Qualitative focus-group study finds that trustworthiness in AI for peripartum information must be inspectable rather than asserted, yielding four governance themes: social sensemaking support, pluralistic verification, inspectable recourse, and ecosystem-aware integration.
Barnes, Lesley Barclay, Kirsten McCaffery, and Parisa Aslani
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"Where is this coming from?" Uncovering Trustworthiness Ideals in AI-powered Peripartum Information Seeking
Qualitative focus-group study finds that trustworthiness in AI for peripartum information must be inspectable rather than asserted, yielding four governance themes: social sensemaking support, pluralistic verification, inspectable recourse, and ecosystem-aware integration.