CLIMATE Artificial intelligence is often associated with ludicrous amounts of electricity, and therefore planet-heati…+ EDUCATION While many schools in England have banned smartphones, in Estonia – regarded as the new European education po… EDUCATION In a Cambridge classroom, Joseph, 10, trained his AI model to discern between drawings of apples and drawings… EDUCATION OpenAI CEO Sam Altman recently told a US podcast that if he was graduating today, “I would feel like the luck… EDUCATION I disagree with the decision of lecturers to use artificial intelligence to create teaching materials (‘We co… BUSINESS Americans are growing worried about what artificial intelligence portends for their futures. Eight in 10 Amer… BUSINESS Accenture has reportedly begun calling its near 800,000 employees “reinventors”, as the consultancy tries to… LABOR US workers overwhelmingly support pro-worker policies on artificial intelligence (AI) and view labor unions a…
TruaceTracing the truth around AISunday, July 12, 2026
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TRUVACE RECORD VERSION
record: TRV-2026-0063
version: 1
kind: certified
reason: Certified into the record
timestamp: 2026-07-12T20:50:46.631067Z
status: published
lens: g_space
sector: health
headline: Artificial intelligence technologies and compassion in healthcare: A systematic scoping review
dek: Background Advances in artificial intelligence (AI) technologies, together with the availability of big data in society, creates uncertainties about how these developments will affect healthcare systems worldwide. Compassion is essential for high-quality healthcare and research shows how prosocial caring behaviors benefit human health and societies. However, the possible association between AI technologies and compassion is under conceptualized and underexplored. Objectives The aim of this scoping review is to provide a comprehensive depth and a balanced perspective of the emerging topic of AI technologies and compassion, to inform future research and practice. The review questions were: How is compassion discussed in relation to AI technologies in healthcare? How are AI technologies being used to enhance compassion in healthcare? What are the gaps in current knowledge and unexplored …
gain_reading: Artificial intelligence technologies and compassion in healthcare: A systematic scoping review: Compassion is essential for high-quality healthcare and research shows how prosocial caring behaviors benefit human health and societies.
problem_reading: (none)
limitation: Historical evidence reading: the cited study may be limited by its design, population, period, or setting, and later research may report different effects.
tag: Evidence-backed gain
key_points: Background Advances in artificial intelligence (AI) technologies, together with the availability of big data in society, creates uncertainties about how these developments will affect healthcare systems worldwide. | Compassion is essential for high-quality healthcare and research shows how prosocial caring behaviors benefit human health and societies. | However, the possible association between AI technologies and compassion is under conceptualized and underexplored.
rundown: Background Advances in artificial intelligence (AI) technologies, together with the availability of big data in society, creates uncertainties about how these developments will affect healthcare systems worldwide. Compassion is essential for high-quality healthcare and research shows how prosocial caring behaviors benefit human health and societies.

However, the possible association between AI technologies and compassion is under conceptualized and underexplored. Objectives The aim of this scoping review is to provide a comprehensive depth and a balanced perspective of the emerging topic of AI technologies and compassion, to inform future research and practice.
sources:
- peer_reviewed | Frontiers in Psychology | https://doi.org/10.3389/fpsyg.2022.971044 | 2023-01-17
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