Experimental Cancer Genetics, Wellcome Sanger Institute, Hinxton, UK.
Department of Medical Oncology, Austin Health, 145 Studley Road, Heidelberg, VIC, 3084, Australia.
J Neurooncol. 2022 Sep;159(3):539-549. doi: 10.1007/s11060-022-04092-7. Epub 2022 Aug 6.
Limited progress has been made in treating glioblastoma, and we hypothesise that poor concordance between preclinical and clinical efficacy in this disease is a major barrier to drug development. We undertook a systematic review to quantify this issue.
We identified phase I trials (P1Ts) of tumor targeted drugs, subsequent trial results and preceding relevant preclinical data published in adult glioblastoma patients between 2006-2019 via structured searches of EMBASE/MEDLINE/PUBMED. Detailed clinical/preclinical information was extracted. Associations between preclinical and clinical efficacy metrics were determined using appropriate non-parametric statistical tests.
A total of 28 eligible P1Ts were identified, with median ORR of 2.9% (range 0.0-33.3%). Twenty-three (82%) had published relevant preclinical data available. Five (18%) had relevant later phase clinical trial data available. There was overall poor correlation between preclinical and clinical efficacy metrics on univariate testing. However, drugs that had undergone in vivo testing had significantly longer median overall survival (7.9 vs 5.6mo, p = 0.02). Additionally, drugs tested in ≥ 2 biologically-distinct in vivo models ('multiple models') had a significantly better median response rate than those tested using only one ('single model') or those lacking in vivo data (6.8% vs 1.2% vs. 0.0% respectively, p = 0.027).
Currently used preclinical models poorly predict subsequent activity in P1Ts, and generally over-estimate the anti-tumor activity of these drugs. This underscores the need for better preclinical models to aid the development of novel anti-glioblastoma drugs. Until these become widely available and used, the use of multiple biologically-distinct in vivo models should be strongly encouraged.
胶质母细胞瘤的治疗进展有限,我们假设该疾病中临床前和临床疗效之间的一致性差是药物开发的主要障碍。我们进行了一项系统评价来量化这个问题。
我们通过对 EMBASE/MEDLINE/PUBMED 的结构化搜索,确定了 2006-2019 年间在成人胶质母细胞瘤患者中进行的肿瘤靶向药物的 I 期临床试验(P1T)、随后的试验结果和之前的相关临床前数据。提取了详细的临床/临床前信息。使用适当的非参数统计检验确定临床前和临床疗效指标之间的关联。
共确定了 28 项符合条件的 P1T,客观缓解率的中位数为 2.9%(范围 0.0-33.3%)。23 项(82%)有已发表的相关临床前数据。有 5 项(18%)有相关的后期临床试验数据。在单变量检验中,临床前和临床疗效指标之间总体相关性较差。然而,在体内进行测试的药物的中位总生存期明显更长(7.9 与 5.6 个月,p=0.02)。此外,在≥2 种不同的体内模型中进行测试的药物(“多种模型”)的中位反应率明显优于仅使用一种模型(“单模型”)或缺乏体内数据的药物(分别为 6.8%、1.2%和 0.0%,p=0.027)。
目前使用的临床前模型对 P1T 中的后续活性预测不佳,通常高估了这些药物的抗肿瘤活性。这凸显了需要更好的临床前模型来辅助新型抗胶质母细胞瘤药物的开发。在这些模型广泛可用和使用之前,应强烈鼓励使用多种不同的体内模型。