使用迁移学习方法在患者细胞中进行疟疾早期检测的智能系统

Gul Zaman Khan, Ibrar Ali Shah, Farhatullah, Muhammad Abul Hassan, Hazrat Junaid, Fouzia Sardar
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引用次数: 2

摘要

疟疾是一种由蚊子传播的传染病,影响人类和其他动物。这对人类是一个巨大的威胁,而且每年都在增加。必须立即和有效地预防和诊断疟疾。目前,用于诊断疟疾的常规方法是通过显微镜或使用疟疾RTD试剂盒检查患者的血液样本。这种方法有几个局限性,因为它需要医学专业知识,价格昂贵,耗时长,结果不令人满意。基于人工智能的系统可以预防和帮助诊断这种传染病。由于这些限制,本研究提出了一种基于人工智能的诊断系统,可以立即有效地检测疟疾寄生虫。在实验中,我们在图像数据集上应用了四种不同的预训练深度学习模型,并采用了一些预处理和优化技术来检测疟疾寄生虫。经过调查,评估矩阵如精度,召回率,f1评分,敏感性和特异性被用来衡量所提出的模型的性能。inception - resnet达到了95%的准确率,VGG16达到了92%的准确率,inception达到了93%的准确率,VGG19达到了91%的准确率。本研究的积极结果表明,该方法比目前使用的方法性能要好得多。此外,拟议的方法与卫生专家进行筛查有关。
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Intelligent Systems for Early Malaria Disease Detection in Patient Cells Using Transfer Learning Approaches
Malaria is an infectious disease spread by mosquitoes that effect humans and other animals. It is a massive threat to humanity, with instances growing each year. It is essential to prevent and diagnose malaria immediately and efficiently. For the time being, conventional methods are used for diagnosing malaria in which the patient's blood sample is examined by microscope or by using malaria RTD kits. This approach has several limitations because it requires medical expertise, is expensive, takes a long time, and the results are unsatisfactory. Artificial intelligence-based systems can prevent and help in diagnose of this infectious disease. Because of these limitations, the proposed work has proposed an AI-based diagnosis system that can detect malaria parasites immediately and efficiently. In the proposed experiment, we have applied four different pre-trained deep learning models on the image dataset with some preprocessing and optimization techniques for malaria parasite detection. After investigations, evaluation matrices such as precision, Recall, F1-score, sensitivity, and specificity are used to measure the performance of the proposed models. The Inception-Resnet outperformed by achieving 95% accuracy, VGG16 achieved 92% accuracy, inception achieved 93% accuracy, and VGG19 achieved 91% accuracy. The positive outcomes of this study show that this approach performs much better than the approaches currently used. Furthermore, the proposed method is relevant to health experts for screening purposes.
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