high-content assay for morphological characterization of neuronal development … · 2020-03-05 ·...

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High-Content Assay for Morphological Characterization of Neuronal Development in 3D Matrix Using Human iPSC-Derived Neuronal Cultures Oksana Sirenko 1 , Grischa Chandy 1 , Greta Thompson-Steckel 2 , Thomas Palm 3 , Felix Haniel 3 , Benjamin Simona 4 and Vincent Milleret 4 1 Molecular Devices, LLC, Sunnyvale, CA, USA 2 Laboratory of Biosensors and Bioelectronics, ETH Zurich, Switzerland 3 Ncardia, Cologne, Germany 4 Ectica Technologies AG, Zurich, Switzerland Neurotoxicity Assay in 3D Hydrogels Phenotypic readouts included quantitative characterization of the extent and complexity of neural networks by multiplexed read-outs. We evaluated assay reproducibility, characterized multiple measurements, and tested a series of compounds that are known neurotoxicants. Two methods for analysis were compared: analysis of projection images using standard neurite outgrowth algorithm and 3D analysis using custom module defining fibers, branches, and nuclei. Figure 4. At 72h post-seeding three compounds with known neurotoxic effect were added to the neuronal cultures at different concentrations ranging from 0 to 10 μM. Top panel: Inhibitory effect of compound on neuronal development. Cells were stained and imaged as described above. Upper graph: 2D compressed images (maximum projections) were used for analysis. The neurite outgrowth, number of cells, processes and branches were measured. Concentration-response curves are shown for neurite outgrowth: methyl mercury (red, IC 50 5nM), dieldrin (blue, IC 50 170nM), and rotenone (green, IC 50 220nM). The IC 50 values were comparable with 3D analysis (Lower Graph) and results were obtained using standard 2D neuronal cell cultures (Sirenko et al). Lower graph: Results of 3D analysis. The number of neurites (fibers), volume of fibers (neurites), branching points, and total cell numbers were measured. Concentration- response curves shown for total volume of neurites (mm 3 ): methyl mercury (red, IC 50 2nM), dieldrin (blue, IC 50 170nM), and rotenone (green, IC 50 750nM). Summary Using 3DProSeed TM hydrogels for 3D culture of iPSC-derived CNS.4U TM neural cells and confocal high-content imaging, we have developed a quantitative high-throughput assay which enables assessment of the viability and morphological changes in 3D neuronal cultures. Higher resolution and multi-parametric analysis allows neurite and single cell counting and statistically characterizes neurite development and branching in 3D. 2D and 3D analysis enable characterization of neuronal networks and provide quantitative measurements that can be used to define IC 50 values and compare toxicities of various compounds. RESULTS: Phenotypic Analysis of 3D Cultures Imaging High-content imaging and analysis were used for evaluation of neuronal networks. We optimized cell culture and staining, and also developed confocal imaging and analysis protocols for assessing morphology and viability of neurons in 3D matrix. A series of images were acquired at different planes along the focal axis (Z-stack) using ImageXpress® Micro Confocal High-Content Imaging System (Molecular Devices, Sunnyvale, CA), with 10X or 4X objectives. A stack of 11-33 planes separated by 5-10 μm was acquired, covering approximately 100-300 μm in depth. All individual images were saved and used for 3D analysis, as well as 2D projection (Maximum Projection or Best Focus) images. Figure 1. CNS.4U cells were seeded on 3DProSeed and imaged at 14 days in confocal mode. Nuclei are stained withHoechst (red) and tubulin –TuJ-1 (green). Four panels represent different focal planes in the gel. Neurite networks extend several hundred micrometers into the hydrogel. Image Analysis Automatic quantitative analysis was done using 2 methods: analysis of projection image (2D) or 3D analysis. 2D maximum projection images were analyzed using a neurite outgrowth algorithm. Phenotypic read-outs included quantitative characterization of the extent and complexity of neural networks by multiplexed read-outs including measuring neurite outgrowth, number of processes and branches, as well as cell number and viability. Analysis of projection image is faster and allows a good quantitation. Figure 2. CNS.4U cells were seeded on 3DProSeed at different seeding densities (5,000-80,000 cells/gel). Cells were kept in culture for 14 days and imaging was performed using ImageXpress Micro Confocal system. Imaging in 3D (Z-stacking) was performed and maximum projections were used for analysis. Analysis allowed to automatically measure cell number, neurite outgrowth (length of neurites), as well as the number of processes and branches. Top panel represents transmitted light projection images and overlaying analysis masks for neuronal detection. Graphs demonstrate dependencies of various measurements from the number of plated neurons. Averages from triplicate wells. 3D Visualization and 3D Image Analysis Analysis software allows combining objects from different planes and 3D visualization of cells and networks. Custom Module was used to define “fibers” for outgrowth and cell nuclei. Objects were first found in each plane and then connected in 3D space using “connect by best match” function. 3D analysis typically takes longer, but allows better resolution and quantitation of objects in the volume (including overlapping objects). Figure 3. Left: 3D visualization of cells and networks in hydrogel by MetaXpress software. 3D visualization shows cell nuclei (pseudocolored) and TuJ-1 positive neurites and cell bodies (red). Middle: Analysis masks for “fibers” defined in the individual plane. 3D analysis was performed to define the number of fibers (neurites) per well, total volume of fibers (neurites), number of branching points, and number of cells (nuclei). Graphs demonstrate dependencies of measurements from the number of plated neurons (triplicates). INTRODUCTION Development of more complex, biologically relevant, and predictive cell-based assays for compound screening is one of the main challenges in drug discovery. There is an increasing interest in using three-dimensional (3D) cultures for assay development and translational biology. 3D cultures are believed to have the advantage of closely recapitulating aspects of the human tissues including the architecture, cell organization, cell-cell and cell-matrix interactions, and more physiologically relevant diffusion characteristics. Hydrogels are widely used as an artificial extracellular matrix to grow neural cells in a 3D environment. The fully synthetic hydrogels were developed pre-casted in a 96- well plate featuring an in-depth surface density gradient promoting the infiltration in 3D of cells deposited on the hydrogel surface (3DProSeed TM hydrogels). This platform offers high simplicity of use and high compatibility to automation. Human induced pluripotent stem cells (iPSC) derived neurons are increasingly used for the development of physiological cell models; their human origin, prolonged viability in culture and availability high volumes makes them advantageous compared to primary cell and animal models for neuroscience applications. GOAL The focus of the present study was to develop a high-throughput 3D neurite outgrowth assay using iPSC-derived neurons developing in the hydrogel matrix, with the long term goal of establishing automation-compatible 3D models for neurodegenerative and neurotoxicology screens. METHODS ASSAY DEVELOPMENT Cells used for the assay were CNS.4U TM (Ncardia), an iPSC-derived cell mix comprised of neurons (glutamatergic, dopaminergic, and GABAergic), as well as astrocytes. 3DProSeed TM 96-well plate provided by Ectica Technologies. The plate contains pre-casted fully synthetic PEG-based hydrogels. The hydrogel feature an in-depth surface density gradient promoting the infiltration in 3D of neurites and establishment of a 3D network. This hydrogel platform offers high simplicity of use and high compatibility to automation (Simona et al. and Zhang et al.). Formation of 3D Neural Networks in Hydrogels: CNS.4U cells were cultured for up to 14 days in 3DProSeed hydrogel. Cells were plated at 40,000 neurons/well, in 200 μL media. Seeding density can be varied. Medium composition included 50:50 mix of neurobasal media + DMEM/F12 + supplements (Ncardia) Cells were settled first on the surface of hydrogels, and then penetrated inside the hydrogel. Neurite outgrowth started to form ~24h after plating and extended over 14 days in culture. Formation of neurite networks was monitored over time using transmitted light and confocal imaging. Staining For the end-point measurements cells were fixed using 4% formaldehyde, then permeabilized with 0.01% of Triton X-100 and stained using fluorophore-conjugated antibodies against TuJ-1 neuronal marker, plus Hoechst nuclear stain. References 1. Simona B.R. et al., Biomater. Sci., 3:586-591, 2015. 2. Zhang N. & Milleret V., SLAS Discovery, accepted, 2017. 3. Sirenko et al., Assay and Drug Dev Technologies12(9-10):536-47 Z0 +30 +60 +90 Confocal Images, Z-stack, 30 μm apart Methyl Mercury Dieldrin Rotenone Neurite Outgrowth Neurite Total Volume Methyl Mercury 0 uM 0.03 uM 0.3 uM ImageXpress ® Micro Confocal High-Content Imaging System Equipped with Widefield and Confocal (60mm pinhole) Optics MetaXpress ® High-Content Image Acquisition and Analysis Software Maximum Projection 3D Analysis Concentration, mM 100um

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Page 1: High-Content Assay for Morphological Characterization of Neuronal Development … · 2020-03-05 · High-Content Assay for Morphological Characterization of Neuronal Development in

High-Content Assay for Morphological Characterization of Neuronal Development in 3D Matrix Using Human iPSC-Derived Neuronal Cultures

Oksana Sirenko1, Grischa Chandy1, Greta Thompson-Steckel2, Thomas Palm3, Felix Haniel3, Benjamin Simona4 and Vincent Milleret4

1Molecular Devices, LLC, Sunnyvale, CA, USA 2Laboratory of Biosensors and Bioelectronics, ETH Zurich, Switzerland3Ncardia, Cologne, Germany 4Ectica Technologies AG, Zurich, Switzerland

Neurotoxicity Assay in 3D Hydrogels

Phenotypic readouts included quantitative characterization of the extent andcomplexity of neural networks by multiplexed read-outs. We evaluated assayreproducibility, characterized multiple measurements, and tested a series ofcompounds that are known neurotoxicants. Two methods for analysis were compared:analysis of projection images using standard neurite outgrowth algorithm and 3Danalysis using custom module defining fibers, branches, and nuclei.

Figure 4. At 72h post-seeding three compounds with known neurotoxic effect wereadded to the neuronal cultures at different concentrations ranging from 0 to 10 µM.Top panel: Inhibitory effect of compound on neuronal development. Cells were stainedand imaged as described above.Upper graph: 2D compressed images (maximum projections) were used for analysis.The neurite outgrowth, number of cells, processes and branches were measured.Concentration-response curves are shown for neurite outgrowth: methyl mercury (red,IC50 5nM), dieldrin (blue, IC50 170nM), and rotenone (green, IC50 220nM). The IC50

values were comparable with 3D analysis (Lower Graph) and results were obtainedusing standard 2D neuronal cell cultures (Sirenko et al).Lower graph: Results of 3D analysis. The number of neurites (fibers), volume of fibers(neurites), branching points, and total cell numbers were measured. Concentration-response curves shown for total volume of neurites (mm3): methyl mercury (red, IC50

2nM), dieldrin (blue, IC50 170nM), and rotenone (green, IC50 750nM).

SummaryUsing 3DProSeedTM hydrogels for 3D culture of iPSC-derived CNS.4UTM neuralcells and confocal high-content imaging, we have developed a quantitativehigh-throughput assay which enables assessment of the viability andmorphological changes in 3D neuronal cultures.

Higher resolution and multi-parametric analysis allows neurite and single cellcounting and statistically characterizes neurite development and branching in3D. 2D and 3D analysis enable characterization of neuronal networks andprovide quantitative measurements that can be used to define IC50 values andcompare toxicities of various compounds.

RESULTS: Phenotypic Analysis of 3D CulturesImagingHigh-content imaging and analysis were used for evaluation of neuronal networks. Weoptimized cell culture and staining, and also developed confocal imaging and analysisprotocols for assessing morphology and viability of neurons in 3D matrix. A series ofimages were acquired at different planes along the focal axis (Z-stack) using ImageXpress®Micro Confocal High-Content Imaging System (Molecular Devices, Sunnyvale, CA), with10X or 4X objectives. A stack of 11-33 planes separated by 5-10 µm was acquired,covering approximately 100-300 µm in depth. All individual images were saved and usedfor 3D analysis, as well as 2D projection (Maximum Projection or Best Focus) images.

Figure 1. CNS.4U cells were seeded on 3DProSeed and imaged at 14 days in confocal mode.Nuclei are stained with Hoechst (red) and tubulin –TuJ-1 (green). Four panels represent differentfocal planes in the gel. Neurite networks extend several hundred micrometers into the hydrogel.

Image AnalysisAutomatic quantitative analysis was done using 2 methods: analysis of projection image(2D) or 3D analysis. 2D maximum projection images were analyzed using a neuriteoutgrowth algorithm. Phenotypic read-outs included quantitative characterization of theextent and complexity of neural networks by multiplexed read-outs including measuringneurite outgrowth, number of processes and branches, as well as cell number andviability. Analysis of projection image is faster and allows a good quantitation.

Figure 2. CNS.4U cells were seeded on 3DProSeed at different seeding densities (5,000-80,000cells/gel). Cells were kept in culture for 14 days and imaging was performed using ImageXpressMicro Confocal system. Imaging in 3D (Z-stacking) was performed and maximum projections wereused for analysis. Analysis allowed to automatically measure cell number, neurite outgrowth(length of neurites), as well as the number of processes and branches. Top panel representstransmitted light projection images and overlaying analysis masks for neuronal detection. Graphsdemonstrate dependencies of various measurements from the number of plated neurons.Averages from triplicate wells.

3D Visualization and 3D Image AnalysisAnalysis software allows combining objects from different planes and 3D visualization ofcells and networks. Custom Module was used to define “fibers” for outgrowth and cellnuclei. Objects were first found in each plane and then connected in 3D space using“connect by best match” function. 3D analysis typically takes longer, but allows betterresolution and quantitation of objects in the volume (including overlapping objects).

Figure 3. Left: 3D visualization of cells and networks in hydrogel by MetaXpress software. 3Dvisualization shows cell nuclei (pseudocolored) and TuJ-1 positive neurites and cell bodies (red).Middle: Analysis masks for “fibers” defined in the individual plane. 3D analysis was performed todefine the number of fibers (neurites) per well, total volume of fibers (neurites), number ofbranching points, and number of cells (nuclei). Graphs demonstrate dependencies ofmeasurements from the number of plated neurons (triplicates).

INTRODUCTION

Development of more complex, biologically relevant, and predictive cell-basedassays for compound screening is one of the main challenges in drug discovery.There is an increasing interest in using three-dimensional (3D) cultures for assaydevelopment and translational biology. 3D cultures are believed to have theadvantage of closely recapitulating aspects of the human tissues including thearchitecture, cell organization, cell-cell and cell-matrix interactions, and morephysiologically relevant diffusion characteristics.

Hydrogels are widely used as an artificial extracellular matrix to grow neural cells ina 3D environment. The fully synthetic hydrogels were developed pre-casted in a 96-well plate featuring an in-depth surface density gradient promoting the infiltrationin 3D of cells deposited on the hydrogel surface (3DProSeedTM hydrogels). Thisplatform offers high simplicity of use and high compatibility to automation.

Human induced pluripotent stem cells (iPSC) derived neurons are increasingly usedfor the development of physiological cell models; their human origin, prolongedviability in culture and availability high volumes makes them advantageouscompared to primary cell and animal models for neuroscience applications.

GOALThe focus of the present study was to develop a high-throughput 3D neuriteoutgrowth assay using iPSC-derived neurons developing in the hydrogel matrix, withthe long term goal of establishing automation-compatible 3D models forneurodegenerative and neurotoxicology screens.

METHODS

ASSAY DEVELOPMENT• Cells used for the assay were CNS.4UTM (Ncardia), an iPSC-derived cell mix

comprised of neurons (glutamatergic, dopaminergic, and GABAergic), as well asastrocytes.

• 3DProSeedTM 96-well plate provided by Ectica Technologies. The plate containspre-casted fully synthetic PEG-based hydrogels. The hydrogel feature an in-depthsurface density gradient promoting the infiltration in 3D of neurites andestablishment of a 3D network. This hydrogel platform offers high simplicity ofuse and high compatibility to automation (Simona et al. and Zhang et al.).

Formation of 3D Neural Networks in Hydrogels:

• CNS.4U cells were cultured for up to 14 days in 3DProSeed hydrogel. Cells wereplated at 40,000 neurons/well, in 200 μL media. Seeding density can be varied.Medium composition included 50:50 mix of neurobasal media + DMEM/F12 +supplements (Ncardia)

• Cells were settled first on the surface of hydrogels, and then penetrated insidethe hydrogel. Neurite outgrowth started to form ~24h after plating and extendedover 14 days in culture. Formation of neurite networks was monitored over timeusing transmitted light and confocal imaging.

StainingFor the end-point measurements cells were fixed using 4% formaldehyde, thenpermeabilized with 0.01% of Triton X-100 and stained using fluorophore-conjugatedantibodies against TuJ-1 neuronal marker, plus Hoechst nuclear stain.

References1. Simona B.R. et al., Biomater. Sci., 3:586-591, 2015.2. Zhang N. & Milleret V., SLAS Discovery, accepted, 2017.3. Sirenko et al., Assay and Drug Dev Technologies12(9-10):536-47

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