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Journal of Zhejiang University SCIENCE B
ISSN 1673-1581(Print), 1862-1783(Online), Monthly
2022 Vol.23 No.7 P.564-577
High-throughput “read-on-ski” automated imaging and label-free detection system for toxicity screening of compounds using personalised human kidney organoids
Abstract: Organoid models are used to study kidney physiology, such as the assessment of nephrotoxicity and underlying disease processes. Personalized human pluripotent stem cell-derived kidney organoids are ideal models for compound toxicity studies, but there is a need to accelerate basic and translational research in the field. Here, we developed an automated continuous imaging setup with the “read-on-ski” law of control to maximize temporal resolution with minimum culture plate vibration. High-accuracy performance was achieved: organoid screening and imaging were performed at a spatial resolution of 1.1 μm for the entire multi-well plate under 3 min. We used the in-house developed multi-well spinning device and cisplatin-induced nephrotoxicity model to evaluate the toxicity in kidney organoids using this system. The acquired images were processed via machine learning-based classification and segmentation algorithms, and the toxicity in kidney organoids was determined with 95% accuracy. The results obtained by the automated “read-on-ski” imaging device, combined with label-free and non-invasive algorithms for detection, were verified using conventional biological procedures. Taking advantage of the close-to-in vivo-kidney organoid model, this new development opens the door for further application of scaled-up screening using organoids in basic research and drug discovery.
Key words: Kidney organoid; High-throughput microscopy; Nephrotoxicity; Machine learning
1华东理工大学生物反应器工程国家重点实验室,中国上海,200237
2中国科学院,广州生物医药与健康研究院,中国广州,510530
3生物岛实验室(广州再生医学与健康广东省实验室),中国广州,510320
4浙江大学医学院附属杭州市肿瘤医院,浙江省临床肿瘤药理与毒理学研究重点实验室,杭州市肿瘤研究所,中国杭州,310002
目的:人诱导多能干细胞来源的肾类器官是药物肾毒性研究中的理想模型。然而受限于传统检测方式的局限,迫切需要一种高通量、高分辨率和高精确性的方法来满足这一领域的基础和转化研究需求。
创新点:该系统采用了最新的硬件和软件技术,并采用了新颖的自动对焦控制机制,满足了高速和亚微米分辨率的要求;该方法结合了无标签和非侵入性的检测算法;该方法在满足检测过程中培养板振动的最小化的同时能够最大化时间分辨率;该方法能够满足大规模化合物筛选的需求。
方法:我们开发了一种连续成像和检测识别的系统,对培养在多孔板内悬浮培养基中顺铂诱导的肾类器官进行检测识别。通过基于机器学习的分类和分割算法对获得的图像进行处理,并通过传统的生物学分析手段验证该系统检测识别的准确性。
结论:运用自主研发的"扫板时读取"系统,我们可以在3分钟内对一个多孔板内的肾类器官进行1.1 µm分辨率的成像,并结合无标签的检测识别算法,准确率可以达到95%。该系统允许我们使用全自动的方法对肾类器官进行批量的化合物筛选。
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DOI:
10.1631/jzus.B2100701
CLC number:
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On-line Access:
2024-08-27
Received:
2023-10-17
Revision Accepted:
2024-05-08
Crosschecked:
2022-07-06