Publications by authors named "Jake Portanova"

Abnormal emotion processing is a core feature of schizophrenia spectrum disorders (SSDs) that encompasses multiple operations. While deficits in some areas have been well-characterized, we understand less about abnormalities in the emotion processing that happens through language, which is highly relevant for social life. Here, we introduce a novel method using deep learning to estimate emotion processing rapidly from spoken language, testing this approach in male-identified patients with SSDs (n = 37) and healthy controls (n = 51).

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Article Synopsis
  • Formal thought disorder (ThD) is a key sign of schizophrenia, identified through incoherent speech that lacks clear connections and themes; there’s ongoing research to find objective ways to assess it.
  • This study evaluates a fully automated method using Automated Speech Recognition (ASR) to analyze "audio diaries" from individuals with Auditory Verbal Hallucinations, moving away from manual transcription which is time-consuming and less effective.
  • The proposed approach, TARDIS, utilizes the coherence scores as a time-series for machine learning and has shown significant improvements in detecting severe ThD and correlating with human judgments, ultimately enhancing clinical care for those with serious mental health conditions.
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Thought disorder (TD) as reflected in incoherent speech is a cardinal symptom of schizophrenia and related disorders. Quantification of the degree ofTD can inform diagnosis, monitoring, and timely intervention. Consequently, there has been an interest in applying methods ofdistributional semantics to quantify incoherence ofspoken language.

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Adverse event report (AER) data are a key source of signal for post marketing drug surveillance. The standard methodology to analyze AER data applies disproportionality metrics, which estimate the strength of drug/side-effect associations from discrete counts of their occurrence at report level. However, in other domains, improvements in predictive modeling accuracy have been obtained through representation learning, where discrete features are replaced by distributed representations learned from unlabeled data.

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