Data Augmentation for High-Fidelity Generation of CAR-T/NK Immunological Synapse Images
Xiang Zhang, Boxuan Zhang, Alireza Naghizadeh, Mohab Mohamed, Dongfang Liu, Ruixiang Tang, Dimitris Metaxas, Dongfang Liu

TL;DR
This paper introduces two novel data augmentation frameworks, IAAA and SAAA, to generate high-fidelity synthetic CAR-T/NK immunological synapse images, improving neural network detection and segmentation accuracy despite limited datasets.
Contribution
It presents two complementary augmentation methods, IAAA and SAAA, that generate realistic synthetic images to enhance neural network training for immunological synapse detection.
Findings
Synthetic images improve segmentation accuracy
Augmentation increases robustness of detection models
Methods support multiple imaging modalities
Abstract
Chimeric antigen receptor (CAR)-T and NK cell immunotherapies have transformed cancer treatment, and recent studies suggest that the quality of the CAR-T/NK cell immunological synapse (IS) may serve as a functional biomarker for predicting therapeutic efficacy. Accurate detection and segmentation of CAR-T/NK IS structures using artificial neural networks (ANNs) can greatly increase the speed and reliability of IS quantification. However, a persistent challenge is the limited size of annotated microscopy datasets, which restricts the ability of ANNs to generalize. To address this challenge, we integrate two complementary data-augmentation frameworks. First, we employ Instance Aware Automatic Augmentation (IAAA), an automated, instance-preserving augmentation method that generates synthetic CAR-T/NK IS images and corresponding segmentation masks by applying optimized augmentation policies…
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Taxonomy
TopicsCAR-T cell therapy research · Cell Image Analysis Techniques · Single-cell and spatial transcriptomics
