Department of Information Technology Division of Visual Information and Interaction and Science for Life Laboratory, Uppsala University, Uppsala, Sweden.
Department of Biosciences and Nutrition, Novum Karolinska Institutet, 141 86 Stockholm, Sweden.
Cytometry A. 2017 Nov;91(11):1068-1077. doi: 10.1002/cyto.a.23265. Epub 2017 Oct 14.
Neutral lipids packed in lipid droplets (LDs) are essential as a source of fuel for organisms, and specialized storing cells, the adipocytes, provide a buffer for energy variations. Many modern-society-disorders are connected with excess accumulation or deficiency of LDs in adipose tissue. Intracellular LD number and size distribution reflect the tissue conditions, while the associated mechanisms and genes rs are still poorly understood. Large-scale genetic screens using human in vitro differentiated primary adipocytes require cell samples donated from many patients. The heterogeneity appearing between donors highlighted the need for high-throughput methods robust to individual variations. Previous image analysis algorithms failed to handle individual LDs, but focused on averages, hiding population heterogeneity. We present a new high-content analysis (HCA) technique for analysis of fat cell metabolism using data from a large-scale RNAi screen including images of more than 500 k in vitro differentiated adipocytes from three donors. The RNAi-based suppression of Perilipin 1 (PLIN1), a protein involved in the adipocyte lipid metabolism, served as a positive control, while cells treated with randomized RNA served as negative controls. We validate our segmentation by comparing our results to those of previously published methods: We also evaluate the discriminative power of different morphological features describing LD size distribution. Classification of cells as containing few large or many small LDs followed by calculating the percentage of cells in each class proved to discriminate the positive PLIN1-suppressed phenotype from the untreated negative control with an area under the receiver operating characteristic curve of 0.98. The results suggest that this HCA method offers improved segmentation and classification accuracy, and can, thus, be utilized to quantify changes in LD metabolism in response to treatment in many cell models relevant to a variety of diseases. © 2017 International Society for Advancement of Cytometry.
中性脂质被包裹在脂滴 (LDs) 中,是生物体作为燃料来源的关键,而专门的储存细胞——脂肪细胞,为能量变化提供了缓冲。许多现代社会的疾病都与脂肪组织中 LDs 的过度积累或缺乏有关。细胞内 LD 的数量和大小分布反映了组织状况,而相关的机制和基因 rs 仍知之甚少。使用体外分化的人原代脂肪细胞进行的大规模遗传筛选需要从许多患者捐献的细胞样本。供体之间出现的异质性突出表明需要对个体变异具有鲁棒性的高通量方法。以前的图像分析算法无法处理单个 LD,但侧重于平均值,隐藏了群体异质性。我们提出了一种新的高通量分析 (HCA) 技术,用于分析脂肪细胞代谢,该技术使用了来自大规模 RNAi 筛选的数据,其中包括来自三个供体的超过 50 万个体外分化的脂肪细胞的图像。作为阳性对照,用 RNAi 抑制参与脂肪细胞脂质代谢的 Perilipin 1 (PLIN1),而用随机 RNA 处理的细胞作为阴性对照。我们通过将我们的结果与以前发表的方法进行比较来验证我们的分割:我们还评估了描述 LD 大小分布的不同形态特征的区分能力。将细胞分类为含有少量大 LD 或许多小 LD,并计算每个类别的细胞百分比,结果证明可以将 PLIN1 抑制的阳性表型与未处理的阴性对照区分开来,接收器操作特征曲线下的面积为 0.98。结果表明,这种 HCA 方法提供了改进的分割和分类准确性,因此可以用于量化许多与各种疾病相关的细胞模型中 LD 代谢对治疗的反应变化。 2017 年国际细胞分析促进协会。