2021
DOI: 10.2196/28962
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Machine Learning Applications in Mental Health and Substance Use Research Among the LGBTQ2S+ Population: Scoping Review

Abstract: Background A high risk of mental health or substance addiction issues among sexual and gender minority populations may have more nuanced characteristics that may not be easily discovered by traditional statistical methods. Objective This review aims to identify literature studies that used machine learning (ML) to investigate mental health or substance use concerns among the lesbian, gay, bisexual, transgender, queer or questioning, and two-spirit (LGBT… Show more

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Cited by 10 publications
(9 citation statements)
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“…The database search strategy was reviewed and improved by incorporating suggestions from all authors. We did not use support from any information specialist because of previous experiences of conducting similar searches by the research team [37][38][39][40] and budget limitation.…”
Section: Search Strategymentioning
confidence: 99%
“…The database search strategy was reviewed and improved by incorporating suggestions from all authors. We did not use support from any information specialist because of previous experiences of conducting similar searches by the research team [37][38][39][40] and budget limitation.…”
Section: Search Strategymentioning
confidence: 99%
“…Sex/gender slippage and presumption of concordance can have significant negative consequences in areas where transgender people face higher risks than cisgender people, like mental health problems. 87 For example, Walsh et al. used EHR data to analyze suicide risk, incorporating gender data because “demographics such as age and gender are known risk factors for suicidal behavior.” 88 In the study, gender was found to be a significant factor in prediction of suicide attempts.…”
Section: Machine Learning Ehrs and Sex/gendermentioning
confidence: 99%
“…14,20,22 Research from Reisner et al suggests that there is a trade off between the number of patients/individuals and the availability of gender identity information, as many large databases used for population-level studies (e.g., datasets using driver's licenses for demographics) do not include gender identity. 87,99 Even in healthcare systems considered to be leading in this area, gender identity data may be missing for upwards of 75% of patients. 22 When the data are present, information about how the data were collected may not be available (e.g., self-reported, taken from health insurance records, written down by intake staff, etc.).…”
Section: Ll Open Accessmentioning
confidence: 99%
“…NLP is dedicated to deciphering and comprehending how computers interpret human language, equipping them to analyze extensive data sets of natural language [ 14 - 16 ]. While NLP tools have garnered considerable recognition in biomedical research [ 4 - 10 ], aiding in tasks such as disease surveillance (eg, COVID-19) and diagnosing using medical records [ 17 - 23 ], their potential to expedite near real-time synthesis of evidence in tobacco control research remains untapped [ 24 ].…”
Section: Introductionmentioning
confidence: 99%