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Nonbinary data were one-hot encoded, a method for rearranging categorical data into binary variables, and numerical data were normalized using min-max scaling. This would convert all numeric values between or equal to a value of 0 and 1. Min-max scaling is given by:
One-hot encoding, min-max scaling, and dataset splitting were accomplished using the Scikit-Learn library (version 0.24.2) [24]. These steps are required to improve the performance of machine learning models and training stability.
J Med Internet Res 2025;27:e62853
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Assessing the Causal Association Between COVID-19 and Graves Disease: Mendelian Randomization Study
JMIR Form Res 2025;9:e66003
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AI Applications for Chronic Condition Self-Management: Scoping Review
Participants (n=10) reported increased walking time for a further 4.9 min/d after receiving recommendations from a 5-wk pilot study.
There was no difference in the effect of reducing chronic back pain according to recommendations.
Case-based reasoning system (self BACK), a branch of knowledge-driven AI, provides weekly personalized self-management recommendations and motivates patients to perform desired behaviors.
J Med Internet Res 2025;27:e59632
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