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Background characteristics of nursing home residents in both the experimental and control groups who completed the semistructured interviews after the 4-week intervention.
a Significance level set at P
b Chi-square test with Yates continuity correction.
c Not applicable.
d GDS: Global Deterioration Scale.
JMIR Form Res 2025;9:e56586
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Significant P values from these tests assert that the K model fits the data better than a comparable model with one less profile [43]. Conversely, a nonsignificant P value (P≤.05) indicates that the model with one less profile provides a better fit for the data, with more parsimonious models preferred. Smaller Akaike information criterion and BIC values indicate better model fit, while higher values of entropy suggest higher accuracy in classification of the model.
Interact J Med Res 2025;14:e55348
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The overall SURE test, saying “yes” to all 4 components, was 61.2% (156/255) for the standard group, 66.5% (145/218) for the visual group, and 67% (134/200) for the visual+VC group (visual vs standard, odds ratio [OR] 1.26, 95% CI 0.86‐1.84; P=.23; visual+VC vs standard, OR 1.29, 95% CI 0.87‐1.90; P=.20).
JMIR Cardio 2025;9:e67956
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Evaluating User Experience and Satisfaction in a Concussion Rehabilitation App: Usability Study
JMIR Form Res 2025;9:e67275
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Across all discrepancies, GPT-4o was significantly more effective in criteria filtering compared to the medical student (Mc Nemar test for paired proportions [30]: χ21=5.985; P=.015). However, in applying relevant criteria, GPT-4o performed worse than the medical students, though the difference was not statistically significant (Mc Nemar test: χ21=1.818; P=.178).
JMIR Aging 2025;8:e69504
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There was no significant effect of the study phase or incentives on any of the self-reported drinking outcomes, for the average number of days per week in the last month involving alcohol consumption (F2, 232=0.294, P=.75, η2=.003), typical weekend evening drink consumption in the last month (F2, 165=0.662, P=.52, η2=.008), the maximum number of drinks consumed in the last month (F2, 175=0.005, P=.99, η2=.00), or protective behavioral strategies (F2, 232=1.469, P=.23, η2=.013).
JMIR Hum Factors 2025;12:e69873
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The p-values of the AUROC scores are presented in Multimedia Appendix 1. As P
Data cleaning and cohort selection with descriptive analysis were conducted using Stata version 16.1 (Stata Corp). We used Python version 3.8.10, along with the Monai framework version 1.2.0 (NVIDIA) and Pytorch version 2.0.0 (Facebook) to develop the deep learning models. Additionally, the AUROC score and its 95% CI were calculated using Fast De Long implementation from VMAF (Video Multimethod Assessment Fusion; Netflix) [43].
JMIR AI 2025;4:e67144
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We performed all analyses using STATA (v.17.1, Stata Corp LP), with statistical significance set at a P value below 5%.
Participant characteristics (N=380) stratified by recruitment method, social media (n=107), and nonsocial media (n=273) are presented in Table 1. Participants recruited through social media had a mean age of 47.27 (SD 1.02) years, whereas those in the nonsocial media group had a mean age of 47.38 (SD 0.73) years (P=.93).
JMIR Form Res 2025;9:e58916
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