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Unveiling Breast Cancer Risk Profiles: A Survival Clustering Analysis Empowered by an Online Web Application

Yuan Gu, Mingyue Wang, Yishu Gong, Xin Ying Li, Ziyang Wang, Yuli Wang, Song Jiang, Dan Zhang, Chen Li

2023Future Oncology11 citationsDOI

Abstract

Aim: To develop a shiny app for doctors to investigate breast cancer treatments through a new approach by incorporating unsupervised clustering and survival information. Materials & methods: Analysis is based on the Molecular Taxonomy of Breast Cancer International Consortium (METABRIC) dataset, which contains 1726 subjects and 22 variables. Cox regression was used to identify survival risk factors for K-means clustering. Logrank tests and C-statistics were compared across different cluster numbers and Kaplan–Meier plots were presented. Results & conclusion: Our study fills an existing void by introducing a unique combination of unsupervised learning techniques and survival information on the clinician side, demonstrating the potential of survival clustering as a valuable tool in uncovering hidden structures based on distinct risk profiles.

Topics & Concepts

Cluster analysisBreast cancerMedicineProportional hazards modelSurvival analysisHierarchical clusteringData miningArtificial intelligenceOncologyCancerComputer scienceInternal medicineBioinformatics and Genomic NetworksGene expression and cancer classificationAI in cancer detection
Unveiling Breast Cancer Risk Profiles: A Survival Clustering Analysis Empowered by an Online Web Application | Litcius