Suppr超能文献

破解密码:在人肿瘤类器官模型中利用机器学习预测肿瘤微环境导致的化疗耐药性

Cracking the Code: Predicting Tumor Microenvironment Enabled Chemoresistance with Machine Learning in the Human Tumoroid Models.

作者信息

Mehta Geeta, Bregenzer Michael, Mehta Pooja, Burkhard Kathleen

机构信息

University of Michigan.

出版信息

Res Sq. 2025 Apr 21:rs.3.rs-5159414. doi: 10.21203/rs.3.rs-5159414/v1.

Abstract

High-grade serous tubo-ovarian cancer (HGSC) is marked by substantial inter- and intra-tumor heterogeneity. The tumor microenvironments (TME) of HGSC show pronounced variability in cellular make-up across metastatic sites, which is linked to poorer patient outcomes. The influence of cellular composition on therapy sensitivity, including chemotherapy and targeted treatments, has not been thoroughly investigated. In this study, we examined the premise that the variations in cellular composition can forecast drug efficacy. Using a high-throughput 3D in vitro tumoroid model, we assessed the drug responses of twenty-three distinct cellular configurations to an assortment of five therapeutic agents, including carboplatin and paclitaxel. By amalgamating our experimental findings with random forest machine learning algorithms, we assessed the influence of TME cellular composition on treatment reactions. Our findings reveal notable disparities in drug responses correlated with tumoroid composition, underscoring the significance of cellular diversity within the TME as a predictor of therapeutic outcomes. However, our work also emphasizes the complex nature of cell composition's influence on drug response. This research establishes a foundation for employing human tumoroids with varied cellular composition as a method to delve into the roles of stromal, immune, and other TME cell types in enhancing cancer cell susceptibility to various treatments. Additionally, these tumoroids can serve as a platform to explore pivotal cellular interactions within the TME that contribute to chemoresistance and cancer recurrence.

摘要

高级别浆液性输卵管卵巢癌(HGSC)的特点是肿瘤间和肿瘤内存在显著的异质性。HGSC的肿瘤微环境(TME)在不同转移部位的细胞组成上表现出明显的变异性,这与患者较差的预后相关。细胞组成对包括化疗和靶向治疗在内的治疗敏感性的影响尚未得到充分研究。在本研究中,我们检验了细胞组成的变化可以预测药物疗效这一前提。使用高通量三维体外肿瘤球模型,我们评估了23种不同细胞构型对包括卡铂和紫杉醇在内的五种治疗药物的反应。通过将我们的实验结果与随机森林机器学习算法相结合,我们评估了TME细胞组成对治疗反应的影响。我们的研究结果揭示了与肿瘤球组成相关的药物反应存在显著差异,强调了TME内细胞多样性作为治疗结果预测指标的重要性。然而,我们的工作也强调了细胞组成对药物反应影响的复杂性。这项研究为利用具有不同细胞组成的人肿瘤球作为一种方法来深入研究基质、免疫和其他TME细胞类型在增强癌细胞对各种治疗的敏感性中的作用奠定了基础。此外,这些肿瘤球可以作为一个平台来探索TME内导致化疗耐药和癌症复发的关键细胞相互作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/55cd/12045351/f1ad06512181/nihpp-rs5159414v1-f0001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验