2023
DOI: 10.2196/47014
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Identifying Potential Lyme Disease Cases Using Self-Reported Worldwide Tweets: Deep Learning Modeling Approach Enhanced With Sentimental Words Through Emojis

Elda Kokoe Elolo Laison,
Mohamed Hamza Ibrahim,
Srikanth Boligarla
et al.

Abstract: Background Lyme disease is among the most reported tick-borne diseases worldwide, making it a major ongoing public health concern. An effective Lyme disease case reporting system depends on timely diagnosis and reporting by health care professionals, and accurate laboratory testing and interpretation for clinical diagnosis validation. A lack of these can lead to delayed diagnosis and treatment, which can exacerbate the severity of Lyme disease symptoms. Therefore, there is a need to improve the mon… Show more

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“…Additionally, they argue that there is potential to adapt this technology to other social media platforms, such as Reddit, which is important for analyzing Lyme disease cases in different languages and regions. Despite limitations, such a model could be a valuable tool for researchers and decision-makers, enabling the analysis of Lyme disease trends on social media, especially in areas with low disease incidence [29]. Lyme disease, 48 uninfected control subjects, and 57 patients with other infections such as influenza, bacteremia, or tuberculosis, the researchers conducted a transcriptome analysis using RNA sequencing (RNA-Seq), targeted RNA sequencing, and machine learning-based classification [31].…”
Section: Elkhadrawi M Et Al [21] 2023mentioning
confidence: 99%
“…Additionally, they argue that there is potential to adapt this technology to other social media platforms, such as Reddit, which is important for analyzing Lyme disease cases in different languages and regions. Despite limitations, such a model could be a valuable tool for researchers and decision-makers, enabling the analysis of Lyme disease trends on social media, especially in areas with low disease incidence [29]. Lyme disease, 48 uninfected control subjects, and 57 patients with other infections such as influenza, bacteremia, or tuberculosis, the researchers conducted a transcriptome analysis using RNA sequencing (RNA-Seq), targeted RNA sequencing, and machine learning-based classification [31].…”
Section: Elkhadrawi M Et Al [21] 2023mentioning
confidence: 99%