Wang Geng, Luo Guoju, Lian Heqing, Chen Lei, Wu Wei, Liu Hui
Department of Clinical Laboratory, Peking Union Medical College Hospital, Beijing, China.
Beijing Xiaoying Technology Co, Ltd, Beijing, China.
Open Forum Infect Dis. 2023 Sep 15;10(11):ofad469. doi: 10.1093/ofid/ofad469. eCollection 2023 Nov.
Scarcity of annotated image data sets of thin blood smears makes expert-level differentiation among species challenging. Here, we aimed to establish a deep learning algorithm for identifying and classifying malaria parasites in thin blood smears and evaluate its performance and clinical prospect.
You Only Look Once v7 was used as the backbone network for training the artificial intelligence algorithm model. The training, validation, and test sets for each malaria parasite category were randomly selected. A comprehensive analysis was performed on 12 708 thin blood smear images of various infective stages of 12 546 malaria parasites, including , , , , , and . Peripheral blood samples were obtained from 380 patients diagnosed with malaria. Additionally, blood samples from monkeys diagnosed with malaria were used to analyze . The accuracy for detecting -infected blood cells was assessed through various evaluation metrics.
The total time to identify 1116 malaria parasites was 13 seconds, with an average analysis time of 0.01 seconds for each parasite in the test set. The average precision was 0.902, with a recall and precision of infected erythrocytes of 96.0% and 94.9%, respectively. Sensitivity and specificity exceeded 96.8% and 99.3%, with an area under the receiver operating characteristic curve >0.999. The highest sensitivity (97.8%) and specificity (99.8%) were observed for trophozoites and merozoites.
The algorithm can help facilitate the clinical and morphologic examination of malaria parasites.
薄血涂片注释图像数据集的稀缺使得物种间的专家级鉴别具有挑战性。在此,我们旨在建立一种深度学习算法,用于识别和分类薄血涂片中的疟原虫,并评估其性能和临床前景。
采用You Only Look Once v7作为骨干网络来训练人工智能算法模型。对每个疟原虫类别的训练集、验证集和测试集进行随机选择。对12546个疟原虫不同感染阶段的12708张薄血涂片图像进行了全面分析,包括[此处原文缺失具体疟原虫种类信息]。从380例诊断为疟疾的患者中获取外周血样本。此外,还使用了诊断为疟疾的猴子的血样来分析[此处原文缺失具体分析内容]。通过各种评估指标评估检测[此处原文缺失具体疟原虫种类信息]感染血细胞的准确性。
识别1116个疟原虫的总时间为13秒,测试集中每个寄生虫的平均分析时间为0.01秒。平均精度为0.902,感染红细胞的召回率和精确率分别为96.0%和94.9%。敏感性和特异性分别超过96.8%和99.3%,受试者操作特征曲线下面积>0.999。滋养体和裂殖子的敏感性最高(97.8%),特异性最高(99.8%)。
该算法有助于促进疟原虫的临床和形态学检查。