Leishmaniasis Parasite Segmentation and Classification using Deep Learning

12/30/2018
by   Marc Gorriz, et al.
0

Leishmaniasis is considered a neglected disease that causes thousands of deaths annually in some tropical and subtropical countries. There are various techniques to diagnose leishmaniasis of which manual microscopy is considered to be the gold standard. There is a need for the development of automatic techniques that are able to detect parasites in a robust and unsupervised manner. In this paper we present a procedure for automatizing the detection process based on a deep learning approach. We train a U-net model that successfully segments leismania parasites and classifies them into promastigotes, amastigotes and adhered parasites.

READ FULL TEXT

page 3

page 8

research
01/31/2019

Automated detection of celiac disease on duodenal biopsy slides: a deep learning approach

Celiac disease prevalence and diagnosis have increased substantially in ...
research
02/02/2021

aura-net : robust segmentation of phase-contrast microscopy images with few annotations

We present AURA-net, a convolutional neural network (CNN) for the segmen...
research
08/12/2020

Polyth-Net: Classification of Polythene Bags for Garbage Segregation Using Deep Learning

Polythene has always been a threat to the environment since its inventio...
research
12/14/2021

Classification of histopathology images using ConvNets to detect Lupus Nephritis

Systemic lupus erythematosus (SLE) is an autoimmune disease in which the...
research
01/11/2023

Fast spline detection in high density microscopy data

Computer-aided analysis of biological microscopy data has seen a massive...
research
03/03/2019

Robust corner and tangent point detection for strokes with deep learning approach

A robust corner and tangent point detection (CTPD) tool is critical for ...
research
09/05/2014

Identifying Synapses Using Deep and Wide Multiscale Recursive Networks

In this work, we propose a learning framework for identifying synapses u...

Please sign up or login with your details

Forgot password? Click here to reset