Predictive Factors in Complete (or Almost Complete) Tumor Regression of Locally Advanced Rectal Cancer. is the Neutrophil/lymphocyte Ratio a Good Predictor of Tumor Response?
European Journal of Surgical Oncology(2024)
Hospital Universitario Príncipe de Asturias
Abstract
Background: Colorectal cancer is the second leading cause of cancer death in the West, rectal cancer accounting for one third of the total. Today, the value of neoadjuvant treatment in locally advanced rectal cancer is well known, achieving complete response rates in approximately 20-25% of patients. For this reason, it is important to determine which preoperative parameters influence tumor regression in these patients.
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