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EP06.02-04 the Relationship Between Pathologic and Molecular Characteristics and PD-L1 Expression in Surgically Resected Non-small Cell Lung Cancer

Journal of Thoracic Oncology(2023)

Respiratory Center

Cited 0|Views9
Abstract
The advent of molecular-targeted agents and immune checkpoint inhibitors (ICIs) has brought a significant transformation to the surgical treatment of non-small cell lung cancer (NSCLC) in perioperative care. Despite the potential benefits of these agents in improving the prognosis of postoperative NSCLC patients, the relationship between pathologic and molecular genetic characteristics and PD-L1 expression remains unclear. To establish the appropriate perioperative treatment, it is necessary to understand the relationship between pathologic and molecular genetic characteristics and PD-L1 expression in NSCLC.
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