Petrov Mikhail, Makarova Nadezhda, Monemian Amir, Pham Jean, Lekka Małgorzata, Sokolov Igor
Department of Mechanical Engineering, Tufts University, Medford, MA 02155, USA.
Cellens, Inc., 529 Main Street, Suite 1M6, Boston, MA 02129, USA.
Cells. 2024 Dec 26;14(1):14. doi: 10.3390/cells14010014.
The development of noninvasive methods for bladder cancer identification remains a critical clinical need. Recent studies have shown that atomic force microscopy (AFM), combined with pattern recognition machine learning, can detect bladder cancer by analyzing cells extracted from urine. However, these promising findings were limited by a relatively small patient cohort, resulting in modest statistical significance. In this study, we corroborated the AFM technique's capability to identify bladder cancer cells with high accuracy using a controlled model system of genetically purified human bladder epithelial cell lines, comparing cancerous cells with nonmalignant controls. By processing AFM adhesion maps through machine learning algorithms, following previously established methods, we achieved an area under the ROC curve (AUC) of 0.97, with 91% accuracy in cancer cell identification. Furthermore, we enhanced cancer detection by incorporating multiple imaging channels recorded with AFM operating in Ringing mode, achieving an AUC of 0.99 and 93% accuracy. These results demonstrated strong statistical significance ( < 0.0001) in this well-defined model system. While this controlled study does not capture the biological variation present in clinical settings, it provides independent support for AFM-based detection methods and establishes a rigorous technical foundation for further clinical development of AFM imaging-based methods for bladder cancer detection.
开发用于膀胱癌识别的非侵入性方法仍然是一项关键的临床需求。最近的研究表明,原子力显微镜(AFM)结合模式识别机器学习,可以通过分析从尿液中提取的细胞来检测膀胱癌。然而,这些有前景的发现受到相对较小的患者队列的限制,导致统计学意义不大。在本研究中,我们使用基因纯化的人膀胱上皮细胞系的受控模型系统,将癌细胞与非恶性对照进行比较,证实了AFM技术能够高精度地识别膀胱癌细胞。通过按照先前建立的方法,通过机器学习算法处理AFM粘附图,我们实现了0.97的受试者工作特征曲线下面积(AUC),癌细胞识别准确率为91%。此外,我们通过合并在振铃模式下操作的AFM记录的多个成像通道,提高了癌症检测率,实现了0.99的AUC和93%的准确率。这些结果在这个定义明确的模型系统中显示出很强的统计学意义(<0.0001)。虽然这项对照研究没有捕捉到临床环境中存在的生物学变异,但它为基于AFM的检测方法提供了独立支持,并为基于AFM成像的膀胱癌检测方法的进一步临床开发奠定了严格的技术基础。