CLANet: A Comprehensive Framework for Cross-Batch Cell Line Identification Using Brightfield Images

06/28/2023
by   Lei Tong, et al.
0

Cell line authentication plays a crucial role in the biomedical field, ensuring researchers work with accurately identified cells. Supervised deep learning has made remarkable strides in cell line identification by studying cell morphological features through cell imaging. However, batch effects, a significant issue stemming from the different times at which data is generated, lead to substantial shifts in the underlying data distribution, thus complicating reliable differentiation between cell lines from distinct batch cultures. To address this challenge, we introduce CLANet, a pioneering framework for cross-batch cell line identification using brightfield images, specifically designed to tackle three distinct batch effects. We propose a cell cluster-level selection method to efficiently capture cell density variations, and a self-supervised learning strategy to manage image quality variations, thus producing reliable patch representations. Additionally, we adopt multiple instance learning(MIL) for effective aggregation of instance-level features for cell line identification. Our innovative time-series segment sampling module further enhances MIL's feature-learning capabilities, mitigating biases from varying incubation times across batches. We validate CLANet using data from 32 cell lines across 93 experimental batches from the AstraZeneca Global Cell Bank. Our results show that CLANet outperforms related approaches (e.g. domain adaptation, MIL), demonstrating its effectiveness in addressing batch effects in cell line identification.

READ FULL TEXT

page 1

page 3

page 4

page 5

page 7

page 13

research
10/26/2017

Cell Line Classification Using Electric Cell-substrate Impedance Sensing (ECIS)

We consider cell line classification using multivariate time series data...
research
03/01/2019

Automatic microscopic cell counting by use of unsupervised adversarial domain adaptation and supervised density regression

Accurate cell counting in microscopic images is important for medical di...
research
10/23/2017

Image Segmentation and Classification for Sickle Cell Disease using Deformable U-Net

Reliable cell segmentation and classification from biomedical images is ...
research
11/15/2019

Batch correction of high-dimensional data

Biomedical research often produces high-dimensional data confounded by b...
research
05/15/2021

Classifying Contaminated Cell Cultures using Time Series Features

We examine the use of time series data, derived from Electric Cell-subst...
research
03/07/2022

Self-supervised learning for analysis of temporal and morphological drug effects in cancer cell imaging data

In this work, we propose two novel methodologies to study temporal and m...
research
01/13/2023

RxRx1: A Dataset for Evaluating Experimental Batch Correction Methods

High-throughput screening techniques are commonly used to obtain large q...

Please sign up or login with your details

Forgot password? Click here to reset