Predictors of sleep quality among university students: the use of advanced machine learning techniques
ConclusionsSix predictors of poor sleep quality were identified in university students in which 2 of them were protective and 3 were risk factors. The results of this study can be used to promote health and well-being in university students, improve their academic performance, and assist in developing appropriate interventions.
Source: Sleep and Breathing - Category: Respiratory Medicine Source Type: research
More News: Academia | Headache | Learning | Migraine | Pain | Respiratory Medicine | Sleep Disorders | Sleep Medicine | Students | Study | Universities & Medical Training