| Literature DB >> 34762059 |
Anasua Kundu1, Michael Chaiton1,2, Rebecca Billington3, Daniel Grace2, Rui Fu4, Carmen Logie3,5, Bruce Baskerville6,7, Christina Yager1, Nicholas Mitsakakis2,8, Robert Schwartz1,2,4.
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.Entities:
Keywords: machine learning; mental disorders; mental health; sexual and gender minorities; substance-related disorders
Year: 2021 PMID: 34762059 PMCID: PMC8663464 DOI: 10.2196/28962
Source DB: PubMed Journal: JMIR Med Inform
Figure 1Preferred Reporting Items for Systematic Reviews and Meta-Analyses flow diagram documenting study exclusion. LGBTQ+: lesbian, gay, bisexual, transgender, queer, or questioning; ML: machine learning.
Summary statistics of included studies (N=11) [36-46].a
| Characteristics | Number of studies, n (%) | |||
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| United States | 7 (63) | ||
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| China | 2 (18) | ||
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| Sweden | 1 (9) | ||
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| Australia | 1 (9) | ||
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| 2019 | 5 (45) | ||
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| 2020 | 6 (54) | ||
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| Suicide or self-injury | 2 (18) | |
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| Depression | 2 (18) | |
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| Mood or affect processes | 3 (27) | |
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| Minority stress | 1 (9) | |
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| Gender incongruence | 1 (9) | |
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| Tobacco | 1 (9) | |
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| Poppers or alkyl nitrites | 1 (9) | |
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| Sexual minorities: male (gay, MSMc, bisexual) | 5 (45) | ||
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| Sexual minorities: female (lesbian, bisexual) | 2 (18) | ||
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| Transgender or gender minorities | 3 (27) | ||
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| LGBT/LGBTQ+d | 3 (27) | ||
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| Web content analysis | 6 (55) | ||
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| Prediction modeling | 4 (36) | ||
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| Imaging study | 1 (9) | ||
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| Supervised | 9 (82) | ||
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| Unsupervised | 3 (27) | ||
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| Deep | 1 (9) | ||
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| LDAf | 3 (27) | ||
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| RFg | 2 (18) | ||
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| SVMh | 2 (18) | ||
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| CNNi | 1 (9) | ||
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| MLPj | 1 (9) | ||
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| NBk | 1 (9) | ||
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| Penalized regression (LASSOl, elastic net regularized regression, ridge regression) | 2 (18) | ||
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| Logistic regression | 1 (9) | ||
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| Boosting (XGBoostm, AdaBoostn, GBMo) | 3 (27) | ||
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| Classification tree | 2 (18) | ||
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| Yes | 7 (64) | ||
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| No | 4 (36) | ||
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| Used performance metrics | 9 (82) | ||
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| Didn't use performance metrics | 1 (9) | ||
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| Didn't discuss performance | 1 (9) | ||
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| Hold-out | 2 (18) | ||
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| Cross-validation | 7 (64) | ||
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| External validation | 2 (18) | ||
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| Unspecified | 4 (36) | ||
aMultiple response options were possible for some study characteristics.
bCategories are not mutually exclusive.
cMSM: men who have sex with men.
dLGBT/LGBTQ+: lesbian, gay, bisexual, and transgender/lesbian, gay, bisexual, transgender, queer, or questioning.
eML: machine learning.
fLDA: latent Dirichlet allocation.
gRF: random forest.
hSVM: support vector machine.
iCNN: convolutional neural network.
jMLP: multilayered perceptron.
kNB: Naive Bayes.
lLASSO: least absolute shrinkage and selection operator.
mXGBoost: eXtreme Gradient Boosting.
nAdaBoost: Adaptive Boosting.
oGBM: Generalized Boosted Model.