Center for Physical Sciences and Technology, Sauletekio Ave. 3, Vilnius LT-10257, Lithuania.
Center for Physical Sciences and Technology, Sauletekio Ave. 3, Vilnius LT-10257, Lithuania.
Comput Med Imaging Graph. 2024 Oct;117:102440. doi: 10.1016/j.compmedimag.2024.102440. Epub 2024 Oct 5.
Papillary thyroid carcinoma (PTC) is one of the most common, well-differentiated carcinomas of the thyroid gland. PTC nodules are often surrounded by a collagen capsule that prevents the spread of cancer cells. However, as the malignant tumor progresses, the integrity of this protective barrier is compromised, and cancer cells invade the surroundings. The detection of capsular invasion is, therefore, crucial for the diagnosis and the choice of treatment and the development of new approaches aimed at the increase of diagnostic performance are of great importance. In the present study, we exploited the wide-field second harmonic generation (SHG) microscopy in combination with texture analysis and unsupervised machine learning (ML) to explore the possibility of quantitative characterization of collagen structure in the capsule and designation of different capsule areas as either intact, disrupted by invasion, or apt to invasion. Two-step k-means clustering showed that the collagen capsules in all analyzed tissue sections were highly heterogeneous and exhibited distinct segments described by characteristic ML parameter sets. The latter allowed a structural interpretation of the collagen fibers at the sites of overt invasion as fragmented and curled fibers with rarely formed distributed networks. Clustering analysis also distinguished areas in the PTC capsule that were not categorized as invasion sites by the initial histopathological analysis but could be recognized as prospective micro-invasions after additional inspection. The characteristic features of suspicious and invasive sites identified by the proposed unsupervised ML approach can become a reliable complement to existing methods for diagnosing encapsulated PTC, increase the reliability of diagnosis, simplify decision making, and prevent human-related diagnostic errors. In addition, the proposed automated ML-based selection of collagen capsule images and exclusion of non-informative regions can greatly accelerate and simplify the development of reliable methods for fully automated ML diagnosis that can be integrated into clinical practice.
甲状腺乳头状癌 (PTC) 是甲状腺最常见的一种分化良好的癌。PTC 结节通常被胶原囊包围,阻止癌细胞扩散。然而,随着恶性肿瘤的发展,这种保护屏障的完整性受到损害,癌细胞侵犯周围组织。因此,检测包膜侵犯对于诊断、治疗方案的选择至关重要,开发旨在提高诊断性能的新方法非常重要。在本研究中,我们利用宽场二次谐波产生 (SHG) 显微镜结合纹理分析和无监督机器学习 (ML) 来探索定量描述囊内胶原结构的可能性,并指定不同囊区为完整、被侵犯破坏或易受侵犯的可能性。两步 k-均值聚类显示,所有分析的组织切片中的胶原囊高度不均匀,表现出不同的特征,由特征 ML 参数集描述。后者允许对明显侵犯部位的胶原纤维进行结构解释,即纤维碎片化和卷曲,很少形成分布网络。聚类分析还区分了 PTC 囊中的区域,这些区域在初始组织病理学分析中未归类为侵犯部位,但在进一步检查后可被识别为潜在的微侵犯。通过提出的无监督 ML 方法识别的可疑和侵犯部位的特征可以成为诊断包膜 PTC 的现有方法的可靠补充,提高诊断的可靠性,简化决策,并防止人为相关的诊断错误。此外,所提出的基于自动化 ML 的胶原囊图像选择和非信息区域排除可以极大地加速和简化开发完全自动化 ML 诊断的可靠方法,这些方法可以集成到临床实践中。