AnoMalNet: Outlier Detection based Malaria Cell Image Classification Method Leveraging Deep Autoencoder

03/10/2023
by   Aminul Huq, et al.
0

Class imbalance is a pervasive issue in the field of disease classification from medical images. It is necessary to balance out the class distribution while training a model for decent results. However, in the case of rare medical diseases, images from affected patients are much harder to come by compared to images from non-affected patients, resulting in unwanted class imbalance. Various processes of tackling class imbalance issues have been explored so far, each having its fair share of drawbacks. In this research, we propose an outlier detection based binary medical image classification technique which can handle even the most extreme case of class imbalance. We have utilized a dataset of malaria parasitized and uninfected cells. An autoencoder model titled AnoMalNet is trained with only the uninfected cell images at the beginning and then used to classify both the affected and non-affected cell images by thresholding a loss value. We have achieved an accuracy, precision, recall, and F1 score of 98.49 performing better than large deep learning models and other published works. As our proposed approach can provide competitive results without needing the disease-positive samples during training, it should prove to be useful in binary disease classification on imbalanced datasets.

READ FULL TEXT

page 5

page 7

research
02/23/2021

Cell abundance aware deep learning for cell detection on highly imbalanced pathological data

Automated analysis of tissue sections allows a better understanding of d...
research
04/15/2021

Out-of-Distribution Detection for Dermoscopic Image Classification

Medical image diagnosis can be achieved by deep neural networks, provide...
research
07/11/2022

PCCT: Progressive Class-Center Triplet Loss for Imbalanced Medical Image Classification

Imbalanced training data is a significant challenge for medical image cl...
research
11/20/2021

Constrained Deep One-Class Feature Learning For Classifying Imbalanced Medical Images

Medical image data are usually imbalanced across different classes. One-...
research
12/20/2022

Galaxy Image Classification using Hierarchical Data Learning with Weighted Sampling and Label Smoothing

With the development of a series of Galaxy sky surveys in recent years, ...
research
08/20/2021

Semi-supervised learning for medical image classification using imbalanced training data

Medical image classification is often challenging for two reasons: a lac...
research
09/29/2021

Does deep learning model calibration improve performance in class-imbalanced medical image classification?

In medical image classification tasks, it is common to find that the num...

Please sign up or login with your details

Forgot password? Click here to reset