显微高光谱技术检测肌细胞中超氧化物歧化酶活力的方法研究
Detection of Superoxide Dismutase Activity in Muscle Cells by Microscopic Hyperspectral Technology
-
摘要: 利用可见显微高光谱技术对羊肉肌细胞中的超氧化物歧化酶(Superoxide dismutase,SOD)活力进行检测。通过显微高光谱系统(380~980 nm)采集223个显微图像,根据样本光谱的反射率提取感兴趣区域并结合SOD酶活力建立模型。对原始光谱结合偏最小二乘回归模型,进行样本集划分及多种光谱预处理的模型对比分析,优选出多元散射校正为预处理方法,采用6种方法提取特征波长,并根据特征波长建立偏最小二乘回归、多元线性回归、主成分回归三种模型。结果显示,建立基于竞争性自适应重加权法挑选特征波长的多元线性回归模型最优,预测集的相关系数和均方根误差分别为0.8351和21.3578 U/mg·prot。采用显微高光谱成像技术对肌细胞内超氧化物歧化酶活力的检测是具有可行性的。Abstract: The activity of superoxide dismutase(SOD)in sheep muscle cells was detected by visible microscopic hyperspectral technique. 223 microscopic images were collected by micro-hyperspectral system(380~980 nm). The region of interest was extracted based on the reflectance of sample spectra and the SOD activity was used to establish the model. With the original spectrum combined with a partial least squares regression model,sample set partition and multi-spectral pretreatment models were compared and analyzed. Multivariate scatter correction was preferred as a pretreatment method. Six characteristic methods were used to extract the characteristic wavelengths,and three models of partial least squares regression,multiple linear regression and principal component regression were established according to the characteristic wavelengths. The results showed that the multivariate linear regression model based on competitive adaptive weighting method for selecting characteristic wavelengths was the best. The correlation coefficient and root mean square error of the prediction set were 0.8351 and 21.3578 U/mg·prot.It was feasible to detect superoxide dismutase activity in muscle cells by microscopic hyperspectral imaging.