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Autor(en) / Beteiligte
Titel
Adaptive Sparsity Regularization Based Collaborative Clustering for Cancer Prognosis
Ist Teil von
  • Medical Image Computing and Computer Assisted Intervention – MICCAI 2019, 2019-10, p.583-592
Ort / Verlag
Cham: Springer International Publishing
Erscheinungsjahr
2019
Quelle
Alma/SFX Local Collection
Beschreibungen/Notizen
  • Radiomic approaches have achieved promising performance in prediction of clinical outcomes of cancer patients. Particularly, feature dimensionality reduction plays an important role in radiomic studies. However, conventional feature dimensionality reduction techniques are not equipped to suppress data noise or utilize latent supervision information of patient data under study (e.g. difference in patients) for learning discriminative low dimensional representations. To achieve feature dimensionality reduction with improved discriminative power and robustness to noisy radiomic features, we develop an adaptive sparsity regularization based collaborative clustering method to simultaneously cluster patients and radiomic features into distinct groups respectively. Our method is built on adaptive sparsity regularized matrix tri-factorization for simultaneous feature denoising and dimension reduction so that the noise is adaptively isolated from the features, and grouping information of patients with distinctive features provides latent supervision information to guide feature dimension reduction. The sparsity regularization is grounded on distribution modeling of transform-domain coefficients in a Bayesian framework. Experiments on synthetic data have demonstrated the effectiveness of the proposed approach in data clustering, and empirical results on an FDG-PET/CT dataset of rectal cancer patients have demonstrated that the proposed method outperforms alternative methods in terms of both patient stratification and prediction of patient clinical outcomes.
Sprache
Englisch
Identifikatoren
ISBN: 3030322505, 9783030322502
ISSN: 0302-9743
eISSN: 1611-3349
DOI: 10.1007/978-3-030-32251-9_64
Titel-ID: cdi_springer_books_10_1007_978_3_030_32251_9_64

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