2023
DOI: 10.2196/45767
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Using Social Media to Help Understand Patient-Reported Health Outcomes of Post–COVID-19 Condition: Natural Language Processing Approach

Abstract: Background While scientific knowledge of post–COVID-19 condition (PCC) is growing, there remains significant uncertainty in the definition of the disease, its expected clinical course, and its impact on daily functioning. Social media platforms can generate valuable insights into patient-reported health outcomes as the content is produced at high resolution by patients and caregivers, representing experiences that may be unavailable to most clinicians. Objective … Show more

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Cited by 7 publications
(1 citation statement)
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“…This data set is widely used for a great variety of NLP tasks including text summarization ( 47 ) as well as general-purpose transformer pre-training ( 48 ). Furthermore, the vast amounts of social media data have proven resourceful in analyzing real-world data of post-acute COVID-19 ( 49 ). Bringing natural language and sequences together, Köksal and colleagues developed an AI-based search engine for related proteins in literature opening another avenue for PPI prediction ( 50 ).…”
Section: Ai For Text and Sequence-based Infection Biology Datamentioning
confidence: 99%
“…This data set is widely used for a great variety of NLP tasks including text summarization ( 47 ) as well as general-purpose transformer pre-training ( 48 ). Furthermore, the vast amounts of social media data have proven resourceful in analyzing real-world data of post-acute COVID-19 ( 49 ). Bringing natural language and sequences together, Köksal and colleagues developed an AI-based search engine for related proteins in literature opening another avenue for PPI prediction ( 50 ).…”
Section: Ai For Text and Sequence-based Infection Biology Datamentioning
confidence: 99%