Assessing Schizophrenia Patients Through Linguistic and Acoustic Features Using Deep Learning Techniques
Thought, language, and communication disorders are among the salient characteristics of schizophrenia. Such impairments are often exhibited in patients’ conversations. Researches have shown that assessments of thought disorder are crucial for tracking the clinical patients’ con...
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Main Authors: | Yan-Jia Huang (Author), Yi-Ting Lin (Author), Chen-Chung Liu (Author), Lue-En Lee (Author), Shu-Hui Hung (Author), Jun-Kai Lo (Author), Li-Chen Fu (Author) |
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Format: | Book |
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IEEE,
2022-01-01T00:00:00Z.
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