Communications Medicine (Feb 2024)

Estimating the risk of brain metastasis for patients newly diagnosed with cancer

  • Joseph A. Miccio,
  • Zizhong Tian,
  • Sean S. Mahase,
  • Christine Lin,
  • Serah Choi,
  • Brad E. Zacharia,
  • Jason P. Sheehan,
  • Paul D. Brown,
  • Daniel M. Trifiletti,
  • Joshua D. Palmer,
  • Ming Wang,
  • Nicholas G. Zaorsky

DOI
https://doi.org/10.1038/s43856-024-00445-7
Journal volume & issue
Vol. 4, no. 1
pp. 1 – 12

Abstract

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Abstract Background Brain metastases (BM) affect clinical management and prognosis but limited resources exist to estimate BM risk in newly diagnosed cancer patients. Additionally, guidelines for brain MRI screening are limited. We aimed to develop and validate models to predict risk of BM at diagnosis for the most common cancer types that spread to the brain. Methods Breast cancer, melanoma, kidney cancer, colorectal cancer (CRC), small cell lung cancer (SCLC), and non-small cell lung cancer (NSCLC) data were extracted from the National Cancer Database to evaluate for the variables associated with the presence of BM at diagnosis. Multivariable logistic regression (LR) models were developed and performance was evaluated with Area Under the Receiver Operating Characteristic Curve (AUC) and random-split training and testing datasets. Nomograms and a Webtool were created for each cancer type. Results We identify 4,828,305 patients from 2010-2018 (2,095,339 breast cancer, 472,611 melanoma, 407,627 kidney cancer, 627,090 CRC, 164,864 SCLC, and 1,060,774 NSCLC). The proportion of patients with BM at diagnosis is 0.3%, 1.5%, 1.3%, 0.3%, 16.0%, and 10.3% for breast cancer, melanoma, kidney cancer, CRC, SCLC, and NSCLC, respectively. The average AUC over 100 random splitting for the LR models is 0.9534 for breast cancer, 0.9420 for melanoma, 0.8785 for CRC, 0.9054 for kidney cancer, 0.7759 for NSCLC, and 0.6180 for SCLC. Conclusions We develop accurate models that predict the BM risk at diagnosis for multiple cancer types. The nomograms and Webtool may aid clinicians in considering brain MRI at the time of initial cancer diagnosis.