A Clinical Decision Support System for an Antimicrobial
Stewardship Program
F. Palacios
1
, M. Campos
2
, J. M. Juarez
2
, S. E. Cosgrove
3
, E. Avdic
3
, B. Canovas-Segura
2
,
A. Morales
2
, M. E. Martínez-Nuñez
1
, T. Molina-García
4
, P. García-Hierro
4
and J. Cacho-Calvo
5
1
Intensive Care Unit, University Hospital of Getafe, Getafe, Spain
2
Computer Science Faculty, University of Murcia, Murcia, Spain
3
Antimicrobial Stewardship Program, The Johns Hopkins Hospital, Baltimore, MD, U.S.A
4
Pharmacy, University Hospital of Getafe, Getafe, Spain
5
Microbiology, University Hospital of Getafe, Getafe, Spain
Keywords: Decision Support System, Antimicrobial Stewardship Program.
Abstract: The World Health Organization has declared that antimicrobial resistance is a major public health issue and
one of the three greatest threats to human health. Antimicrobial Stewardship Programs, ASP, are
institutional approaches to curb the threat of antimicrobial resistance, improve the safety of patients
receiving antibiotics, and decrease antibiotic costs. Medical informatics in all areas, particularly the
Electronic Health Record (EHR), has become a paradigm of modern medicine. An intelligent system
integrated in EHR can play an important role in facilitating ASP activities. In this article we describe the
experience of integration of a newly developed clinical decision support system, WASPSS, into an
antimicrobial stewardship program in a mid-size hospital.
1 INTRODUCTION
According to the Center of Disease Control and
Prevention (CDC), each year in the United States, at
least 2 million people become infected with bacteria
that are resistant to antibiotics and at least 23,000
people die each year as a direct result of these
infections (CDC, 2013). The European Union
estimates that 25,000 people die due to the same
problem, at a cost of 1.5 billion Euros per year
(ECDC, 2009). Many more people die from other
conditions that are complicated by an antibiotic-
resistant infection.
Antibiotics are unique drugs due to their high
efficacy in terms of the reduction of morbidity and
mortality. At the same time, they are the only drugs
in which the use of the agent in one patient can
affect use in another patient via development of
resistance. Almost all medical specialties use
antibiotics, although it had been demonstrated that
education in appropriate antibiotic use is lacking in
medical school and training programs. Choosing the
correct agent can also be impacted by this lack of
knowledge particularly given the complexities of
modern hospital patients. It is also important to bear
in mind the ethical considerations of dealing with
the global problem of antibiotic resistance while
offering the care to the individual patient.
Antimicrobial Stewardship Programs, ASPs,
have been proposed as a solution to the global threat
of antibiotic resistance (Doron and Davidson, 2011;
Nathan and Cars, 2014). ASPs have proven to be
effective at improving patient outcomes, reducing
the use of antibiotics, and controlling costs
(Carling
et al., 2003). A key issue in ASP is the use of
Clinical Decision Support Systems (CDSSs), along
with the meaningful use of Electronic Health
Records (EHRs) (Blumenthal and Tavenner, 2010)
that promote and incentivize the use of health
information technologies, and, more specifically, the
use of CDSSs in the United States.
A review of recent articles on CDSSs for
infectious disease management shows that the trend
in CDSSs is to focus on infection control,
surveillance, alerts and reporting. In general, they
are directed at a limited number of users, mainly
infection preventionists and pharmacists who use
this technology to identify patients that may need
496
Palacios, F., Campos, M., Juarez, J., Cosgrove, S., Avdic, E., Canovas-Segura, B., Morales, A., Martínez-Nuñez, M., Molina-García, T., García-Hierro, P. and Cacho-Calvo, J.
A Clinical Decision Support System for an Antimicrobial Stewardship Program.
DOI: 10.5220/0005824904960501
In Proceedings of the 9th International Joint Conference on Biomedical Engineering Systems and Technologies (BIOSTEC 2016) - Volume 5: HEALTHINF, pages 496-501
ISBN: 978-989-758-170-0
Copyright
c
2016 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
therapy modification. Nevertheless, ASP influence
goes further than those points and the CDSS should
consider other functionalities to support ASP
activities and ways of breaking the barriers of CDSS
adoption that are not yet identified.
The University Hospital of Getafe in Spain,
UHG, has recently implemented an ASP program
named PAMACTA (Program for Multidisciplinary
Assistance and Control of Antimicrobial Therapy).
The UHG, is a mid-size hospital (approx. 600 beds),
covering most medical specialties. In this paper, we
describe the practical reasons that have inspired the
development of a CDSS called WASPSS (Wise
Antimicrobial Stewardship Program Support
System). We show how the recommendations for the
ASP can be translated into an intelligent system
beyond the functionalities of the CDSS already
described in the literature.
The PAMACTA team is composed of 9
members. In the current context of economic crisis,
resources are limited, and all specialists have a
modest dedication of time to the project. To begin
with, the team considered the recommendations of
the Infectious Diseases Society of America and
Society for Hospital Epidemiology of America
(IDSA/SHEA) (Dellit et al., 2007), and the
objectives described by CDC (CDC, 2012). One of
the most important recommendations is to define a
multidisciplinary group, thus facilitating
communication and collaboration in order to
improve antibiotic use.
A well-known disadvantage when teams follow
this methodology is the amount of time required by
the ASP to review alerts: 2-3 hours/day, with an
additional 1-2 hours for interventions on actionable
alerts and documentation. In addition, the number of
alerts increases with the number of rules, which are
increasingly specific for the different protocols and
clinical conditions of the patients. The team needs
the support of specific software that will allow them
to focus on key aspects of ASP. The birth of the
WASPSS system at the same time that the team was
created provides the opportunity to focus on current
needs of an ASP team starting from scratch.
The rest of the paper is structured as follows. We
describe the functionalities and analytic capabilities
not yet identified in the CDSS literature for infection
control. In the following two sections we describe
the functionality of the WASPSS system for
supporting the physician and the ASP team in their
respective activities. The intelligent technologies
included in the WASPSS system are described, and,
finally, we provide the conclusions and contributions
of this paper.
2 CDDS FUNCTIONALITIES NOT
YET IDENTIFIED
Since the MYCIN (Buchanan and Shortliffe, 1984)
project, there has been a long history of intelligent
systems working on infection diagnosis and
treatment, dating back to the 1980s (Evans et al.,
1998; Nachtigall et al., 2014). In a previous work,
some authors identified the functional requirements
of a CDSS for infection control (Pestotnik, 2005). A
recent review (Forrest et al., 2014) compared the
functionalities of some commercial CDSSs and
EHRs for infection control. Most of them only focus
on surveillance, alerting, and reporting.
The general difficulties involved in creating
successful CDSSs have been identified (Forrest et
al., 2014), but there are no proposals from the
technical point of view to overcome the economical
and ethical barriers, alert fatigue, and the lack of any
measure of clinical impact. More specific gaps in
functionality are the limited interaction with clinical
guidelines, the difficulty of following up the patient
after the alert, and the difficulty involved in
integrating and sharing knowledge. Regarding the
last point, the number of hand-coded alerts may be
very high (e.g. 1285 best practice alerts (Schulz et
al., 2013)), and their management is very complex
since there is no easy way of updating them or
detecting conflicts.
As regards the users, most of the CDSSs are
focused on prescription support for physicians, and
on helping the treatment reviews carried out by
pharmacists (Calloway et al., 2013). Very few works
highlight the role of microbiologists in ASP (Avdic
and Carroll, 2014).
We realized that the above studies did not focus
on helping the ASP team, and that, some essential
ideas on ASP functions have been overlooked; for
example: a) CDSSs must be multidisciplinary, and
must consider a view adapted for each role; b)
CDSSs must promote and ease communication
between all the participants; c) CDSSs must provide
the most suitable information at the most appropriate
moment to each specific user; d) CDSS must help in
the education of clinical staff members in the
management of antibiotics.
A Clinical Decision Support System for an Antimicrobial Stewardship Program
497
3 SUPPORTING ATTENDING
PHYSICIAN IN THE
TREATMENT OF INFECTIONS
We now describe a process for management of
patients with infections, where we identify the
knowledge needed by the ASP members and the
support that can be offered by WASPSS in each
phase. In general, we can define three phases respect
to the treatment: a) “pre-prescription” phase where
the clinician needs clinical information to diagnose,
b) a “prescription” phase where the clinician selects
the antibiotic according to several criteria and not
only to clinical information, and c) the “post-
prescription” phase with an assessment-review loop
of clinical response.
In the first phase, “pre-prescription”, the actions
are essentially related to the clinical assessment of
the patient, and the use of protocols. The system in
this case should be responsible for proposing
protocols and, according to those protocols, propose
short-term plans and to provide reminders about
information gathering. Table 1 depicts the phases
and the possible actions considered in the CDSS.
In the second phase, a key aspect where the
WASPSS system intervenes is to integrate the
clinical guidelines with the experts’ knowledge. The
system is responsible for including information on
microbiology, pharmacodynamics, pharmacokinetics
as well as local policies of antibiotic use (e.g.
formulary restriction) is needed in the proposal for
empiric treatment. In our case, we think that visual
explanation is a simple way of showing the
rationale; for example, cost and coverage of most
frequent pathogens in the type of culture.
An important factor would be to take advantage
of microbiologists’ expertise in the interpretation of
the susceptibility tests and antibiogram. The
introduction of EUCAST expert rules (Leclercq et
al., 2013)
for intrinsic resistance and exceptional
resistance phenotypes with local adaptations could
help a better and wider interpretation of the test.
In the third phase, post-prescription, the role of
an infectious diseases specialist, microbiologist and
pharmacist in the ASP team is even more relevant.
Once the culture results with susceptibilities and
minimum inhibitory concentrations are available, it
is possible to detect any inappropriate selection of
antibiotics, and to avoid the failure of treatment due
to factors such us under-dosing (not ensuring the
elimination of the pathogen), adverse effects, or
reinfection. At this moment, recommendations such
as the early isolation of the patient according to local
policies are important. For example, a local policy in
the UHG is not to use ciprofloxacine against E.coli
in urinary tract infections due to a resistance of 43%.
By including pharmacokinetics and
pharmacodynamics as criteria, we facilitate the
selection of both drug and dosing regimen, with the
aim of inhibiting the microbe and improving the
clinical response of the patient. The dosage selected
should result in adequate therapeutic concentrations
at the site of infection for a sufficient time without
causing side effects or toxicity.
In this step, the system should enter in a loop that
should include the evolution and previous
assessment rather than simply evaluating each action
individually to avoid false positive alerts that would
eventually be overridden by the ASP team and the
physician. When the clinician actually feels a
patient-centered care culture involving close
supervision of the patient’s evolution, it is possible
to improve the treatment of the patient.
4 SUPPORTING ASP ACTIONS
Apart from patient care, the ASP team is responsible
for defining actions in a wide number of contexts
that are not directly related to antibiotic supervision.
Some of these functions are the actions related with
infection prevention, educational actions,
information diffusion, and the definition of policies.
In this section we describe four aspects where the
WASPSS system is supporting these ASP functions.
First, the CDSS must adapt to the methodology
of work proposed by the ASP team. In the case of
the UHG, the use of department representatives with
different roles and views in the CDSS is essential for
creating a general culture of rational antibiotic use,
and enable as many alerts as possible to be
monitored.
At the same time, WASPSS strengthens the
communication links between the attending
physicians and the respective experts in pharmacy,
microbiology and infectious diseases. Previous study
evaluated the effect of different methods of
communication of ASP recommendations using
variety of technologies (phone, pager, email)
(Cosgrove et al., 2007). Nevertheless, they did not
focus on the content of the messages and the positive
reinforcement, since the communication mode was
only used to send alerts or warnings. From an
educational point of view, the objective is twofold:
on the one hand to report possible errors, and, on the
other hand to provide feedback and positive
reinforcement when the patient care is going well.
HEALTHINF 2016 - 9th International Conference on Health Informatics
498
Table 1: CDSS actions in the patient management phases.
Pre-prescription Prescription Post-prescription
- Proposal of protocols
- Calculation of severity indexes
- Therapeutic threshold for antibiotic
administration
- Planning of tests and information
gathering reminders
- Interpretation of antibiogram with
expert rules
- Stratified, combined and dual cross
cumulative antibiogram
- Visualization of therapeutic options
- Sorted visualization of criteria
- Pharmacy alerts
- Alert of alteration of biochemical
control of organs
- De-escalation proposal
- Isolation proposal
- Proposal of new test
- Evaluation and prediction of
systemic inflammatory response
We have included a bidirectional communication
channel that also involves the physician in the ASP
team, and that facilitates access to clinical
information about the patient.
Another role of ASP team is to review the
current knowledge and to evaluate the quality of
care. The ASP team can leverage the analytic
capabilities of the CDSS to include local habits of
use of antibiotics and the local microbiology in the
process of reviewing the clinical guidelines and
protocols.
A third role of the ASP is the global surveillance
and monitoring of antibiotic use and resistance. The
monitoring of both clinical and process outcomes is
important for proposing new actions, and also for
removing measures or policies that are not having
any real impact on patient safety, economy or
antibiotic resistance. In this case, the use of business
intelligence technologies allows the creation of
meaningful and actionable reports that facilitate the
decision-making process.
The last activity we highlight is education.
Education on the best use of antibiotics may be one
of the highest impact activities in patient safety
through the protection of antibiotics and the
reduction of resistances. The ASP team can analyze
the use of the CDSS, the type of alerts fired, the type
of recommendations accepted and rejected, the
deviations from protocols and the local habits of use
of antibiotics in a number of dimensions, such as the
experience of the physicians, in order to assess the
competence of the different disciplines, services and
roles.
In this way, it is possible to design the content of
training activities that could reduce the distance
between junior and senior physicians, to unify
criteria and policies in the use of antibiotics, to raise
awareness on the problem of antibiotic resistance.
5 INTELLIGENT
TECHNOLOGIES IN WASP
In order to cover all the above aspects, we propose
the inclusion of three specific technologies in
WASPSS: a) knowledge management, b) intelligent
data analysis and mining, and c) visualization.
One of the main barriers in CDSSs is the
integration of data. This is partially solved by means
of interoperability, communication and vocabulary
standards. However, we think that knowledge is far
more important than data, and a knowledge
management methodology is a key element in
integrating experts’ knowledge, clinical guidelines,
local habits of use and knowledge discovered in the
database. We use the same representation framework
for clinical guidelines and protocols, rules for
adverse effect or interactions, phenotypes to create
more specific rules, and even patient clinical data.
Intelligent data analysis and data mining are used
to increase the amount of knowledge available in the
CDSS. There are a number of techniques that can be
used for a number of tasks. In this sense, we are not
only looking for classification models, but
actionable knowledge that allows the ASP to act in
any of their functions. For example, we use data
mining techniques to discover subgroups of patients
whom the antibiotic therapy is failing. Other
applications include the use the data analysis to help
the epidemiologist in the analysis of patterns of
appearance of resistances, or analysis of the use of
the CDSS to detect, for example, what antibiotics
are the causes of more alerts.
We put particular emphasis on new visualization
techniques of patient status, protocols, and, in
general, all the criteria to assist the physician in
choosing the most appropriate antibiotics. Improved
CDSSs must include innovative visualization
techniques to provide a simple and intuitive way of
summarizing as much information as possible, both
A Clinical Decision Support System for an Antimicrobial Stewardship Program
499
for helping in the prescription and for overall
monitoring.
The use of visual analytics techniques to display
patterns and models enables an agile review of
discovered knowledge and its incorporation into the
knowledge base. In this way, it is possible to analyze
and to contrast the current local use and effect of
antibiotics with respect to clinical guidelines and
protocols.
6 CONCLUSIONS
In this article we have presented the first experiences
of an ASP team in a mid-size hospital in Madrid,
Spain, and the opportunities identified in the
development of an intelligent system to help them
called WASPSS. We think the presence of a CDSS
is even more important in a context of limited
resources. In this context, as an interpretation of the
basic principle of Evidence Based Medicine, a
contribution of this paper is to highlight an extension
of the definition of ASP team that includes all the
physicians of the hospital.
From the user point of view, we highlight some
of the functionalities not previously mentioned in
other research articles on CDSS but which form part
of the current development of WASPSS:
- Multidisciplinary: current CDSSs only
consider one type of user, while the ASP is
a multidisciplinary approach by definition.
Different experts should be able to
introduce their knowledge into the system
and to have a customized view of the
information.
- Continuous: WASPSS focuses not on only
one stage of the treatment of infections, but
considers an integral view of the
management of patient and information. In
this way, we can follow up the patients and
increase patient safety, helping to solve the
ethical dilemma for the physician.
- Modular: WASPSS allows knowledge
modules to be created for the disciplines in
such a way that it can be shared between
different settings.
- Shareable: the knowledge modules can be
shared between different instances of
WASPSS in different hospitals.
- Adaptive: the knowledge modules can be
customized to the current context of the
hospital. They also allow the integration of
clinical guidelines and local protocols.
- Interoperable: although WASPSS can work
standalone, we are integrating it with the
current EHR system of the hospital.
- Accurate: we aim to avoid false positive
alarms with more personalized rules in
subgroup of patients.
- Communicative: WASPSS does not focus
only on reporting or launching alarms, but
it also promotes the bidirectional
communication between the different
clinical specialists and the ASP team.
- Documental: WASPSS provides a way of
documenting both plans and decisions on
patient management. It is essential during
night, shift changes, and weekends where
different physicians with probably less
knowledge on specific patients are on duty.
- Educational: WASPSS allows the
identification of specific points to be
included in the educational program of the
hospital. What is more, it can be used as a
teaching platform.
ACKNOWLEDGEMENTS
This work was partially funded by the Spanish
Ministry of Economy and Competitiveness under the
WASPSS project (Ref: TIN2013-45491-R) and by
European Fund for Regional Development (EFRD).
REFERENCES
CDC, 2013. Centers for Disease Control and Prevention.
Antibiotic Resistance Threats in the United States.
Available from: www.cdc.gov/drugresistance/threat-
report-2013/.
ECDC, 2009. European Centre for Disease Prevention and
Control. The bacterial challenge: time to react;.
Available from: www.ecdc.europa.eu/en/publications/
Publications/0909_TER_The_Bacterial_Challenge_Ti
me_to_React.pdf.
Doron S, Davidson LE, 2011. Antimicrobial stewardship.
Mayo Clin Proc.; 86(11): 1113-23.
Nathan C, Cars O, 2014. Antibiotic Resistance - Problems,
Progress, and Prospects. N Engl J Med.; 371:1761-3.
Carling P, Fung T, Killion A, Terrin N, Barza M, 2003.
Favorable impact of a multidisciplinary antibiotic
management program conducted during 7 years. Infect
Control Hosp Epidemiol; 24:699-706.
HEALTHINF 2016 - 9th International Conference on Health Informatics
500
Blumenthal D, Tavenner M, 2010. The "Meaningful Use"
Regulation for Electronic Health Records. N Engl J
Med.; 363 (6): 501–504.
Dellit TH, Owens RC, McGowan JE Jr, Gerding DN,
Weinstein RA, Burke JP, et al, 2007. Infectious
Diseases Society of America and the Society for
Healthcare Epidemiology of America guidelines for
developing an institutional program to enhance
antimicrobial stewardship. Clin. Infect. Dis; 44: 159 –
177.
CDC, 2012. Institute for Healthcare Improvement.
CDC/IHI Antibiotic Stewardship Driver Diagram and
Change Package. Available from: http://www.cdc.gov/
getsmart/healthcare/implementation.html.
Schulz L, Osterby K, Fox B, 2013. The use of best
practice alerts with the development of an
antimicrobial stewardship navigator to promote
antibiotic de-escalation in the electronic medical
record. Infect Control Hosp Epidemiol; 34(12): 1259-
65.
Buchanan BG, Shortliffe EH. 1984. Rule Based Expert
Systems: The Mycin Experiments of the Stanford
Heuristic Programming Project (The Addison-Wesley
Series in Artificial Intelligence). Addison-Wesley
Longman Publishing Co., Inc., Boston, MA, USA.
Evans RS, Pestotnik SL, Classen DC, Clemmer TP,
Weaver LK, Orme JF Jr, et al, 1998. A computer-
assisted management program for antibiotics and other
antiinfective agents. N Engl J Med; 338(4):232-8.
Nachtigall I, Tafelski S, Deja M, Halle E, Grebe MC,
Tamarkin A, et al, 2014. Long-term effect of
computer-assisted decision support for antibiotic
treatment in critically ill patients: a prospective
'before/after' cohort study. BMJ Open;4(12):e005370.
Pestotnik SL, 2005. Expert clinical decision support
systems to enhance antimicrobial stewardship
programs: insights from the society of infectious
diseases pharmacists; Pharmacotherapy; 25(8):1116-
25.
Forrest GN, Van Schooneveld TC, Kullar R, Schulz LT,
Duong P, and Postelnick M, 2014. Use of Electronic
Health Records and Clinical Decision Support
Systems for Antimicrobial Stewardship. Clin Infect
Dis; 59 (suppl 3): S122-S133.
Calloway S, Akilo HA, Bierman K, 2013 Impact of a
clinical decision support system on pharmacy clinical
interventions, documentation efforts, and costs. Hosp
Pharm.; 48(9):744-52.
Avdic E, Carroll KC, 2014. The Role of the Microbiology
Laboratory in Antimicrobial Stewardship Programs,
Infectious Disease Clinics of North America ;
28(2):215-235.
Leclercq R, Cantón R, Brown DF, Giske CG, Heisig P,
MacGowan AP, et al, 2013. EUCAST expert rules in
antimicrobial susceptibility testing. Clin Microbiol
Infect; 19(2):141-60.
Cosgrove SE, Patel A, Song X, Miller RE, Speck K,
Banowetz A, et al., 2007. Impact of different methods
of feedback to clinicians after postprescription
antimicrobial review based on the Centers For Disease
Control and Prevention's 12 Steps to Prevent
Antimicrobial Resistance Among Hospitalized Adults.
Infect Control Hosp Epidemiol.; 28(6):641-6.
A Clinical Decision Support System for an Antimicrobial Stewardship Program
501