feature (in particular, PTT) is linear under all
emotional states (Table 1), we will perform the
additional work to improve correlation between
them. Spearman or Kendall correlation coefficient, a
nonparametric measure of rank correlation, may be
more suitable.
Nevertheless, we could identify that HR and PTT
are meaningful biological features related to
depression using non-invasive biosensors. This
result will contribute to the use of integrative
approaches capable of assessing multiple biological
variables in developing the depression monitoring
system.
ACKNOWLEDGEMENTS
This work was supported by Institute for
Information & communications Technology
Promotion (IITP) grant funded by the Korea
government (MSIP) (No. B0132-15-1003).
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