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Machine learning methods to discover hidden patterns in well-being and resilience for healthy aging.

Robin R AustinRatchada JantrapornMartin MichalowskiJenna Marquard
Published in: Journal of nursing scholarship : an official publication of Sigma Theta Tau International Honor Society of Nursing (2024)
This retrospective analysis applied machine learning methods to de-identified whole person health resilience data from the MSMH application. Adults 45 and older had many Strengths despite numerous Challenges and Needs. The Thinking group had the highest Strengths, Challenges, and Needs, which aligns with the literature and highlights the co-occurring health challenges experienced by this group. Machine learning methods applied to consumer health data identify unique insights applicable to specific conditions (e.g., cognitive) and healthy aging. The next steps involve testing personalized interventions with nurses leading artificial intelligence integration into clinical care.
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