多西紫杉醇
长春瑞滨
医学
异环磷酰胺
肺癌
内科学
化疗
肿瘤科
养生
紫杉醇
随机对照试验
外科
顺铂
作者
Frank V. Fossella,Russell F. DeVore,Ronald N. Kerr,Jeffrey Crawford,Ronald Natale,Frank Dunphy,Leonard Kalman,Vincent A. Miller,Jin Soo Lee,Melvin Moore,David R. Gandara,Daniel D. Karp,Everett E. Vokes,Mark G. Kris,Yong Kim,F. Gamza,Luz Hammershaimb
标识
DOI:10.1200/jco.2000.18.12.2354
摘要
PURPOSE: To confirm the promising phase II results of docetaxel monotherapy, this phase III trial was conducted of chemotherapy for patients with advanced non–small-cell lung cancer (NSCLC) who had previously failed platinum-containing chemotherapy. PATIENTS AND METHODS: A total of 373 patients were randomized to receive either docetaxel 100 mg/m 2 (D100) or 75 mg/m 2 (D75) versus a control regimen of vinorelbine or ifosfamide (V/I). The three treatment groups were well-balanced for key patient characteristics. RESULTS: Overall response rates were 10.8% with D100 and 6.7% with D75, each significantly higher than the 0.8% response with V/I (P = .001 and P = .036, respectively). Patients who received docetaxel had a longer time to progression (P = .046, by log-rank test) and a greater progression-free survival at 26 weeks (P = .005, by χ 2 test). Although overall survival was not significantly different between the three groups, the 1-year survival was significantly greater with D75 than with the control treatment (32% v 19%; P = .025, by χ 2 test). Prior exposure to paclitaxel did not decrease the likelihood of response to docetaxel, nor did it impact survival. There was a trend toward greater efficacy in patients whose disease was platinum-resistant rather than platinum-refractory and in patients with performance status of 0 or 1 versus 2. Toxicity was greatest with D100, but the D75 arm was well-tolerated. CONCLUSION: This first randomized trial in this setting demonstrates that D75 every 3 weeks can offer clinically meaningful benefit to patients with advanced NSCLC whose disease has relapsed or progressed after platinum-based chemotherapy.
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