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Kwon, Taejoon
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Bioprinted Patient-Derived Organoid Arrays Capture Intrinsic and Extrinsic Tumor Features for Advanced Personalized Medicine

Author(s)
Han, JonghyeukJeong, Hye-JinChoi, JeonghanKim, HyeonseoKwon, TaejoonMyung, KyungjaePark, KyemyungPark, Jung InSanchez, SamuelJung, Deok-BeomYu, Chang SikSong, In HoShim, Jin-HyungMyung, Seung-JaeKang, Hyun-WookPark, Tae-Eun
Issued Date
2025-05
DOI
10.1002/advs.202407871
URI
https://scholarworks.unist.ac.kr/handle/201301/87162
Citation
ADVANCED SCIENCE, v.12, no.20, pp.2407871
Abstract
Heterogeneity and the absence of a tumor microenvironment (TME) in traditional patient-derived organoid (PDO) cultures limit their effectiveness for clinical use. Here, Embedded Bioprinting-enabled Arrayed PDOs (Eba-PDOs) featuring uniformly arrayed colorectal cancer (CRC) PDOs within a recreated TME is presented. This model faithfully reproduces critical TME attributes, including elevated matrix stiffness (approximate to 7.5 kPa) and hypoxic conditions found in CRC. Transcriptomic and immunofluorescence microscopy analysis reveal that Eba-PDOs more accurately represent actual tissues compared to traditional PDOs. Furthermore, Eba-PDO effectively capture the variability of CEACAM5 expression-a critical CRC marker-across different patients, correlating with patient classification and differential responses to 5-fluorouracil treatment. This method achieves an uniform size and shape within PDOs from the same patient while preserving distinct morphological features among those from different individuals. These features of Eba-PDO enable the efficient development of a label-free, morphology-based predictive model using supervised learning, enhancing its suitability for clinical applications. Thus, this approach to PDO bioprinting is a promising tool for generating personalized tumor models and advancing precision medicine.
Publisher
WILEY
ISSN
2198-3844
Keyword (Author)
patient-derived tumor organoidsupervised learningtumor matrix stiffnessinter-patient variabilitycolorectal cancerembedded bioprinting
Keyword
DIFFERENTIAL EXPRESSIONEXTRACELLULAR-MATRIXSTEM-CELLCANCERTISSUESASSOCIATIONSTIFFNESSCULTURECARCINOEMBRYONIC ANTIGEN-EXPRESSION

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