Identifying characteristics of adolescents with persistent loneliness during COVID-19: A multi-country eight-wave longitudinal study

Laura Riddleston, Meenakshi Shukla, Iris Lavi, Eloise Saglio, Delia Fuhrmann, Rakesh Pandey, Tushar Singh, Pamela Qualter, Jennifer Y F Lau

Research output: Contribution to journalArticlepeer-review

3 Citations (Scopus)

Abstract

Background

Elevated loneliness experiences characterise young people. While loneliness at this developmental juncture may emerge from age-typical upheaval in social relationships, there is little data on the extent to which young people experience high and persistent levels of loneliness, and importantly, who is most vulnerable to these experiences. Using the widespread social restrictions associated with the COVID-19 pandemic, which precipitated loneliness in many, we aimed to examine adolescents' loneliness profiles across time and the demographic predictors (age, sex, and country) of more severe trajectories.
Methods

Participants aged 12–18 years, recruited into a multi-wave study (N = 1039) across three sites (UK, Israel, and India) completed a 3-item loneliness measure fortnightly across 8 timepoints during the pandemic.
Results

Latent class growth analysis suggested 5 distinct trajectories: (1) low stable (33%), (2) low increasing (19%), (3) moderate decreasing (17%), (4) moderate stable (23%), and (5) high increasing (8%). Females and older adolescents were more likely to experience persistently high loneliness.
Conclusions

These findings indicate a need for interventions to reduce loneliness in adolescents as we emerge from the pandemic, particularly for those groups identified as being at highest risk.
Original languageEnglish
JournalJCPP Advances
Early online date8 Nov 2023
DOIs
Publication statusE-pub ahead of print - 8 Nov 2023

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