A three-feature prediction model for metastasis-free survival after surgery of localized clear cell renal cell carcinoma

Author:

Mattila Kalle E.,Laajala Teemu D.,Tornberg Sara V.,Kilpeläinen Tuomas P.,Vainio Paula,Ettala Otto,Boström Peter J.,Nisen Harry,Elo Laura L.,Jaakkola Panu M.

Abstract

AbstractAfter surgery of localized renal cell carcinoma, over 20% of the patients will develop distant metastases. Our aim was to develop an easy-to-use prognostic model for predicting metastasis-free survival after radical or partial nephrectomy of localized clear cell RCC. Model training was performed on 196 patients. Right-censored metastasis-free survival was analysed using LASSO-regularized Cox regression, which identified three key prediction features. The model was validated in an external cohort of 714 patients. 55 (28%) and 134 (19%) patients developed distant metastases during the median postoperative follow-up of 6.3 years (interquartile range 3.4–8.6) and 5.4 years (4.0–7.6) in the training and validation cohort, respectively. Patients were stratified into clinically meaningful risk categories using only three features: tumor size, tumor grade and microvascular invasion, and a representative nomogram and a visual prediction surface were constructed using these features in Cox proportional hazards model. Concordance indices in the training and validation cohorts were 0.755 ± 0.029 and 0.836 ± 0.015 for our novel model, which were comparable to the C-indices of the original Leibovich prediction model (0.734 ± 0.035 and 0.848 ± 0.017, respectively). Thus, the presented model retains high accuracy while requiring only three features that are routinely collected and widely available.

Funder

Turku University Hospital Foundation

Tuulikki Edessalo Foundation

Finnish Cancer Institute

Finnish Cultural Foundation

European Research Council ERC

European Union`s Horizon 2020 research and innovation programme

Academy of Finland

Juvenile Diabetes Research Foundation

Tekes - the Finnish Funding Agency for Innovation

Sigrid Juselius Foundation

Finnish Cancer Unions

Turku University Hospital

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

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