Abstract 159P
Background
The stromal component constitutes as much as 90% of pancreatic cancer specimens, dynamically interacting with the tumor and adapting into a pro-survival environment. This poses a clinical challenge, as biopsies often miss cancer by only sampling stroma. By leveraging AI and image analysis, we aim to extract informative cues from stromal interactions for novel cancer biomarker identification. This approach offers the potential for enhanced diagnostic precision and a deeper understanding of pancreatic cancer biology.
Methods
Anonymized digital scans of pancreatic cancer and chronic pancreatitis were sourced from the Centre Hospitalier de l’Université de Montréal. QuPath 0.4.3 aided slide annotation, with subsequent TIF annotation export. Staining normalization was performed via the Mitkovetta technique in Python. Our process involved deep-learning stromal segmentation, prioritizing >95% stromal tiles using Ilastik. Feature extraction was executed utilizing computer vision techniques (Haralick features), alongside the pre-trained and class-trained ImageNet deep-neural network, VGG16.
Results
Our annotated, normalized, automated, and 95% stroma-probability method generated for the training cohort 9829 cancer and 1638 mass-forming pancreatitis tiles, and 10776 cancer and 1211 pancreatitis tiles for the testing set. The table highlights the performance of the classical computer vision approach (Haralicks features extraction in RGB). Furthermore, transferring the ImageNet VGG-16 pre-trained model to our dataset managed to predict the presence of adjacent cancer at 86.6% accuracy. Table: 159P
Training | Validation | |||
Haralicks features | Cancer (N=9829) vs None (N=1638) | P | Cancer (N=10776) vs None (N=1211) | P |
RGB-F2 | +66% | 7.52 X 10-308 | +8.2% | 1.37 X 10-9 |
RGB-F15 | +54% | 3.28 X 10-272 | +8.5% | 8.57 X 10-11 |
RGB F37 | +9.6% | 2.35 X 10-294 | +2.7% | 5.02 X 10-36 |
Conclusions
We demonstrate that normalized stromal tiles could predict the presence of cancer accurately just by their morphological features at HE staining. This highlights the importance of stroma for diagnostic purposes and can serve as the basis for future studies through multiplex imaging and spatial transcriptomics.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
Vincent Quoc-Huy Trinh.
Funding
Fonds de Recherche Québec Santé.
Disclosure
All authors have declared no conflicts of interest.
Resources from the same session
321P - Epidemiology and survival analysis of epithelial ovarian cancer: Results from comprehensive care center in north India
Presenter: Amit Badola
Session: Poster Display
Resources:
Abstract
322P - Evaluation of chemotherapy response score as a prognostic factor in advanced epithelial ovarian cancer: A prospective single centre study
Presenter: Upasana Palo
Session: Poster Display
Resources:
Abstract
323P - Platelet-to-lymphocyte ratio, neutrophil-to-lymphocyte ratio, and lymphocyte-to-monocyte ratio as prognostic biomarkers in ovarian cancer among the Asian population: A meta-analysis
Presenter: Wikania Wira Wiguna I Gede
Session: Poster Display
Resources:
Abstract
324P - All-<italic>trans</italic> retinoic acid sensitizes ovarian cancer to niraparib by inhibiting ALDH1A1 activity
Presenter: Bingjie Mei
Session: Poster Display
Resources:
Abstract
325TiP - A phase III randomized controlled trial in primary stage three and four ovarian cancer after interval cytoreductive surgery (FOCUS/KOV-HIPEC-04)
Presenter: Myong Cheol Lim
Session: Poster Display
Resources:
Abstract
327TiP - A single arm phase II study of single agent pemetrexed in platinum resistant/refractory epithelial ovarian or primary peritoneal cancer
Presenter: Swasthik Parampalli
Session: Poster Display
Resources:
Abstract
337P - Demographic patterns and survival outcomes of patients with T and NK-cell lymphoma at the National Cancer Centre Singapore
Presenter: Mohamed Haniffa Bin Hasan Mohamed
Session: Poster Display
Resources:
Abstract
338P - Multicenter real-world study of advanced-stage non-nasal type NK/T cell lymphoma (NKTCL): Clinical features, treatment and prognosis
Presenter: Yuce Wei
Session: Poster Display
Resources:
Abstract
339P - A comparison of survival of patients with relapsed or refractory diffuse large B cell lymphoma undergoing allogeneic stem cell transplantation or receiving CAR-T therapy
Presenter: Kenta Hayashino
Session: Poster Display
Resources:
Abstract
340P - The role of CT scans and laboratory tests for surveillance in patients with diffuse large B cell lymphoma who achieved complete remission after first-line chemotherapy
Presenter: YU Yagi
Session: Poster Display
Resources:
Abstract