Emotional Resiliency of Families Dealing with Autism in
Social Media
Amit Saha
1
and Nitin Agarwal
2
1
Center for Distance Health, University of Arkansas Medical Science, Little Rock, Arkansas, U.S.A.
2
University of Arkansas at Little Rock, Arkansas, U.S.A.
Keywords: Autism, Stress, Twitter, Blogger, Community, Social Support, Health 2.0, Social Media.
Abstract: Nowadays online social media is used extensively by families dealing with various health issues, such as
autism, diabetes, obesity, etc., to share experiences with other members of the community. The interaction
between members of health community can be systematically analyzed to build a knowledge base for others
who are dealing with the same health conditions. In this study, we analyze one such health community, i.e.,
the autism community and evaluate stress dispersed among the community members using social network
analysis along with sentiment analysis methodology. We found that the autism blogger community provides
nominal stress during the interaction with other community members. Differences across various classified
groups like autistic bloggers, mother bloggers with autistic kids, father bloggers with autistic kids, and autism
support group blogs in different social media platforms (blogs and Twitter) were analyzed in context of stress.
Families dealing with autism have a better quality of life with reduced stress by interacting with fellow autism
community members in social media.
1 INTRODUCTION
Social media has provided users an open platform for
discussions, communication, and information
exchange on various health related topics. Families
dealing with health issues like autism use social
media almost daily to share their experiences with
others. The information exchanged by the interactions
of individuals dealing with same health problems are
archived by default and has become an immense
source of knowledge for others dealing with the same
situation.
Approximately 1 in 68 children in the USA are
diagnosed with Autism Spectrum Disorder (ASD) as
estimated by Centers for Disease Control and
Prevention (CDC, 2014). Governments and non-
profit groups advocating autism awareness
encourages autism community members to share their
experiences freely in social media and get advice
from others. Jordan in her noteworthy study found the
benefits of the Internet technology in spreading the
education and awareness of autism using Internet
technologies (Jordan, 2010).
Shared experiences by an individual dealing with
autism in the social media platform, especially blogs,
Twitter and Facebook shed light on various issues of
autism. As a moto to generate an autism awareness
premier non-profit organizations like Autism Speaks
(www.autismspeaks.org) recognizes top autism
bloggers based on feedback from families dealing
with autism. For families dealing with autism, the
shared know-how about autism helps them to lead a
better life.
Stress can be defined as the non-specific response
of the body to any demand for change (Selye, 1936).
Stress arises when individuals perceive that they
cannot adequately cope with the demands being made
on or with threats to their well-being (Larzelere and
Glenn, 2008).
The purpose of the current study is to provide a
research-based understanding of the conversations in
social media platforms among families dealing with
autism and to shed light on community characteristics
of autism toward its members. This study is aimed to
analyze the topics of discussion among the members
of the autism blogging community and deduce
whether the families, individuals, or caregivers
dealing with autism can utilize this information to
enhance the quality of life. In this study, sentiment is
quantitatively analyzed from the conversations of the
autism community on blogs and Twitter to understand
how autism blogger community engages with stress.
Saha, A. and Agarwal, N.
Emotional Resiliency of Families Dealing with Autism in Social Media.
DOI: 10.5220/0005774703770382
In Proceedings of the 9th International Joint Conference on Biomedical Engineering Systems and Technologies (BIOSTEC 2016) - Volume 5: HEALTHINF, pages 377-382
ISBN: 978-989-758-170-0
Copyright
c
2016 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
377
The autism community members promote
disseminating positive and upbeat messages to
counter stress often experienced by other members of
the community on blogs and Twitter.
This paper is organized as follows: the prior
related works are described in Section 2. Section 3
describes our proposed model to quantify stress in
social media interaction. Section 4 depicts the
methodology and data collection. Section 5 shows the
result. Section 6 discusses about the inferences drawn
from the study. We draw conclusions and possible
future works in Section 7.
2 RELATED WORK
Many clinical studies have been conducted to get an
in-depth knowledge of ASD. These studies provide
understanding of the cause, issues and effectiveness
of different therapy on autism. Clinical trial option
being sluggish and costly, the use of social media
content in research analysis to assess the different
intervention mechanism for autism could be an
economically viable option. Our study does not
intend to provide a substitute for clinical tests of the
intervention strategies. On the contrary, our
methodology would provide a justification to build a
knowledge base of the intervention strategies or the
therapies from a receiver’s perspective, which would
help prioritizing resources on the testing procedures
of intervention strategies for dealing with different
health issues. In this study, however, we address a
tiny part of this bigger research agenda, which is, does
health communities like autism blogger community
provide a feeling of solidarity to other community
members? Are there differences in stress mitigation
across various characteristics of autism bloggers (i.e.,
autistic bloggers, mother bloggers with autistic kids,
father bloggers with autistic kids, and autism support
group blogs) and in different social media platforms
(e.g., blogs and Twitter)?. Answers to these questions
will help conduct a more systematic evaluation of
interactions occurring on various online platforms,
especially the social media, and thereby helping us
evaluate the efficacy of a knowledge base constructed
using social media based interactions.
Sociologists and health scientists have published
profusely on the stress and health/wellbeing concepts.
The link between stress and health is addressed by the
buffering effect hypothesis. In the buffering effect
hypothesis, social support enhances good health by
reducing the impact of stressful life events (Wallace,
2005). Stress is linked to all leading physical causes
of death - cancer, and stroke (Cohen et al., 2007).
3 STRESS: PROPOSED MODEL
Social science literature lacks a formal definition of
stress. Selye defined stress as ‘the non-specific
response of the body to any demand for change’
(Selye, 1936). We leverage various empirical
definitions of stress available in social science along
with computational science literature that overlap
with the healthcare domain. Stress in an interaction
between individuals can be approximately deduced
by collectable statistics when influential factors
groups can be evaluated.
3.1 Model Parameters
Below we examine factors that influence stress
assessment and objectively measure these factors by
collectable statistics from social media interactions.
Personal Concern: American Psychological
Association listed many causes of stress that
include fear and uncertainty in personal domain
like relationship conflicts and major life changes
(APA, 2000). Measure of personal concern can be
estimated using sentiment analysis methods.
Anger: Studies indicate anger suppression as a
significant factor in perceived stress within thin
the sample of adults of America and Japan
(Yamaguchi, 2015). Correlation study among
cancer patients found high degree positive
correlation among anger-out and anger-in (Lee et
al., 2005). Anger expression can be measures by
rating in the affective process of anger.
Anxiety: Study by Vallee found positive
correlation in adults between anxieties and stress
(Vallée et al., 1999). Study shows academic stress
would show a significant positive correlation with
anxiety (Mishra and McKean, 2000). Expression
of anxiety within a text can be measures by rating
in the negative affective process of anxiety.
These three influence factors with the corresponding
statistics collectable using sentimental analysis
methodology are summarized in Table 1.
Table 1: Factors influencing stress assessment and their
corresponding collectable statistics.
Influence
Factors
Example
InfluenceWeight Notation
Personal
Concern
job, cash, owe
 
Anger hate, kill, annoyed
 
Anxiety Worried, fearful
 
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378
Our model uses sentiment analysis mechanism to
get an approximation numerical value of stress. Stress
in an interaction can be interpreted in terms of an
influence by the three factors (or parameters):
;
and . Hence, stress measure denoted by S in an
interaction is given by,
Stress (S) = w
1
+ w
2
+ w
3
(1)
where w
1
, w
2
and w
3
are the weights that can be
determines the influence of the factors on stress. To
determine the degree to which the factors influence
assessment of stress, we consider the Google distance
approach. Google distance uses Google search
association between two pair of concepts (Cilibrasi
and Vitanyi, 2004). Using the google similarity
distance algorithm, corresponding values of w
1
, w
2
and w
3
were evaluated. The result of the Google
similarity measure is shown in Table 1 in the
influence weight column. Therefore, the
mathematical formula used in the study to determine
stress (S) in an interaction is evaluated using the
Equation 2
Stress (S) = 0.40 + 0.17 + 0.43
(2)
4 METHODOLOGY AND DATA
COLLECTION
This study evaluates stress through the interactions
among members of the autism blogger community
using sentiment analysis and social network analysis
concepts. The social network analysis features are
used to assess the structural networking aspect of the
propagation of stress within the autism community.
Our methodology consists of collecting data from
autism bloggers in different social media platform
(blogs and Twitter). Data is then processed and
filtered for noise. Topic and word analysis were
performed to ensure that the subject of discussion is
autism. For each social media platform, the network
for the autism community is constructed to deduce
stress propagation. Later analysis of sentiment for the
content of interaction was performed. Lastly, the
degree of stress propagated in the interaction was
calculated and analyzed.
Presently there are more than a thousand active
autism bloggers on the Internet. As an initial phase of
the study, top 40 autism bloggers based on the
recommended list of popular bloggers by the Autism
Speaks organization were selected. The content of the
blogs by the selected autism bloggers was extracted
and analyzed. Further, we cross-referenced their
blogger profile and Twitter profile (wherever the
blogger had provided a link to his/her Twitter profile)
and collected their tweets, and other network
information, including friends and followers. We
retrieved the most recent permissible tweets (up to
3,200 each) for the 40 autism bloggers, resulting in
118,531 tweets.
Some of the tweets by autism bloggers are as
follows, “I myself am opaque, for some reason. Their
eyes cannot see me. Yes, that's it: The world is autistic
with...”, “Do not fear people with Autism, embrace
them, Do not spite people with Autism unite them, Do
not deny people.”.
Profile analysis of the bloggers led to the
classification of bloggers based on different
characteristics. Classification of autism bloggers into
different categories is done to deduce different
capacities of social support based on defined blogger
categories. Of the 40 autism bloggers, 13 were female
bloggers with autistic kids who are termed as
mothers. Male bloggers with autistic children termed
as fathers are 10 in our database. Number of bloggers
who blogged as groups to create autism awareness
termed as autism support group are 13 and rest 4
termed as self-autistic bloggers who are diagnosed
with autism and blogs for themselves.
To infer the amount of stress in text, we used
psycholinguistic analysis methodology. Linguistic
Inquiry and Word Count (LIWC) program (www.
LIWC.net) (Pennebaker, Martha and Roger, 2001)
and with part-of-speech (POS) tagging methodology
was utilized to categorized the tweets and blog
content into different psychological groups. The
amount of stress in the text content is deduced
primarily using the rating in the affective process of
anger, anxiety and personal concern, captured using
LIWC. Many researchers used LIWC for sentiment
analysis and found promising results. Study found a
consistent correlation between emotion rating values
of LIWC with self-reported score for interaction
within health community forum (Tov et al., 2013).
Topics of the tweets of the autism blogger
community are analyzed using topic modeling
methodology. We used Stanford Topic Modeling
(nlp.stanford.edu/software/tmt) for topic modelling.
5 RESULTS
Many social network analysis methodologies was
used in the study to get an understanding of autism
blogger community characteristics. For social
network analysis, the activities of the autism bloggers
like blogpost, tweets, friends, followers, and
mentions in Twitter were analyzed.
Emotional Resiliency of Families Dealing with Autism in Social Media
379
The friend and follower Twitter network of autism
blogger community is shown in Figure 1. Different
colors indicate various communities based on
network modularity. Modularity is one of the
effective function in community detection for the
compound network like autism bloggers twitter
network. This essentially means that there is an
intensive communication between the members of the
same community as compared to cross-community.
From Figure 1, we can observe that autism groups
tend to form one community and converse more
closely among themselves. Most mothers, fathers,
and autistic bloggers form another community and
converse more with fellow mothers, fathers, autisitic
bloggers. Overall analyzed metrics of the Twitter
friends and followers network is shown in Table 2.
Table 2: Overall Twitter data characteristics of the autism
blogger community network.
Number of users 874
Total Edges 2060
In-Degree 6(Max), 1.15(Average)
Out-Degree 105(Max), 1.151(Average)
Connected Components 1 with 874 Maximum Vertices
Geodesic Distance
(Diameter)
8(Max) , 3.952(Average)
Top Words in Tweet autism, austic, out
Top Hashtags in Tweet autism , specialneeds, sensory
Table 2 shows distinct characteristics of the
autism blogger network on Twitter where any
member of the community can reach a colleague on
average 4 hops (average geodesic distance), in
compared to the widely known 4.74 degrees of
separation (average geodesic distance) in Facebook
network of active users (Backstrom, 2012).
The value modularity of the network of autism
bloggers Twitter network is 0.623, which indicates
that the community is well connected. The top
hashtags ‘autism', ‘sensory’, and ‘specialneeds'
indicates the autism bloggers network is highly
focused on autism-based discussions.
Based on the author characteristics of the autism
bloggers and choice of social media platform the
sentiment in the text varies. LIWC provides the
baseline values for psychological groups for the
different style of text writing like control writing,
emotional writing and science articles along with
speech conversation communication.
Our study found that in Twitter, autism support
group desimates less stress as compared to other
autism blogger categories. The variation of stress
based on author’s characteristics is shown in Figure
2. The autism bloggers’ community in Twitter and
blogs as a whole indicates minimal stress as
compared to other health support forum like alcohol
support. Further, amount of stress shown by families
dealing with autism in our study is nominal as compa-
Figure 1: Friend and follower network of autism blogger community. The autism bloggers are annotated based on the
classification. Their real identity is anonymized. Colors indicate different communities based on the network modularity.
HEALTHINF 2016 - 9th International Conference on Health Informatics
380
red to emotional writing or novels that could indicate
autism blogger community doesn't treat autism as a
curse but as an opportunity.
Topic analysis of the Twitter data of the autism
bloggers shows education, technology, sports, health,
and science as the leading subjects of discussion.
Table 3 displays the distribution of topics discussed
in the Twitter by the autism bloggers community. The
tweet content of the autism bloggers found to be
involved in many topics related to autism, and the aim
of the autism community bloggers’ Twitter network
seems to be spreading autism awareness.
Table 3: Distribution of Topics for the Tweet content by
autism bloggers.
Topic Fathers Mothers
Autistic
Bloggers
Group
Bloggers
Education
25% 43% 56% 16%
Technology
26% 26% 16% 73%
Sports
21% 10% 4% 1%
Health
12% 5% 4% 3%
Disasters
5% 3% 1% 1%
Science
2% 2% 5% 1%
Others
9% 11% 14% 5%
6 DISCUSSION
The study sheds light on community characteristics of
online autism blogger community on the different
social media platform. The stress mitigated during
interactions with members of autism blogger
community by identifying the bloggers, and the
community members were unfolded in the study.
Our study revealed that the autism blogging
community is tightly knit within community
members. Members of the autism community relay
minimal stress in the interaction between its
community members, by providing emotional
support. Members of the autism bloggers community
in Twitter and blogs spread minimal stress as
compared to members of other health groups like
alcohol support forum. For the tweets of the mothers,
the amount of stress provided is lower than fathers or
autistic bloggers with a given amount of negative
emotion, but the ratio is highest in emotional writing
as compared to any interaction.
7 CONCLUSION AND FUTURE
WORK
In this research, we analyzed online interaction
among members of the autism blogger community in
different social media platforms. The study extracts
blogging activity of popular autism blogger and their
Twitter activity including their friends, followers,
tweets, retweets, mentions, and hashtags information.
The tightly knit interaction within the autism
blogging community was identified in our study. Our
Figure 2: Variation of stress based on different characteristics. The vertical axis shows the amount of stress and horizontal
axis represent different characteristics. Each circle represents a data point.
Emotional Resiliency of Families Dealing with Autism in Social Media
381
study revealed that Autism blogger community
members on social media, especially on Twitter,
indicates minimal stress in the interaction between its
community members. While negative sentiments are
reflected in some tweets, the minimal stress attributed
by the autism blogger community restricts the
propagation of stressful sentiments within
community members. Stress indicated in the text
content of autism bloggers varies based on blogging
characteristics and social media platform.
We envision our study will provide a mechanism
to access social interaction in online health
communities. However, the fact that autism bloggers
also use other social media platforms such as
Facebook presents a limitation in our study. The
findings of this study lay the groundwork to study our
bigger research agenda, i.e., evaluating the efficacy of
therapies for ASD as perceived by the caregivers
through the experiences they have shared in online
forums and social media. The will help build a
knowledge base for interventions and experiences,
which in turn could assist the clinical research in
better understanding of behavioural interventions for
various health disorders.
ACKNOWLEDGEMENTS
This research was funded in part by the Jerry L.
Maulden/Entergy Endowment at UALR. Any
opinions, findings, and conclusions or
recommendations expressed in this material are those
of the authors and do not necessarily reflect the views
of the funding organization. The researchers
gratefully acknowledge the support.
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