Advanced Materials Thrust, Department of Physics, Hong Kong University of Science and Technology, Guangzhou, 511458, China.
Earth, Ocean and Atmospheric Sciences Thrust, Department of Physics, Hongkong University of Science and Technology, Guangzhou, 511458, China.
Anal Bioanal Chem. 2022 May;414(11):3349-3358. doi: 10.1007/s00216-022-03950-7. Epub 2022 Apr 2.
Point-of-care (POC) real-time polymerase chain reaction (PCR) has become one of the most important technologies for many fields such as pathogen detection and water-quality monitoring. POC real-time PCR usually adopts chips with small-volume chambers for portability, which is more likely to produce complex noise that seriously affects the accuracy. Such complex noises are difficult to be eliminated by the traditional fixed area algorithm that is most commonly used at present because they usually have random shape, location, and brightness. To address this problem, we proposed a novel image analysis method, Dynamic Deep Learning Noise Elimination Method (DIPLOID), in this paper. Our new method could recognize and output the mask of the interference by Mask R-CNN, and then subtract the interference and select the maximum valid contiguous area for brightness analysis by dynamic programming. Compared with the traditional method, DIPLOID increased the accuracy, sensitivity, and specificity from 57.9 to 94.6%, 49.1 to 93.9%, and 65.9 to 95.2%, respectively. DIPLOID has great anti-interference, robustness, and sensitivity, which can reduce the impact of complex noise as much as possible from the aspect of the algorithm. As shown in the experiments of this paper, our method significantly improved the accuracy to over 94% under the complex noise situation, which could make the POC real-time PCR have greater potential in the future.
即时床旁聚合酶链反应(PCR)已成为病原体检测和水质监测等许多领域最重要的技术之一。即时床旁 PCR 通常采用小体积腔室的芯片进行便携性,这更容易产生严重影响准确性的复杂噪声。由于这些复杂噪声通常具有随机的形状、位置和亮度,因此目前最常用的传统固定区域算法很难消除它们。为了解决这个问题,我们在本文中提出了一种新的图像分析方法,即动态深度学习噪声消除方法(DIPLOID)。我们的新方法可以通过 Mask R-CNN 识别和输出干扰的掩模,然后通过动态规划减去干扰并选择最大有效连续区域进行亮度分析。与传统方法相比,DIPLOID 将准确性、灵敏度和特异性分别从 57.9%提高到 94.6%、49.1%提高到 93.9%和 65.9%提高到 95.2%。DIPLOID 具有很强的抗干扰性、鲁棒性和灵敏度,可以从算法方面尽可能减少复杂噪声的影响。如本文实验所示,在复杂噪声情况下,我们的方法将准确性显著提高到 94%以上,这使得即时床旁 PCR 在未来具有更大的潜力。