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Understanding the Rare Inflammatory Disease Using Large Language Models and Social Media Data

arXiv.org Artificial Intelligence

Sarcoidosis is a rare inflammatory disease characterized by the formation of granulomas in various organs. The disease presents diagnostic and treatment challenges due to its diverse manifestations and unpredictable nature. In this study, we employed a Large Language Model (LLM) to analyze sarcoidosis-related discussions on the social media platform Reddit. Our findings underscore the efficacy of LLMs in accurately identifying sarcoidosis-related content. We discovered a wide array of symptoms reported by patients, with fatigue, swollen lymph nodes, and shortness of breath as the most prevalent. Prednisone was the most prescribed medication, while infliximab showed the highest effectiveness in improving prognoses. Notably, our analysis revealed disparities in prognosis based on age and gender, with women and younger patients experiencing good and polarized outcomes, respectively. Furthermore, unsupervised clustering identified three distinct patient subgroups (phenotypes) with unique symptom profiles, prognostic outcomes, and demographic distributions. Finally, sentiment analysis revealed a moderate negative impact on patients' mental health post-diagnosis, particularly among women and younger individuals. Our study represents the first application of LLMs to understand sarcoidosis through social media data. It contributes to understanding the disease by providing data-driven insights into its manifestations, treatments, prognoses, and impact on patients' lives. Our findings have direct implications for improving personalized treatment strategies and enhancing the quality of care for individuals living with sarcoidosis.


AI technique can identify alcohol misuse among trauma patients, study shows: Researchers from Maywood, Ill.-based Loyola Medicine and Loyola University Chicago used an artificial intelligence technique to identify alcohol misuse among trauma patients.

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Researchers from Maywood, Ill.-based Loyola Medicine and Loyola University Chicago used an artificial intelligence technique to identify alcohol misuse among trauma patients. The technique was able to differentiate between trauma patients who misused alcohol and those who did not in 78 percent of cases. Researchers published their findings in the Journal of the American Medical Informatics Association. One in three trauma patients misuse alcohol, and many trauma cases are alcohol-related, according to the study. These records included 91,405 EHR clinician notes.