Xu Dechen, Li Jie, Zhou Li, Jin Jiahuan
School of Computer Science and Technology, Harbin Institute of Technology, Harbin, 150001, China.
National Key Laboratory of Smart Farm Technologies and Systems, Harbin, 150001, China.
Interdiscip Sci. 2025 May 9. doi: 10.1007/s12539-025-00719-1.
Immune checkpoint inhibitors (ICIs) have demonstrated significant clinical benefits in cancer treatment, but only a minority of patients exhibit favorable response, highlighting the importance of determining patients who will benefit from immunotherapy. Currently, patient datasets regarding immunotherapy response are scarce, while ample experiments can be performed on syngeneic mouse tumor models to generate valuable data. Therefore, how to effectively utilize mouse data to identify predictors of immunotherapy response and subsequently transfer relevant knowledge to predict human response to ICIs is a question worth studying. In this study, we propose a novel methodology to address this issue. Firstly, we identify gene modules associated with immunotherapy response from mouse tumor profiles based on cancer gene panels. Subsequently, these identified modules are employed to build prediction models for immunotherapy response based on mouse data. Furthermore, we transfer these models to predict ICIs responses of human cancer patients. Experimental results demonstrate that the gene modules identified from mouse data are reliable predictors of immunotherapy response. The mouse-based models built on these modules could be transferred to humans, effectively predicting drug responses and survival outcomes for cancer patients. Compared to conventional cancer biomarkers and existing prediction models based on mouse data, our method exhibits superior performance. These findings provide a valuable reference for further in-depth research on immunotherapy response prediction model based on mouse tumor profiles, with the potential for transfer applications in human cancer therapy.
免疫检查点抑制剂(ICIs)在癌症治疗中已显示出显著的临床益处,但只有少数患者表现出良好的反应,这凸显了确定哪些患者将从免疫治疗中获益的重要性。目前,关于免疫治疗反应的患者数据集稀缺,而可以在同基因小鼠肿瘤模型上进行大量实验以生成有价值的数据。因此,如何有效利用小鼠数据来识别免疫治疗反应的预测因子,并随后将相关知识转移以预测人类对ICIs的反应是一个值得研究的问题。在本研究中,我们提出了一种新颖的方法来解决这个问题。首先,我们基于癌症基因面板从小鼠肿瘤图谱中识别与免疫治疗反应相关的基因模块。随后,利用这些识别出的模块基于小鼠数据构建免疫治疗反应的预测模型。此外,我们将这些模型转移以预测人类癌症患者对ICIs的反应。实验结果表明,从小鼠数据中识别出的基因模块是免疫治疗反应的可靠预测因子。基于这些模块构建的基于小鼠的模型可以转移到人类身上,有效预测癌症患者的药物反应和生存结果。与传统的癌症生物标志物和现有的基于小鼠数据的预测模型相比,我们的方法表现出优越的性能。这些发现为进一步深入研究基于小鼠肿瘤图谱的免疫治疗反应预测模型提供了有价值的参考,具有在人类癌症治疗中进行转移应用的潜力。