Prostate Cancer Research Center, Faculty of Medicine and Life Sciences and BioMediTech, University of Tampere, Tampere, Finland.
Tampere University of Technology, Pori, Finland.
Sci Rep. 2017 Mar 20;7:44831. doi: 10.1038/srep44831.
Cancer involves histological changes in tissue, which is of primary importance in pathological diagnosis and research. Automated histological analysis requires ability to computationally separate pathological alterations from normal tissue with all its variables. On the other hand, understanding connections between genetic alterations and histological attributes requires development of enhanced analysis methods suitable also for small sample sizes. Here, we set out to develop computational methods for early detection and distinction of prostate cancer-related pathological alterations. We use analysis of features from HE stained histological images of normal mouse prostate epithelium, distinguishing the descriptors for variability between ventral, lateral, and dorsal lobes. In addition, we use two common prostate cancer models, Hi-Myc and Pten+/- mice, to build a feature-based machine learning model separating the early pathological lesions provoked by these genetic alterations. This work offers a set of computational methods for separation of early neoplastic lesions in the prostates of model mice, and provides proof-of-principle for linking specific tumor genotypes to quantitative histological characteristics. The results obtained show that separation between different spatial locations within the organ, as well as classification between histologies linked to different genetic backgrounds, can be performed with very high specificity and sensitivity.
癌症涉及组织的组织学变化,这在病理诊断和研究中至关重要。自动化组织学分析需要能够计算性地将病理改变与正常组织及其所有变量分开。另一方面,要理解遗传改变与组织学属性之间的联系,需要开发增强的分析方法,这些方法也适用于小样本量。在这里,我们着手开发用于早期检测和区分与前列腺癌相关的病理改变的计算方法。我们使用来自正常小鼠前列腺上皮组织的 HE 染色组织学图像的特征分析,区分腹侧、侧部和背侧叶之间的变异性描述符。此外,我们使用两种常见的前列腺癌模型,即 Hi-Myc 和 Pten+/- 小鼠,构建基于特征的机器学习模型,以分离这些遗传改变引起的早期病理病变。这项工作提供了一组用于分离模型小鼠前列腺中早期肿瘤病变的计算方法,并为将特定肿瘤基因型与定量组织学特征联系起来提供了原理证明。所获得的结果表明,可以非常高的特异性和敏感性进行器官内不同空间位置之间的分离,以及与不同遗传背景相关的组织学之间的分类。