Advances in Computer Vision in Gastric Cancer: Potential Efficient Tools for Diagnosis

05/17/2020
by   Yihua Sun, et al.
0

Early and rapid diagnosis of gastric cancer is a great challenge for clinical doctors. Dramatic progress of computer vision on gastric cancer has been made recently and this review focused on advances during the past five years. Different methods for data generation and augmentation have been presented, and various approaches to extract discriminative features compared and evaluated. Classification and segmentation techniques are carefully discussed for assisting more precise diagnosis and timely treatment. Application of those methods will greatly reduce the labor and time consumed for the diagnosis of gastric cancers.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/10/2020

A systematic review on the role of artificial intelligence in sonographic diagnosis of thyroid cancer: Past, present and future

Thyroid cancer is common worldwide, with a rapid increase in prevalence ...
research
04/14/2016

Towards Automated Melanoma Screening: Proper Computer Vision & Reliable Results

In this paper we survey, analyze and criticize current art on automated ...
research
06/13/2022

Prostate Cancer Malignancy Detection and localization from mpMRI using auto-Deep Learning: One Step Closer to Clinical Utilization

Automatic diagnosis of malignant prostate cancer patients from mpMRI has...
research
11/22/2021

Nanorobot queue: Cooperative treatment of cancer based on team member communication and image processing

Although nanorobots have been used as clinical prescriptions for work su...
research
07/12/2023

Early Autism Diagnosis based on Path Signature and Siamese Unsupervised Feature Compressor

Autism Spectrum Disorder (ASD) has been emerging as a growing public hea...
research
03/27/2022

Improving The Diagnosis of Thyroid Cancer by Machine Learning and Clinical Data

Thyroid cancer is a common endocrine carcinoma that occurs in the thyroi...

Please sign up or login with your details

Forgot password? Click here to reset