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Título
Optimizing Lymphedema Management After Breast Cancer: Predictive Risk Models in Clinical Practice
Autor(es)
Palabras clave
Breast cancer
Lymphadenectomy
Lymphedema
Predictive tools
Risk factors
Fecha de publicación
2025-05-13
Editor
Wiley
Citación
Cano-Lallave, E., Frutos-Bernal, E., Anciones-Polo, M., Serrano-Sánchez, E., Rodríguez-Guerrero, I., Cuenda-Gamboa, P., Muñoz-Bellvis, L. and Eguía-Larrea, M. (2025), Optimizing Lymphedema Management After Breast Cancer: Predictive Risk Models in Clinical Practice. Journal of Surgical Oncology, 131: 1628-1636. https://doi.org/10.1002/jso.28146
Resumen
[EN]Background and Objectives: Lymphedema secondary to multimodal breast cancer treatment is a relatively common complication
that significantly impacts patients' quality of life. Despite identifying several associated risk factors, accurately
assessing individual risk remains challenging. This study aims to develop predictive tools integrating patient characteristics,
tumor attributes, and treatment modalities to optimize clinical surveillance, enhance prevention, and enable earlier diagnosis.
Methods: Data were analyzed from 309 patients referred to the Lymphedema Unit of Rehabilitation Service who underwent
lymphadenectomy for breast cancer between January 2016 and December 2021. Collected variables included patient demographics,
tumor clinicopathological features, and treatment details. A lymphedema incidence study was conducted, complemented
by univariate and multivariate regression analyses to identify risk factors. A nomogram was developed to predict
high‐risk patients, facilitating personalized prevention and management strategies.
Results: The cumulative incidence of lymphedema was 18.4%. Independent risk factors included high body mass index,
sedentary lifestyle, number of positive nodes (N stage), and radiotherapy, particularly targeting the breast, axilla, and
supra‐infraclavicular regions. The logistic regression model demonstrated an area under the ROC curve (AUC) of 0.75, with
acceptable calibration, validating the predictive model.
Conclusions: The predictive tools developed provide healthcare professionals with a means to identify patients at elevated risk
of lymphedema, supporting individualized prevention and management.
URI
ISSN
0022-4790
DOI
10.1002/JSO.28146
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