Recurrence Quantification Analysis of Heart Rate During Mental Arithmetic Stress in Young Females

Dimitriev Da1, Elena Saperova1, Aleksey D. Dimitriev1, Yuriy Karpenko2
1Department of Biology, Chuvash State Pedagogical University named I Ya Yakovlev, Russia
2Centre for Strategic Planning, Russian Ministry of Health, Russia

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