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Validation of the graded prognostic assessment and recursive partitioning analysis as prognostic tools using a modern cohort of patients with brain metastases.

Publication ,  Journal Article
Sperber, J; Yoo, S; Owolo, E; Dalton, T; Zachem, TJ; Johnson, E; Herndon, JE; Nguyen, AD; Hockenberry, H; Bishop, B; Abu-Bonsrah, N; Cook, SH ...
Published in: Neurooncol Pract
December 2024

BACKGROUND: Prognostic indices for patients with brain metastases (BM) are needed to individualize treatment and stratify clinical trials. Two frequently used tools to estimate survival in patients with BM are the recursive partitioning analysis (RPA) and the diagnosis-specific graded prognostic assessment (DS-GPA). Given recent advances in therapies and improved survival for patients with BM, this study aims to validate and analyze these 2 models in a modern cohort. METHODS: Patients diagnosed with BM were identified via our institution's Tumor Board meetings. Data were retrospectively collected from the date of diagnosis with BM. The concordance of the RPA and GPA was calculated using Harrell's C index. A Cox proportional hazards model with backwards elimination was used to generate a parsimonious model predictive of survival. RESULTS: Our study consisted of 206 patients diagnosed with BM between 2010 and 2019. The RPA had a prediction performance characterized by Harrell's C index of 0.588. The DS-GPA demonstrated a Harrell's C index of 0.630. A Cox proportional hazards model assessing the effect of age, presence of lung, or liver metastases, and Eastern Cooperative Oncology Group (ECOG) performance status score of 3/4 on survival yielded a Harrell's C index of 0.616. Revising the analysis with an uncategorized ECOG demonstrated a C index of 0.648. CONCLUSIONS: We found that the performance of the RPA remains unchanged from previous validation studies a decade earlier. The DS-GPA outperformed the RPA in predicting overall survival in our modern cohort. Analyzing variables shared by the RPA and DS-GPA produced a model that performed analogously to the DS-GPA.

Duke Scholars

Published In

Neurooncol Pract

DOI

ISSN

2054-2577

Publication Date

December 2024

Volume

11

Issue

6

Start / End Page

763 / 771

Location

England
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Sperber, J., Yoo, S., Owolo, E., Dalton, T., Zachem, T. J., Johnson, E., … Goodwin, C. R. (2024). Validation of the graded prognostic assessment and recursive partitioning analysis as prognostic tools using a modern cohort of patients with brain metastases. Neurooncol Pract, 11(6), 763–771. https://doi.org/10.1093/nop/npae057
Sperber, Jacob, Seeley Yoo, Edwin Owolo, Tara Dalton, Tanner J. Zachem, Eli Johnson, James E. Herndon, et al. “Validation of the graded prognostic assessment and recursive partitioning analysis as prognostic tools using a modern cohort of patients with brain metastases.Neurooncol Pract 11, no. 6 (December 2024): 763–71. https://doi.org/10.1093/nop/npae057.
Sperber J, Yoo S, Owolo E, Dalton T, Zachem TJ, Johnson E, et al. Validation of the graded prognostic assessment and recursive partitioning analysis as prognostic tools using a modern cohort of patients with brain metastases. Neurooncol Pract. 2024 Dec;11(6):763–71.
Sperber, Jacob, et al. “Validation of the graded prognostic assessment and recursive partitioning analysis as prognostic tools using a modern cohort of patients with brain metastases.Neurooncol Pract, vol. 11, no. 6, Dec. 2024, pp. 763–71. Pubmed, doi:10.1093/nop/npae057.
Sperber J, Yoo S, Owolo E, Dalton T, Zachem TJ, Johnson E, Herndon JE, Nguyen AD, Hockenberry H, Bishop B, Abu-Bonsrah N, Cook SH, Fecci PE, Sperduto PW, Johnson MO, Erickson MM, Goodwin CR. Validation of the graded prognostic assessment and recursive partitioning analysis as prognostic tools using a modern cohort of patients with brain metastases. Neurooncol Pract. 2024 Dec;11(6):763–771.
Journal cover image

Published In

Neurooncol Pract

DOI

ISSN

2054-2577

Publication Date

December 2024

Volume

11

Issue

6

Start / End Page

763 / 771

Location

England