卷积神经网络在疟疾诊断中的应用:细胞图像分类研究

Q2 Computer Science
Hritwik Ghosh, Irfan Sadiq Rahat, J. Ravindra, Balajee J, Mohammad Aman Ullah Khan, J. Somasekar
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引用次数: 0

摘要

简介:疟疾是由疟原虫引起的一种持续性全球健康威胁,需要快速准确的识别才能进行有效治疗和遏制。本研究探讨如何利用卷积神经网络(CNN),通过对感染疟疾的细胞图像进行分类,提高疟疾检测的精度和速度。目标:本研究的主要目的是探索卷积神经网络在准确分类疟疾感染细胞图像方面的有效性。通过采用各种深度学习模型,包括 ResNet50、AlexNet、Inception V3、VGG19、VGG16 和 MobileNetV2,本研究旨在评估每个模型的性能,并找出它们在疟疾诊断中的优缺点。方法:模型训练和评估使用了一个平衡数据集,该数据集由约 8,000 张血细胞增强图像组成,均匀分布在感染和未感染类别之间。采用精确度、召回率、F1 分数和准确度等性能评估指标来评估每个 CNN 模型在疟疾分类中的功效。结果:结果表明所有模型的准确率都很高,其中 AlexNet 和 VGG19 的准确率最高。不过,在选择模型时应考虑具体的应用要求和限制因素,因为每个模型都会在计算效率和性能之间做出独特的权衡。结论:本研究为深度学习在医疗保健领域的蓬勃发展做出了贡献,特别是在利用医学成像进行疾病诊断方面。研究结果强调了 CNN 在增强疟疾诊断方面的巨大潜力。未来的研究方向可能包括进一步优化模型,探索更大、更多样化的数据集,以及将 CNNs 集成到实用诊断工具中,以便在现实世界中部署。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convolutional Neural Networks in Malaria Diagnosis: A Study on Cell Image Classification
INTRODUCTION: Malaria, a persistent global health threat caused by Plasmodium parasites, necessitates rapid and accurate identification for effective treatment and containment. This study investigates the utilization of convolutional neural networks (CNNs) to enhance the precision and speed of malaria detection through the classification of cell images infected with malaria. OBJECTIVES: The primary objective of this research is to explore the effectiveness of CNNs in accurately classifying malaria-infected cell images. By employing various deep learning models, including ResNet50, AlexNet, Inception V3, VGG19, VGG16, and MobileNetV2, the study aims to assess the performance of each model and identify their strengths and weaknesses in malaria diagnosis. METHODS: A balanced dataset comprising approximately 8,000 enhanced images of blood cells, evenly distributed between infected and uninfected classes, was utilized for model training and evaluation. Performance evaluation metrics such as precision, recall, F1-score, and accuracy were employed to assess the efficacy of each CNN model in malaria classification. RESULTS: The results demonstrate high accuracy across all models, with AlexNet and VGG19 exhibiting the highest levels of accuracy. However, the selection of a model should consider specific application requirements and constraints, as each model presents unique trade-offs between computational efficiency and performance. CONCLUSION: This study contributes to the burgeoning field of deep learning in healthcare, particularly in utilizing medical imaging for disease diagnosis. The findings underscore the considerable potential of CNNs in enhancing malaria diagnosis. Future research directions may involve further model optimization, exploration of larger and more diverse datasets, and the integration of CNNs into practical diagnostic tools for real-world deployment.
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来源期刊
EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
自引率
0.00%
发文量
14
审稿时长
10 weeks
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