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Related Concept Videos

Psychosis and Antipsychotic Drugs: Overview01:28

Psychosis and Antipsychotic Drugs: Overview

The term "psychosis" refers to a spectrum of mental disorders characterized by abnormal thoughts, perceptions, and behaviors. It can manifest as mood disorders, dementia, delirium with psychotic features, substance-induced psychosis with psychotic features, brief psychotic disorder, delusional disorder, schizoaffective disorder, and schizophrenia. Among all these disorders, schizophrenia is the most common psychotic disorder, affecting 1% of the worldwide population. Psychotic symptoms in all...
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Schizophrenia, a complex psychiatric disorder, has been historically misunderstood. Early psychological theories attributed its origins to childhood trauma and unresponsive parenting. However, contemporary research largely rejects these notions, favoring the vulnerability-stress hypothesis. This model proposes that individuals with a genetic predisposition to schizophrenia may develop the disorder following exposure to significant environmental stressors. Notably, studies on high-risk...

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Views of People With Psychosis About Algorithm-Based Relapse Prediction and Data Sharing: Qualitative Study.

Emily Eisner1,2, Hannah Ball1,2, John Ainsworth3

  • 1Division of Psychology and Mental Health, School of Health Sciences, Faculty of Biology, Medicine and Health, University of Manchester, Jean McFarlane Building, Manchester, United Kingdom, +44 1613066000.

Journal of Medical Internet Research
|April 10, 2026
PubMed
Summary
This summary is machine-generated.

People with psychosis want accurate digital relapse prediction systems with human oversight. They value transparency, trust, and choice in how these algorithms are used for timely, personalized care.

Keywords:
acceptabilitymachine learningmobile apppassive sensingpredictionpreventionpsychosisqualitativerelapseremote monitoringwearables

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Area of Science:

  • Digital mental health
  • Psychosis relapse prevention
  • Algorithmic prediction

Background:

  • Preventing psychosis relapses is challenging, with digital remote monitoring (DRM) systems and algorithmic relapse prediction emerging as key tools.
  • Limited research exists on the perspectives of individuals with psychosis regarding these algorithmic prediction systems.

Purpose of the Study:

  • To conduct an in-depth examination of the views of people with psychosis on algorithmic relapse prediction within DRM systems.
  • To explore perspectives on systems integrating active symptom monitoring and passive sensing data.

Main Methods:

  • Qualitative interviews were conducted with 58 individuals with psychosis across 6 UK regions.
  • Reflexive thematic analysis was used to analyze interview transcripts.
  • Individuals with lived experience were integral to study design, analysis, and reporting.

Main Results:

  • Participants stressed the importance of algorithm accuracy (sensitivity/specificity) and transparency, highlighting risks of false positives/negatives.
  • A human-in-the-loop approach, blending digital monitoring with human oversight and feedback, was favored to mitigate errors.
  • Key themes included trust in the system and clinical team, fears of over/under-reaction, the necessity of user choice, and perceived benefits like early intervention and reduced bias.

Conclusions:

  • Individuals with psychosis see potential benefits in algorithm-assisted relapse prediction for timely and efficient care.
  • Effective implementation requires accurate algorithms, interpretation by informed human oversight, valid consent, and respect for user autonomy.
  • The use of these systems should avoid increasing restrictions and prioritize user choice and voice.