Katja Fromm, Jan Winnicki, Grzegorz Jóźwiak, Gino Cathomen, Christine Wagner, Marta Pla Verge, Eric Delarze, Michał Świątkowski, Grzegorz Wielgoszewski, Maria Ines Villalba, Laura Munch, Sandor Kasas, Danuta Cichocka and Alexander Sturm*,
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引用次数: 0
摘要
肿瘤耐药仍然是肿瘤学的一个关键挑战,需要快速可靠的诊断工具来评估肿瘤细胞对治疗的易感性。本研究提出了一种基于纳米运动的药物敏感性测试(DST)方法,将纳米级运动分析与监督机器学习相结合,对药物敏感和耐药的癌细胞进行分类。利用无标记实时纳米运动技术,我们测量了生理条件下结肠癌(SW480)和卵巢癌(A2780、A2780ADR)细胞对阿霉素的动态反应。从纳米运动信号中提取的特征用于训练机器学习模型,区分阿霉素处理和未处理的SW480细胞的准确率达到90.9%,区分阿霉素敏感和耐药卵巢癌细胞的准确率为84.6%。该模型仅在药物暴露4 h 15 min后,就在独立的试验集中完成了对耐药A2780ADR细胞的完美分类。与从分子标记推断耐药性的基因测试或需要延长孵育时间的代谢分析不同,基于纳米运动的DST提供了直接的表型读数,为评估肿瘤细胞反应提供了更快、无标记的替代方法。虽然进一步的数据集扩展和模型改进是增强可泛化性的必要条件,但这些结果强调了纳米运动技术作为个性化肿瘤学快速、表型DST的潜力。通过直接测量癌细胞对化疗反应的机械行为,这种方法可以改变临床决策,实现更快、更精确的治疗策略,以对抗癌症的耐药性。
Nanomotion-Based Drug Sensitivity Prediction in Ovarian and Colon Cancer Cell Lines Using Machine Learning
Cancer drug resistance remains a critical challenge in oncology, demanding rapid and reliable diagnostic tools to assess tumor cell susceptibility to treatment. This study presents a nanomotion-based drug susceptibility testing (DST) approach, integrating nanoscale movement analysis with supervised machine learning to classify drug-sensitive and drug-resistant cancer cells. Using label-free, real-time nanomotion technology, we measured the dynamic responses of colon cancer (SW480) and ovarian cancer (A2780, A2780ADR) cells to doxorubicin under physiological conditions. Features extracted from nanomotion signals were used to train machine learning models, achieving 90.9% accuracy in distinguishing between doxorubicin-treated and untreated SW480 cells and 84.6% accuracy in classifying doxorubicin-sensitive and -resistant ovarian cancer cells. The model achieved perfect classification of resistant A2780ADR cells in an independent test set after only 4 h and 15 min of exposure to the drug. Unlike genetic tests that infer drug resistance from molecular markers or metabolic assays requiring extended incubation times, nanomotion-based DST provides a direct phenotypic readout, offering a faster, label-free alternative for assessing tumor cell responses. While further dataset expansion and model refinement are necessary to enhance generalizability, these results underscore the potential of nanomotion technology as a rapid, phenotypic DST for personalized oncology. By directly measuring the mechanical behavior of cancer cells in response to chemotherapy, this method could transform clinical decision-making, enabling faster, more precise treatment strategies to combat drug resistance in cancer.
期刊介绍:
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