一种基于计算机视觉筛查和数字化血涂片恶性疟原虫候选区域可视化的疟疾诊断工具。
A malaria diagnostic tool based on computer vision screening and visualization of Plasmodium falciparum candidate areas in digitized blood smears.
作者信息
Linder Nina, Turkki Riku, Walliander Margarita, Mårtensson Andreas, Diwan Vinod, Rahtu Esa, Pietikäinen Matti, Lundin Mikael, Lundin Johan
机构信息
Institute for Molecular Medicine Finland, University of Helsinki, Helsinki, Finland.
Department of Public Health Sciences, Karolinska Institute, Stockholm, Sweden.
出版信息
PLoS One. 2014 Aug 21;9(8):e104855. doi: 10.1371/journal.pone.0104855. eCollection 2014.
INTRODUCTION
Microscopy is the gold standard for diagnosis of malaria, however, manual evaluation of blood films is highly dependent on skilled personnel in a time-consuming, error-prone and repetitive process. In this study we propose a method using computer vision detection and visualization of only the diagnostically most relevant sample regions in digitized blood smears.
METHODS
Giemsa-stained thin blood films with P. falciparum ring-stage trophozoites (n = 27) and uninfected controls (n = 20) were digitally scanned with an oil immersion objective (0.1 µm/pixel) to capture approximately 50,000 erythrocytes per sample. Parasite candidate regions were identified based on color and object size, followed by extraction of image features (local binary patterns, local contrast and Scale-invariant feature transform descriptors) used as input to a support vector machine classifier. The classifier was trained on digital slides from ten patients and validated on six samples.
RESULTS
The diagnostic accuracy was tested on 31 samples (19 infected and 12 controls). From each digitized area of a blood smear, a panel with the 128 most probable parasite candidate regions was generated. Two expert microscopists were asked to visually inspect the panel on a tablet computer and to judge whether the patient was infected with P. falciparum. The method achieved a diagnostic sensitivity and specificity of 95% and 100% as well as 90% and 100% for the two readers respectively using the diagnostic tool. Parasitemia was separately calculated by the automated system and the correlation coefficient between manual and automated parasitemia counts was 0.97.
CONCLUSION
We developed a decision support system for detecting malaria parasites using a computer vision algorithm combined with visualization of sample areas with the highest probability of malaria infection. The system provides a novel method for blood smear screening with a significantly reduced need for visual examination and has a potential to increase the throughput in malaria diagnostics.
引言
显微镜检查是疟疾诊断的金标准,然而,人工评估血涂片高度依赖技术熟练的人员,且过程耗时、易出错且重复。在本研究中,我们提出了一种利用计算机视觉检测和可视化数字化血涂片中仅诊断最相关样本区域的方法。
方法
用浸油物镜(0.1 µm/像素)对含有恶性疟原虫环状滋养体的吉姆萨染色薄血涂片(n = 27)和未感染对照(n = 20)进行数字扫描,以每个样本捕获约50,000个红细胞。基于颜色和物体大小识别寄生虫候选区域,随后提取图像特征(局部二值模式、局部对比度和尺度不变特征变换描述符)作为支持向量机分类器的输入。分类器在来自十名患者的数字载玻片上进行训练,并在六个样本上进行验证。
结果
在31个样本(19个感染样本和12个对照样本)上测试诊断准确性。从血涂片的每个数字化区域生成一个包含128个最可能的寄生虫候选区域的面板。两名专业显微镜检查人员被要求在平板电脑上目视检查该面板,并判断患者是否感染恶性疟原虫。使用诊断工具时,该方法对两名读者的诊断敏感性和特异性分别达到95%和100%以及90%和100%。自动系统单独计算疟原虫血症,人工和自动疟原虫血症计数之间的相关系数为0.97。
结论
我们开发了一种决策支持系统,用于使用计算机视觉算法结合可视化疟疾感染可能性最高的样本区域来检测疟原虫。该系统为血涂片筛查提供了一种新方法,显著减少了目视检查的需求,并且有可能提高疟疾诊断的通量。