RDT-FSDet:快速抗原检测的少针靶检测

Yaofei Duan, Tao Tan, Chan-Tong Lam, Rongsheng Wang, Xiaoyan Jin, Sio-Kei Im
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引用次数: 0

摘要

摘要目的:快速诊断试验(RDT)结果的人工验证是一项耗时的任务;因此,在RDT结果识别中引入目标检测模型以减少耗时是十分必要的。为了解决这些问题,一种能够快速适应不同区域不同RDT结果的检测器非常重要。方法:采用少镜头目标检测策略,以大陆数据集为基类训练Faster R-CNN检测器,然后在澳门RDT结果数据集上采用少镜头方法进行微调。此外,我们引入了两种新的数据增强方法,即光模拟掩模法和非平衡数据集的合成阳性样本,以增加样本大小并平衡RDT检测任务的数据集。结果:与LightR-YOLOv5相比,RDT- fsdet在澳门RDT数据集上的mAP值为91.18,召回率为93.59,表明该模型能够快速适应不同地区的RDT结果。RDT- fsdet对每个RDT结果的推断时间为0.14秒,与人工筛选相比,可节省约90%的检测时间。结论:该模型除了适用于新冠肺炎大流行背景外,还可以作为一般的小样本检测模型。RDT-FSDet可应用于其他小型数据集的检测任务,例如管理和分析其他或未来流行病的检测结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RDT-FSDet: Few-shot object detection for rapid antigen test
Abstract Objective: Manual verification of RDT (rapid diagnostic test) results is a time-consuming task; therefore, it is essential to introduce an object detection model into RDT result recognition to reduce the time involved. To address these problems, a detector that can rapidly adapt to different RDT results in various regions is important. Methods: We employed the few-shot object detection strategy and trained the Faster R-CNN detector with the mainland dataset as the base class, followed by fine-tuning with the few-shot approach on the Macau RDT result dataset. Moreover, we introduced two novel data augmentation methods, namely the Light Simulation Mask method and Synthetic Positive Samples for an unbalanced dataset, to increase the sample size and balance the dataset of the RDT detection task. Result: Compared to LightR-YOLOv5, RDT-FSDet achieved mAP of 91.18 and recall of 93.59 on the Macau RDT dataset, demonstrating that this model can rapidly adapt to RDT results in different regions. The inference time of RDT-FSDet for each RDT result was 0.14 seconds, which can save approximately 90% of the detection time compared to manual screening. Conclusion: In addition to its application in the context of the COVID-19 pandemic, this model can also be used as a general small-sample detection model. RDT-FSDet can be applied to the detection tasks of other small datasets such as managing and analyzing detection results in other or future epidemics.
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