SHIFT: Survival Prediction from Incomplete and Heterogeneous Genomic Data
Updated
Updated · arxiv.org · Jul 9
SHIFT: Survival Prediction from Incomplete and Heterogeneous Genomic Data
1 articles · Updated · arxiv.org · Jul 9
Summary
Researchers have developed SHIFT, a transformer-based AI model for survival prediction using incomplete and heterogeneous genomic data.
SHIFT handles missing genomic features without test-time imputation, using masked self-attention and variable-rate feature masking to improve robustness across institutions.
The approach enables single-model deployment for multi-center precision oncology, supporting inclusion of incomplete cohorts and potentially improving survival prediction generalization.