2024
DOI: 10.21203/rs.3.rs-4110196/v1
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Adherence to and optimization of guidelines for Risk of Recurrence/Prosigna testing using a machine learning model: a Swedish multicenter study

Una Kjällquist,
Nikolaos Tsiknakis,
Balazs Acs
et al.

Abstract: Purpose Gene expression profiles are used for decision making in the adjuvant setting of hormone receptor positive, HER2 negative (HR+/HER2-) breast cancer. Previous studies have reported algorithms to optimize the use of RS/Oncotype Dx but no such efforts have focused on ROR/Prosigna. We sought to improve pe-selection of patients before testing using machine learning. Methods Postmenopausal women with resected HR+/HER2- node negative breast cancer tested with ROR/Prosigna in four Swedish regions were includ… Show more

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