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Background: Nowadays, new media has played an important role in providing information about cancer prevention and treatment. A growing body of work has been devoted to examining the access and communication effects of cancer information on social media. However, there has been limited understanding of the overall presentation of cancer prevention and treatment on social media. Further, research on comparing the differences between medical social media and common social media remained limited.Objective: Based on big data analytics, this study aimed to comprehensively map the characteristics of cancer treatment and prevention information on medical social media and common social media, which was promisingly helpful in cancer coverage and patients' treatment decision. Methods:We collected all posts (N=60,843) from 4 medical WeChat official accounts (classified as medical social media in this paper), and 5 health and lifestyle WeChat official accounts (classified as common social media in this paper). By applying latent Dirichlet allocation topic model, we extracted cancer-related posts (N=8,427) and obtained 6 cancer themes in common social media and medical social media separately. After manually labeling posts according to our codebook, we adopted a neural-based method to label different articles automatically. To be more specific, we defined our task as a multi-label task and chose different pre-trained models, say, Bert and Glove, to learn document level semantic representations for labelling. Results:Themes in common social media were more related to lifestyle, while medical social media were more related to medical attributions. Early screening and testing, healthy diet, and physical exercise were the most frequently mentioned preventive measures. Compared with common social media, medical social media mentioned vaccinations to prevent cancer more frequently. Both types of media provided limited coverage of radiation prevention (including sun protection) and breastfeeding. Surgery, chemotherapy, and radiotherapy were the most mentioned treatment measures. Medical social media discussed treatment information more than common social media. Conclusions:Cancer prevention and treatment information on social media revealed a lack of balance. The focus on cancer prevention and treatment information was mainly limited to a few aspects. The cancer coverage on preventive measures and treatments in social media required further improvement. Additionally, the study's findings underscored the potential of applying machine learning to content analysis as a promising research paradigm for mapping the key dimensions of cancer information on social media. The findings provided methodological and practical significance in future study and health promotion.
Background: Nowadays, new media has played an important role in providing information about cancer prevention and treatment. A growing body of work has been devoted to examining the access and communication effects of cancer information on social media. However, there has been limited understanding of the overall presentation of cancer prevention and treatment on social media. Further, research on comparing the differences between medical social media and common social media remained limited.Objective: Based on big data analytics, this study aimed to comprehensively map the characteristics of cancer treatment and prevention information on medical social media and common social media, which was promisingly helpful in cancer coverage and patients' treatment decision. Methods:We collected all posts (N=60,843) from 4 medical WeChat official accounts (classified as medical social media in this paper), and 5 health and lifestyle WeChat official accounts (classified as common social media in this paper). By applying latent Dirichlet allocation topic model, we extracted cancer-related posts (N=8,427) and obtained 6 cancer themes in common social media and medical social media separately. After manually labeling posts according to our codebook, we adopted a neural-based method to label different articles automatically. To be more specific, we defined our task as a multi-label task and chose different pre-trained models, say, Bert and Glove, to learn document level semantic representations for labelling. Results:Themes in common social media were more related to lifestyle, while medical social media were more related to medical attributions. Early screening and testing, healthy diet, and physical exercise were the most frequently mentioned preventive measures. Compared with common social media, medical social media mentioned vaccinations to prevent cancer more frequently. Both types of media provided limited coverage of radiation prevention (including sun protection) and breastfeeding. Surgery, chemotherapy, and radiotherapy were the most mentioned treatment measures. Medical social media discussed treatment information more than common social media. Conclusions:Cancer prevention and treatment information on social media revealed a lack of balance. The focus on cancer prevention and treatment information was mainly limited to a few aspects. The cancer coverage on preventive measures and treatments in social media required further improvement. Additionally, the study's findings underscored the potential of applying machine learning to content analysis as a promising research paradigm for mapping the key dimensions of cancer information on social media. The findings provided methodological and practical significance in future study and health promotion.
BACKGROUND Nowadays, social media plays a crucial role in disseminating information about cancer prevention and treatment. A growing body of research has focused on assessing access and communication effects of cancer information on social media. However, there remains a limited understanding of the comprehensive presentation of cancer prevention and treatment methods across social media platforms. Furthermore, research comparing the differences between medical social media (MSM) and common social media (CSM) is also lacking. OBJECTIVE Using big data analytics, this study aims to comprehensively map the characteristics of cancer treatment and prevention information on MSM and CSM. This approach promises to enhance cancer coverage and assist patients in making informed treatment decisions. METHODS We collected all posts (N=60,843) from 4 medical WeChat official accounts (accounts with professional medical backgrounds, classified as MSM in this paper) and 5 health and lifestyle WeChat official accounts (accounts with nonprofessional medical backgrounds, classified as CSM in this paper). We applied latent Dirichlet allocation topic modeling to extract cancer-related posts (N=8427) and identified 6 cancer themes separately in CSM and MSM. After manually labeling posts according to our codebook, we used a neural-based method for automated labeling. Specifically, we framed our task as a multilabel task and utilized different pretrained models, such as Bidirectional Encoder Representations from Transformers (BERT) and Global Vectors for Word Representation (GloVe), to learn document-level semantic representations for labeling. RESULTS We analyzed a total of 4479 articles from MSM and 3948 articles from CSM related to cancer. Among these, 35.52% (2993/8427) contained prevention information and 44.43% (3744/8427) contained treatment information. Themes in CSM were predominantly related to lifestyle, whereas MSM focused more on medical aspects. The most frequently mentioned prevention measures were early screening and testing, healthy diet, and physical exercise. MSM mentioned vaccinations for cancer prevention more frequently compared with CSM. Both types of media provided limited coverage of radiation prevention (including sun protection) and breastfeeding. The most mentioned treatment measures were surgery, chemotherapy, and radiotherapy. Compared with MSM (1137/8427, 13.49%), CSM (2993/8427, 35.52%) focused more on prevention. CONCLUSIONS The information about cancer prevention and treatment on social media revealed a lack of balance. The focus was primarily limited to a few aspects, indicating a need for broader coverage of prevention measures and treatments in social media. Additionally, the study’s findings underscored the potential of applying machine learning to content analysis as a promising research approach for mapping key dimensions of cancer information on social media. These findings hold methodological and practical significance for future studies and health promotion.
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