Author:
Patel Devashru,Sumner Steven A.,Bowen Daniel,Zwald Marissa,Yard Ellen,Wang Jing,Law Royal,Holland Kristin,Nguyen Theresa,Mower Gary,Chen Yushiuan,Johnson Jenna Iberg,Jespersen Megan,Mytty Elizabeth,Lee Jennifer M.,Bauer Michael,Caine Eric,De Choudhury Munmun
Abstract
AbstractDigital trace data and machine learning techniques are increasingly being adopted to predict suicide-related outcomes at the individual level; however, there is also considerable public health need for timely data about suicide trends at the population level. Although significant geographic variation in suicide rates exist by state within the United States, national systems for reporting state suicide trends typically lag by one or more years. We developed and validated a deep learning based approach to utilize real-time, state-level online (Mental Health America web-based depression screenings; Google and YouTube Search Trends), social media (Twitter), and health administrative data (National Syndromic Surveillance Program emergency department visits) to estimate weekly suicide counts in four participating states. Specifically, per state, we built a long short-term memory (LSTM) neural network model to combine signals from the real-time data sources and compared predicted values of suicide deaths from our model to observed values in the same state. Our LSTM model produced accurate estimates of state-specific suicide rates in all four states (percentage error in suicide rate of −2.768% for Utah, −2.823% for Louisiana, −3.449% for New York, and −5.323% for Colorado). Furthermore, our deep learning based approach outperformed current gold-standard baseline autoregressive models that use historical death data alone. We demonstrate an approach to incorporate signals from multiple proxy real-time data sources that can potentially provide more timely estimates of suicide trends at the state level. Timely suicide data at the state level has the potential to improve suicide prevention planning and response tailored to the needs of specific geographic communities.
Funder
Centers for Disease Control and Prevention Foundation
Publisher
Springer Science and Business Media LLC
Reference62 articles.
1. National vital statistics system, underlying cause of death 1999-2019 on cdc wonder online database. http://wonder.cdc.gov/ucd-icd10.html (2020).
2. Centers for Disease Control, Prevention. et al. Regional variations in suicide rates–united states, 1990-1994. Morb. Mortal. Wkly. Rep. 46, 789–793 (1997).
3. Walker, J. T. County level suicide rates and social integration: urbanicity and its role in the relationship. Sociol. Spectr. 29, 101–135 (2008).
4. Durkheim E. Suicide: A Study In Sociology. (Routledge, 2005).
5. Baller R. D. & Richardson K. K. Social integration, imitation, and the geographic patterning of suicide. Am. Sociol. Rev. 67, 873–888 (2002).
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