Department of Biophysics, Manipal School of Life Sciences, Manipal Academy of Higher Education, Manipal, Karnataka, India.
Department of Electronics & Communication Engineering, Manipal Institute of Technology, Manipal Academy of Higher Education, Manipal, Karnataka, India.
Lab Invest. 2021 Jul;101(7):952-965. doi: 10.1038/s41374-021-00597-3. Epub 2021 Apr 19.
In the current study, a breast tumor xenograft was established in athymic nude mice by subcutaneous injection of the MCF-7 cell line and assessed the tumor progression by photoacoustic spectroscopy combined with machine learning tools. The advancement of breast tumors in nude mice was validated by tumor volume kinetics and histopathology and corresponding image analysis by TissueQuant software compared to controls. The ex vivo tumors in progressive conditions belonging to time points, day 5, 10, 15 & 20, were excited with 281 nm pulsed laser light and recorded the corresponding photoacoustic spectra in time domain. The spectra were then pre-processed, augmented for a 10-fold increase in the data strength, and subjected to wavelet packet transformation for feature extraction and selection using MATLAB software. In the present study, the top 10 features from all the time point groups under study were selected based on their prediction ranking values using the mRMR algorithm. The chosen features of all the time-point groups were then subjected to multi-class Support Vector Machine (SVM) algorithms for learning and classifying into respective time point groups under study. The analysis demonstrated accuracy values of 95.2%, 99.5%, and 80.3% with SVM- Radial Basis Function (SVM-RBF), SVM-Polynomial & SVM-Linear, respectively. The serum metabolomic levels during tumor progression complemented photoacoustic patterns of tumor progression, depicting breast cancer pathophysiology.
在当前的研究中,通过 MCF-7 细胞系的皮下注射,在免疫缺陷裸鼠中建立了乳腺肿瘤异种移植,并通过光声光谱结合机器学习工具来评估肿瘤的进展情况。通过与对照组相比,通过肿瘤体积动力学和组织病理学以及 TissueQuant 软件的相应图像分析来验证裸鼠中乳腺肿瘤的进展。在进展条件下的离体肿瘤属于时间点 5 天、10 天、15 天和 20 天,用 281nm 脉冲激光激发并记录相应的时域光声光谱。然后对光谱进行预处理,增强 10 倍的数据强度,并使用 MATLAB 软件进行小波包变换以进行特征提取和选择。在本研究中,基于 mRMR 算法的预测排序值,从所有研究时间点组中选择了前 10 个特征。然后,对所有时间点组的选定特征进行多类支持向量机(SVM)算法的学习,并将其分类到研究中的各个时间点组中。分析结果表明,SVM-径向基函数(SVM-RBF)、SVM-多项式和 SVM-线性的准确率分别为 95.2%、99.5%和 80.3%。在肿瘤进展过程中的血清代谢组学水平补充了肿瘤进展的光声模式,描绘了乳腺癌的病理生理学。