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期刊名:Proceedings of the acm on human-computer interaction

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ISSN:2573-0142

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IF/分区:0.0/

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共收录本刊相关文章索引46
Clinical Trial Case Reports Meta-Analysis RCT Review Systematic Review
Classical Article Case Reports Clinical Study Clinical Trial Clinical Trial Protocol Comment Comparative Study Editorial Guideline Letter Meta-Analysis Multicenter Study Observational Study Randomized Controlled Trial Review Systematic Review
Koustuv Saha,Sang Chan Kim,Manikanta D Reddy et al. Koustuv Saha et al.
LGBTQ+ (lesbian, gay, bisexual, transgender, queer) individuals are at significantly higher risk for mental health challenges than the general population. Social media and online communities provide avenues for LGBTQ+ individuals to have sa...
Laura R Pina,Sang-Wha Sien,Clarissa Song et al. Laura R Pina et al.
Parents and their school-age children can impact one another's sleep. Most sleep-tracking tools, however, are designed for adults and make it difficult for parents and children to track together. To examine how to design a family-centered s...
Jina Suh,Spencer Williams,Jesse R Fann et al. Jina Suh et al.
Depression is common but under-treated in patients with cancer, despite being a major modifiable contributor to morbidity and early mortality. Integrating psychosocial care into cancer services through the team-based Collaborative Care Mana...
Kunal Relia,Mohammad Akbari,Dustin Duncan et al. Kunal Relia et al.
Social media offers a unique window into attitudes like racism and homophobia, exposure to which are important, hard to measure and understudied social determinants of health. However, individual geo-located observations from social media a...
Aaron Bauer,Zoran Popović Aaron Bauer
Countless human pursuits depend upon collaborative problem solving, especially in complex, open-ended domains. As part of the growing technological support for such collaboration, an opportunity exists to design systems that actively guide ...
Tom Huang,Anas Elghafari,Kunal Relia et al. Tom Huang et al.
Understanding tobacco- and alcohol-related behavioral patterns is critical for uncovering risk factors and potentially designing targeted social computing intervention systems. Given that we make choices multiple times per day, hourly and d...