2024
DOI: 10.21203/rs.3.rs-4536316/v1
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Artificial Intelligence Models Utilize Lifestyle Factors to Predict Dry Eye-Related Outcomes

Andrew D. Graham,
Jiayun Wang,
Tejasvi Kothapalli
et al.

Abstract: Purpose To examine and interpret machine learning models that predict dry eye (DE)-related clinical signs, subjective symptoms, and clinician diagnoses by heavily weighting lifestyle factors in the predictions. Methods Machine learning models were trained to take clinical assessments of the ocular surface, eyelids, and tear film, combined with symptom scores from validated questionnaire instruments for DE and clinician diagnoses of ocular surface diseases, and perform a classification into DE-related outcome… Show more

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