Influence of baseline characteristics on subjective improvement of dry eye after intense pulsed light therapy
Metadatos
Mostrar el registro completo del ítemAutor
Carrillo Pulido, Miriam; Ortiz Peregrina, Sonia; López Pérez, María Dolores; Cano Ortiz, Antonio; González Cruces, TimoteoEditorial
Elsevier
Materia
Dry eye disease Meibomian gland dysfunction Intense pulsed light therapy
Fecha
2025-10-07Referencia bibliográfica
Carrillo-Pulido, M., Ortiz-Peregrina, S., López Pérez, M. D., Cano-Ortiz, A., & González-Cruces, T. (2025). Influence of baseline characteristics on subjective improvement of dry eye after intense pulsed light therapy. Contact Lens & Anterior Eye: The Journal of the British Contact Lens Association, 102514, 102514. https://doi.org/10.1016/j.clae.2025.102514
Patrocinador
MCIN/AEI/10.13039/501100011033 - (PID2020-115184RB-I00); FEDER/Junta de Andalucía-Consejería de Transformación Económica, Industria, Conocimiento y Universidades - (C-EXP-194-UGR23); Universidad de Granada / CBUA - Open access chargeResumen
Purpose: To identify baseline clinical signs and symptoms associated with response to intense pulsed light (IPL)
combined with meibomian gland expression in dry eye disease (DED), and to develop machine learning (ML)
models for individualized outcome prediction.
Methods: This retrospective study analyzed 100 eyes from 100 DED patients (aged 58.6 ± 13.4 years) treated
with IPL and meibomian gland expression. Baseline parameters assessed with the Antares system included
meibomian gland loss (MGL), tear meniscus height (TMH), non-invasive tear break-up time (NIBUT), conjunc tival hyperemia, and Ocular Surface Disease Index (OSDI). Patients were stratified by change in OSDI after
treatment (ΔOSDI): Class 1 (no improvement), Class 2 (mild improvement), and Class 3 (clear improvement).
Several ML models were trained to predict ΔOSDI from baseline parameters.
Results: IPL significantly improved both symptoms and signs. OSDI decreased from 44.65 ± 18.3 to 28.47 ± 19.3
(p < 0.001), NIBUT increased from 4.5 ± 3.2 to 7.5 ± 6.5 s (p < 0.001), and TMH and conjunctival hyperemia
also improved (p < 0.001), while MGL and BCVA remained stable. Greater improvement was observed in pa tients with higher baseline OSDI (p = 0.001). The XGBoost algorithm achieved the highest predictive perfor mance (AUC-ROC = 0.77), with OSDI and NIBUT as the strongest predictors based on SHAP analysis.
Conclusions: IPL combined with meibomian gland expression improves symptoms and signs in DED, particularly
in patients with more severe baseline symptoms. Baseline OSDI and NIBUT were the strongest predictors of
response. ML models demonstrated moderate accuracy, supporting their potential role in personalized DED
treatment strategies.





