Prognostic significance of tumor budding in pancreatic carcinoma: Digitalized image approach evaluation using artificial intelligence
Sarra Ben Rejeb, Jasser Yaacoubi, Ozden Oz, Sarra Ben Rejeb

TL;DR
This study shows that tumor budding in pancreatic cancer is a significant predictor of survival and can be effectively evaluated using AI tools like QUPATH.
Contribution
The study introduces AI-based evaluation of tumor budding in pancreatic carcinoma as a novel prognostic tool.
Findings
Tumor budding was found in 100% of pancreatic carcinoma cases.
High tumor budding scores were independently associated with worse overall survival (hazard ratio of 2.35).
AI-based QUPATH evaluation showed comparable results to manual methods for tumor budding assessment.
Abstract
Pancreatic carcinoma (PC) is a highly malignant and lethal tumor characterized by a dismal prognosis which raised the need to identify other prognostic factors for better patient risk stratification. This study investigated the prognostic significance of tumor budding (TB) in pancreatic carcinoma using artificial intelligence. In this retrospective multicenter study, we collected all cases of PC diagnosed (2008-2022). TB was assed using 2methods: manuel on hematoxylin-eosin (HE) slides and semi-automated using QUPATH software. The selected slide for each case was digitalized using NIS software version 4.00 connected to the microscope NIKON (Eclipse Ni-U). The pathological images were then incorporated into QUPATH. The budds were counted using cell count functionality based on the nucleus size and pixel variability, and TB scores were categorized as BUDD1(0-4), BUDD2(5-9) and…
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Taxonomy
TopicsPancreatic and Hepatic Oncology Research · AI in cancer detection · Radiomics and Machine Learning in Medical Imaging
