TY - JOUR T1 - Leveraging data science to enhance suicide prevention research: a literature review JF - Injury Prevention JO - Inj Prev SP - 74 LP - 80 DO - 10.1136/injuryprev-2021-044322 VL - 28 IS - 1 AU - Avital Rachelle Wulz AU - Royal Law AU - Jing Wang AU - Amy Funk Wolkin Y1 - 2022/02/01 UR - http://injuryprevention.bmj.com/content/28/1/74.abstract N2 - Objective The purpose of this research is to identify how data science is applied in suicide prevention literature, describe the current landscape of this literature and highlight areas where data science may be useful for future injury prevention research.Design We conducted a literature review of injury prevention and data science in April 2020 and January 2021 in three databases.Methods For the included 99 articles, we extracted the following: (1) author(s) and year; (2) title; (3) study approach (4) reason for applying data science method; (5) data science method type; (6) study description; (7) data source and (8) focus on a disproportionately affected population.Results Results showed the literature on data science and suicide more than doubled from 2019 to 2020, with articles with individual-level approaches more prevalent than population-level approaches. Most population-level articles applied data science methods to describe (n=10) outcomes, while most individual-level articles identified risk factors (n=27). Machine learning was the most common data science method applied in the studies (n=48). A wide array of data sources was used for suicide research, with most articles (n=45) using social media and web-based behaviour data. Eleven studies demonstrated the value of applying data science to suicide prevention literature for disproportionately affected groups.Conclusion Data science techniques proved to be effective tools in describing suicidal thoughts or behaviour, identifying individual risk factors and predicting outcomes. Future research should focus on identifying how data science can be applied in other injury-related topics. ER -