INTRODUCTION: Previous research indicates that social isolation, loneliness, physical dysfunction and depressive symptoms are interrelated factors, little is known about the potential pathways among t
Research gap analysis derived from 3 computer_science papers in our local library.
The gap
INTRODUCTION: Previous research indicates that social isolation, loneliness, physical dysfunction and depressive symptoms are interrelated factors, little is known about the potential pathways among them.
Consensus across the literature
Clustered from 3 gap mentions across 3 papers via embedding cosine ≥ 0.62.
Research trend
Established — well-defined area with open sub-problems.
Supporting evidence — 3 representative gaps
- Self-initiated strategies for managing loneliness: insights from two large-scale surveys (2026) · doi
Nevertheless, we reiterate Ray and Rushing’s (20) suggestion that future research should investigate the effective- ness of self-initiated coping strategies through longitudinal assess- ment of loneliness scores.
Keywords: nevertheless reiterate rushing suggestion future investigate effective ness self initiated coping strategies longitudinal assess ment - Addressing Loneliness in Complex PTSD (2019) · doi
To date, loneliness has not been widely studied in relation to complex posttraumatic stress disorder (PTSD), which is newly delineated in the International Classification of Diseases, characterized by PTSD symptoms in the context of significant early trauma, as well as "disturbances in self-organization" marked by affective dysregulation, negative self-concept, and disturbances in relationships.
Keywords: ptsd disturbances self date loneliness widely studied relation complex posttraumatic stress disorder newly delineated international - Social network size, loneliness, physical functioning and depressive symptoms among older adults: Examining reciprocal associations in four waves of the Longitudinal Aging Study Amsterdam (LASA) (2021) · doi
INTRODUCTION: Previous research indicates that social isolation, loneliness, physical dysfunction and depressive symptoms are interrelated factors, little is known about the potential pathways among them.
Keywords: introduction previous indicates social isolation loneliness physical dysfunction depressive symptoms interrelated factors little known potential
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