吡格列酮
医学
内科学
肝病学
脂肪性肝炎
安慰剂
临床终点
胃肠病学
不利影响
随机对照试验
非酒精性脂肪性肝炎
肝活检
纤维化
脂肪肝
糖尿病
2型糖尿病
外科
活检
非酒精性脂肪肝
内分泌学
病理
替代医学
疾病
作者
Jee‐Fu Huang,Chia‐Yen Dai,Chung‐Feng Huang,Pei‐Chien Tsai,Ming‐Lun Yeh,Po‐Yao Hsu,Shiu-Feng Huang,Ming‐Jong Bair,Nai‐Jen Hou,Ching‐I Huang,Po‐Cheng Liang,Yi‐Hung Lin,Chih‐Wen Wang,Ming‐Yen Hsieh,Shinn‐Chern Chen,Zu-Yau Lin,Ming‐Lung Yu,Wan‐Long Chuang
标识
DOI:10.1007/s12072-021-10242-2
摘要
The efficacy and safety of insulin sensitizer in Asians with non-alcoholic steatohepatitis (NASH) remain elusive.The double-blind, randomized, placebo-controlled trial was conducted aiming to investigate the efficacy and safety of pioglitazone in NASH patients.A total of 90 NASH patients (66 males, age = 44.1 ± 12.7 years) were prospectively randomized into oral pioglitazone 30 mg/day (Arm A) or placebo (Arm B) for 24 weeks. The primary endpoint was the efficacy of pioglitazone in reducing inflammation and liver fat at end-of-treatment (EOT). NASH resolution/improvement without fibrosis worsening was also evaluated.At EOT, there was a significantly decline of alanine aminotransferase (86.9 ± 34.3 to 45.7 ± 35.8 IU/L, p = 0.003) level in Arm A patients. In intention-to-treat analysis among 66 patients who completed paired biopsies, The NAFLD activity score (NAS) of 30 Arm A patients significantly decreased from 4.27 ± 1.14 at baseline to 2.53 ± 1.63 at EOT (p < 0.0001), whereas there was no significant change in patients of Arm B (3.94 ± 1.41 vs 3.94 ± 1.51, p = 1.0). NASH improvement without worsening of fibrosis was achieved in 46.7% (14/30) patients in Arm A, compared to 11.1% (4/36) patients in Arm B (p = 0.002). Liver fat content reduced (20.2 ± 9.0 to 14.3 ± 6.9%, p < 0.0001) on MRI-PDFF in Arm A compared to their counterparts. No significant difference of adverse events occurred between groups.A 24-week pioglitazone treatment was well-tolerated and effective in improving liver histology and reducing liver steatosis in Asian NASH patients. (ClinicalTrials.gov number: NCT01068444).
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