索拉非尼
医学
肝细胞癌
联合疗法
内科学
肿瘤科
一线治疗
作者
Won Young Tak,Baek‐Yeol Ryoo,Ho Yeong Lim,Do Young Kim,Takuji Okusaka,Masafumi Ikeda,Hisashi Hidaka,Jong-Eun Yeon,Eishiro Mizukoshi,Manabu Morimoto,Myung Ah Lee,Kohichiroh Yasui,Yasunori Kawaguchi,Jeong Heo,Sojiro Morita,Tae‐You Kim,Junji Furuse,Kazuhiro Katayama,Takeshi Aramaki,Rina Hara
标识
DOI:10.1007/s10637-018-0658-x
摘要
Purpose: Resminostat is an oral inhibitor of class I, IIB, and IV histone deacetylases. This phase I/II study compared the safety and efficacy of resminostat plus sorafenib versus sorafenib monotherapy as first-line therapy for advanced hepatocellular carcinoma (HCC). Experimental design: In phase I, resminostat (400 mg or 600 mg/day on days 1 to 5 every 14 days) was administered with sorafenib (800 mg/day for 14 days) to determine the recommended dose for phase II. In phase II, patients were randomized (1:1) to sorafenib monotherapy or resminostat plus sorafenib. The primary endpoint was time-to-progression (TTP). Results: Nine patients (3: 400 mg, 6: 600 mg) were enrolled in phase I, and the recommended dose of resminostat was determined to be 400 mg/day. Then 170 patients were enrolled in phase II. Median TTP/overall survival (OS) were 2.8/14.1 months with monotherapy versus 2.8/11.8 months with combination therapy (Hazard Ratio [HR]: 0.984, p = 0.925/HR: 1.046, p = 0.824). The overall incidence of adverse events was similar in both groups (98.8% versus 100.0%). However, thrombocytopenia ≥ Grade 3 was significantly more frequent in the combination therapy group (34.5% versus 2.4%, p < 0.001). Subgroup analysis revealed that median TTP/OS was 1.5/6.9 months for monotherapy versus 2.8/13.1 months for combination therapy (HR: 0.795, p = 0.392/HR: 0.567, p = 0.065) among patients with a normal-to-high baseline platelet count (≥ 150 × 103/mm3). Conclusions: In patients with advanced HCC, first-line therapy with resminostat at the recommended dose plus sorafenib showed no significant efficacy advantage over sorafenib monotherapy.
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