Tackling the complexity of cancer with generative models
Summary
The Hallmarks of Cancer framework has played a seminal role in developing our understanding of cancer biology. By design, these hallmarks abstract cancer into a common set of functional capabilities. The hallmarks thus constitute an intentionally reductionist framework that has unified diverse observations and yielded valuable mechanistic insight, while leaving unresolved how these processes interact across scales. Complementary tools are therefore needed to capture cancer's inherently com
Content
# Tackling the complexity of cancer with generative models
*Published: 2026 Apr 16*
The Hallmarks of Cancer framework has played a seminal role in developing our
understanding of cancer biology. By design, these hallmarks abstract cancer into
a common set of functional capabilities. The hallmarks thus constitute an
intentionally reductionist framework that has unified diverse observations and
yielded valuable mechanistic insight, while leaving unresolved how these
processes interact across scales. Complementary tools are therefore needed to
capture cancer's inherently complex, multimodal, and multiscale nature. Here, we
posit that generative models, built on the recent advances of artificial
intelligence, are the key technology to capture this complexity and to thereby
improve how we diagnose, understand, and intervene in cancer. Specifically,
because of their ability to recognize complex patterns, process unstructured
inputs, and synthesize multimodal inputs, generative models are poised to usher
in a new era of biological discovery and clinical care. Ultimately, we envision
a synergistic cycle wherein generative models of cancer and the Hallmarks of
Cancer complement one another, the former driving hypothesis generation and
discovery and the latter guiding the prioritization and development of new
measurement tools.
DOI: 10.1016/j.cell.2026.03.027