基于高效神经系统的疟疾寄生虫检测

Saurav Mishra
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引用次数: 3

摘要

疟疾是由感染了疟原虫属寄生虫的按蚊叮咬引起的,多年来一直是医疗保健的一个主要负担,据报告,全球每年约有40万人死亡。疟疾的传统诊断过程包括在显微镜下检查血液涂片。这个过程不仅耗时,而且要求病理学家在工作中具有很高的技能。及时诊断和提供强大的诊断设施和熟练的实验室技术人员对降低死亡率至关重要。本研究旨在通过应用迁移学习和快照集成等深度学习技术建立一个鲁棒系统,以自动检测薄血涂片图像中的寄生虫。所有模型均根据以下指标进行评估:F1评分、准确率、精密度、召回率、马修斯相关系数(MCC)、受试者工作特征下面积(AUC-ROC)和精确召回曲线下面积(AUC-PR)。通过结合EfficientNet-B0预训练模型的快照创建的快照集成模型优于所有其他模型,达到f1得分为99.37%,精度为99.52%,召回率为99.23%。结果显示了模型集成的潜力,它将多个福利模型的预测能力结合起来,创建一个更有效的模型,更好地处理现实世界的数据。GradCAM实验显示了最后一个卷积层的梯度激活图,以直观地说明模型在图像中看到的位置和内容,从而将它们分类到特定的类中。本研究中的模型正确地激活了薄血涂片图像中感兴趣的染色寄生区域。这样的视觉效果使模型更加透明、可解释和可信,这对于在医疗保健网络中部署基于AI的模型非常重要。
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Malaria Parasite Detection using Efficient Neural Ensembles
Caused by the bite of the Anopheles mosquito infected with the parasite of genus Plasmodium, malaria has remained a major burden towards healthcare for years with an approximate 400,000 deaths reported globally every year. The traditional diagnosis process for malaria involves an examination of the blood smear slide under the microscope. This process is not only time consuming but also requires pathologists to be highly skilled in their work. Timely diagnosis and availability of robust diagnostic facilities and skilled laboratory technicians are very much vital to reduce the mortality rate. This study aims to build a robust system by applying deep learning techniques such as transfer learning and snapshot ensembling to automate the detection of the parasite in the thin blood smear images. All the models were evaluated against the following metrics - F1 score, Accuracy, Precision, Recall, Mathews Correlation Coefficient (MCC), Area Under the Receiver Operating Characteristics (AUC-ROC) and the Area under the Precision Recall curve (AUC-PR). The snapshot ensembling model created by combining the snapshots of the EfficientNet-B0 pre-trained model outperformed every other model achieving a f1 score - 99.37%, precision - 99.52% and recall - 99.23%. The results show the potential of  model ensembles which combine the predictive power of multiple weal models to create a single efficient model that is better equipped to handle the real world data. The GradCAM experiment displayed the gradient activation maps of the last convolution layer to visually explicate where and what a model sees in an image to classify them into a particular class. The models in this study correctly activate the stained parasitic region of interest in the thin blood smear images. Such visuals make the model more transparent, explainable, and trustworthy which are very much essential for deploying AI based models in the healthcare network.
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