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Similarly, standardized residuals larger than the 100×(1−0.05/(2×k))th percentile of a standard normal distribution indicated outliers [63].
Expecting widespread missingness across reported variables, we conducted separate meta-regressions with single predictors.
J Med Internet Res 2025;27:e65710
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#GenderAffirmingHormoneTherapy and Health Information on TikTok: Thematic Content Analysis
By using physiognomic data, some argue that Tik Tok is more likely to recommend creators who look like the platform’s white and able-bodied top influencers, and less likely to recommend creators who belong to underrepresented minority groups, which can also be referred to as “shadow banning” [31-33]. In this context, it is important to consider that some perspectives may be systematically privileged over others.
Similarly, the collected data may be vulnerable to bias towards more positive experiences.
JMIR Infodemiology 2025;5:e66845
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Applications of Self-Driving Vehicles in an Aging Population
JMIR Form Res 2025;9:e66180
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Most survivors (19/22, 86%) identified as White. Survivors came from 6 provinces, most prevalently from Alberta (10/22, 46%), Ontario (5/22, 23%), and Nova Scotia (4/22, 18%). Most survivors (18/22, 82%) lived in an urban geographical region. Survivors reported a history of leukemias (11/22, 50%), lymphomas (6/22, 27%), and solid tumors (5/22, 23%) as the most common diagnoses. The average age at diagnosis was 10.59 (SD 5.45) years, and the mean time off treatment was 17.45 (SD 6.81) years.
JMIR Cancer 2025;11:e57834
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