Tang Min, Jiang Shan, Huang Xiaoming, Ji Chunxia, Gu Yexin, Qi Ying, Xiang Yi, Yao Emmie, Zhang Nancy, Berman Emma, Yu Di, Qu Yunjia, Liu Longwei, Berry David, Yao Yu
Shanghai University of Traditional Chinese Medicine, Shanghai, China.
Department of NanoEngineering, University of California San Diego, La Jolla, CA, USA.
Cell Discov. 2024 Apr 9;10(1):39. doi: 10.1038/s41421-024-00650-7.
Glioma, with its heterogeneous microenvironments and genetic subtypes, presents substantial challenges for treatment prediction and development. We integrated 3D bioprinting and multi-algorithm machine learning as a novel approach to enhance the assessment and understanding of glioma treatment responses and microenvironment characteristics. The bioprinted patient-derived glioma tissues successfully recapitulated molecular properties and drug responses of native tumors. We then developed GlioML, a machine learning workflow incorporating nine distinct algorithms and a weighted ensemble model that generated robust gene expression-based predictors, each reflecting the diverse action mechanisms of various compounds and drugs. The ensemble model superseded the performance of all individual algorithms across diverse in vitro systems, including sphere cultures, complex 3D bioprinted multicellular models, and 3D patient-derived tissues. By integrating bioprinting, the evaluative scope of the treatment expanded to T cell-related therapy and anti-angiogenesis targeted therapy. We identified promising compounds and drugs for glioma treatment and revealed distinct immunosuppressive or angiogenic myeloid-infiltrated tumor microenvironments. These insights pave the way for enhanced therapeutic development for glioma and potentially for other cancers, highlighting the broad application potential of this integrative and translational approach.
胶质瘤因其异质性微环境和基因亚型,在治疗预测和开发方面面临重大挑战。我们将3D生物打印和多算法机器学习整合为一种新方法,以加强对胶质瘤治疗反应和微环境特征的评估与理解。生物打印的患者来源的胶质瘤组织成功重现了天然肿瘤的分子特性和药物反应。然后,我们开发了GlioML,这是一种机器学习工作流程,它结合了九种不同算法和一个加权集成模型,该模型生成了强大的基于基因表达的预测因子,每个预测因子都反映了各种化合物和药物的不同作用机制。在包括球体培养、复杂的3D生物打印多细胞模型和3D患者来源组织在内的各种体外系统中,集成模型的性能超过了所有单个算法。通过整合生物打印,治疗的评估范围扩展到了T细胞相关疗法和抗血管生成靶向疗法。我们确定了有前景的胶质瘤治疗化合物和药物,并揭示了不同的免疫抑制或血管生成性髓系浸润肿瘤微环境。这些见解为加强胶质瘤及可能其他癌症的治疗开发铺平了道路,突出了这种整合性和转化性方法的广泛应用潜力。