Feasibility study for detection of mental stress and depression using pulse rate variability metrics via various durations
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Changchun Liu | Xinpei Wang | Yu Jiao | Lanjun Zhao | Shilong Zhao | Huiwen Dong | Yuanyuan Liu | Guanzheng Du
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