0
Article ? AI-assigned paper type based on the abstract. Classification may not be perfect — flag errors using the feedback button. Tier 2 ? Original research — experimental, observational, or case-control study. Direct primary evidence. Food & Water Human Health Effects Policy & Risk Sign in to save

Rare bioparticle detection <i>via</i> deep metric learning

RSC Advances 2021 7 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 40 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Shaobo Luo, Shaobo Luo, Shaobo Luo, Shaobo Luo, Shaobo Luo, Shaobo Luo, Yi Zhang, Yuzhi Shi, Yuzhi Shi, Bình Thị Thanh Nguyễn, L. K. Chin, Bình Thị Thanh Nguyễn, Yi Zhang, Tarik Bourouina, Tarik Bourouina, Tarik Bourouina, Yuzhi Shi, Yuzhi Shi, Tarik Bourouina, Tarik Bourouina, Yuzhi Shi, Yuzhi Shi, Bihan Wen, Ying Sun, Bình Thị Thanh Nguyễn, A. Q. Liu Bình Thị Thanh Nguyễn, Tarik Bourouina, Giovanni Chierchia, Giovanni Chierchia, Bihan Wen, Hugues Talbot, Shaobo Luo, Hugues Talbot, Shaobo Luo, Tarik Bourouina, Giovanni Chierchia, Tarik Bourouina, Bình Thị Thanh Nguyễn, Bình Thị Thanh Nguyễn, Xudong Jiang, A. Q. Liu Hugues Talbot, Xudong Jiang, Tarik Bourouina, A. Q. Liu A. Q. Liu Tarik Bourouina, Xudong Jiang, A. Q. Liu

Summary

Researchers developed a deep metric learning framework for rare bioparticle detection that overcomes the limitations of SoftMax classifiers, achieving both low false alarm rates and high recovery rates for applications where representative training images are scarce and input data may differ from training distributions.

Body Systems
Study Type Environmental

Recent deep neural networks have shown superb performance in analyzing bioimages for disease diagnosis and bioparticle classification. Conventional deep neural networks use simple classifiers such as SoftMax to obtain highly accurate results. However, they have limitations in many practical applications that require both low false alarm rate and high recovery rate, <i>e.g.</i>, rare bioparticle detection, in which the representative image data is hard to collect, the training data is imbalanced, and the input images in inference time could be different from the training images. Deep metric learning offers a better generatability by using distance information to model the similarity of the images and learning function maps from image pixels to a latent space, playing a vital role in rare object detection. In this paper, we propose a robust model based on a deep metric neural network for rare bioparticle (<i>Cryptosporidium</i> or <i>Giardia</i>) detection in drinking water. Experimental results showed that the deep metric neural network achieved a high accuracy of 99.86% in classification, 98.89% in precision rate, 99.16% in recall rate and zero false alarm rate. The reported model empowers imaging flow cytometry with capabilities of biomedical diagnosis, environmental monitoring, and other biosensing applications.

Sign in to start a discussion.

Share this paper