA Internal Medicine</source>
          <volume>175</volume>
          (
          <issue>7</issue>
          ),
          <fpage>1213</fpage>
          -
          <lpage>1221</lpage>
          (
          <year>2015</year>
          ).
        </mixed-citation>
      </ref>
      <ref id="ref23">
        <mixed-citation>
          [23]
          <string-name>
            <surname>Schulz</surname>
            ,
            <given-names>S.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Jansen</surname>
            ,
            <given-names>L.</given-names>
          </string-name>
          :
          <article-title>Formal Ontologies in Biomedical Knowledge Representation</article-title>
          .
          <source>Yearbook of Medical Informatics</source>
          <volume>22</volume>
          (
          <issue>1</issue>
          ),
          <fpage>132</fpage>
          -
          <lpage>146</lpage>
          (
          <year>2013</year>
          ).
        </mixed-citation>
      </ref>
      <ref id="ref24">
        <mixed-citation>
          [24]
          <string-name>
            <surname>Cohn</surname>
            ,
            <given-names>D.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Hull</surname>
            ,
            <given-names>R.</given-names>
          </string-name>
          <string-name>
            <surname>Business</surname>
          </string-name>
          <article-title>Artifacts: A DataCentric Approach to Modeling Business Operations and Processes</article-title>
          .
          <source>IEEE Data Eng. Bull</source>
          .
          <volume>32</volume>
          (
          <issue>3</issue>
          ),
          <fpage>3</fpage>
          -
          <lpage>9</lpage>
          (
          <year>2009</year>
          ).
        </mixed-citation>
      </ref>
      <ref id="ref25">
        <mixed-citation>
          [25]
          <string-name>
            <surname>Calvanese</surname>
            ,
            <given-names>D.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>De Giacomo</surname>
            ,
            <given-names>G.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Montali</surname>
            ,
            <given-names>M.</given-names>
          </string-name>
          :
          <article-title>Foundations of data-aware process analysis: a database theory perspective</article-title>
          .
          <source>In Proceedings of the 32nd ACM SIGMODSIGACT-SIGAI Symposium on Principles of Database Systems</source>
          , pp.
          <fpage>1</fpage>
          -
          <lpage>12</lpage>
          (
          <year>2013</year>
          ).
        </mixed-citation>
      </ref>
      <ref id="ref26">
        <mixed-citation>
          [26]
          <string-name>
            <surname>Artale</surname>
            ,
            <given-names>A.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Kovtunova</surname>
            ,
            <given-names>A.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Montali</surname>
          </string-name>
          , M.,
          <string-name>
            <surname>van der Aalst</surname>
          </string-name>
          , W.M.:
          <article-title>Modeling and reasoning over declarative data-aware processes with object-centric behavioral constraints</article-title>
          .
          <source>In Business Process Management: 17th International Conference, BPM 2019</source>
          , pp.
          <fpage>139</fpage>
          -
          <lpage>156</lpage>
          , (
          <year>2019</year>
          ).
        </mixed-citation>
      </ref>
      <ref id="ref27">
        <mixed-citation>
          [27]
          <string-name>
            <surname>Sun</surname>
            ,
            <given-names>S. X.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Zeng</surname>
            ,
            <given-names>Q.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Wang</surname>
            ,
            <given-names>H.</given-names>
          </string-name>
          :
          <article-title>Process-MiningBased Workflow Model Fragmentation for Distributed Execution</article-title>
          .
          <source>IEEE Trans. on Sys</source>
          .,
          <string-name>
            <surname>Man</surname>
          </string-name>
          , and
          <string-name>
            <surname>Cybernetics-Part</surname>
            <given-names>A</given-names>
          </string-name>
          :
          <source>Systems and Humans</source>
          <volume>41</volume>
          (
          <issue>2</issue>
          ),
          <fpage>294</fpage>
          -
          <lpage>310</lpage>
          (
          <year>2010</year>
          ).
        </mixed-citation>
      </ref>
      <ref id="ref28">
        <mixed-citation>
          [28]
          <string-name>
            <surname>Knoll</surname>
            ,
            <given-names>D.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Reinhart</surname>
            ,
            <given-names>G.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Prüglmeier</surname>
            ,
            <given-names>M.</given-names>
          </string-name>
          :
          <article-title>Enabling Value Stream Mapping for Internal Logistics using Multidimensional Process Mining</article-title>
          .
          <source>Expert Systems with Applications</source>
          <volume>124</volume>
          ,
          <fpage>130</fpage>
          -
          <lpage>142</lpage>
          (
          <year>2019</year>
          ).
        </mixed-citation>
      </ref>
      <ref id="ref29">
        <mixed-citation>
          [29]
          <string-name>
            <surname>Rinderle-Ma</surname>
            ,
            <given-names>S.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Winter</surname>
            ,
            <given-names>K.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Benzin</surname>
          </string-name>
          , J.-V.:
          <article-title>Predictive Compliance Monitoring in Process-Aware Information Systems: State of The Art</article-title>
          , Functionalities, Research Directions.
          <source>Information Systems</source>
          <volume>115</volume>
          , art.
          <volume>102210</volume>
          (
          <year>2023</year>
          ).
        </mixed-citation>
      </ref>
      <ref id="ref30">
        <mixed-citation>
          [30]
          <string-name>
            <surname>Loreti</surname>
            ,
            <given-names>D.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Chesani</surname>
            ,
            <given-names>F.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Ciampolini</surname>
            ,
            <given-names>A.</given-names>
          </string-name>
          ,
          <string-name>
            <surname>Mello</surname>
            ,
            <given-names>P.:</given-names>
          </string-name>
          <article-title>A Distributed Approach to Compliance Monitoring of Business Process Event Streams</article-title>
          .
          <source>Future Generation Computer Systems</source>
          <volume>82</volume>
          ,
          <fpage>104</fpage>
          -
          <lpage>118</lpage>
          (
          <year>2018</year>
          ).
        </mixed-citation>
      </ref>
    </ref-list>
  </back>
</article>