利用深度学习自动进行疟疾生命阶段分类

Janjhyam Venkata Naga Ramesh, Raghav Agarwal, Harshitha Jyasta, Bommisetty Sivani, Palacholla Anuradha Sri Tulasi Mounika, Bollineni Bhargavi
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引用次数: 0

摘要

导言:疟疾是一种由蚊子传播的传染性疾病,对人类和动物造成严重危害,每年记录在案的病例数量不断增加。及时准确的诊断和预防措施对于有效防治这种疾病至关重要。目前,疟疾的诊断采用标准技术。训练有素的专家通过对血液涂片进行显微镜检查(包括小图片)来识别病变细胞并确定其生命阶段。世界卫生组织(WHO)已经批准了这种基于显微镜的疟疾诊断方法。从手指上抽取血样、刺穿血样、将血样涂在干净的玻璃载玻片上并让其自然风干是该方法的所有步骤。薄血涂片以前用于在显微镜下识别寄生虫,但当寄生虫水平较低时,可使用厚血涂片。目的:由于依赖医学知识、价格昂贵、耗时长、结果不理想,这种技术存在很大的缺点。然而,随着深度学习算法的进步,这些活动可能会以更少的人力资源更有效地完成。方法:本研究展示了迁移学习(深度学习的一种)在对寄生与未感染疟疾细胞的显微图片进行分类时的实用性。使用可公开访问的美国国立卫生研究院数据集对六个模型进行了评估,证明了所建议技术的实用性。结果:VGG19 模型的准确率为 95.05%,精确率为 92.83%,灵敏度为 96.88%,特异性为 93.46%,F1 分数为 94.81%,表现优于其他竞争对手。结论:对疟疾细胞照片进行分类将特别有利于显微镜医师,因为这将改善他们的工作流程,并为使用显微镜细胞图像检测疟疾提供一种可行的替代方法。
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Automated Life Stage Classification of Malaria Using Deep Learning
INTRODUCTION: Malaria, an infectious illness spread by mosquitoes, is a serious hazard to humans and animals, with an increasing number of cases recorded yearly. Prompt and precise diagnosis, as well as preventative actions, are critical for effectively combating this condition. Malaria is now diagnosed using standard techniques. Microscopy of blood smears, which consists of small pictures, is used by trained specialists to identify diseased cells and define their life phases. The World Health Organisation (WHO) has approved this microscopy-based malaria diagnostic method. Drawing a blood sample from the finger, pricking it, spreading it onto a clean glass slide, and allowing it to dry naturally are all steps in the method. Thin blood smears were previously used to identify parasites under the microscope, but thick blood smears are utilized when parasite levels are low. OBJECTIVES: Due to its reliance on medical knowledge, high prices, time-consuming nature, and unsatisfactory outcomes, this technique has significant disadvantages. However, as deep learning algorithms progress, these activities may be completed more effectively and with fewer human resources. METHODS: This study demonstrates the usefulness of transfer learning, a type of deep learning, in categorizing microscopic pictures of parasitized versus uninfected malaria cells. Six models were evaluated using the publicly accessible NIH dataset, proving the usefulness of the suggested technique. RESULTS: VGG19 model fared better than its competitors, obtaining 95.05% accuracy, 92.83% precision, 96.88% sensitivity, 93.46% specificity, and 94.81% F1-score. CONCLUSION: This categorization of malaria cell photos will benefit microscopists in particular, as it will improve their workflow and provide a viable alternative for detecting malaria using microscopic cell images.
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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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