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Large Language Models in Medical Diagnostics: Scoping Review With Bibliometric Analysis
J Med Internet Res 2025;27:e72062
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According to the CSS-12 cutoff value established by Xu [57], 60% of our participants exhibited significant features of cyberchondria. These results provide empirical evidence that internet-related mental health issues affect older adults, challenging the belief that such problems are mainly of relevance for younger individuals [58,59].
JMIR Aging 2025;8:e70302
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The watch ran Sense2 Quit, a custom app to collect power consumption data and the default preinstalled apps. The 20-minute test consisted of 3 phases: a 5-minute baseline phase, a 10-minute active phase with the Sense2 Quit app running in the background collecting and transmitting sensor data, and another 5-minute baseline phase after the active phase. Our custom power consumption monitoring app collected current and voltage information every 5 seconds.
J Med Internet Res 2025;27:e67186
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