在异构数据中检测疟原虫的图像裁剪。

IF 1.7 4区 生物学 Q4 BIOCHEMICAL RESEARCH METHODS
Ibrahim Mouazamou Laoualy Chaharou , Ismail Lawani , Theophile Dagba , Jules Degila , Habiboulaye Amadou Boubacar
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引用次数: 0

摘要

疟疾是国际社会极为关注的一种致命疾病。它是一种由疟原虫引起的传染病,通过受感染的雌性按蚊叮咬传播。寄生虫在肝脏中繁殖,然后破坏人的红血球,直至达到严重阶段,导致死亡。诊断这种疾病最常用的工具是显微镜和快速诊断检测(RDT),但这两种方法都有局限性,无法控制疾病。计算机视觉技术提供了替代方案,可在疾病发展到严重阶段之前提供早期检测手段,从而促进治疗并挽救患者。在这篇文章中,我们提出了深度学习方法,利用来自许多不同患者的血液涂片显微图像,更早、更准确地检测疟原虫,并具有高度的泛化能力。这些技术基于一种图像预处理方法,可减轻因患者多样性和数据中存在的其他伪影而导致的红细胞特征多样性所带来的一些挑战。在这项研究中,我们收集了来自 876 名不同患者的 65,970 张显微图像,形成了一个包含 33,007 张图像的数据集。我们使用了三种卷积神经网络,即卷积神经网络(CNN)、DenseNet 和 LeNet-5,其中 DenseNet 模型对测试数据的分类准确率最高,达到 97.50%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image cropping for malaria parasite detection on heterogeneous data

Malaria is a deadly disease of significant concern for the international community. It is an infectious disease caused by a Plasmodium spp. parasite and transmitted by the bite of an infected female Anopheles mosquito. The parasite multiplies in the liver and then destroys the person's red blood cells until it reaches the severe stage, leading to death. The most used tools for diagnosing this disease are the microscope and the rapid diagnostic test (RDT), which have limitations preventing control of the disease. Computer vision technologies present alternatives by providing the means for early detection of this disease before it reaches the severe stage, facilitating treatment and saving patients. In this article, we suggest deep learning methods for earlier and more accurate detection of malaria parasites with high generalization capabilities using microscopic images of blood smears from many heterogeneous patients. These techniques are based on an image preprocessing method that mitigates some of the challenges associated with the variety of red cell characteristics due to patient diversity and other artifacts present in the data.

For the study, we collected 65,970 microscopic images from 876 different patients to form a dataset of 33,007 images with a variety that enables us to create models with a high level of generalization. Three types of convolutional neural networks were used, namely Convolutional Neural Network (CNN), DenseNet, and LeNet-5, and the highest classification accuracy on the test data was 97.50% found with the DenseNet model.

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来源期刊
Journal of microbiological methods
Journal of microbiological methods 生物-生化研究方法
CiteScore
4.30
自引率
4.50%
发文量
151
审稿时长
29 days
期刊介绍: The Journal of Microbiological Methods publishes scholarly and original articles, notes and review articles. These articles must include novel and/or state-of-the-art methods, or significant improvements to existing methods. Novel and innovative applications of current methods that are validated and useful will also be published. JMM strives for scholarship, innovation and excellence. This demands scientific rigour, the best available methods and technologies, correctly replicated experiments/tests, the inclusion of proper controls, calibrations, and the correct statistical analysis. The presentation of the data must support the interpretation of the method/approach. All aspects of microbiology are covered, except virology. These include agricultural microbiology, applied and environmental microbiology, bioassays, bioinformatics, biotechnology, biochemical microbiology, clinical microbiology, diagnostics, food monitoring and quality control microbiology, microbial genetics and genomics, geomicrobiology, microbiome methods regardless of habitat, high through-put sequencing methods and analysis, microbial pathogenesis and host responses, metabolomics, metagenomics, metaproteomics, microbial ecology and diversity, microbial physiology, microbial ultra-structure, microscopic and imaging methods, molecular microbiology, mycology, novel mathematical microbiology and modelling, parasitology, plant-microbe interactions, protein markers/profiles, proteomics, pyrosequencing, public health microbiology, radioisotopes applied to microbiology, robotics applied to microbiological methods,rumen microbiology, microbiological methods for space missions and extreme environments, sampling methods and samplers, soil and sediment microbiology, transcriptomics, veterinary microbiology, sero-diagnostics and typing/identification.
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