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Understanding Social Media Users via Attributes and LinksJanuary 2014 (has links)
abstract: With the rise of social media, hundreds of millions of people spend countless hours all over the globe on social media to connect, interact, share, and create user-generated data. This rich environment provides tremendous opportunities for many different players to easily and effectively reach out to people, interact with them, influence them, or get their opinions. There are two pieces of information that attract most attention on social media sites, including user preferences and interactions. Businesses and organizations use this information to better understand and therefore provide customized services to social media users. This data can be used for different purposes such as, targeted advertisement, product recommendation, or even opinion mining. Social media sites use this information to better serve their users.
Despite the importance of personal information, in many cases people do not reveal this information to the public. Predicting the hidden or missing information is a common response to this challenge. In this thesis, we address the problem of predicting user attributes and future or missing links using an egocentric approach. The current research proposes novel concepts and approaches to better understand social media users in twofold including, a) their attributes, preferences, and interests, and b) their future or missing connections and interactions. More specifically, the contributions of this dissertation are (1) proposing a framework to study social media users through their attributes and link information, (2) proposing a scalable algorithm to predict user preferences; and (3) proposing a novel approach to predict attributes and links with limited information. The proposed algorithms use an egocentric approach to improve the state of the art algorithms in two directions. First by improving the prediction accuracy, and second, by increasing the scalability of the algorithms. / Dissertation/Thesis / Doctoral Dissertation Computer Science 2014
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Motivational and Social Network Dynamics of Ensemble Music Making: A Longitudinal Investigation of a Collegiate Marching BandJanuary 2015 (has links)
abstract: People are motivated to participate in musical activities for many reasons. Whereas musicians may be driven by an intrinsic desire for musical growth, self-determination theory suggests that this drive must also be sustained and supported by the social environment. Social network analysis is an interdisciplinary theoretical framework and collection of analytical methods that allows us to describe the social context of a musical ensemble. These frameworks are utilized to investigate the relationship of participatory motivation and social networks in a large Division I collegiate marching band. This study concludes that marching band members are predominantly self-determined to participate in marching band and are particularly motivated for social reasons, regardless of their experience over the course of the band season. The members who are highly motived are also more integrated into the band's friendship and advice networks. These highly integrated members also tend to be motivated by the value and importance others display for the marching band activity suggesting these members have begun to internalized those values and seek out others with similar viewpoints. These findings highlight the central nature of the social experience of marching band and have possible implications for other musical leisure ensembles. After a brief review of social music making and the theoretical frameworks, I will provide illustrations of the relationship between motivation and social networks in a musical ensemble, consider the implications of these findings for promoting self-determined motivation and the wellbeing of musical ensembles, and identify directions for future research. / Dissertation/Thesis / Doctoral Dissertation Music 2015
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The Relationship Between Friend’s Weight Management Advice, Self-Perception of Weight, Weight Change Intentions, Physical Activity, and Eating Habits in College FreshmenJanuary 2016 (has links)
abstract: Background: College freshmen are exposed to a variety of environmental and social factors that can alter changes to health habits and encourage weight gain. Weight-related conversations had with friends may be related to self-perception of weight and alterations to health behaviors, but this association has yet to be assessed in the college population.
Objective: This study aims to examine the relationship between friend advice about weight management, self-perception of weight, and alterations to weight change intentions, physical activity, and eating habits in college freshmen over time.
Methods: College freshmen from ASU with complete data for three time points (n=321) were found to be predominantly female (72.2%) and non-white (53.2%) with a mean age of 17.5±41. Complete data included responses for items included in analysis which were related to friend encouragement about weigh management, self-perception of weight, physical activity, eating behaviors, and weight change intentions. A longitudinal multivariate mediation analysis using negative binomial regression adjusted for sociodemographics and clustering by dorm was used to assess the relationship between 1) friend encouragement about weight management at time 1 and behavioral outcomes at time 3, 2) friend encouragement about weight management at time 1 and self-perception of weight at time 2, and 3) self-perception of weight at time 2 and behavioral outcomes at time 3.
Results: A small proportion of population perceived friend encouragement about weight loss (18.3%) and weight gain (14.4%) at time 1. Half the population (50.9%) had the self-perception of overweight at time 2. At time 3, more than half (54.3%) of individuals performed at least 60 minutes of MVPA and consumed at least ½ a serving of sugar-sweetened beverages each day, while nearly half (48.6%) consumed at least 2 servings of fruits and vegetables each day. Males perceived more friend encouragement to gain weight (27.4%; p<0.01), but more females had the self-perception of overweight (54%; p=0.04) and were attempting to lose weight (59.3%; p<0.01). Individuals who perceived friend encouragement to lose weight at time 1 had a 14.8% greater prevalence (p<0.001) of overweight perception of time two, and a 9.6% and 6.9%; decreased prevalence (p<0.001) of weight change and weight loss intentions (p=0.023) at time three respectively. Individuals who perceived friend encouragement to gain weight had a 34.9% decreased prevalence of (p<0.001) of self-perception of overweight at time 1. In individuals with the self-perception of overweight at time 2, there was a 18.1% increased prevalence (p<0.001) of consuming at least ½ a serving of sugar-sweetened beverages/day and an increased prevalence of 22.8% and 24.0% for weight change intentions and weight loss intentions at time 3 (p<0.001).
Conclusion: These findings suggest that there was not a mediation effect of self-perception of overweight in the relationship between friend encouragement about weight management and behavioral outcomes in the current sample. However, the increased prevalence of overweight perception in individuals who perceived friend encouragement about weight management may inform future interventions to focus on how weight-related conversations with friends is related to overweight perception. More research about the relationship between weight-related conversations had with friends, self-perception of weight, and health behaviors is needed to confirm these findings. / Dissertation/Thesis / Masters Thesis Nutrition 2016
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Ethnicity, Family, and Social Networks: A Multiscalar Bioarchaeological Investigation of Tiwanaku Colonial Organization in the Moquegua Valley, PeruJanuary 2016 (has links)
abstract: Many models of colonial interaction are build from cases of European colonialism among Native American and African peoples, and, as a result, they are often ill-suited to account for state expansion and decline in non-Western contexts. This dissertation investigates social organization and intraregional interaction in a non-western colonial context to broaden understanding of colonial interaction in diverse sociocultural settings. Drawing on social identity theory, population genetics, and social network analysis, patterns of social organization at the margins of the expansive pre-Hispanic Tiwanaku state (ca. AD 500-1100) are examined.
According to the dual diaspora model of Tiwanaku colonial organization in the Moquegua Valley of southern Peru, Chen Chen-style and Omo-style ethnic communities who colonized the valley maintained distinct ethnic identities in part through endogamous marriage practices. Biodistance analysis of cranial shape data is used to evaluate regional gene flow among Tiwanaku-affiliated communities in Moquegua. Overall, results of biodistance analysis are consistent with the dual diaspora model. Omo- and Chen Chen-style communities are distinct in mean cranial shape, and it appears that ethnic identity structured gene flow between ethnic groups. However, there are notable exceptions to the overall pattern, and it appears that marriage practices were structured by multiple factors, including ethnic affiliation, geographic proximity, and smaller scales of social organization, such as corporate kin groups.
Social network analysis of cranial shape data is used to implement a multi- and mesoscalar approach to social organization to assess family-based organization at a regional level. Results indicate the study sample constituted a social network comprised of a dense main component and a number of isolated actors. Formal approaches for identifying potential family groups (i.e., subgroup analysis) proved more effective than informal approaches. While there is no clear partition of the network into distinct subgroups that could represent extended kin networks or biological lineages, there is a cluster of closely related individuals at the core of the network who integrate a web of less-closely related actors. Subgroup analysis yielded similar results as agglomerative hierarchical cluster analysis, which suggests there is potential for social network analysis to contribute to bioarchaeological studies of social organization and bioarchaeological research in general. / Dissertation/Thesis / Doctoral Dissertation Anthropology 2016
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Mining Signed Social Networks Using Unsupervised Learning AlgorithmsJanuary 2017 (has links)
abstract: Due to vast resources brought by social media services, social data mining has
received increasing attention in recent years. The availability of sheer amounts of
user-generated data presents data scientists both opportunities and challenges. Opportunities are presented with additional data sources. The abundant link information
in social networks could provide another rich source in deriving implicit information
for social data mining. However, the vast majority of existing studies overwhelmingly
focus on positive links between users while negative links are also prevailing in real-
world social networks such as distrust relations in Epinions and foe links in Slashdot.
Though recent studies show that negative links have some added value over positive
links, it is dicult to directly employ them because of its distinct characteristics from
positive interactions. Another challenge is that label information is rather limited
in social media as the labeling process requires human attention and may be very
expensive. Hence, alternative criteria are needed to guide the learning process for
many tasks such as feature selection and sentiment analysis.
To address above-mentioned issues, I study two novel problems for signed social
networks mining, (1) unsupervised feature selection in signed social networks; and
(2) unsupervised sentiment analysis with signed social networks. To tackle the first problem, I propose a novel unsupervised feature selection framework SignedFS. In
particular, I model positive and negative links simultaneously for user preference
learning, and then embed the user preference learning into feature selection. To study the second problem, I incorporate explicit sentiment signals in textual terms and
implicit sentiment signals from signed social networks into a coherent model Signed-
Senti. Empirical experiments on real-world datasets corroborate the effectiveness of
these two frameworks on the tasks of feature selection and sentiment analysis. / Dissertation/Thesis / Masters Thesis Computer Science 2017
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Detecting Organizational Accounts from Twitter Based on Network and Behavioral FactorsJanuary 2017 (has links)
abstract: With the rise of Online Social Networks (OSN) in the last decade, social network analysis has become a crucial research topic. The OSN graphs have unique properties that distinguish them from other types of graphs. In this thesis, five month Tweet corpus collected from Bangladesh - between June 2016 and October 2016 is analyzed, in order to detect accounts that belong to groups. These groups consist of official and non-official twitter handles of political organizations and NGOs in Bangladesh. A set of network, temporal, spatial and behavioral features are proposed to discriminate between accounts belonging to individual twitter users, news, groups and organization leaders. Finally, the experimental results are presented and a subset of relevant features is identified that lead to a generalizable model. Detection of tiny number of groups from large network is achieved with 0.8 precision, 0.75 recall and 0.77 F1 score. The domain independent network and behavioral features and models developed here are suitable for solving twitter account classification problem in any context. / Dissertation/Thesis / Masters Thesis Computer Science 2017
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New and Provable Results for Network Inference Problems and Multi-agent Optimization AlgorithmsJanuary 2017 (has links)
abstract: Our ability to understand networks is important to many applications, from the analysis and modeling of biological networks to analyzing social networks. Unveiling network dynamics allows us to make predictions and decisions. Moreover, network dynamics models have inspired new ideas for computational methods involving multi-agent cooperation, offering effective solutions for optimization tasks. This dissertation presents new theoretical results on network inference and multi-agent optimization, split into two parts -
The first part deals with modeling and identification of network dynamics. I study two types of network dynamics arising from social and gene networks. Based on the network dynamics, the proposed network identification method works like a `network RADAR', meaning that interaction strengths between agents are inferred by injecting `signal' into the network and observing the resultant reverberation. In social networks, this is accomplished by stubborn agents whose opinions do not change throughout a discussion. In gene networks, genes are suppressed to create desired perturbations. The steady-states under these perturbations are characterized. In contrast to the common assumption of full rank input, I take a laxer assumption where low-rank input is used, to better model the empirical network data. Importantly, a network is proven to be identifiable from low rank data of rank that grows proportional to the network's sparsity. The proposed method is applied to synthetic and empirical data, and is shown to offer superior performance compared to prior work. The second part is concerned with algorithms on networks. I develop three consensus-based algorithms for multi-agent optimization. The first method is a decentralized Frank-Wolfe (DeFW) algorithm. The main advantage of DeFW lies on its projection-free nature, where we can replace the costly projection step in traditional algorithms by a low-cost linear optimization step. I prove the convergence rates of DeFW for convex and non-convex problems. I also develop two consensus-based alternating optimization algorithms --- one for least square problems and one for non-convex problems. These algorithms exploit the problem structure for faster convergence and their efficacy is demonstrated by numerical simulations.
I conclude this dissertation by describing future research directions. / Dissertation/Thesis / Doctoral Dissertation Electrical Engineering 2017
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Secret gardeners : an ethnography of improvised music in Berlin (2012-13)Arthurs, Thomas January 2016 (has links)
This thesis addresses the aesthetics, ideologies and practicalities of contemporary European Improvised Music-making - this term referring to the tradition that emerged from 1960s American jazz and free jazz, and that remains, arguably, one of today's most misunderstood and under-represented musical genres. Using a multidisciplinary approach drawing on Grounded Theory, Ethnography and Social Network Analysis, and bounded by Berlin's cosmopolitan local scene of 2012-13, I define Improvised Music as a field of differing-yet-interconnected practices, and show how musicians and listeners conceived of and differentiated between these sub-styles, as well as how they discovered and learned to appreciate such a hidden, 'difficult' and idiosyncratic art form. Whilst on the surface Improvised Music might appear chaotic and beyond analysis in conventional terms, I show that, just like any other music, Improvised Music has its own genre-specific conventions, structures and expectations, and this research investigates its specific modes of performance, listening and appreciation - including the need to distinguish between 'musical' and 'processual' improvisatory outcomes, to differentiate between different 'levels' of improvising, and to separate the group and personal levels of the improvisatory process. I define improvised practices within this ifeld as variable combinations of 'composed' (pre-planned) and 'improvised' (real-time) elements, and examine the specific definitions of 'risk', 'honesty', 'trust', and 'good' and `bad' music-making which mediate these choices - these distinctions and evaluatory frameworks leading to a set of proposed conventions and distinctions for Improvised Music listening and production. This study looks at the representation of identity by improvising musicians, the use of social and political models as analogies for the improvisatory process (including the interplay between personal freedom of expression and the construction of coherent collective outcomes), and also examines the multiple functions of recording, in a music that was ostensibly only meant for the moment of its creation. All of this serves to address several popular misconceptions concerning Improvised Music, and does so directly from the point of view of a large sample of its most important practitioners and connoisseurs. Such findings provide key insights into the appreciation and understanding of Improvised Music itself (both for newcomers and those already adept in its ways), and this thesis offers important suggestions for scholars of Musicology, Ethnomusicology, Sociology of Music, Improvisation Studies, Performance Studies and Music/Cognitive Psychology, as well as for those concerned with improvisation and creativity in more general, non-musical, terms.
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Online Social Networks : Is it the end of Privacy ? / Etude des menaces contre la vie privée sur les réseaux sociaux : quantification et possibles solutionsChaabane, Abdelberi 22 May 2014 (has links)
Les réseaux sociaux en ligne (OSNs) recueillent une masse de données à caractère privé. Le recueil de ces données ainsi que leur utilisation relèvent de nouveaux enjeux économiques et évoquent plusieurs questionnements notamment ceux relatifs à la protection de la vie privée. Notre thèse propose certaines réponses.Dans le premier chapitre nous analysons l'impact du partage des données personnelles de l'utilisateur sur sa vie privée. Tout d'abord, nous montrons comment les intérêts d'un utilisateur -- à titre d'exemple ses préférences musicales -- peuvent être à l'origine de fuite d'informations sensibles. Pour ce faire, nous inférons les attributs non divulgués du profil de l'utilisateur en exploitant d'autres profils partageant les même ''goûts musicaux''. Notre approche extrait la sémantique des intérêts en utilisant Wikipedia, les partitionne sémantiquement et enfin regroupe les utilisateurs ayant des intérêts semblables. Nos expérimentations réalisées sur plus de 104 milles profils publics collectés sur Facebook et plus de 2000 profils privés de bénévoles, montrent que notre technique d'inférence prédit efficacement les attributs qui sont très souvent cachés par les utilisateurs.Dans un deuxième temps, nous exposons les conséquences désastreuses du partage des données privées sur la sécurité. Nous nous focalisons sur les informations recueillies à partir de profils publics et comment celles-ci peuvent être exploitées pour accélérer le craquage des mots de passe. Premièrement, nous proposons un nouveau « craqueur » de mot de passe basé sur les chaînes de Markov permettant le cassage de plus de 80% des mots de passe, dépassant ainsi toutes les autres méthodes de l'état de l'art. Deuxièmement, et afin de mesurer l'impact sur la vie privée, nous proposons une méthodologie qui intègre les informations personnelles d'un utilisateur afin d'accélérer le cassage de ses mots de passe.Nos résultats mettent en évidence la nécessité de créer de nouvelles méthodes d'estimation des fuites d'informations personnelles, ce que nous proposons : il s'agit d'une méthode formelle pour estimer l'unicité de chaque profil en étudiant la quantité d'information portée par chaque attribut public.Notre travail se base sur la plate-forme publicitaire d'estimationd'utilisateurs de Facebook pour calculer l'entropie de chaque attribut public. Ce calcul permet d'évoluer l'impact du partage de ces informations publiquement. Nos résultats, basées sur un échantillon de plus de 400 mille profils publics Facebook, montrent que la combinaison de sexe, ville de résidence et age permet d'identifier d'une manière unique environ 18% des utilisateurs.Dans la deuxième section de notre thèse nous analysons les interactions entre la plate-forme du réseau social et des tiers et son impact sur à la vie privée des utilisateurs.Dans une première étude, nous explorons les capacités de « tracking » des réseaux sociaux Facebook, Google+ et Twitter. Nous étudions les mécanismes qui permettent à ces services de suivre d'une façon persistante l'activité web des utilisateurs ainsi que d'évaluer sa couverture. Nos résultats indiquent que le « tracking » utilisé par les OSNs couvre la quasi-totalité des catégories Web, indépendamment du contenu et de l'auditoire.Finalement, nous développons une plate-forme de mesure pour étudier l'interaction entre les plates-formes OSNs, les applications sociales et les « tierces parties » (e.g., fournisseurs de publicité). Nous démontrons que plusieurs applications tierces laissent filtrer des informations relatives aux utilisateurs à des tiers non autorisés. Ce comportement affecte à la fois Facebook et RenRen avec une sévérité variable :22 % des applications Facebook testées transmettent au moins un attribut à une entité externe. Quant à, RenRen, nous démontrons qu'il souffre d'une faille majeure causée par la fuite du jeton d'accès dans 69 % des cas. / Sharing information between users constitutes the cornerstone of the Web 2.0. Online Social Networks (OSN), with their billions of users, are a core component of this new generation of the web. In fact, OSNs offer innovative services allowing users to share their self-generated content (e.g., status, photos etc.) for free. However, this free access is usually synonymous with a subtle counterpart: the collection and usage of users' personal information in targeted advertisement. To achieve this goal, OSN providers are collecting a tremendous amount of personal, and usually sensitive, information about their users. This raises concerns as this data can be exploited by several entities to breach user privacy. The primary research goals of this thesis are directed toward understanding the privacy impact of OSNs.Our first contribution consists in demonstrating the privacy threats behind releasing personal information publicly. Two attacks are constructed to show that a malicious attacker (i.e., any external attacker with access to the public profile) can breach user privacy and even threaten his online security.Our first attack shows how seemingly harmless interests (e.g., music interests) can leak privacy-sensitive information about users. In particular, we infer their undisclosed (private) attributes using the public attributes of other users sharing similar interests. Leveraging semantic knowledge from Wikipedia and a statistical learning method, we demonstrated through experiments ---based on more than 104K Facebook profiles--- that our inference technique efficiently predicts attributes that are very often hidden by users.Our second attack is at the intersection of computer security and privacy. In fact, we show the disastrous consequence of privacy breach on security by exploiting user personal information ---gathered from his public profile--- to improve the password cracking process.First, we propose a Markov chain password cracker and show through extensive experiments that it outperforms all probabilistic password crackers we compared against. In a second step, we systematically analyze the idea that additional personal information about a user helps in speeding up password guessing. We propose a methodology that exploits this information in the cracking process and demonstrate that the gain can go up to 30%.These studies clearly indicate that publicly disclosing personal information harms privacy, which calls for a method to estimate this loss. Our second contribution tries to answer this question by providing a quantitative measure of privacy. We propose a practical, yet formally proved, method to estimate the uniqueness of each profile by studying the amount of information carried by public profile attributes. To achieve our goal, we leverage Ads Audience Estimation platform and an unbiased sample of more than 400K Facebook public profiles. Our measurement results show that the combination of gender, current city and age can identify close to 55% of users to within a group of 20 and uniquely identify around 18% of them.In the second part of this thesis, we investigate the privacy threats resulting from the interactions between the OSN platform and external entities. First, we explore the tracking capabilities of the three major OSNs (i.e., Facebook, Google+ and Twitter) and show that ``share-buttons'' enable them to persistently and accurately track users' web activity. Our findings indicate that OSN tracking is diffused among almost all website categories which allows OSNs to reconstruct a significant portion of users' web profile and browsing history.Finally, we develop a measurement platform to study the interaction between OSN applications --- of Facebook and RenRen --- and fourth parties. We show that several third party applications are leaking user information to ``fourth'' party entities such as trackers and advertisers. This behavior affects both Facebook and RenRen with varying severity.
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Família do doente com câncer: percepção de apoio socialRodrigues, Juliana Stoppa Menezes 24 January 2012 (has links)
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Previous issue date: 2012-01-24 / Financiadora de Estudos e Projetos / Cancer is a chronic degenerative disease, considered a public health problem and one of the consequences is to induce the family to live a long time with a diseased family member. This can brake the family apart, because of the treatment process and also causing a demand for a social network that offers the support needed to cope with this complex trajectory. This study is quantitative, descriptive, exploratory cross-sectional, which aimed to characterize the feeling from the families about the social support in cancer patients, assisted by a specialized service in a city of Sao Paulo. All researches considerations with humans were respected. Interviews were conducted with every family that met the inclusion criteria, comprising 69 families and 161 people total. It was used for data collection the following instruments: The family profile of the patient with cancer , Social Support Scale of the Medical Outcomes Study (MOS-SSS) and The Convoy of Social Support Diagram. The interviews were done at their homes with at least family dyads and also after the consent and respecting the date/time stipulated by the family. Data were coded and entered in Microsoft Excel and Biostat 5.0 and analyzed using descriptive and correlational statistics. Patient profiles showed: 65% were female, aged 28-89 years-old and the most prevalent neoplasm was breast cancer (36%), of which 48% were in advanced stages of disease. The second most frequent cancer was prostatic (10%), of which 72% were older 65 years-old. The Convoy of Social Support Diagram showed 506 members in the patient social networks, between 1-89 years-old. The most social network members was female, who knew the patient for 33 years-old on average and 78.7% lived less than 30 minutes from the patient house. The profiles of families showed 28% with only two people in their composition, living in social class D (70%). The MOS-SSS identified that affective support was the most frequently mentioned (88), followed by emotional support (81), material support (80), information support (78) and positive social interaction (76). An average positive correlation was found (p=0.002 e r=0.4) between social support and number of people on the network. Statistically significant associations were found with p<0.0001 between the dimensions of social support and p<0.0003 between the variables number of women in social networks and social support, indicating that social support tends to be greater in larger social network and especially if people are female. It is considered that the possibilities for support of the family are diverse and health professionals have an important role in increasing the viability of the contacts between the micro system (family) and supra system (neighborhood, community and religious organizations), but they must be open to the family, realizing it like a unit of care, recognizing the social network as a fundamental source in the maintenance of wellbeing which improves life satisfaction and effective support. So, identifying and giving the social network its value in the family context and understanding the real needs and potential of the family unit, helps the health professional in the planning of the care centered in the family. This may improve the confront of the families face difficulties inherent to chronic situation and provides a humanized care. The implement of public policies which promote access of population to social support networks is very important. / O câncer é uma doença crônico-degenerativa, considerada um problema de saúde pública. Dentre suas consequências induz a família a um longo convívio com seu membro doente e a desestruturação familiar, decorrente do processo terapêutico, gerando a demanda por uma rede social que ofereça o suporte necessário para o enfrentamento dessa complexa trajetória. Este é um estudo quantitativo exploratóriodescritivo de corte transversal, que buscou caracterizar o apoio social das famílias de doentes com câncer, assistidos num serviço especializado, de um município do interior paulista. Todos os cuidados que regem a pesquisa com seres humanos foram respeitados. Foram entrevistadas todas as famílias que atenderam aos critérios de inclusão, compreendendo 69 famílias e totalizando 161 pessoas. Utilizou-se para a coleta de dados os instrumentos: Caracterização da família do doente com câncer, Escala de Apoio Social do Medical Outcomes Study (MOS-SSS) e Diagrama de Escolta. As entrevistas foram feitas no domicílio, com no mínimo díades familiares, após o consentimento e respeitando data/hora estipuladas pela família. Os dados foram codificados e lançados em uma planilha no Microsoft Excel e Biostat 5.0, sendo analisados através da estatística descritiva e correlacional. O perfil dos doentes aponta: 65% do gênero feminino, com idade entre 28-89 anos. O tipo de câncer mais prevalente foi o de mama (36%), dos quais 48% encontravam-se em estágio avançado. O segundo câncer mais incidente foi o de próstata (10%), dos quais 72% possuíam idade superior aos 65 anos. A aplicação do Diagrama da Escolta evidenciou 506 integrantes nas redes sociais dos doentes com idade entre 1-89 anos. A maioria era familiar do doente, do gênero feminino, conheciam o doente há 33 anos em média e 78,7% residiam a menos de 30 minutos da casa do doente. O perfil das famílias evidenciou 28% compostas por apenas duas pessoas, pertencentes à classe social D (70%). Com a aplicação da MOSSSS foi identificado que o apoio afetivo foi o mais referido (88), seguido do emocional (81), material (80), de informação (78) e interação social positiva (76). Houve correlação média positiva (p=0.002 e r=0.4) entre apoio social geral e número de pessoas na rede e associações significativas com p<0,0001 entre as dimensões do apoio e com p=0.0003 entre as variáveis número de mulheres na rede e apoio social, indicando que o apoio social tende a ser maior quanto maior for a rede e, principalmente, se as pessoas forem do gênero feminino. As possibilidades da família obter apoio são diversificadas e os profissionais de saúde possuem um relevante papel na ampliação da viabilidade dos contatos entre o microssistema (famílias) e suprassistemas (vizinhança, comunidade, organizações e entidades religiosas), desde que estejam abertos para a família percebendo-a como uma unidade de cuidado e reconhecendo a rede social como fonte fundamental na manutenção do bem estar e melhora da satisfação com a vida e de apoio eficaz. Portanto, identificar e valorizar a rede social no contexto em que a família está inserida e conhecer as reais necessidades e potencialidades da unidade familiar auxilia o profissional de saúde no planejamento de cuidados centrados na família, possibilitando que essa possa enfrentar as dificuldades inerentes à situação de cronicidade, propiciando uma assistência humanizada. Ressaltase a relevância do implemento de políticas públicas que favoreçam o acesso dessa população às redes de apoio social.
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