Department of Electrical and Computer Engineering, Georgia Institute of Technology, Atlanta, GA, USA.
BMC Med Imaging. 2013 Mar 13;13:9. doi: 10.1186/1471-2342-13-9.
Automatic cancer diagnostic systems based on histological image classification are important for improving therapeutic decisions. Previous studies propose textural and morphological features for such systems. These features capture patterns in histological images that are useful for both cancer grading and subtyping. However, because many of these features lack a clear biological interpretation, pathologists may be reluctant to adopt these features for clinical diagnosis.
We examine the utility of biologically interpretable shape-based features for classification of histological renal tumor images. Using Fourier shape descriptors, we extract shape-based features that capture the distribution of stain-enhanced cellular and tissue structures in each image and evaluate these features using a multi-class prediction model. We compare the predictive performance of the shape-based diagnostic model to that of traditional models, i.e., using textural, morphological and topological features.
The shape-based model, with an average accuracy of 77%, outperforms or complements traditional models. We identify the most informative shapes for each renal tumor subtype from the top-selected features. Results suggest that these shapes are not only accurate diagnostic features, but also correlate with known biological characteristics of renal tumors.
Shape-based analysis of histological renal tumor images accurately classifies disease subtypes and reveals biologically insightful discriminatory features. This method for shape-based analysis can be extended to other histological datasets to aid pathologists in diagnostic and therapeutic decisions.
基于组织学图像分类的自动癌症诊断系统对于改善治疗决策非常重要。以前的研究为这些系统提出了纹理和形态特征。这些特征捕捉了组织学图像中的模式,对于癌症分级和亚型分类都很有用。然而,由于这些特征中的许多缺乏明确的生物学解释,病理学家可能不愿意将这些特征用于临床诊断。
我们研究了基于生物学可解释的形状特征在组织学肾肿瘤图像分类中的应用。使用傅里叶形状描述符,我们提取了基于形状的特征,这些特征可以捕捉每个图像中染色增强的细胞和组织结构的分布,并使用多类预测模型评估这些特征。我们比较了基于形状的诊断模型与传统模型(即使用纹理、形态和拓扑特征)的预测性能。
基于形状的模型的平均准确率为 77%,优于或补充了传统模型。我们从精选的特征中确定了每个肾肿瘤亚型的最具信息量的形状。结果表明,这些形状不仅是准确的诊断特征,而且与肾肿瘤的已知生物学特征相关。
基于形状的组织学肾肿瘤图像分析可以准确地对疾病亚型进行分类,并揭示具有生物学洞察力的有区别的特征。这种基于形状的分析方法可以扩展到其他组织学数据集,以帮助病理学家做出诊断和治疗决策。