Abstract

BackgroundResearchers have attempted to apply deep learning methods of artificial intelligence for rapidly and accurately detecting acute lymphoblastic leukemia (ALL) in microscopic images.ResultsA Resnet101-9 ensemble model was developed for classifying ALL in microscopic images. The proposed Resnet101-9 ensemble model combined the use of the nine trained Resnet-101 models with a majority voting strategy. Each trained Resnet-101 model integrated the well-known pre-trained Resnet-101 model and its algorithm hyperparameters by using transfer learning method to classify ALL in microscopic images. The best combination of algorithm hyperparameters for the pre-trained Resnet-101 model was determined by Taguchi experimental method. The microscopic images used for training of the pre-trained Resnet-101 model and for performance tests of the trained Resnet-101 model were obtained from the C-NMC dataset. In experimental tests of performance, the Resnet101-9 ensemble model achieved an accuracy of 85.11% and an F1-score of 88.94 in classifying ALL in microscopic images. The accuracy of the Resnet101-9 ensemble model was superior to that of the nine trained Resnet-101 individual models. All other performance measures (i.e., precision, recall, and specificity) for the Resnet101-9 ensemble model exceeded those for the nine trained Resnet-101 individual models.ConclusionCompared to the nine trained Resnet-101 individual models, the Resnet101-9 ensemble model had superior accuracy in classifying ALL in microscopic images obtained from the C-NMC dataset.

Highlights

  • Researchers have attempted to apply deep learning methods of artificial intelligence for rapidly and accurately detecting acute lymphoblastic leukemia (ALL) in microscopic images

  • To maintain compatibility with the Convolutional neural network (CNN)-based architecture and the developed software, each microscopic image was processed as a 224 × 224 × 3 image, where 3 is the number of color channels

  • When the Resnet101-9 ensemble model was used to classify ALL in a preliminary test set of microscopic images, accuracy was 85.11%, which was superior to the accuracies obtained by the nine trained Resnet-101 individual models (i.e., Resnet-101-8249(#1), Resnet-101-8184(#2), Resnet-101-8452(#3), Resnet-101-8125(#4), Resnet-101-8061(#5), Resnet-101-8281(#6), Resnet-101-8307(#7), Resnet-101-8002(#8), and Resnet-101-8216(#9) models, accuracy ranging from 80.02% to 84.52%)

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Summary

Introduction

Researchers have attempted to apply deep learning methods of artificial intelligence for rapidly and accurately detecting acute lymphoblastic leukemia (ALL) in microscopic images. Diagnosis is typically based on a complete blood count and microscope analysis of cell morphology, both of which are often performed manually by medical laboratory scientists. These tasks can be automated, the required equipment currently has a high cost and limited availability [1, 2]. An automated system that uses relatively low-cost and obtained microscopic images for diagnosis of leukemia would have many advantages. Artificial intelligence models for automatically detecting ALL in microscopic images are urgently needed

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