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Journal Article

Citation

McManus K, Mallory EK, Goldfeder RL, Haynes WA, Tatum JD. AMIA Jt. Summits Transl. Sci. Proc. 2015; 2015: 122-126.

Affiliation

Stanford University, Stanford, CA.

Copyright

(Copyright © 2015, American Medical Informatics Association)

DOI

unavailable

PMID

26306253

Abstract

Individuals who suffer from schizophrenia comprise I percent of the United States population and are four times more likely to die of suicide than the general US population. Identification of at-risk individuals with schizophrenia is challenging when they do not seek treatment. Microblogging platforms allow users to share their thoughts and emotions with the world in short snippets of text. In this work, we leveraged the large corpus of Twitter posts and machine-learning methodologies to detect individuals with schizophrenia. Using features from tweets such as emoticon use, posting time of day, and dictionary terms, we trained, built, and validated several machine learning models. Our support vector machine model achieved the best performance with 92% precision and 71% recall on the held-out test set. Additionally, we built a web application that dynamically displays summary statistics between cohorts. This enables outreach to undiagnosed individuals, improved physician diagnoses, and destigmatization of schizophrenia.


Language: en

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