AnoMalNet: Outlier Detection based Malaria Cell Image Classification
Method Leveraging Deep Autoencoder
- URL: http://arxiv.org/abs/2303.05789v2
- Date: Tue, 20 Feb 2024 18:54:36 GMT
- Title: AnoMalNet: Outlier Detection based Malaria Cell Image Classification
Method Leveraging Deep Autoencoder
- Authors: Aminul Huq, Md Tanzim Reza, Shahriar Hossain, Shakib Mahmud Dipto
- Abstract summary: We propose an outlier detection based binary medical image classification technique which can handle even the most extreme case of class imbalance.
An autoencoder model titled AnoMalNet is trained with only the uninfected cell images at the beginning.
We have achieved an accuracy, precision, recall, and F1 score of 98.49%, 97.07%, 100%, and 98.52% respectively.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: 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%, 97.07%, 100%, and 98.52% respectively,
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.
Related papers
- Brain Tumor Classification on MRI in Light of Molecular Markers [61.77272414423481]
Co-deletion of the 1p/19q gene is associated with clinical outcomes in low-grade gliomas.
This study aims to utilize a specially MRI-based convolutional neural network for brain cancer detection.
arXiv Detail & Related papers (2024-09-29T07:04:26Z) - Addressing Imbalance for Class Incremental Learning in Medical Image Classification [14.242875524728495]
We introduce two plug-in methods to mitigate the adverse effects of imbalance.
First, we propose a CIL-balanced classification loss to mitigate the classification bias toward majority classes.
Second, we propose a distribution margin loss that not only alleviates the inter-class overlap in embedding space but also enforces the intra-class compactness.
arXiv Detail & Related papers (2024-07-18T17:59:44Z) - What limits performance of weakly supervised deep learning for chest CT
classification? [0.44241702149260353]
Weakly supervised learning with noisy data has drawn attention in the medical imaging community due to the sparsity of high-quality disease labels.
In this paper, we test the effects of such weak supervision by examining model tolerance for noisy data.
Results demonstrated that the model could endure up to 10% added label error before experiencing a decline in disease classification performance.
arXiv Detail & Related papers (2024-02-06T21:38:29Z) - Data Augmentation using Feature Generation for Volumetric Medical Images [0.08594140167290097]
Medical image classification is one of the most critical problems in the image recognition area.
One of the major challenges in this field is the scarcity of labelled training data.
Deep Learning models, in particular, show promising results on image segmentation and classification problems.
arXiv Detail & Related papers (2022-09-28T13:46:24Z) - Dynamic Bank Learning for Semi-supervised Federated Image Diagnosis with
Class Imbalance [65.61909544178603]
We study a practical yet challenging problem of class imbalanced semi-supervised FL (imFed-Semi)
This imFed-Semi problem is addressed by a novel dynamic bank learning scheme, which improves client training by exploiting class proportion information.
We evaluate our approach on two public real-world medical datasets, including the intracranial hemorrhage diagnosis with 25,000 CT slices and skin lesion diagnosis with 10,015 dermoscopy images.
arXiv Detail & Related papers (2022-06-27T06:51:48Z) - Categorical Relation-Preserving Contrastive Knowledge Distillation for
Medical Image Classification [75.27973258196934]
We propose a novel Categorical Relation-preserving Contrastive Knowledge Distillation (CRCKD) algorithm, which takes the commonly used mean-teacher model as the supervisor.
With this regularization, the feature distribution of the student model shows higher intra-class similarity and inter-class variance.
With the contribution of the CCD and CRP, our CRCKD algorithm can distill the relational knowledge more comprehensively.
arXiv Detail & Related papers (2021-07-07T13:56:38Z) - Out-of-Distribution Detection for Dermoscopic Image Classification [0.0]
We develop a novel yet simple method to train neural networks, which enables them to classify in-distribution dermoscopic skin disease images.
We show that our BinaryHeads model not only does not hurt classification balanced accuracy when the data is imbalanced, but also consistently improves the balanced accuracy.
arXiv Detail & Related papers (2021-04-15T23:34:53Z) - Classification of COVID-19 in CT Scans using Multi-Source Transfer
Learning [91.3755431537592]
We propose the use of Multi-Source Transfer Learning to improve upon traditional Transfer Learning for the classification of COVID-19 from CT scans.
With our multi-source fine-tuning approach, our models outperformed baseline models fine-tuned with ImageNet.
Our best performing model was able to achieve an accuracy of 0.893 and a Recall score of 0.897, outperforming its baseline Recall score by 9.3%.
arXiv Detail & Related papers (2020-09-22T11:53:06Z) - Deep Multi-Scale Resemblance Network for the Sub-class Differentiation
of Adrenal Masses on Computed Tomography Images [16.041873352037594]
Adrenal masses can be benign or malignant and benign masses have varying prevalence.
CNNs are the state-of-the-art in maximizing inter-class differences in large medical imaging training datasets.
The application of CNNs, to adrenal masses is challenging due to large intra-class variations, large inter-class similarities and imbalanced training data.
We developed a deep multi-scale resemblance network (DMRN) to overcome these limitations and leveraged paired CNNs to evaluate the intra-class similarities.
arXiv Detail & Related papers (2020-07-29T06:24:53Z) - Multi-label Thoracic Disease Image Classification with Cross-Attention
Networks [65.37531731899837]
We propose a novel scheme of Cross-Attention Networks (CAN) for automated thoracic disease classification from chest x-ray images.
We also design a new loss function that beyond cross-entropy loss to help cross-attention process and is able to overcome the imbalance between classes and easy-dominated samples within each class.
arXiv Detail & Related papers (2020-07-21T14:37:00Z) - Semi-supervised Medical Image Classification with Relation-driven
Self-ensembling Model [71.80319052891817]
We present a relation-driven semi-supervised framework for medical image classification.
It exploits the unlabeled data by encouraging the prediction consistency of given input under perturbations.
Our method outperforms many state-of-the-art semi-supervised learning methods on both single-label and multi-label image classification scenarios.
arXiv Detail & Related papers (2020-05-15T06:57:54Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.