학술논문

Patient-derived organoids of pancreatic ductal adenocarcinoma for subtype determination and clinical outcome prediction
Document Type
Original Paper
Source
Journal of Gastroenterology. :1-12
Subject
Pancreatic ductal adenocarcinoma
Patient-derived organoids
Precision medicine
Subtype classification
Turnaround time
Language
English
ISSN
0944-1174
1435-5922
Abstract
Background: Recently, two molecular subtypes of pancreatic ductal adenocarcinoma (PDAC) have been proposed: the “Classical” and “Basal-like” subtypes, with the former showing better clinical outcomes than the latter. However, the “molecular” classification has not been applied in real-world clinical practice. This study aimed to establish patient-derived organoids (PDOs) for PDAC and evaluate their application in subtype classification and clinical outcome prediction.Methods: We utilized tumor samples acquired through endoscopic ultrasound-guided fine-needle biopsy and established a PDO library for subsequent use in morphological assessments, RNA-seq analyses, and in vitro drug response assays. We also conducted a prospective clinical study to evaluate whether analysis using PDOs can predict treatment response and prognosis.Results: PDOs of PDAC were established at a high efficiency (> 70%) with at least 100,000 live cells. Morphologically, PDOs were classified as gland-like structures (GL type) and densely proliferating inside (DP type) less than 2 weeks after tissue sampling. RNA-seq analysis revealed that the “morphological” subtype (GL vs. DP) corresponded to the “molecular” subtype (“Classical” vs. “Basal-like”). The “morphological” classification predicted the clinical treatment response and prognosis; the median overall survival of patients with GL type was significantly longer than that with DP type (P < 0.005). The GL type showed a better response to gemcitabine than the DP type in vitro, whereas the drug response of the DP type was improved by the combination of ERK inhibitor and chloroquine.Conclusions: PDAC PDOs help in subtype determination and clinical outcome prediction, thereby facilitating the bench-to-bedside precision medicine for PDAC.