Rahkonen Samuli, Koskinen Emilia, Pölönen Ilkka, Heinonen Tuula, Ylikomi Timo, Äyrämö Sami, Eskelinen Matti A
University of Jyväskylä, Faculty of Information Technology, Jyväskylä, Finland.
Tampere University, Faculty of Medicine and Health Technology, Finnish Centre for Alternative Methods, Tampere, Finland.
J Med Imaging (Bellingham). 2020 Mar;7(2):024001. doi: 10.1117/1.JMI.7.2.024001. Epub 2020 Apr 7.
New increasingly complex cancer cell models are being developed. These new models seem to represent the cell behavior more accurately and have better physiological relevance than prior models. An efficient testing method for selecting the most optimal drug treatment does not exist to date. One proposed solution to the problem involves isolation of cancer cells from the patients' cancer tissue, after which they are exposed to potential drugs alone or in combinations to find the most optimal medication. To achieve this goal, methods that can efficiently quantify and analyze changes in tested cell are needed. Our study aimed to detect and segment cells and structures from cancer cell cultures grown on vascular structures in phase-contrast microscope images using U-Net neural networks to enable future drug efficacy assessments. We cultivated prostate carcinoma cell lines PC3 and LNCaP on the top of a matrix containing vascular structures. The cells were imaged with a Cell-IQ phase-contrast microscope. Automatic analysis of microscope images could assess the efficacy of tested drugs. The dataset included 36 RGB images and ground-truth segmentations with mutually not exclusive classes. The used method could distinguish vascular structures, cells, spheroids, and cell matter around spheroids in the test images. Some invasive spikes were also detected, but the method could not distinguish the invasive cells in the test images.
新的、日益复杂的癌细胞模型正在被开发出来。这些新模型似乎比之前的模型更准确地代表细胞行为,并且具有更好的生理相关性。迄今为止,还不存在一种有效的测试方法来选择最优化的药物治疗方案。针对该问题提出的一种解决方案是从患者的癌组织中分离癌细胞,然后将它们单独或联合暴露于潜在药物中,以找到最优化的药物。为实现这一目标,需要能够有效量化和分析受试细胞变化的方法。我们的研究旨在使用U-Net神经网络从相差显微镜图像中生长在血管结构上的癌细胞培养物中检测和分割细胞及结构,以便未来进行药物疗效评估。我们将前列腺癌细胞系PC3和LNCaP培养在含有血管结构的基质顶部。用Cell-IQ相差显微镜对细胞进行成像。显微镜图像的自动分析可以评估受试药物的疗效。该数据集包括36张RGB图像和具有相互不排斥类别的真实分割图像。所使用的方法能够在测试图像中区分血管结构、细胞、球体以及球体周围的细胞物质。还检测到了一些侵袭性尖峰,但该方法无法在测试图像中区分侵袭性细胞。