| Literature DB >> 24692228 |
Nicolas Jaccard1, Rhys J Macown2, Alexandre Super2, Lewis D Griffin3, Farlan S Veraitch2, Nicolas Szita4.
Abstract
Adherent cell lines are widely used across all fields of biology, including drug discovery, toxicity studies, and regenerative medicine. However, adherent cell processes are often limited by a lack of advances in cell culture systems. While suspension culture processes benefit from decades of development of instrumented bioreactors, adherent cultures are typically performed in static, noninstrumented flasks and well-plates. We previously described a microfabricated bioreactor that enables a high degree of control on the microenvironment of the cells while remaining compatible with standard cell culture protocols. In this report, we describe its integration with automated image-processing capabilities, allowing the continuous monitoring of key cell culture characteristics. A machine learning-based algorithm enabled the specific detection of one cell type within a co-culture setting, such as human embryonic stem cells against the background of fibroblast cells. In addition, the algorithm did not confuse image artifacts resulting from microfabrication, such as scratches on surfaces, or dust particles, with cellular features. We demonstrate how the automation of flow control, environmental control, and image acquisition can be employed to image the whole culture area and obtain time-course data of mouse embryonic stem cell cultures, for example, for confluency.Entities:
Keywords: adherent cell culture; image processing; microfluidics; microreactors; stem cell growth kinetics
Mesh:
Year: 2014 PMID: 24692228 PMCID: PMC4230958 DOI: 10.1177/2211068214529288
Source DB: PubMed Journal: J Lab Autom ISSN: 2211-0682
Figure 1.Schematic of the key components required for automated culture and monitoring of adherent cells in a microfabricated bioreactor. (A) Flow is controlled either by modulating the head pressure in a bottle containing the culture media or via a syringe drive. Temperature control is achieved using an on-stage incubator that houses the microfabricated bioreactor as well as the fluidics. A motorized stage is used together with a piezo focus system for imaging. (B) Schematic of a typical monitoring loop for the system. Automation of the fluidics and the imaging system is achieved using a LabVIEW routine while automated image processing was done using MATLAB.
Figure 2.Automated image-processing approach. (A) Basic image features (BIFs) of the phase contrast microscopy (PCM) image are first computed. For each pixel, a local histogram of the occurrence of the different BIFs is built. These histograms are the features that are used to classify pixels as background or cells. (B) Example of a user-defined training set for the machine learning classifier. Using a conventional image-editing tool, the user indicates portions of an image that are definitely a human embryonic stem cell (hESC) colony and definitely not a colony. It is not necessary to annotate the whole image as regions can be left as not specified. (C) Schematic of the random forest classification approach. Local BIF histograms are used as inputs for decision trees. At each node, a binary test based on these features determined whether to traverse to the left or right child node next. A particular tree will classify the histogram as either cell or pixel. The majority vote of multiple trees will decide on the final class assigned to the pixel. (D) Example of processing output. (i) Binary mask after processing, showing the stem cell colony in white and the background and fibroblasts in black. (ii) Overlay of the processing results with the original PCM image.
Figure 3.Example of application of image processing to monitor stem cell growth. (A) Example of human embryonic stem cells (hESCs) growing in an in vitro fertilization dish. The size of the culture area makes it difficult to quickly image the whole reactor, but instead it is necessary to image only a few fields of view. Green shows colonies on day 1, red on day 3. (B) hESCs growing in the microfabricated bioreactor where it is possible to image the whole culture area. Green shows colonies on day 1, red on day 3. (C) Application of the same approach to mouse embryonic stem cells cultured in the microfabricated bioreactor. The use of machine learning in combination with basic image features enabled the detection of the cell despite the presence of background artifacts. (D) Online monitoring of mESC growth in the whole culture chamber. The bold line is the mean and light gray line the standard deviation across three independent trials.