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1.
Emerg Infect Dis ; 21(8): 1444-6, 2015 Aug.
Artigo em Inglês | MEDLINE | ID: mdl-26196266

RESUMO

We report a measles outbreak in Sardinia, Italy, that originated in a cruise ship passenger. The outbreak showed extensive nosocomial transmission (44 of 80 cases). To minimize nosocomial transmission, health care facilities should ensure that susceptible health care workers are vaccinated against measles and should implement effective infection control procedures.


Assuntos
Infecção Hospitalar/epidemiologia , Sarampo/epidemiologia , Navios , Adolescente , Adulto , Criança , Pré-Escolar , Surtos de Doenças/prevenção & controle , Feminino , Humanos , Lactente , Itália/epidemiologia , Masculino , Sarampo/transmissão , Pessoa de Meia-Idade , Recreação , Viagem
3.
Ig Sanita Pubbl ; 70(6): 635-46, 2014.
Artigo em Italiano | MEDLINE | ID: mdl-25715898

RESUMO

In the season 2013-2014, a campaign to promote influenza vaccination among health care workers (HCWs) was conducted in two Italian hospitals, based on an educational toolkit and attitude and compliance towards vaccination were investigated. Overall, 36% of the HCWs get vaccinated almost once, 2.3% in 2013-14 season for the first time, 57% never, 7% do not know or not remember. The main reason for vaccination was reportedly to avoid taking sick-leave (29.7%); while refusal was guided by the low risk-perception associated with influenza (38.5%). Interventions based only on education and communication seem not to be sufficient; an integrated approach with multiple components is needed to achieve higher coverage rates and to ensure a successful vaccination campaign.

4.
Front Public Health ; 10: 824465, 2022.
Artigo em Inglês | MEDLINE | ID: mdl-35664110

RESUMO

In the context of the European Joint Action on Vaccination, we analyzed, through quantitative and qualitative methods, a random sample of vaccine-related tweets published in Italy between November 2019 and June 2020, with the aim of understanding how the Twitter conversation on vaccines changed during the first phase of the pandemic, compared to the pre-pandemic months. Tweets were analyzed by a multidisciplinary team in terms of kind of vaccine, vaccine stance, tone of voice, population target, mentioned source of information. Multiple correspondence analysis was used to identify variables associated with vaccine stance. We analyzed 2,473 tweets. 58.2% mentioned the COVID-19 vaccine. Most had a discouraging stance (38.1%), followed by promotional (32.5%), neutral (22%) and ambiguous (2.5%). The discouraging stance was the most represented before the pandemic (69.6%). In February and March 2020, discouraging tweets decreased intensely and promotional and neutral tweets dominated the conversation. Between April and June 2020, promotional tweets remained more represented (36.5%), followed by discouraging (30%) and neutral (24.3%). The tweets' tone of voice was mainly polemical/complaining, both for promotional and for discouraging tweets. The multiple correspondence analysis identified a definite profile for discouraging and neutral tweets, compared to promotional and ambiguous tweets. In conclusion, the emergence of SARS-CoV-2 caused a deep change in the vaccination discourse on Twitter in Italy, with an increase of promotional and ambiguous tweets. Systematic monitoring of Twitter and other social media, ideally combined with traditional surveys, would enable us to better understand Italian vaccine hesitancy and plan tailored, data-based communication strategies.


Assuntos
COVID-19 , Mídias Sociais , Vacinas , COVID-19/epidemiologia , COVID-19/prevenção & controle , Vacinas contra COVID-19 , Comunicação , Humanos , Pandemias , SARS-CoV-2
5.
Front Public Health ; 10: 948880, 2022.
Artigo em Inglês | MEDLINE | ID: mdl-35968436

RESUMO

Social media is increasingly being used to express opinions and attitudes toward vaccines. The vaccine stance of social media posts can be classified in almost real-time using machine learning. We describe the use of a Transformer-based machine learning model for analyzing vaccine stance of Italian tweets, and demonstrate the need to address changes over time in vaccine-related language, through periodic model retraining. Vaccine-related tweets were collected through a platform developed for the European Joint Action on Vaccination. Two datasets were collected, the first between November 2019 and June 2020, the second from April to September 2021. The tweets were manually categorized by three independent annotators. After cleaning, the total dataset consisted of 1,736 tweets with 3 categories (promotional, neutral, and discouraging). The manually classified tweets were used to train and test various machine learning models. The model that classified the data most similarly to humans was XLM-Roberta-large, a multilingual version of the Transformer-based model RoBERTa. The model hyper-parameters were tuned and then the model ran five times. The fine-tuned model with the best F-score over the validation dataset was selected. Running the selected fine-tuned model on just the first test dataset resulted in an accuracy of 72.8% (F-score 0.713). Using this model on the second test dataset resulted in a 10% drop in accuracy to 62.1% (F-score 0.617), indicating that the model recognized a difference in language between the datasets. On the combined test datasets the accuracy was 70.1% (F-score 0.689). Retraining the model using data from the first and second datasets increased the accuracy over the second test dataset to 71.3% (F-score 0.713), a 9% improvement from when using just the first dataset for training. The accuracy over the first test dataset remained the same at 72.8% (F-score 0.721). The accuracy over the combined test datasets was then 72.4% (F-score 0.720), a 2% improvement. Through fine-tuning a machine-learning model on task-specific data, the accuracy achieved in categorizing tweets was close to that expected by a single human annotator. Regular training of machine-learning models with recent data is advisable to maximize accuracy.


Assuntos
COVID-19 , Vacinas , COVID-19/epidemiologia , COVID-19/prevenção & controle , Humanos , Idioma , Aprendizado de Máquina , Pandemias
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