Deep Mask For X-ray Based Heart Disease Classification

08/19/2018
by   Xupeng Chen, et al.
0

We build a deep learning model to detect and classify heart disease using X-ray. We collect data from several hospitals and public datasets. After preprocess we get 3026 images including disease type VSD, ASD, TOF and normal control. The main problem we have to solve is to enable the network to accurately learn the characteristics of the heart, to ensure the reliability of the network while increasing accuracy. By learning the doctor's diagnostic experience, labeling the image and using tools to extract masks of heart region, we train a U-net to generate a mask to give more attention. It forces the model to focus on the characteristics of the heart region and obtain more reliable results.

READ FULL TEXT
research
12/10/2020

An IoT Framework for Heart Disease Prediction based on MDCNN Classifier

Nowadays, heart disease is the leading cause of death worldwide. Predict...
research
02/18/2020

Automated Cardiothoracic Ratio Calculation and Cardiomegaly Detection using Deep Learning Approach

We propose an algorithm for calculating the cardiothoracic ratio (CTR) f...
research
07/09/2018

Computer Assisted Localization of a Heart Arrhythmia

We consider the problem of locating a point-source heart arrhythmia usin...
research
06/11/2020

Design Considerations for High Impact, Automated Echocardiogram Analysis

Deep learning has the potential to automate echocardiogram analysis for ...
research
02/19/2018

Osteoarthritis Disease Detection System using Self Organizing Maps Method based on Ossa Manus X-Ray

Osteoarthritis is a disease found in the world, including in Indonesia. ...
research
09/28/2020

ECGDetect: Detecting Ischemia via Deep Learning

Coronary artery disease(CAD) is the most common type of heart disease an...
research
07/06/2019

Accurate Congenital Heart Disease ModelGeneration for 3D Printing

3D printing has been widely adopted for clinical decision making and int...

Please sign up or login with your details

Forgot password? Click here to reset