作者
Haidy Nasief, Cheng Zheng, Diane Schott, William Hall, Susan Tsai, Beth Erickson, X Allen Li
发表日期
2019/10/4
期刊
NPJ precision oncology
卷号
3
期号
1
页码范围
25
出版商
Nature Publishing Group UK
简介
Changes of radiomic features over time in longitudinal images, delta radiomics, can potentially be used as a biomarker to predict treatment response. This study aims to develop a delta-radiomic process based on machine learning by (1) acquiring and registering longitudinal images, (2) segmenting and populating regions of interest (ROIs), (3) extracting radiomic features and calculating their changes (delta-radiomic features, DRFs), (4) reducing feature space and determining candidate DRFs showing treatment-induced changes, and (5) creating outcome prediction models using machine learning. This process was demonstrated by retrospectively analyzing daily non-contrast CTs acquired during routine CT-guided-chemoradiation therapy for 90 pancreatic cancer patients. A total of 2520 CT sets (28-daily-fractions-per-patient) along with their pathological response were analyzed. Over 1300 radiomic features …
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H Nasief, C Zheng, D Schott, W Hall, S Tsai, B Erickson… - NPJ precision oncology, 2019