An Adaptive Grid Search Based Efficient Ensemble Model for Covid-19 Classification in Chest X-Ray Scans

P. V. Naresh, R. Visalakshi
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Abstract

Covid has resulted in millions of deaths worldwide, making it crucial to develop fast and safe diagnostic methods to control its spread. Chest X-Ray imaging can diagnose pulmonary diseases, including Covid. Most research studies have developed single convolution neural network models ignoring the advantage of combining different models. An ensemble model has higher predictive accuracy and reduces the generalization error of prediction. We employed an ensemble of Multi Deep Neural Networks models for Covid.19 classification in chest X-Ray scans using Multiclass classification (Covid, Pneumonia, and Normal). We improved the accuracy by identifying the best parameters using the sklean Grid search technique and implementing it with the Optimized Weight Average Ensemble Model, which allows multiple models to predict. Our ensemble model has achieved 95.26% accuracy in classifying the X-Ray images; it demonstrates potential in ensemble models for diagnosis using Radiography images.
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基于自适应网格搜索的高效集成模型用于胸部x射线扫描中Covid-19分类
Covid已在全球造成数百万人死亡,因此开发快速和安全的诊断方法以控制其传播至关重要。胸部x射线成像可以诊断肺部疾病,包括Covid。大多数研究都发展了单一的卷积神经网络模型,忽视了不同模型组合的优势。集成模型具有较高的预测精度,降低了预测的泛化误差。我们使用Multiclass分类(Covid, Pneumonia和Normal)在胸部x线扫描中使用Multi Deep Neural Networks模型进行Covid - 19分类。我们通过使用sklean网格搜索技术识别最佳参数,并使用允许多个模型预测的优化权重平均集成模型(Optimized Weight Average Ensemble Model)来实现,从而提高了准确性。集成模型对x射线图像的分类准确率达到95.26%;它展示了利用放射影像进行诊断的集成模型的潜力。
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