Decoding Emotion: Speech Perception Patterns in Individuals with Self-reported Depression
- URL: http://arxiv.org/abs/2412.20213v1
- Date: Sat, 28 Dec 2024 16:54:25 GMT
- Title: Decoding Emotion: Speech Perception Patterns in Individuals with Self-reported Depression
- Authors: Guneesh Vats, Priyanka Srivastava, Chiranjeevi Yarra,
- Abstract summary: This study examines the relationship between self-reported depression and the perception of affective speech within the Indian population.
No significant differences between the depression and no-depression groups were observed for any of the emotional stimuli.
Significantly higher PANAS scores by the depression than the no-depression group indicate the impact of pre-disposed mood on the current mood status.
- Score: 3.5047438945401717
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- Abstract: The current study examines the relationship between self-reported depression and the perception of affective speech within the Indian population. PANAS and PHQ-9 were used to assess current mood and depression, respectively. Participants' emotional reactivity was recorded on a valence and arousal scale against the affective speech audio presented in a sequence. No significant differences between the depression and no-depression groups were observed for any of the emotional stimuli, except the audio file depicting neutral emotion. Significantly higher PANAS scores by the depression than the no-depression group indicate the impact of pre-disposed mood on the current mood status. Contrary to previous findings, this study did not observe reduced positive emotional reactivity by the depression group. However, the results demonstrated consistency in emotional reactivity for speech stimuli depicting sadness and anger across all measures of emotion perception.
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