Image segmentation of treated and untreated tumor spheroids by fully convolutional networks.

IF 11.8 2区 生物学 Q1 MULTIDISCIPLINARY SCIENCES
Matthias Streller, Soňa Michlíková, Willy Ciecior, Katharina Lönnecke, Leoni A Kunz-Schughart, Steffen Lange, Anja Voss-Böhme
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引用次数: 0

Abstract

Background: Multicellular tumor spheroids (MCTS) are advanced cell culture systems for assessing the impact of combinatorial radio(chemo)therapy as they exhibit therapeutically relevant in vivo-like characteristics from 3-dimensional cell-cell and cell-matrix interactions to radial pathophysiological gradients. State-of-the-art assays quantify long-term curative endpoints based on collected brightfield image time series from large treated spheroid populations per irradiation dose and treatment arm. This analyses require laborious spheroid segmentation of up to 100,000 images per treatment arm to extract relevant structural information from the images (e.g., diameter, area, volume, and circularity). While several image analysis algorithms are available for spheroid segmentation, they all focus on compact MCTS with a clearly distinguishable outer rim throughout growth. However, they often fail for the common case of treated MCTS, which may partly be detached and destroyed and are usually obscured by dead cell debris.

Results: To address these issues, we successfully train 2 fully convolutional networks, UNet and HRNet, and optimize their hyperparameters to develop an automatic segmentation for both untreated and treated MCTS. We extensively test the automatic segmentation on larger, independent datasets and observe high accuracy for most images with Jaccard indices around 90%. For cases with lower accuracy, we demonstrate that the deviation is comparable to the interobserver variability. We also test against previously published datasets and spheroid segmentations.

Conclusions: The developed automatic segmentation can not only be used directly but also integrated into existing spheroid analysis pipelines and tools. This facilitates the analysis of 3-dimensional spheroid assay experiments and contributes to the reproducibility and standardization of this preclinical in vitro model.

基于全卷积网络的肿瘤球体图像分割。
背景:多细胞肿瘤球体(MCTS)是一种先进的细胞培养系统,用于评估组合放射(化疗)治疗的影响,因为它们表现出与体内治疗相关的特征,从三维细胞-细胞和细胞-基质相互作用到径向病理生理梯度。最先进的分析量化了长期治疗终点,该终点是基于从每个照射剂量和治疗组的大治疗球体群体收集的明场图像时间序列。这种分析需要费力地对每个处理臂进行多达10万张图像的球体分割,以从图像中提取相关的结构信息(例如,直径、面积、体积和圆度)。虽然有几种图像分析算法可用于球体分割,但它们都集中在紧凑的MCTS上,在整个生长过程中具有清晰可区分的外缘。然而,对于治疗MCTS的常见病例,它们往往失败,因为MCTS可能部分分离和破坏,并且通常被死细胞碎片所掩盖。结果:为了解决这些问题,我们成功地训练了2个全卷积网络,UNet和HRNet,并优化了它们的超参数,以开发未经处理和处理的MCTS的自动分割。我们在更大的独立数据集上对自动分割进行了广泛的测试,并观察到大多数图像的Jaccard指数在90%左右,准确率很高。对于精度较低的情况,我们证明了偏差与观察者间的可变性相当。我们还针对先前发布的数据集和球体分割进行了测试。结论:所开发的自动分割方法不仅可以直接使用,而且可以集成到现有的球体分析管道和工具中。这有利于三维球体分析实验的分析,有助于临床前体外模型的可重复性和标准化。
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来源期刊
GigaScience
GigaScience MULTIDISCIPLINARY SCIENCES-
CiteScore
15.50
自引率
1.10%
发文量
119
审稿时长
1 weeks
期刊介绍: GigaScience seeks to transform data dissemination and utilization in the life and biomedical sciences. As an online open-access open-data journal, it specializes in publishing "big-data" studies encompassing various fields. Its scope includes not only "omic" type data and the fields of high-throughput biology currently serviced by large public repositories, but also the growing range of more difficult-to-access data, such as imaging, neuroscience, ecology, cohort data, systems biology and other new types of large-scale shareable data.
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