Yang Sihai, Han Xianhua, Chen Yenwei
1 College of Computer Science and Technology, Huaqiao University , Xiamen, China .
2 Graduate School of Information Science and Engineering, Ritsumeikan University , Kusatsu, Japan .
J Comput Biol. 2019 Feb;26(2):128-142. doi: 10.1089/cmb.2018.0165. Epub 2018 Dec 5.
Quantitative analysis based on three-dimensional differential interference contrast (DIC) images is currently the mainstream in analyzing gene functions involved in early cell fate specifications. Segmentation and registration are the two most important steps in analysis. Many image segmentation methods have poor performance on embryonic DIC images because of the interference of egg shells, blurs, and nonuniform intensity background. A novel segmentation method is presented based on the shape index (SI) of local intensity variation in DIC images. To compute the SI, the intensity values of a local neighborhood are regarded as z coordinates over x-y planes. After calculating the SI for each pixel by evaluating the shape of intensity surface over the corresponding local neighborhood, SI thresholding is used to detect cytoplasm granules within embryonic boundaries. As a scalar and rotation invariant, the SI is both insensitive to directional changes and different ranges of intensity variations. Embryonic registration methods are usually based on the orientation of vertebrate anteroposterior (AP) axes computed from segmented embryonic boundaries. Due to the blur of marginal slices in DIC images, usually the segmented boundaries are incomplete, which may make the computed AP axes shift away from the correct orientation when using the principal component analysis method. A method calculating AP axes based on ellipsoid-fitting is proposed, which can achieve high accuracy when handling incomplete segmented boundaries. Using Worm Developmental Dynamics Database, we evaluated the performance of the proposed segmentation method and the computation of AP axes. Experimental results show that the two methods outperform existing methods.
基于三维微分干涉对比(DIC)图像的定量分析是目前分析参与早期细胞命运决定的基因功能的主流方法。分割和配准是分析中两个最重要的步骤。由于卵壳的干扰、模糊以及强度背景不均匀,许多图像分割方法在胚胎DIC图像上的性能较差。本文提出了一种基于DIC图像局部强度变化形状指数(SI)的新型分割方法。为了计算SI,将局部邻域的强度值视为x-y平面上的z坐标。通过评估相应局部邻域上强度表面的形状来计算每个像素的SI后,使用SI阈值检测胚胎边界内的细胞质颗粒。作为一个标量和旋转不变量,SI对方向变化和不同强度变化范围均不敏感。胚胎配准方法通常基于从分割后的胚胎边界计算出的脊椎动物前后(AP)轴方向。由于DIC图像中边缘切片的模糊,分割边界通常不完整,这可能导致在使用主成分分析方法时计算出的AP轴偏离正确方向。本文提出了一种基于椭圆拟合计算AP轴的方法,该方法在处理不完整分割边界时能够实现高精度。利用线虫发育动力学数据库,我们评估了所提出的分割方法和AP轴计算方法的性能。实验结果表明,这两种方法优于现有方法。