吉西他滨
卡培他滨
埃罗替尼
医学
内科学
胰腺癌
肿瘤科
养生
盐酸厄洛替尼
皮疹
耐火材料(行星科学)
化疗
癌症
表皮生长因子受体
结直肠癌
物理
天体生物学
作者
Matthew H. Kulke,Lawrence S. Blaszkowsky,David P. Ryan,Jeffrey W. Clark,Jeffrey A. Meyerhardt,Andrew X. Zhu,Peter C. Enzinger,Eunice L. Kwak,Alona Muzikansky,Colleen Lawrence,Charles S. Fuchs
标识
DOI:10.1200/jco.2007.11.8521
摘要
Purpose The addition of either capecitabine or erlotinib to gemcitabine in the first-line treatment of advanced pancreatic cancer is associated with modest improvements in overall survival. We evaluated an oral regimen of capecitabine and erlotinib in patients with advanced pancreatic cancer who had experienced treatment failure with standard first-line therapy with gemcitabine. Patients and Methods Thirty patients with gemcitabine-refractory metastatic pancreatic cancer were treated with capecitabine, administered at a dose of 1,000 mg/m 2 twice daily for 2 weeks, followed by a 1-week break. All patients also received erlotinib 150 mg daily. Patients were observed for evidence of response, toxicity, and survival. EGFR mutational status was assessed in available tumor blocks. Results Treatment with capecitabine and erlotinib in gemcitabine-refractory patients was associated with an overall objective radiologic response rate of 10% and a median survival duration of 6.5 months. In addition, 17% of the treated patients experienced decreases in tumor marker (CA 19-9) levels of more than 50% from baseline. Common toxicities included diarrhea, skin rash, fatigue, and hand-foot syndrome. EGFR mutations were detected in two of five available tumors; no association between treatment response and EGFR mutational status was evident. Conclusion The combination of capecitabine and erlotinib is active in patients with gemcitabine-refractory pancreatic cancer. This regimen may represent an acceptable treatment option in patients who experience treatment failure with standard first-line therapy with gemcitabine or for whom gemcitabine may not be an appropriate first-line treatment option.
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