BioLab, Instituto Universitario de Bio-Orgánica "Antonio González", Universidad de La Laguna, Avenida Astrofísico Francisco Sánchez 2, 38206 La Laguna, Spain.
Departament of Biochemistry, Microbiology, Cell Biology and Genetics, Faculty of Sciences, Universidad de La Laguna, Avenida Astrofísico Francisco Sánchez s/n, 38206 La Laguna, Spain.
Molecules. 2022 Aug 17;27(16):5261. doi: 10.3390/molecules27165261.
Natural products represent an excellent source of unprecedented anticancer compounds. However, the identification of the mechanism of action remains a major challenge. Several techniques and methodologies have been considered, but with limited success. In this work, we explored the combination of live cell imaging and machine learning techniques as a promising tool to depict in a fast and affordable test the mode of action of natural compounds with antiproliferative activity. To develop the model, we selected the non-small cell lung cancer cell line SW1573, which was exposed to the known antimitotic drugs paclitaxel, colchicine and vinblastine. The novelty of our methodology focuses on two main features with the highest relevance, (a) meaningful phenotypic metrics, and (b) fast Fourier transform (FFT) of the time series of the phenotypic parameters into their corresponding amplitudes and phases. The resulting algorithm was able to cluster the microtubule disruptors, and meanwhile showed a negative correlation between paclitaxel and the other treatments. The FFT approach was able to group the samples as efficiently as checking by eye. This methodology could easily scale to group a large amount of data without visual supervision.
天然产物是具有新颖抗癌活性化合物的重要来源。然而,作用机制的鉴定仍然是一个重大挑战。已经考虑了几种技术和方法,但成功有限。在这项工作中,我们探索了活细胞成像和机器学习技术的组合,作为一种有前途的工具,可以快速且经济地检测具有抗增殖活性的天然化合物的作用模式。为了开发该模型,我们选择了非小细胞肺癌细胞系 SW1573,使其暴露于已知的抗有丝分裂药物紫杉醇、秋水仙碱和长春花碱。我们的方法学的新颖之处主要集中在两个具有最高相关性的特征上:(a)有意义的表型指标,和(b)将表型参数的时间序列快速傅里叶变换(FFT)为其相应的幅度和相位。由此产生的算法能够对微管破坏剂进行聚类,同时显示紫杉醇与其他处理之间呈负相关。FFT 方法能够像通过肉眼检查一样有效地对样本进行分组。该方法可以轻松扩展以对大量数据进行分组,而无需人工监督。