USING PERSISTENT HOMOLOGY TOPOLOGICAL FEATURES TO CHARACTERIZE MEDICAL IMAGES: CASE STUDIES ON LUNG AND BRAIN CANCERS

成果类型:
Article
署名作者:
Moon, Chul; Li, Qiwei; Xiao, Guanghua
署名单位:
Southern Methodist University; University of Texas System; University of Texas Dallas; University of Texas System; University of Texas Southwestern Medical Center; University of Texas System; University of Texas Southwestern Medical Center
刊物名称:
ANNALS OF APPLIED STATISTICS
ISSN/ISSBN:
1932-6157
DOI:
10.1214/22-AOAS1714
发表日期:
2023
页码:
2192-2211
关键词:
prognostic-significance tumor segmentation glioblastoma shape mri survival necrosis ct
摘要:
Tumor shape is a key factor that affects tumor growth and metastasis. This paper proposes a topological feature computed by persistent homology to characterize tumor progression from digital pathology and radiology images and examines its effect on the time-to-event data. The proposed topological features are invariant to scale-preserving transformation and can summarize various tumor shape patterns. The topological features are represented in functional space and used as functional predictors in a functional Cox proportional hazards model. The proposed model enables interpretable inference about the association between topological shape features and survival risks. Two case studies are conducted using consecutive 133 lung cancer and 77 brain tumor patients. The results of both studies show that the topological features predict survival prognosis after adjusting clinical variables, and the predicted high-risk groups have worse survival outcomes than the low-risk groups. Also, the topological shape features found to be positively associated with survival hazards are irregular and heterogeneous shape patterns which are known to be related to tumor progression.
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