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Performance of computational algorithms to deconvolve heterogeneous bulk ovarian tumor tissue depends on experimental factors.

Ariel A HippenDalia K OmranLukas M WeberEuihye JungRonny DrapkinJennifer A DohertyStephanie C HicksCasey S Greene
Published in: Genome biology (2023)
Previous benchmarks of deconvolution methods have largely ignored experimental factors. We find that methods vary in their robustness to experimental factors. We provide recommendations for methods developers seeking to produce the next generation of deconvolution approaches and for scientists designing experiments using deconvolution to study tumor heterogeneity.
Keyphrases
  • machine learning
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