Fondazione Policlinico Universitario A. Gemelli IRCSS, Rome, Italy; Dipartimento di Neuroscienze, Università Cattolica Del Sacro Cuore, Rome, Italy.
Fondazione Policlinico Universitario A. Gemelli IRCSS, Rome, Italy; Dipartimento di Neuroscienze, Università Cattolica Del Sacro Cuore, Rome, Italy.
Anal Chim Acta. 2020 Jul 18;1121:57-66. doi: 10.1016/j.aca.2020.04.076. Epub 2020 May 3.
All living systems are maintained by a constant flux of metabolic energy and, among the different reactions, the process of lipids storage and lipolysis is of fundamental importance. Current research has focused on the investigation of lipid droplets (LD) as a powerful biomarker for the early detection of metabolic and neurological disorders. Efforts in this field aim at increasing selectivity for LD detection by exploiting existing or newly synthesized probes. However, LD constitute only the final product of a complex series of reactions during which fatty acids are transformed into triglycerides and cholesterol is transformed in cholesteryl esters. These final products can be accumulated in intracellular organelles or deposits other than LD. A complete spatial mapping of the intracellular sites of triglycerides and cholesteryl esters formation and storage is, therefore, crucial to highlight any potential metabolic imbalance, thus predicting and counteracting its progression. Here, we present a machine learning assisted, polarity-driven segmentation which enables to localize and quantify triglycerides and cholesteryl esters biosynthesis sites in all intracellular organelles, thus allowing to monitor in real-time the overall process of the turnover of these non-polar lipids in living cells. This technique is applied to normal and differentiated PC12 cells to test how the level of activation of biosynthetic pathways changes in response to the differentiation process.
所有生命系统都依赖于代谢能量的持续流动,在不同的反应中,脂质储存和脂肪分解的过程至关重要。目前的研究集中在脂质滴 (LD) 作为代谢和神经紊乱早期检测的有力生物标志物的研究上。该领域的研究旨在通过利用现有或新合成的探针来提高 LD 检测的选择性。然而,LD 只是脂肪酸转化为甘油三酯和胆固醇转化为胆固醇酯的复杂反应系列的最终产物。这些最终产物可以在细胞内细胞器或除 LD 以外的其他沉积物中积累。因此,全面绘制甘油三酯和胆固醇酯形成和储存的细胞内位置图谱对于突出任何潜在的代谢失衡至关重要,从而预测和阻止其进展。在这里,我们提出了一种机器学习辅助的、极性驱动的分割方法,该方法能够定位和定量所有细胞内细胞器中的甘油三酯和胆固醇酯生物合成位点,从而能够实时监测这些非极性脂质在活细胞中周转的整体过程。该技术应用于正常和分化的 PC12 细胞,以测试生物合成途径的激活水平如何响应分化过程而变化。