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Erschienen in: Current Psychiatry Reports 12/2016

01.12.2016 | Psychiatry in the Digital Age (JS Luo, Section Editor)

Automated Decision-Making and Big Data: Concerns for People With Mental Illness

verfasst von: Scott Monteith, Tasha Glenn

Erschienen in: Current Psychiatry Reports | Ausgabe 12/2016

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Abstract

Automated decision-making by computer algorithms based on data from our behaviors is fundamental to the digital economy. Automated decisions impact everyone, occurring routinely in education, employment, health care, credit, and government services. Technologies that generate tracking data, including smartphones, credit cards, websites, social media, and sensors, offer unprecedented benefits. However, people are vulnerable to errors and biases in the underlying data and algorithms, especially those with mental illness. Algorithms based on big data from seemingly unrelated sources may create obstacles to community integration. Voluntary online self-disclosure and constant tracking blur traditional concepts of public versus private data, medical versus non-medical data, and human versus automated decision-making. In contrast to sharing sensitive information with a physician in a confidential relationship, there may be numerous readers of information revealed online; data may be sold repeatedly; used in proprietary algorithms; and are effectively permanent. Technological changes challenge traditional norms affecting privacy and decision-making, and continued discussions on new approaches to provide privacy protections are needed.
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Metadaten
Titel
Automated Decision-Making and Big Data: Concerns for People With Mental Illness
verfasst von
Scott Monteith
Tasha Glenn
Publikationsdatum
01.12.2016
Verlag
Springer US
Erschienen in
Current Psychiatry Reports / Ausgabe 12/2016
Print ISSN: 1523-3812
Elektronische ISSN: 1535-1645
DOI
https://doi.org/10.1007/s11920-016-0746-6

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Understanding Early Age of Onset: a Review of the Last 5 Years

Attention-Deficit Disorder (A Rostain, Section Editor)

Using Physical Activity to Manage ADHD Symptoms:The State of the Evidence

Child and Family Disaster Psychiatry (B Pfefferbaum, Section Editor)

Schools and Disasters: Safety and Mental Health Assessment and Interventions for Children

„Übersichtlicher Wegweiser“: Lauterbachs umstrittener Klinik-Atlas ist online

17.05.2024 Klinik aktuell Nachrichten

Sie sei „ethisch geboten“, meint Gesundheitsminister Karl Lauterbach: mehr Transparenz über die Qualität von Klinikbehandlungen. Um sie abzubilden, lässt er gegen den Widerstand vieler Länder einen virtuellen Klinik-Atlas freischalten.

ADHS-Medikation erhöht das kardiovaskuläre Risiko

16.05.2024 Herzinsuffizienz Nachrichten

Erwachsene, die Medikamente gegen das Aufmerksamkeitsdefizit-Hyperaktivitätssyndrom einnehmen, laufen offenbar erhöhte Gefahr, an Herzschwäche zu erkranken oder einen Schlaganfall zu erleiden. Es scheint eine Dosis-Wirkungs-Beziehung zu bestehen.

Klinikreform soll zehntausende Menschenleben retten

15.05.2024 Klinik aktuell Nachrichten

Gesundheitsminister Lauterbach hat die vom Bundeskabinett beschlossene Klinikreform verteidigt. Kritik an den Plänen kommt vom Marburger Bund. Und in den Ländern wird über den Gang zum Vermittlungsausschuss spekuliert.

Typ-2-Diabetes und Depression folgen oft aufeinander

14.05.2024 Typ-2-Diabetes Nachrichten

Menschen mit Typ-2-Diabetes sind überdurchschnittlich gefährdet, in den nächsten Jahren auch noch eine Depression zu entwickeln – und umgekehrt. Besonders ausgeprägt ist die Wechselbeziehung laut GKV-Daten bei jüngeren Erwachsenen.

Update Psychiatrie

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