Back to Search Start Over

Dynamic prediction of overall survival for patients with high-grade extremity soft tissue sarcoma.

Authors :
Rueten-Budde, A. J.
van Praag, V. M.
Jeys, Lee M.
Laitinen, Minna K.
Pollock, Rob
Aston, Will
van der Hage, Jos A.
Dijkstra, PD Sander
Ferguson, Peter C.
Griffin, Anthony M.
Willeumier, Julie J.
Wunder, Jay S.
Styring, Emelie
Posch, Florian
Zaikova, Olga
Maretty-Kongstad, Katja
Keller, Johnny
Leithner, Andreas
Smolle, Maria A.
Haas, Rick L.
Source :
Surgical Oncology. Dec2018, Vol. 27 Issue 4, p695-701. 7p.
Publication Year :
2018

Abstract

Purpose There is increasing interest in personalized prediction of disease progression for soft tissue sarcoma patients. Currently, available prediction models are limited to predictions from time of surgery or diagnosis. This study updates predictions of overall survival at different times during follow-up by using the concept of dynamic prediction. Patients and methods Information from 2232 patients with high-grade extremity soft tissue sarcoma, who underwent surgery at 14 specialized sarcoma centers, was used to develop a dynamic prediction model. The model provides updated 5-year survival probabilities from different prediction time points during follow-up. Baseline covariates as well as time-dependent covariates, such as status of local recurrence and distant metastases, were included in the model. In addition, the effect of covariates over time was investigated and modelled accordingly in the prediction model. Results Surgical margin and tumor histology show a significant time-varying effect on overall survival. The effect of margin is strongest shortly after surgery and diminishes slightly over time. Development of local recurrence and distant metastases during follow-up have a strong effect on overall survival and updated predictions must account for their occurrence. Conclusion The presence of time-varying effects, as well as the effect of local recurrence and distant metastases on survival, suggest the importance of updating predictions during follow-up. This newly developed dynamic prediction model which updates survival probabilities over time can be used to make better individualized treatment decisions based on a dynamic assessment of a patient's prognosis. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09607404
Volume :
27
Issue :
4
Database :
Academic Search Index
Journal :
Surgical Oncology
Publication Type :
Academic Journal
Accession number :
133051048
Full Text :
https://doi.org/10.1016/j.suronc.2018.09.003