학술논문

Center-Based iPSC Colony Counting with Multi-Task Learning
Document Type
Conference
Source
2022 IEEE International Conference on Data Mining (ICDM) ICDM Data Mining (ICDM), 2022 IEEE International Conference on. :1173-1178 Nov, 2022
Subject
Computing and Processing
Crowdsourcing
Image segmentation
Head
Codes
Stem cells
Predictive models
Multitasking
iPSC
counting
center
Gaussian kernel
Language
ISSN
2374-8486
Abstract
iPSCs are pluripotent stem cells generated from adult tissue through a process called cellular reprogramming. However, cellular reprogramming is a lengthy and inefficient process since only a small fraction of cells can reliably become iPSCs. The reprogramming efficiency is generally measured by counting the number of reprogrammed colonies that emerge and grow as rounded clusters of compact cells around 20 days after adding the reprogramming vectors. However, counting colonies manually is labor-intensive, time-consuming, and error-prone.This work develops a semi-automated tool for colony counting from iPSC culture plate images, where colonies are automatically annotated with their centers. Our model uses multi-task learning to jointly predict the colony centers and conduct colony segmentation, in hope that the latter will improve the performance of the former. An annotation tool is developed to facilitate the collection of ground-truth masks by crowdsourcing. Two center-based loss functions are investigated and compared, one based on oriented Gaussian kernel and the other based on average Hausdorff distance. Extensive experiments verify that (i) the former loss outperforms the latter, (ii) the segmentation head is effective in improving center predictions. Our code has been released at https://github.com/MTSami/iPSC-Colony-Counting.