Radiomics analysis using stability selection supervised component analysis for right-censored survival data.

dc.contributor.author

Yan, Kang K

dc.contributor.author

Wang, Xiaofei

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Lam, Wendy WT

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Vardhanabhuti, Varut

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Lee, Anne WM

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Pang, Herbert H

dc.date.accessioned

2024-03-31T17:36:20Z

dc.date.available

2024-03-31T17:36:20Z

dc.date.issued

2020-09

dc.description.abstract

Radiomics is a newly emerging field that involves the extraction of massive quantitative features from biomedical images by using data-characterization algorithms. Distinctive imaging features identified from biomedical images can be used for prognosis and therapeutic response prediction, and they can provide a noninvasive approach for personalized therapy. So far, many of the published radiomics studies utilize existing out of the box algorithms to identify the prognostic markers from biomedical images that are not specific to radiomics data. To better utilize biomedical images, we propose a novel machine learning approach, stability selection supervised principal component analysis (SSSuperPCA) that identifies stable features from radiomics big data coupled with dimension reduction for right-censored survival outcomes. The proposed approach allows us to identify a set of stable features that are highly associated with the survival outcomes in a simple yet meaningful manner, while controlling the per-family error rate. We evaluate the performance of SSSuperPCA using simulations and real data sets for non-small cell lung cancer and head and neck cancer, and compare it with other machine learning algorithms. The results demonstrate that our method has a competitive edge over other existing methods in identifying the prognostic markers from biomedical imaging data for the prediction of right-censored survival outcomes.

dc.identifier

S0010-4825(20)30293-6

dc.identifier.issn

0010-4825

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1879-0534

dc.identifier.uri

https://hdl.handle.net/10161/30412

dc.language

eng

dc.publisher

Elsevier BV

dc.relation.ispartof

Computers in biology and medicine

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10.1016/j.compbiomed.2020.103959

dc.rights.uri

https://creativecommons.org/licenses/by-nc/4.0

dc.subject

Humans

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Carcinoma, Non-Small-Cell Lung

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Lung Neoplasms

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Algorithms

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Principal Component Analysis

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Machine Learning

dc.title

Radiomics analysis using stability selection supervised component analysis for right-censored survival data.

dc.type

Journal article

duke.contributor.orcid

Wang, Xiaofei|0000-0001-7512-8445

pubs.begin-page

103959

pubs.organisational-group

Duke

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School of Medicine

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Basic Science Departments

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Institutes and Centers

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Biostatistics & Bioinformatics

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Duke Cancer Institute

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Biostatistics & Bioinformatics, Division of Biostatistics

pubs.publication-status

Published

pubs.volume

124

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