使用基于深度学习的组织簇将高级别浆液性卵巢癌分类为临床相关亚组。

IF 1.7 Q3 PATHOLOGY
Byungsoo Ahn, Eunhyang Park
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引用次数: 0

摘要

背景:高级别浆液性卵巢癌(HGSC)表现出显著的异质性,这对有效的临床分类提出了挑战。了解HGSC内的组织形态学多样性可以改善预后分层和个性化治疗方法。方法:我们将癌症变异的组织图谱模型应用于来自癌症基因组图谱数据集的卵巢癌全幻灯片图像。组织学上不同的肿瘤克隆被归为共同的组织簇。主成分分析和K-means聚类将HGSC样本分为三类:高分化(HD)、中等分化(ID)和低分化(LD)。结果:HD肿瘤形态多样,密度低,伊红染色强。ID肿瘤密度中等,染色均衡;LD肿瘤致密,无模式,苏木精染色强烈。RNA测序揭示了线粒体氧化磷酸化和能量代谢的不同模式,HD上调,LD下调,ID位于两者之间。生存分析显示,与HD和ID相比,LD的总生存期明显较低,这强调了线粒体动力学和能量代谢在HGSC进展中的关键作用。结论:基于深度学习的组织学分析有效地将HGSC划分为临床相关的预后组,突出了线粒体动力学和能量代谢在疾病进展中的作用。该方法为HGSC分类提供了一种新的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Categorizing high-grade serous ovarian carcinoma into clinically relevant subgroups using deep learning-based histomic clusters.

Background: High-grade serous ovarian carcinoma (HGSC) exhibits significant heterogeneity, posing challenges for effective clinical categorization. Understanding the histomorphological diversity within HGSC could lead to improved prognostic stratification and personalized treatment approaches.

Methods: We applied the Histomic Atlases of Variation Of Cancers model to whole slide images from The Cancer Genome Atlas dataset for ovarian cancer. Histologically distinct tumor clones were grouped into common histomic clusters. Principal component analysis and K-means clustering classified HGSC samples into three groups: highly differentiated (HD), intermediately differentiated (ID), and lowly differentiated (LD).

Results: HD tumors showed diverse patterns, lower densities, and stronger eosin staining. ID tumors had intermediate densities and balanced staining, while LD tumors were dense, patternless, and strongly hematoxylin-stained. RNA sequencing revealed distinct patterns in mitochondrial oxidative phosphorylation and energy metabolism, with upregulation in the HD, downregulation in the LD, and the ID positioned in between. Survival analysis showed significantly lower overall survival for the LD compared to the HD and ID, underscoring the critical role of mitochondrial dynamics and energy metabolism in HGSC progression.

Conclusions: Deep learning-based histologic analysis effectively stratifies HGSC into clinically relevant prognostic groups, highlighting the role of mitochondrial dynamics and energy metabolism in disease progression. This method offers a novel approach to HGSC categorization.

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来源期刊
CiteScore
5.00
自引率
4.20%
发文量
45
审稿时长
14 weeks
期刊介绍: The Journal of Pathology and Translational Medicine is an open venue for the rapid publication of major achievements in various fields of pathology, cytopathology, and biomedical and translational research. The Journal aims to share new insights into the molecular and cellular mechanisms of human diseases and to report major advances in both experimental and clinical medicine, with a particular emphasis on translational research. The investigations of human cells and tissues using high-dimensional biology techniques such as genomics and proteomics will be given a high priority. Articles on stem cell biology are also welcome. The categories of manuscript include original articles, review and perspective articles, case studies, brief case reports, and letters to the editor.
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