Ensemble Pre-Trained Deep Convolutional Neural Network Model for Classifying Medical Image Datasets

K. S, H. Inbarani
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Abstract

Over the last few years, Deep Learning models have shown prominent results in medical image analysis especially to predict disease at the earlier stages. Since Deep Neural Network require more training data for better prediction, it needs more computational time for training. Transfer learning is a technique which uses the learned knowledge to perform the classification task by minimizing the number of training data and training time. To increase the accuracy of a single classifier, ensemble learning is used as a meta-learner. This research work implements a framework Ensemble Pre-Trained Deep Convolutional Neural Network using Resnet50, InceptionV3 and VGG19 pre-trained Convolutional Neural Network models with modified top layers to classify the disease present in the medical image datasets such as Covid X-Rays, Covid CT scans and Brain MRI with less computational time. Further, these models are combined using stacking and bagging ensemble approach to increase the accuracy of single classifier. The datasets are distributed as train, test and validation data and the models are trained and tested for four epochs. All the models are evaluated using validation data and the result shows that the ensemble learning approach increases the prediction accuracy when compared to the single models for all the datasets. In addition, this experiment reveals that the stacked model attains higher test accuracy of 99% for chest X-Ray images, 100% for chest CT scan images and 98% for brain MRI, compared to the bagged models.
用于医学图像数据集分类的集成预训练深度卷积神经网络模型
在过去的几年里,深度学习模型在医学图像分析方面取得了显著的成果,特别是在早期阶段预测疾病。由于深度神经网络需要更多的训练数据来进行更好的预测,因此需要更多的训练计算时间。迁移学习是一种利用学习到的知识,通过最小化训练数据的数量和训练时间来完成分类任务的技术。为了提高单个分类器的准确性,集成学习被用作元学习器。本研究使用Resnet50、InceptionV3和VGG19预训练卷积神经网络模型实现了一个框架集成预训练深度卷积神经网络,改进了顶层,以更少的计算时间对医学图像数据集中(如Covid x射线、Covid CT扫描和Brain MRI)中的疾病进行分类。在此基础上,利用叠加和套袋集成的方法将这些模型结合起来,提高单个分类器的准确率。将数据集分为训练数据、测试数据和验证数据,并对模型进行四个时代的训练和测试。使用验证数据对所有模型进行了评估,结果表明,与单一模型相比,集成学习方法提高了所有数据集的预测精度。此外,本实验表明,与袋装模型相比,堆叠模型对胸部x射线图像的测试准确率为99%,对胸部CT扫描图像的测试准确率为100%,对脑部MRI的测试准确率为98%。
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