Longitudinal deep neural networks for assessing metastatic brain cancer on a large open benchmark

Katherine E. Link, Zane Schnurman, Chris Liu, Young Joon Kwon, Lavender Yao Jiang, Mustafa Nasir-Moin, Sean Neifert, Juan Diego Alzate, Kenneth Bernstein, Tanxia Qu, Viola Chen, Eunice Yang, John G. Golfinos, Daniel Orringer, Douglas Kondziolka, Eric Karl Oermann

Research output: Contribution to journalArticlepeer-review

6 Scopus citations

Abstract

The detection and tracking of metastatic cancer over the lifetime of a patient remains a major challenge in clinical trials and real-world care. Advances in deep learning combined with massive datasets may enable the development of tools that can address this challenge. We present NYUMets-Brain, the world’s largest, longitudinal, real-world dataset of cancer consisting of the imaging, clinical follow-up, and medical management of 1,429 patients. Using this dataset we developed Segmentation-Through-Time, a deep neural network which explicitly utilizes the longitudinal structure of the data and obtained state-of-the-art results at small (<10 mm3) metastases detection and segmentation. We also demonstrate that the monthly rate of change of brain metastases over time are strongly predictive of overall survival (HR 1.27, 95%CI 1.18-1.38). We are releasing the dataset, codebase, and model weights for other cancer researchers to build upon these results and to serve as a public benchmark.

Original languageEnglish
Article number8170
JournalNature Communications
Volume15
Issue number1
DOIs
StatePublished - Dec 2024
Externally publishedYes

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