Yuen Jenny, Li Yi, Shapiro Linda G, Clark John I, Arnett Ernest, Sage E Helene, Brinkley James F
Department of Computer Science and Engineering, University of Washington, Seattle, WA 98195, USA.
Exp Eye Res. 2008 Apr;86(4):562-75. doi: 10.1016/j.exer.2007.11.019. Epub 2007 Dec 7.
Longitudinal studies of a variety of transgenic mouse models for lens development can create substantial challenges in database management and analysis. We report a novel, automated, feature-based informatics approach to screening lens phenotypes in a large database of slit lamp images. Digital slit lamp images of normal and abnormal lenses in eyes of wild type (wt), SC1 null and SPARC null transgenic mice were recorded for quantitative evaluation of their structural phenotype. The images were processed to improve the contrast of structural features that corresponded to rings of opacity and fluctuations in scattering intensity in the lenses. Measurable attributes were assigned to the features in the lens images and given as an output vector of 46 dimensions. Characteristic patterns were correlated with the structural phenotype of each mutant and wt lens and a statistical fit for each phenotype was defined. The genotype was identified correctly in nearly 85% of the slit lamp images on the basis of an automated computer analysis of the lens structural phenotype. The automated computer algorithm has the potential to evaluate a large database of slit lamp images and distinguish mouse genotypes on the basis of lens phenotypes objectively using a neural network analysis of the structural features observed in the slit lamp images. The neural network approach is a promising technology for objective evaluation of genotype/phenotype relationships based on structural features and light scattering in lenses. Further improvements in the automated method can be expected to simplify and increase the accuracy and efficiency of the feature based analysis of structural phenotypes linked to genetic variation.
对多种用于晶状体发育的转基因小鼠模型进行纵向研究可能会在数据库管理和分析方面带来重大挑战。我们报告了一种新颖的、自动化的、基于特征的信息学方法,用于在一个大型裂隙灯图像数据库中筛选晶状体表型。记录了野生型(wt)、SC1基因敲除和SPARC基因敲除转基因小鼠眼睛中正常和异常晶状体的数字裂隙灯图像,以对其结构表型进行定量评估。对图像进行处理,以提高与晶状体中不透明环和散射强度波动相对应的结构特征的对比度。为晶状体图像中的特征分配可测量的属性,并给出一个46维的输出向量。将特征模式与每个突变体和野生型晶状体的结构表型相关联,并定义每种表型的统计拟合。基于对晶状体结构表型的自动计算机分析,在近85%的裂隙灯图像中正确识别了基因型。这种自动计算机算法有潜力评估一个大型裂隙灯图像数据库,并基于裂隙灯图像中观察到的结构特征,通过神经网络分析客观地区分小鼠基因型。神经网络方法是一种基于晶状体结构特征和光散射客观评估基因型/表型关系的有前景的技术。预计自动化方法的进一步改进将简化并提高基于特征的与遗传变异相关的结构表型分析的准确性和效率。