Vessel Detection for Diagnosis of Tumor Invasion with Differently Stained Pathology Images
title: Vessel Detection for Diagnosis of Tumor Invasion with Differently Stained Pathology Images
author: May Myat Myat Phyo,Jun LIANG,Kotaro SONODA,Tomoi FURUKAWA,Junya FUKUOKA,and Senya KIYASU
abstruct: In the medical filed, detection and classification of cancer cells play important roles in analysing cells and developing new medicines. Performing them have drawbacks such as time-consuming and low accuracy. In this study, it is focus to solve these two by marking out the suspicious regions of vessels in the pathology images with HE and EVG staining systems. Next, collecting pixel’s data using Slide window method and splitting data are performed to get the training and testing data which are used as an input data in Neural Network later. Neural Network model with Multilayer Perceptron is used for training and testing the data.
keyword: #VesselDetection #DigitalPathology
InProceedings: 電気・情報関係学会九州支部第72回連合大会
date: 2019/09/27