Publication | Open Access
Mood state prediction from speech of varying acoustic quality for individuals with bipolar disorder
92
Citations
31
References
2016
Year
Unknown Venue
PsychopathologyEngineeringFeature ExtractionAcoustic QualityMental HealthPsychologySpeech RecognitionMood State PredictionData ScienceMood SymptomMental Health DisordersVoice RecognitionTelehealthPsychiatrySpeech SynthesisDepressionComputer SciencePsychiatric DisorderMood SpectrumSpeech CommunicationSpeech TechnologySpeech AnalysisMental Health MonitoringPhone RecordingsSpeech ProcessingMood DisordersSpeech PerceptionMedicineHealth InformaticsBipolar Disorder
Speech contains patterns that can be altered by the mood of an individual. There is an increasing focus on automated and distributed methods to collect and monitor speech from large groups of patients suffering from mental health disorders. However, as the scope of these collections increases, the variability in the data also increases. This variability is due in part to the range in the quality of the devices, which in turn affects the quality of the recorded data, negatively impacting the accuracy of automatic assessment. It is necessary to mitigate variability effects in order to expand the impact of these technologies. This paper explores speech collected from phone recordings for analysis of mood in individuals with bipolar disorder. Two different phones with varying amounts of clipping, loudness, and noise are employed. We describe methodologies for use during preprocessing, feature extraction, and data modeling to correct these differences and make the devices more comparable. The results demonstrate that these pipeline modifications result in statistically significantly higher performance, which highlights the potential of distributed mental health systems.
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