Uloženo v:
| Hlavní autor: | |
|---|---|
| Médium: | Recurso digital |
| Jazyk: | angličtina |
| Vydáno: |
Zenodo
2026
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| Témata: | |
| On-line přístup: | https://doi.org/10.5281/zenodo.18434342 |
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- <p>This conceptual application examines how static representations of disease may create or amplify bias in health AI.</p> <p>It argues that many clinical AI systems are developed around fixed variables, discrete labels, thresholds, and short-term prediction targets, while many diseases behave as dynamic systems characterized by fluctuation, delay, compensation, instability, recovery failure, and transition windows.</p> <p>The note proposes that bias in health AI may arise not only from imbalanced datasets or demographic underrepresentation, but also from the way disease itself is represented. When dynamic disease processes are compressed into static model structures, AI systems may misclassify fluctuating patients, miss early instability, mistime interventions, or produce outputs that appear technically accurate while remaining clinically misaligned.</p> <p>Within the Universal Resonance Model framework, the paper frames this problem as dynamic bias: systematic error introduced when biological systems are modeled without sufficient attention to trajectory, timing, variability, resilience, and state transition.</p> <p>The work extends the URM clinical AI line by linking disease dynamics, AI governance, and bias formation, and argues that safe and equitable health AI must move toward trajectory-aware, dynamically aligned, clinician-grounded models.</p> <p>This conceptual application functions as a companion note to <em>When Digital Medicine Meets Dynamic Disease: Why AI in Healthcare Must Adapt to Biological Systems</em> (2026), extending the earlier argument from digital–biological mismatch to the specific problem of dynamic bias in health AI.</p>