ISSN: 2167-0870
Australian National University, Canberra, Australia
Research
A deep learning model for detection of leukocytes under various interference factors
Author(s): Meiyu Li, Lei Li, Shuang Song, Peng Ge, Hanshan Zhang, Lu Lu, Xiaoxiang Liu, Fang Zheng, Cong Lin, Shijie Zhang and Xuguo Sun*
The accurate detection of leukocytes is the basis for the diagnosis of blood system diseases. However, current methods and
instruments either fail to fully automate the identification process or have low performance. To improve the current status, we
do need to develop more intelligent methods. In this paper, we investigate fulfilling high-performance automatic detection for
leukocytes using a deep learning-based method. A complete working pipeline for building a leukocyte detector is presented,
which includes data collection, model training, inference, and evaluation. We established a new leukocyte dataset that contains
6273 images (8595 leukocytes), considering nine common clinical interference factors. Based on the dataset, the performance
evaluation of six mainstream detection models is carried out, and a more robust ensemble scheme is proposed. The mAP@
IoU=0.. View More»
DOI:
10.35248/2167-0870.22.12.512