Compositional data analysis of 24-hour movement behaviors and mental health in workers

Preventive Medicine Reports - Tập 20 - Trang 101213 - 2020
Naruki Kitano1, Yuko Kai1, Takashi Jindo1, Kenji Tsunoda1,2, Takashi Arao1
1Physical Fitness Research Institute, Meiji Yasuda Life Foundation of Health and Welfare, 150 Tobuki, Hachioji, Tokyo 192-0001, Japan
2Faculty of Social Welfare, Yamaguchi Prefectural University, 3-2-1 Sakurabatake, Yamaguchi, Yamaguchi 753-8502, Japan

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