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A validated integrated clinical and molecular glioblastoma long-term survival-predictive nomogram.

Publication ,  Journal Article
Ferguson, SD; Hodges, TR; Majd, NK; Alfaro-Munoz, K; Al-Holou, WN; Suki, D; de Groot, JF; Fuller, GN; Xue, L; Li, M; Jacobs, C; Rao, G ...
Published in: Neurooncol Adv
2021

BACKGROUND: Glioblastoma (GBM) is the most common primary malignant brain tumor in adulthood. Despite multimodality treatments, including maximal safe resection followed by irradiation and chemotherapy, the median overall survival times range from 14 to 16 months. However, a small subset of GBM patients live beyond 5 years and are thus considered long-term survivors. METHODS: A retrospective analysis of the clinical, radiographic, and molecular features of patients with newly diagnosed primary GBM who underwent treatment at The University of Texas MD Anderson Cancer Center was conducted. Eighty patients had sufficient quantity and quality of tissue available for next-generation sequencing and immunohistochemical analysis. Factors associated with survival time were identified using proportional odds ordinal regression. We constructed a survival-predictive nomogram using a forward stepwise model that we subsequently validated using The Cancer Genome Atlas. RESULTS: Univariate analysis revealed 3 pivotal genetic alterations associated with GBM survival: both high tumor mutational burden (P = .0055) and PTEN mutations (P = .0235) negatively impacted survival, whereas IDH1 mutations positively impacted survival (P < .0001). Clinical factors significantly associated with GBM survival included age (P < .0001), preoperative Karnofsky Performance Scale score (P = .0001), sex (P = .0164), and clinical trial participation (P < .0001). Higher preoperative T1-enhancing volume (P = .0497) was associated with shorter survival. The ratio of TI-enhancing to nonenhancing disease (T1/T2 ratio) also significantly impacted survival (P = .0022). CONCLUSIONS: Our newly devised long-term survival-predictive nomogram based on clinical and genomic data can be used to advise patients regarding their potential outcomes and account for confounding factors in nonrandomized clinical trials.

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Published In

Neurooncol Adv

DOI

EISSN

2632-2498

Publication Date

2021

Volume

3

Issue

1

Start / End Page

vdaa146

Location

England
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Ferguson, S. D., Hodges, T. R., Majd, N. K., Alfaro-Munoz, K., Al-Holou, W. N., Suki, D., … Heimberger, A. B. (2021). A validated integrated clinical and molecular glioblastoma long-term survival-predictive nomogram. Neurooncol Adv, 3(1), vdaa146. https://doi.org/10.1093/noajnl/vdaa146
Ferguson, Sherise D., Tiffany R. Hodges, Nazanin K. Majd, Kristin Alfaro-Munoz, Wajd N. Al-Holou, Dima Suki, John F. de Groot, et al. “A validated integrated clinical and molecular glioblastoma long-term survival-predictive nomogram.Neurooncol Adv 3, no. 1 (2021): vdaa146. https://doi.org/10.1093/noajnl/vdaa146.
Ferguson SD, Hodges TR, Majd NK, Alfaro-Munoz K, Al-Holou WN, Suki D, et al. A validated integrated clinical and molecular glioblastoma long-term survival-predictive nomogram. Neurooncol Adv. 2021;3(1):vdaa146.
Ferguson, Sherise D., et al. “A validated integrated clinical and molecular glioblastoma long-term survival-predictive nomogram.Neurooncol Adv, vol. 3, no. 1, 2021, p. vdaa146. Pubmed, doi:10.1093/noajnl/vdaa146.
Ferguson SD, Hodges TR, Majd NK, Alfaro-Munoz K, Al-Holou WN, Suki D, de Groot JF, Fuller GN, Xue L, Li M, Jacobs C, Rao G, Colen RR, Xiu J, Verhaak R, Spetzler D, Khasraw M, Sawaya R, Long JP, Heimberger AB. A validated integrated clinical and molecular glioblastoma long-term survival-predictive nomogram. Neurooncol Adv. 2021;3(1):vdaa146.

Published In

Neurooncol Adv

DOI

EISSN

2632-2498

Publication Date

2021

Volume

3

Issue

1

Start / End Page

vdaa146

Location

England