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Main Authors: Goswami, Buddhadev, Somaraj, Adithya B., Chakrabarti, Prantar, Gudi, Ravindra, Punjabi, Nirmal
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2411.15592
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author Goswami, Buddhadev
Somaraj, Adithya B.
Chakrabarti, Prantar
Gudi, Ravindra
Punjabi, Nirmal
author_facet Goswami, Buddhadev
Somaraj, Adithya B.
Chakrabarti, Prantar
Gudi, Ravindra
Punjabi, Nirmal
contents Hematological disorders, which involve a variety of malignant conditions and genetic diseases affecting blood formation, present significant diagnostic challenges. One such major challenge in clinical settings is differentiating Erythroblast from WBCs. Our approach evaluates the efficacy of various machine learning (ML) classifiers$\unicode{x2014}$SVM, XG-Boost, KNN, and Random Forest$\unicode{x2014}$using the ResNet-50 deep learning model as a backbone in detecting and differentiating erythroblast blood smear images across training splits of different sizes. Our findings indicate that the ResNet50-SVM classifier consistently surpasses other models' overall test accuracy and erythroblast detection accuracy, maintaining high performance even with minimal training data. Even when trained on just 1% (168 images per class for eight classes) of the complete dataset, ML classifiers such as SVM achieved a test accuracy of 86.75% and an erythroblast precision of 98.9%, compared to 82.03% and 98.6% of pre-trained ResNet-50 models without any classifiers. When limited data is available, the proposed approach outperforms traditional deep learning models, thereby offering a solution for achieving higher classification accuracy for small and unique datasets, especially in resource-scarce settings.
format Preprint
id arxiv_https___arxiv_org_abs_2411_15592
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Classifier Enhanced Deep Learning Model for Erythroblast Differentiation with Limited Data
Goswami, Buddhadev
Somaraj, Adithya B.
Chakrabarti, Prantar
Gudi, Ravindra
Punjabi, Nirmal
Image and Video Processing
Computer Vision and Pattern Recognition
Hematological disorders, which involve a variety of malignant conditions and genetic diseases affecting blood formation, present significant diagnostic challenges. One such major challenge in clinical settings is differentiating Erythroblast from WBCs. Our approach evaluates the efficacy of various machine learning (ML) classifiers$\unicode{x2014}$SVM, XG-Boost, KNN, and Random Forest$\unicode{x2014}$using the ResNet-50 deep learning model as a backbone in detecting and differentiating erythroblast blood smear images across training splits of different sizes. Our findings indicate that the ResNet50-SVM classifier consistently surpasses other models' overall test accuracy and erythroblast detection accuracy, maintaining high performance even with minimal training data. Even when trained on just 1% (168 images per class for eight classes) of the complete dataset, ML classifiers such as SVM achieved a test accuracy of 86.75% and an erythroblast precision of 98.9%, compared to 82.03% and 98.6% of pre-trained ResNet-50 models without any classifiers. When limited data is available, the proposed approach outperforms traditional deep learning models, thereby offering a solution for achieving higher classification accuracy for small and unique datasets, especially in resource-scarce settings.
title Classifier Enhanced Deep Learning Model for Erythroblast Differentiation with Limited Data
topic Image and Video Processing
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2411.15592