Javascript must be enabled to continue!
Pancreatic cancer grading in pathological images using deep learning convolutional neural networks
View through CrossRef
Background: Pancreatic cancer is one of the deadliest forms of cancer. The cancer grades define how aggressively the cancer will spread and give indication for doctors to make proper prognosis and treatment. The current method of pancreatic cancer grading, by means of manual examination of the cancerous tissue following a biopsy, is time consuming and often results in misdiagnosis and thus incorrect treatment. This paper presents an automated grading system for pancreatic cancer from pathology images developed by comparing deep learning models on two different pathological stains. Methods: A transfer-learning technique was adopted by testing the method on 14 different ImageNet pre-trained models. The models were fine-tuned to be trained with our dataset. Results: From the experiment, DenseNet models appeared to be the best at classifying the validation set with up to 95.61% accuracy in grading pancreatic cancer despite the small sample set. Conclusions: To the best of our knowledge, this is the first work in grading pancreatic cancer based on pathology images. Previous works have either focused only on detection (benign or malignant), or on radiology images (computerized tomography [CT], magnetic resonance imaging [MRI] etc.). The proposed system can be very useful to pathologists in facilitating an automated or semi-automated cancer grading system, which can address the problems found in manual grading.
Title: Pancreatic cancer grading in pathological images using deep learning convolutional neural networks
Description:
Background: Pancreatic cancer is one of the deadliest forms of cancer.
The cancer grades define how aggressively the cancer will spread and give indication for doctors to make proper prognosis and treatment.
The current method of pancreatic cancer grading, by means of manual examination of the cancerous tissue following a biopsy, is time consuming and often results in misdiagnosis and thus incorrect treatment.
This paper presents an automated grading system for pancreatic cancer from pathology images developed by comparing deep learning models on two different pathological stains.
Methods: A transfer-learning technique was adopted by testing the method on 14 different ImageNet pre-trained models.
The models were fine-tuned to be trained with our dataset.
Results: From the experiment, DenseNet models appeared to be the best at classifying the validation set with up to 95.
61% accuracy in grading pancreatic cancer despite the small sample set.
Conclusions: To the best of our knowledge, this is the first work in grading pancreatic cancer based on pathology images.
Previous works have either focused only on detection (benign or malignant), or on radiology images (computerized tomography [CT], magnetic resonance imaging [MRI] etc.
).
The proposed system can be very useful to pathologists in facilitating an automated or semi-automated cancer grading system, which can address the problems found in manual grading.
Related Results
Pancreatic cancer grading in pathological images using deep learning convolutional neural networks
Pancreatic cancer grading in pathological images using deep learning convolutional neural networks
Background: Pancreatic cancer is one of the deadliest forms of cancer. The cancer grades define how aggressively the cancer will spread and give indication for doctors to make prop...
High Expression of AMIGO2 Is an Independent Predictor of Poor Prognosis in Pancreatic Cancer
High Expression of AMIGO2 Is an Independent Predictor of Poor Prognosis in Pancreatic Cancer
Abstract
Background.The AMIGO2 extracellular domain has a leucine - rich repetitive domain (LRR) and encodes a type 1 transmembrane protein , and is a member of the AMIGO g...
Are Cervical Ribs Indicators of Childhood Cancer? A Narrative Review
Are Cervical Ribs Indicators of Childhood Cancer? A Narrative Review
Abstract
A cervical rib (CR), also known as a supernumerary or extra rib, is an additional rib that forms above the first rib, resulting from the overgrowth of the transverse proce...
High KLK7 Expression Predicts Unfavorable Outcomes in Patients with Resectable Pancreatic Ductal Adenocarcinoma
High KLK7 Expression Predicts Unfavorable Outcomes in Patients with Resectable Pancreatic Ductal Adenocarcinoma
Abstract
Background Studies have shown that kallikrein-related peptidase 7 (KLK7) is abnormally expressed in a various of tumours and plays a crucial role in tumour progres...
Abstract 1603: Intra-pancreatic fat promotes the progression of PDAC by activating thermogenesis
Abstract 1603: Intra-pancreatic fat promotes the progression of PDAC by activating thermogenesis
Abstract
Background: The presence of minimal intra-pancreatic fat deposition (IPFD) in the healthy human pancreas has been demonstrated in numerous studies. But exce...
The Dual Effects of Silibinin on Human Pancreatic Cells
The Dual Effects of Silibinin on Human Pancreatic Cells
Objective: Silibinin is a flavonoid with antihepatotoxic properties, and exhibits pleiotropic anticancer effects. However, the molecular mechanisms responsible for its anticancer a...
Abstract A044: Persistence of fetal splanchnic gene signature defines a tumor-restraining fibroblast subtype in pancreatic cancer
Abstract A044: Persistence of fetal splanchnic gene signature defines a tumor-restraining fibroblast subtype in pancreatic cancer
Abstract
The pancreas is composed of the epithelial and mesenchymal cells. While mesenchymal fibroblasts are a minor component of the normal pancreas, fibroblast pop...
On the role of network dynamics for information processing in artificial and biological neural networks
On the role of network dynamics for information processing in artificial and biological neural networks
Understanding how interactions in complex systems give rise to various collective behaviours has been of interest for researchers across a wide range of fields. However, despite ma...

