叶黄素
医学
吉西他滨
奥沙利铂
伊立替康
危险系数
内科学
胃肠病学
化疗
临床终点
置信区间
胰腺癌
不利影响
腺癌
外科
癌症
随机对照试验
结直肠癌
作者
Se‐Il Go,Sang‐Cheol Lee,Woo Kyun Bae,Dae Young Zang,Hyun Woo Lee,Joung Soon Jang,Jun Ho Ji,Jung Hoon Kim,Sang-Gon Park,Sun Jin Sym,Yaewon Yang,So Yeon Jeon,In Gyu Hwang,Sung Yong Oh,Jung Hun Kang
标识
DOI:10.1016/j.ejca.2021.08.002
摘要
Background The efficacy of modified FOLFIRINOX (mFOLFIRINOX) as a second-line chemotherapy treatment for metastatic pancreatic adenocarcinoma (mPAC), remains unclear. This multi-center randomised phase III trial aimed to elucidate the efficacy of mFOLFIRINOX as a second-line chemotherapy treatment for mPAC patients with good performance status. Patients and methods Eighty mPAC patients (age, 19–75 years) refractory to first-line gemcitabine-based chemotherapy were randomly selected to receive mFOLFIRINOX or S-1. mFOLFIRINOX comprised oxaliplatin (65 mg/m2), irinotecan (135 mg/m2), and leucovorin (400 mg/m2) on day 1 and continuous 5-FU infusion (1000 mg/m2) over 24 h on days 1–2 every 2 weeks. S-1 comprised body surface area-dependent oral S-1, divided into two doses per day on days 1–28 every 6 weeks. Results Overall survival was the primary endpoint. The objective response and disease control rates were higher in the mFOLFIRINOX than in the S-1 group (15% versus 2%; p = .04 and 67% versus 37%; p = .007). The median progression-free survival rates were 5.2 and 2.2 months in the mFOLFIRINOX and S-1 groups, respectively (adjusted hazard ratio [HR]: .4; 95% confidence interval [CI]: .2-.6; p < .001). The median overall survival rates were 9.2 and 4.9 months in the mFOLFIRINOX and S-1 groups, respectively (adjusted HR: .4; 95% CI: .2–.7; p = .002). Grade 3-4 adverse events occurred in 56% and 17% of the patients in the mFOLFIRINOX and S-1 groups, respectively (p < .001). Conclusion Administration of mFOLFIRINOX as a second-line chemotherapy treatment for mPAC patients refractory to gemcitabine-based chemotherapy resulted in increased survival rates than S-1 treatment alone.
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