Systematic Selection and Prioritization of Communication Channels in
the Healthcare Sector
Francisco Casaca and Andr
´
e Vasconcelos
INESC-ID, Instituto Superior T
´
ecnico, Avenida Rovisco Pais 1, Lisbon, Portugal
Keywords:
Communication Channels, Multi-channel, Omni-channel, Chatbot, Seamless Experience, Healthcare.
Abstract:
Many industries are using multi-channel approaches to bring users and organizations closer. The services
provided through these channels can be leveraged by using chatbots, allowing users to have simpler and more
natural interactions. However, this entails designing architectures that make services available through mul-
tiple channels, while making the users’ experiences coherent, as they switch between them. Media Richness
Theory introduces a way to classify the richness of communication channels, resorting to objective factors,
however it does not provide a systematic channel selection and prioritization process. To address these needs,
this work proposes a systematic approach to select and prioritize communication channels based on six factors:
feedback, multiple cues, personal focus, language variety, accessibility and cost. To validate this approach,
the systematic process is applied to three use cases in the healthcare domain.
1 INTRODUCTION
When interacting with organizations, users resort to
a variety of communication channels. These include
traditional channels such as face-to-face communica-
tion and phone calls, as well as digital channels such
as e-mail, web portals, mobile applications and video-
conferences (Androutsopoulou et al., 2019). These
channels are distinguished by their richness (the ca-
pability of providing information with high levels of
understanding), which depends on a variety of fac-
tors: some of them are objective, such as rapidness of
feedback, available modalities, accessibility and cost;
whereas others are subjective to the experience of the
user, such as familiarity with a particular channel or
topic.
In recent years, multi-channel and omni-channel
approaches have been implemented in many indus-
tries (Caroll and Guzm
´
an, 2015), allowing consumers
to choose from a variety of channels (according to
their preferences) and providing a seamless experi-
ence when switching between them. Furthermore,
some of the communication tasks performed through
the aforementioned digital channels have been auto-
mated by using task-oriented dialog agents (or chat-
bots), which can help users complete tasks using natu-
ral language (Jurafsky and Martin, 2000). These sys-
tems are simpler to use when compared to GUI ap-
plications because they mimic human-human interac-
tion.
Chatbots have thus the ability to leverage organi-
zations’ services by being available through multiple
digital communication channels (Androutsopoulou
et al., 2019). As a result, organizations can target a
higher percentage of the population, by offering their
services through channels that are more convenient,
natural and easy to use.
Healthcare is a domain that can benefit from
multi-channel approaches (Laranjo et al., 2018).
New channels can be easily integrated with the pre-
established workflow, providing services to patients
who would not, otherwise be able to access them
(Morris et al., 2018). They can also reduce patient
travel and allow more frequent follow-ups.
1.1 Context
When offering more channels to users, there is one
fundamental issue that arises. Since each channel has
its own characteristics, not all of them can be applied
in the same scenarios. For instance, for use cases in
which communication depends on the vocal modality,
a channel through which it is only possible to com-
municate via text is not suitable. Therefore, it is im-
portant to evaluate the suitability of channels regard-
ing the desired communication tasks. Additionally,
there is the preoccupation of evaluating which chan-
nels should be prioritized.
1.2 Objectives
The objectives of this work are thus the following:
668
Casaca, F. and Vasconcelos, A.
Systematic Selection and Prioritization of Communication Channels in the Healthcare Sector.
DOI: 10.5220/0010441706680676
In Proceedings of the 23rd International Conference on Enterprise Information Systems (ICEIS 2021) - Volume 1, pages 668-676
ISBN: 978-989-758-509-8
Copyright
c
2021 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
To assess the factors of communication channels
that influence their suitability.
To create a systematic process for organizations to
select and prioritize communication channels.
1.3 Article Organization
This article starts by discussing work related with
multi-channel architecture designs. This includes the
introduction of chatbots and understanding what use
cases are viable for a bot implementation. After-
wards, it focuses on multi-channel and omni-channel
strategies, exploring how channels are used in health-
care and what are the factors that make each channel
unique.
Following, the Communication Channel Selection
Process, which provides a way to select and prioritize
channels, is proposed.
Finally, the channel selection process is applied
to the healthcare domain and the conclusions are pre-
sented.
2 BACKGROUND AND RELATED
WORK
2.1 Chatbots
Dialog Systems: communicate with users through
different modalities (such as text or speech) and can
be classified in two categories (Jurafsky and Mar-
tin, 2000): (1) Task-oriented dialog agents help users
complete tasks using natural language, such as giving
directions, finding restaurants or making calls; and (2)
Chatbots, which have the purpose of having extended
conversations, being able to mimic human-human in-
teraction, thus providing a more natural communica-
tion. For simplicity, throughout this article, the term
chatbot is used when referring to a dialog system.
2.2 Chatbot Use Case Evaluator
The Chatbot Use Case Evaluator (Ferreira and Vas-
concelos, 2019) allows the evaluation of a set of use
cases, enabling the identification of the more suitable
ones for a bot implementation. It takes into consid-
eration three factors that must apply for a use case to
be viable: (1) General factors, that divide into well-
defined Business rules and integration with existing
systems; (2) Factors over GUI applications, which
encompass multiple steps or input parameters, notifi-
cations and authentication; and, (3) Factors over Hu-
mans, which consider the repetitiveness, consistency
and scalability of the use cases. If these three factors
verify for a certain use case, then its implementation
in a chatbot is viable.
Additionally, use cases that meet a great num-
ber of factors, or that meet factors that are of greater
importance to the organization should be prioritized.
Organizations can thus define weights for each fac-
tor and give a higher priority to the ones that have
a greater sum of weighted factors. The described
methodology was applied to three use cases: (1)
Scheduling an appointment, (2) Paying for an ap-
pointment, and (3) Medical diagnosis. After applying
the Evaluation process, (1) and (2) were the only use
cases evaluated as suitable to be implemented. In fact,
(3) was considered to not have well-defined business
rules, therefore, it did not comply with the General
factors assessment.
2.3 Multi-channel and Omni-channel
Strategies
Communication Channels are traditional offline or
digital online intermediaries used by consumers to
interact with services, facilitating the transmission
of information and content (Androutsopoulou et al.,
2019).
Multi-channel strategy is a trend in many indus-
tries toward the use of multiple channels when engag-
ing with customers. These approaches offer a diverse
experience across channels consumers can choose
from, according to their preferences. Accenture (Car-
oll and Guzm
´
an, 2015) explains the success of multi-
channel strategies with customers having more ac-
cess to the Internet and social networks, prioritizing
convenience and being constantly on the move, valu-
ing the availability of services anywhere and at any
time. However, multi-channel strategies have lim-
ited or no integration between channels, providing
a non-seamless experience as consumers switch be-
tween them. Thus, users may be forced to repeat cer-
tain procedures or receive ambiguous messages (De-
loitte, 2015).
Omni-channel strategy consists on a synchronized
operating model in which all of the organization’s
channels are aligned (Deloitte, 2015). Consequently,
it delivers a seamless, consistent and personalized
customer experience. This is achieved by integrating
different channels that can be used whenever, wher-
ever and however. Using this approach, organizations
are able to respond consistently to the consumers’
evolving needs, while enabling them with the oppor-
tunity of using the channel of their choice to access
the services they desire.
Nowadays there are several areas of activity that
Systematic Selection and Prioritization of Communication Channels in the Healthcare Sector
669
use multiple communication channels including re-
tail and commerce (Accenture, 2014), banking and
finance (Komulainen and Makkonen, 2018), educa-
tion (binti Mistar, 2016) and government organiza-
tions (Androutsopoulou et al., 2019).
2.4 Communication Channels in
Healthcare
In this section we will focus on channels patients use
when getting healthcare.
When patients have health-related issues, they
seek healthcare in order to obtain a diagnosis (Fer-
reira and Vasconcelos, 2019). Diagnosis is typically
performed in-person, however, alternative channels
have been adopted in recent years, in order to pro-
vide services to patients who would not, otherwise,
be able to access them. Video-conference has been
regarded as a suitable alternative, since it has clear
similarities when compared with the face-to-face in-
teraction. These two channels have been compared
in post-traumatic stress disorder treatment (Germain
et al., 2010). The results show that therapeutic al-
liances developed similarly in both channels.
When a patient has already been diagnosed, it is
important to conduct follow-up consultations (post-
operative follow-ups, disease management or behav-
ior change (Morris et al., 2018)). Moreover, med-
ical follow-ups are typically used to guarantee that
there are no interruptions in medications, identify the
need for adjustments, and provide a better compliance
with the surveillance of various health parameters and
healthy lifestyle habits (Ferreira, 2020). Follow-ups
are typically performed in-person, however, research
has shown that using telemedicine has the advantage
of allowing a more frequent surveillance (Ferreira,
2020). Instant messaging (IM) is also being adopted
by clinicians, in particular, dermatologists (Morris
et al., 2018).
Before attending an in-person or video-conference
consultation (either for diagnosis or follow-up), pa-
tients should book their appointments. The schedul-
ing itself is typically performed with clerks (in-person
or through phone calls) or by using clinics’ portals
and applications.
Providing healthcare services via digital online
channels is a cost effective and flexible alternative
that can be easily integrated with the pre-established
workflow. Furthermore, it has enabled clinical ser-
vices between rural areas and urban hospitals, reduc-
ing patient travel and the associated time and financial
costs (Morris et al., 2018).
2.5 Communication Channels Factors
To provide channels with higher level of richness to
Greek citizens (Androutsopoulou et al., 2019), while
accounting for the equivocality and uncertainty of
communication tasks, the authors decided to use the
notions of Media Richness Theory (Daft and Lengel,
1983) and Channel Expansion Theory (Carlson and
Zmud, 1999) to provide channels with a higher level
of richness. These theories helped them analyze com-
munication channels both from an objective and from
a subjective standpoint respectively.
In recent years, other subjective factors regard-
ing communication channels have been studied (Ishii
et al., 2019) (apart from the ones introduced by Chan-
nel Expansion Theory). These include the channels’
accessibility, competency of use, time saving and cost
saving. This research concludes that evaluating the
richness of a channel according to objective features
is not enough. In fact, it is important to regard the ob-
jective characteristics of a medium, while keeping in
mind subjective experience and perceived richness.
3 SELECTION AND
PRIORITIZATION OF
COMMUNICATION
CHANNELS APPROACH
3.1 Communication Channel Selection
Process
This section presents a systematic way to select
and prioritize channels, depending on the use case.
Firstly, factors that influence channels suitability are
discussed. And following, the evaluation process is
presented.
3.1.1 Channel Suitability Factors
Before evaluating what channels should be used for
each use case, there is the need to identify what fac-
tors influence suitability (Tables 1 and 2. Based on
(Daft and Lengel, 1983) and (Ishii et al., 2019), it is
possible to identify the following factors:
Feedback. Enables individuals to check under-
standing and correct misunderstood interpretations.
Depending on the channel, it can be classified as im-
mediate, fast, medium, slow or very slow. In a face-
to-face interaction, for instance, feedback is immedi-
ate, whereas through a formal email it is very slow
(Daft and Lengel, 1983).
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Table 1: Classification of communication channels, according to objective factors.
Channel Feedback Cues Focus Language
Face-to-face Immediate Full visual/audio Personal Body, Natural
Video-conference Immediate Limited visual/audio Personal Body, Natural
Phone call Fast Limited audio Personal Natural
Instant messaging platform Slow Limited visual/audio Personal Body, Natural, GUI
Web portal without IM Medium Limited visual Impersonal GUI
Web portal with IM Slow Limited visual/audio Impersonal Natural, GUI
Mobile app without IM Medium Limited visual Impersonal GUI
Mobile app with IM Slow Limited visual/ audio Impersonal Natural, GUI
E-mail Very slow Limited visual Impersonal Natural
SMS Slow Text Personal Natural
Table 2: Classification of communication channels, according to accessibility and cost.
Channel Accessibility Cost
Face-to-face Very low Commute
Video-conference Low Internet
Phone call Very high Per call
Instant messaging platform High Internet
Web portal without IM Medium Internet
Web portal with IM Medium Internet
Mobile app without IM High Internet
Mobile app with IM High Internet
E-mail High Internet
SMS Very high Per message
Multiple Cues. Information can be conveyed be-
yond the spoken or written message, using modali-
ties such as facial expression or tone of voice. The
considered cues in the MRT (Daft and Lengel, 1983)
are visual, audio and limited visual (referring to writ-
ten messages). However, when considering modern
communication channels these cues are not enough.
Communicating through video, for instance, repre-
sents visual and audio cues, however, it is far less rich
than communicating in-person, since it is not possible
to perceive modalities such as facial expressions with
the same level of precision. Because of this, the fol-
lowing types of cues will be considered: full visual,
full audio, limited visual, limited audio, and text.
Personal Focus. This factor is concerned with the
information source. Personal sources are related with
informal communication such as face-to-face inter-
action, while impersonal sources encompass formal
communication such as emails.
Language Variety. Each communication channel
has different possibilities of language use. Face-
to-face interaction, for instance, allows to commu-
nicate using natural and body language. However,
some mediums only allow the use of natural language
(SMS, for example). Additionally, the introduction
of instant messaging apps also allows interaction to
be performed via UI elements (Klopfenstein et al.,
2017).
Accessibility. Measures how accessible channels
are to users. Instant messaging apps, for instance,
are more accessible than face-to-face communication
(since the latter requires the interaction actors to meet
in-person), but less accessible than SMS (since IM
apps require an Internet connection).
Cost Saving. Is an important aspect for users and
organizations alike. Each communication channel has
different costs associated: the cost of a face-to-face
interaction is expressed in terms of commute; the
cost of using instant messaging apps is related with
internet access; and communicating via SMS or
phone calls has costs per message and per phone call,
respectively.
When communicating in-person (face-to-face),
the actors of the interaction have access to immediate
feedback and full visual and audio cues. The focus of
the communication is personal and they can use both
body and natural language to communicate. However,
Systematic Selection and Prioritization of Communication Channels in the Healthcare Sector
671
Figure 1: Use cases performed by patients in the healthcare domain.
communicating in-person requires the actors to meet,
therefore it has very low accessibility and costs asso-
ciated with commute.
Video-conference provides a similar experience to
face-to-face, however, it only provides limited visual
and audio cues, since the interaction occurs through a
screen. It has low accessibility since, usually, a spe-
cific software is required and has costs associated with
internet access.
Phone calls only provide limited audio cues and
the feedback is not as immediate as the previous al-
ternatives, thus being classified as fast. The focus is
still personal, however, it only allows the use of nat-
ural language. The accessibility is very high, since
the actors only need their mobile phones and no addi-
tional software is required and the costs are associated
with the cost of each call.
As for instant messaging platforms, feedback is
slower than in the previous alternatives, since it re-
quires typing a message or recording an audio or
video. It provides limited visual and audio cues,
personal focus and a great variety of language types
(body - in case of a recorded video -, natural and GUI
- it is possible to use interface elements such as quick-
replies or carousels). Their accessibility is also high,
since most people use instant messaging platforms in
their every day life, however, not as high as phone
calls, since they require Internet access.
Web portals and mobile apps are similar in fac-
tor classification. They both provide medium feed-
back, since the interaction is faster when compared
to instant messaging. Typically they rely on visual
elements, providing limited visual cues and allowing
users to communicate only via traditional GUI. Fur-
thermore, they have an impersonal focus and require
Internet access. Mobile apps are more accessible than
web portals, since they can be accessed through a mo-
bile phone.
There are also web portals and mobile apps that
support instant messaging. This is the case, for in-
stance, of applications who provide both the tradi-
tional GUI and a chat window, through which users
can communicate with a human operator or chatbot.
In this case, the factors are similar to the traditional
web portals and mobile apps, however, feedback be-
comes slower, since messages take longer to write
than GUI interaction. Moreover, they support limited
visual and audio cues and the possibility of commu-
nicating via natural language.
E-mail is the slowest of all mediums, since it usu-
ally relies on formal messages written using natural
language, which take longer to write. It is a channel
that provides limited visual cues and is impersonal.
It has high accessibility, since it is available on mo-
bile phones and its costs are associated with Internet
access.
SMS is a similar medium to instant messaging
platforms, however, its cues only include text, there-
fore it only supports natural language. Its accessibil-
ity is very high and similar to phone calls, since SMS
is available on all mobile phones and has a cost per
message sent.
It is worth mentioning that the digital channels
through which it is possible to communicate using
natural language (such as instant messaging applica-
tions or SMS) can be integrated with chatbots. For
certain use cases, the bot’s performance may present
advantages when compared with human operators,
thus providing more consistent and scalable services
(Ferreira and Vasconcelos, 2019).
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3.1.2 Channel Selection Process
Using the factors presented in the previous section,
it is possible to select and, afterwards, prioritize the
channels that are suitable for the given use cases.
Firstly, it is necessary to filter out channels that
can not be used in a use case. For instance, if a
use case has to be performed in-person, requiring full
visual and audio cues, it is possible to filter out all
other alternatives. Afterwards, the remaining chan-
nels can be prioritized. The Analytic Hierarchic Pro-
cess (AHP) (Kosteln
´
ık et al., 2019) is used to tackle
this issue, not only because it is widely use in in-
formation technology related fields when making de-
cisions, but also because it allows to measure non-
quantifiable criteria. Additionally, it has the advan-
tage of being easily understood by general audiences
(Kosteln
´
ık et al., 2019).
The channel selection process is thus defined as
follows:
1. Assessment of the channels. For each use case:
(a) Define the minimum requirements (if neces-
sary) for the first 4 factors: feedback, multiple
cues, personal focus and language variety.
(b) Filter out the channels that do not comply with
the minimum requirements.
i. If only one channel remains, the channel se-
lection process stops and that channel is con-
sidered as the only suitable option.
ii. If more than one channel remains, continue to
step 2.
2. Prioritization of the channels (using the Analyti-
cal Hierarchy Process). For each use case:
(a) Perform a series of pairwise comparisons, by
comparing all factors to one another, using the
Saaty method.
(b) Compute the priority scores.
(c) Prioritize channels that have greater priority
scores.
3.2 Healthcare Use Cases
This section presents use cases in healthcare (see Fig-
ure 1) that can benefit from the application of the
Communication Channel Selection Process. These
use case definitions are based on the Related Work
presented in Section 2.4.
3.2.1 UC1: Medical Diagnosis
Use Case Definition. Diagnosis is a patient-centered
activity that involves information gathering and clini-
cal reasoning to determine a patient’s health problem
(Ferreira and Vasconcelos, 2019). This use case is
performed by patients who have a health issue and are
looking for a diagnosis. In order to understand and di-
agnose the patient, health professionals may resort to
several approaches: (1) perform clinical history and
interview, (2) conduct physical exams, (3) perform
diagnostic testing, and (4) consulting with other clini-
cians (Ferreira and Vasconcelos, 2019). Additionally,
this use case includes ”Book Medical Appointment”
(see Figure 1). It is typically performed in-person or
through a video-conference.
3.2.2 UC2: Medical Follow-up
Use Case Definition. Follow-up is a patient-centered
activity dedicated to patients who have already been
diagnosed and are currently being monitored. Patients
may schedule an appointment beforehand (”Book
Medical Appointment”) or they may contact the
health professional directly. Furthermore, this use
case is typically performed in-person or through a
video-conference, however, instant messaging appli-
cations, SMS and e-mail have also been used in the
past.
3.2.3 UC3: Book Medical Appointment
Use Case Definition. To schedule a medical appoint-
ment, patients have to specify multiple parameters
(include ”Gather Appointment Information”, see Fig-
ure 1): the desired specialty, the desired and available
doctor, the desired and available time slot and whether
they desire a video-consultation (see Figures 2 and 3).
Some days prior to the consultation, patients are no-
tified of the upcoming appointment (include ”Notify
Patient”) and, if it is a video-conference, how to ac-
cess the consultation.
This use case is typically achieved with clerks at
the clinic (in-person or through phone calls) or using
clinic’s systems (such as portals). As for the notifica-
tions, phone calls, SMS or e-mail are usually used.
4 CHANNEL SELECTION
APPROACH IN THE
HEALTHCARE CONTEXT
The selection process is applied to the healthcare
use cases introduced previously: medical diagnosis
(UC1), medical follow-up (UC2) and appointment
scheduling (UC3).
The first step is to filter out the channels that
do not comply with the minimum requirements for
each use case. UC1 and UC2 are more complex
Systematic Selection and Prioritization of Communication Channels in the Healthcare Sector
673
Figure 2: Scheduling an appointment business process (based on (Ferreira and Vasconcelos, 2019)).
Figure 3: Gather Appointment Information subprocess (based on (Ferreira and Vasconcelos, 2019)).
and patient-centered when compared to the other use
cases. In fact, UC1 ideally requires immediate feed-
back, personal focus, body and natural language and
at least, limited visual and audio cues. This is impor-
tant because during the phase of diagnosis it is im-
portant for patients to understand the information be-
ing conveyed to them as unequivocally as possible.
Therefore, only face-to-face and videoconferencing
are suitable for UC1. UC2 is more flexible, however,
it still requires personal focus, may require body and
natural language, and at least, limited visual and au-
dio cues. As a result, face-to-face, video-conference,
phone call and instant messaging apps are suitable for
UC2. UC3 can, in theory, be performed using any of
the channels, so it requires no restrictions.
The second step is prioritizing the remaining
channels. One can start by comparing all factors in
a pairwise manner, using the Saaty method. The
computed weights, resulting from this method, can
be observed in Table 3. Next, the channels need
to be scored from 1-5 across the 6 considered fac-
tors. Based on Tables 1 and 2, it is possible to grant
with them scores shown in Table 4. Finally, the
weighted scores for each communication channel are
computed, as presented in Table 5.
From the obtained results, we can verify that UC1
and UC2 achieve similar results in terms of prioriti-
zation. Therefore, if possible, patients should opt to
have diagnosis and follow-up consultations in person
before opting for video-conferences. Additionally, for
follow-up, patients can also resort to phone calls or
instant messaging platforms.
As for UC3, all channels can, in theory, be
used. However, instant messaging applications and
web/mobile applications with instant messaging rank
higher than the other ones. This result can be at-
tributed to their higher scores in language variety, ac-
cessibility and cost, which are the most important fac-
tors when performing this use case. Therefore, when
implementing UC3 in a multi-channel architecture,
although all channels are considered suitable, these
should be prioritized.
5 CONCLUSIONS
Multi-channel and omni-channel strategies are trends
in many industries toward the use of multi-channel
approaches to bring users and organizations closer.
The services provided through these channels can
be leveraged by using chatbots, allowing the user
for a simpler and more natural experience. How-
ever, this entails designing architectures that make
services available through multiple channels, while
making the users’ experiences coherent as they switch
between them. This also means that organizations
should be ready to select suitable channels and pri-
oritize them.
As presented in the Related Work of this article,
there are a couple of works that aim to address these
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Table 3: Weights of each factor per Use Case.
Feedback Multiple cues Personal focus Language variety Accessibility Cost saving
UC1 0.234 0.234 0.234 0.234 0.042 0.021
UC2 0.228 0.228 0.228 0.228 0.062 0.024
UC3 0.061 0.025 0.028 0.289 0.298 0.298
Table 4: Classification of communication channels, according to the factors that influence suitability.
Channel Feedback
Multiple
Cues
Personal
Focus
Language
Variety
Accessibility
Cost
Saving
Face-to-face 5 5 5 5 1 1
Videoconference 4 4 4 4 2 5
Phone call 4 3 3 3 5 2
OIS 2 4 4 4 4 5
Web app (without IM) 3 2 1 1 3 5
Web app (with IM) 2 4 1 4 3 5
Mobile app (without IM) 3 2 1 1 4 5
Mobile app (with IM) 2 4 1 4 4 5
E-mail 1 2 2 3 4 5
SMS 2 1 2 3 5 3
Table 5: Channel prioritization scores.
Face-
to-
Face
Video
Confe-
rence
Phone
call
Instant
messaging
platform
Web
portal
without
IM
Web
portal
with
IM
Mobile
app
without
IM
Mobile
app
with
IM
E-mail SMS
UC1 4.743 3.933 - - - - - - - -
UC2 4.646 3.892 3.322 3.356 - - - - - -
UC3 2.611 3.698 3.356 4.172 2.934 3.79 3.232 4.088 3.716 3.454
issues. The one that is the closest to reaching this
goal (Androutsopoulou et al., 2019) aims to expand
the channels through which Greek citizens interact
with governmental services. Even though the authors
present Media Richness Theory and Channel Expan-
sion Theory as a basis for their work, it is not clear
how they are able to select and prioritize channels.
However, both these theories present ways to classify
the richness of communication channels, resorting to
objective and subjective factors.
5.1 Major Contributions
In Section 2.2 we have explored the Chatbot Use Case
Evaluator, which allows the evaluation of a set of use
cases and enables the identification of the more suit-
able ones for a bot implementation. This process, al-
lied with the Channel Selection Process, could allow
organizations to identify not only whether a use case
should be implemented in a bot, but also prioritize
channels through which a use case should be avail-
able.
To address these needs, this work proposes a sys-
tematic approach to select and prioritize communica-
tion channels based on six factors: feedback, multiple
cues, personal focus, language variety, accessibility
and cost.
Finally, the Channel Selection Process was ap-
plied to three use cases in the healthcare domain (di-
agnosis, follow-up and appointment booking). From
the obtained results, patients should opt to have di-
agnosis and follow-up consultations in-person be-
fore opting for video-conferences. Additionally, for
follow-up, patients can also resort to phone calls or
instant messaging platforms. As for the appointment
scheduling use case, all channels were concluded to
be suitable, however, instant messaging applications
and web/mobile applications with instant messaging
should be prioritized.
5.2 Limitations of the Current Study
The first limitation of this study is that, although there
are many works addressing the classification of com-
munication channels according to their richness, there
is a lack of research regarding processes for channel
Systematic Selection and Prioritization of Communication Channels in the Healthcare Sector
675
selection and prioritization. Moreover, there is also a
lack of experimental results. Therefore, it is difficult
to evaluate the results of this process when compared
with other selection methodologies.
5.3 Future Work
Future work can be developed in order to further
improve and validate the proposed channel selection
process. In terms of evaluation, another use cases
should be assessed. Furthermore, another communi-
cation channel factors can be explored in the health-
care domain (for instance, regarding the privacy and
confidentiality of the mediums).
Additionally, an architecture that is able to in-
tegrate multiple channels, while providing a seam-
less experience to users can be proposed and imple-
mented. This architecture could not only provide co-
herent information across channels, but also allow
users to finish uncompleted actions across them. Be-
sides, this implementation would allow the evaluation
of the selection process. User tests could then be con-
ducted, measuring the success and efficiency of task
completion across different channels and allowing a
performance comparison between them.
ACKNOWLEDGEMENTS
This work was supported by national funds through
Fundac¸
˜
ao para a Ci
ˆ
encia e a Tecnologia (FCT) with
reference UIDB/50021/2020 and by the European
Commission program H2020 under the grant agree-
ment 822404 (project QualiChain).
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