Early Bacterial Detection in Bloodstream Infection using Deep Transfer Learning Algorithm

S. A. Akbar, K. Ghazali, H. Hasan, W. S. Aji, A. Yudhana
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引用次数: 1

Abstract

An infection caused by bacteria can lead to severe complications affecting bloodstream disease. At present, blood cultures are used to identify bacteria. However, blood culture is a time-consuming and labor-intensive method of diagnosing disease. The effect of delayed early diagnosis is that it influences the mortality risk. Thus, it is urgent to develop an initial prediction model to identify patients with bloodstream infections. This paper focused on classifying the bacteria using a deep learning approach. Besides, techniques of deep learning have the ability to enhance the bacterial classification process more effectively. Using the transfer learning-based convolutional neural network technique involved to develop our model. In addition, we compared the proposed model with another model used to find the best results. Compared to other models, the proposed model achieved an evaluation score with high accuracy of 98.62%. Medical decision-making may benefit from the proposed approach.
基于深度迁移学习算法的血液感染早期细菌检测
由细菌引起的感染可导致严重的并发症,影响血液疾病。目前,血液培养用于鉴定细菌。然而,血液培养是一种费时费力的疾病诊断方法。延迟早期诊断的影响是影响死亡风险。因此,迫切需要建立一个初步的预测模型来识别血流感染患者。本文的重点是使用深度学习方法对细菌进行分类。此外,深度学习技术能够更有效地增强细菌分类过程。使用基于迁移学习的卷积神经网络技术来开发我们的模型。此外,我们将提出的模型与另一种模型进行了比较,以找到最佳结果。与其他模型相比,该模型获得了98.62%的高准确率评价分数。医疗决策可能受益于提议的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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