Affiliation:
1. University of Oklahoma Health Sciences Center
2. University of Washington
3. University of Nottingham
4. Shandong Jianzhu University
Abstract
Optical coherence tomography (OCT) is an ideal imaging technique for noninvasive and longitudinal monitoring of multicellular tumor spheroids (MCTS). However, the internal structure features within MCTS from OCT images are still not fully utilized. In this study, we developed cross-statistical, cross-screening, and composite-hyperparameter feature processing methods in conjunction with 12 machine learning models to assess changes within the MCTS internal structure. Our results indicated that the effective features combined with supervised learning models successfully classify OVCAR-8 MCTS culturing with 5,000 and 50,000 cell numbers, MCTS with pancreatic tumor cells (Panc02-H7) culturing with the ratio of 0%, 33%, 50%, and 67% of fibroblasts, and OVCAR-4 MCTS treated by 2-methoxyestradiol, AZD1208, and R-ketorolac with concentrations of 1, 10, and 25 µM. This approach holds promise for obtaining multi-dimensional physiological and functional evaluations for using OCT and MCTS in anticancer studies.
Funder
U.S. Department of Defense
Midwest Biomedical Accelerator Consortium
Oklahoma Center for the Advancement of Science and Technology
University of Oklahoma Health Sciences Center
Oklahoma Shared Clinical and Translational Resources
National Cancer Institute
National Institute of General Medical Sciences
American Cancer Society
National Science Foundation
National Institute of Health
Cited by
1 articles.
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