Quantification of Immunohistochemically Stained Cells in Skin Biopsies
Abstract
:1. Introduction
2. Materials and Methods
2.1. Skin Biopsies and Sample Preparation
2.2. Resource Availability
- CD8 (SP16) Rabbit Monoclonal Antibody (Cell Marque, Rocklin, CA, USA) (https://www.cellmarque.com/antibodies/CM/2102/CD8_SP16 (accessed on 30 December 2021)).
- Epredia DAB Quanto Detection System, or any other suitable staining method (https://www.fishersci.dk/shop/products/dab-quanto-chromogen-substrate-2/12693967 (accessed on 30 December 2021)).
- NanoZoomer 2.0-HT; Hamamatsu Photonics K.K. (Hamamatsu, Japan) (https://nanozoomer.hamamatsu.com/jp/en/index.html (accessed on 30 December 2021)).
- NDP.view2 (Hamamatsu Photonics K.K., Hamamatsu, Japan) (https://www.hamamatsu.com/eu/en/product/type/U12388-01/index.html (accessed on 30 December 2021)).
- Adobe Photoshop 2021 (https://www.adobe.com/products/photoshop.html (accessed on 30 December 2021)).
- QuPath v. 0.3.0 (https://qupath.github.io/ (accessed on 30 December 2021)) [18].
2.3. Step-By-Step Guide
2.3.1. Convert NDPI to TIFF
- Open NDP.view2 and select scanned slide (.ndpi).
- Use the Rotate Widget in the right-side panel to rotate the slide and align it horizontally.
- Zoom to ensure the whole epidermis and a part of the dermis are visible.
- Right-click to select Export → Export Image (Ctrl + E).
- Save as .tif using ×20 lens and 300 DPI.
2.3.2. Adobe Photoshop: Regions of Interest
- Use the Line tool (U) to make two large lines placed with both sides orthogonal to the apical part of the epidermis (Figure 2A).
- Use the Brush tool with a 100% hardness to manually demarcate the epidermis and use one color for the whole epidermis (Figure 2B).
- Click Select → Color Range to select color of epidermis. Click Ok.
- Use the right-side panel to select Histogram →, select Expanded View →, click Uncaged Refresh (refresh symbol on the right side). The number of pixels is now shown for the epidermal area.
- Go to Image → Analysis → Ruler Tool to measure the scale bar. L1 denotes the number of pixels corresponding to the scale bar’s distance.
- Go to Select Image → Analysis → Set Measurement Scale → Custom (input the length of the scale bar in pixels). In this example, 100 µm corresponds to 220 pixels.
- Select→ Modify µm Expand to expand the selected epidermal region by 400 µm (corresponds to 880 pixels). Expand the region twice by 440 pixels because Photoshop does not allow expansions above 500 pixels.
- Create a new layer (Ctrl + Shift + N), name it “dermis”, and fill the layer with a new color (Edit → Fill or press Shift + F5) (Figure 2C).
- Go to the epidermal layer, and on the left-side panel, select the Magic Wand Tool. Click on the epidermis to select this layer and go to the dermis layer to remove the selection from that layer. Manually delete areas at the apical part of the epidermis and outside the boundaries of the two demarcated lines (Figure 2D).
- Finally, the epidermal length is estimated. There is no easy way to calculate the length of a polygonal line in Photoshop. We recommend using Adobe Illustrator or QuPath to do this (see the section about QuPath below). However, it is possible to estimate the epidermal length in Photoshop by repeated measures of small straight lines. Go to Image → Analysis → Ruler Tool and open Window → Measurement Log to outline repeated lengths. After each outline, press Record Measurements. The repeated measures of the small straight lines can be added to estimate the total epidermal length.
2.3.3. Adobe Photoshop: Threshold Classification
- Next, the stained cell area is calculated. Open the .tif file.
- Select → Color Range and hold Shift to select multiple colors of target cells. Click Ok.
- Select → Modify → Expand and expand the selected regions by 2 to 3 pixels to make the selection more coherent.
- Create a new layer. Layer → New → Layer (Shift + Ctrl + N). Name the new layer “total cell area”.
- Edit → Fill (Shift + F5) and choose the brown color.
- Manually erase obvious misclassifications of stained cells.
- Make two duplicates of the layer “total cell area” and name the two new layers “epidermal cell area” and “dermal cell area”.
- Select the “dermis” layer and click Select → Color Range to select the color of dermis. Click Ok.
- Select the “dermal cell area” layer and right-click on the selection and press Select Inverse and press Delete. Now, all cells in the dermal region of interest remain.
- Repeat steps 8 and 9 but replace “dermis” with “epidermis”.
- For both the dermal and epidermal layer independently: Select → Color Range and click on the brown color. Use the right-side panel to select Histogram → Select Expanded View → and click Uncaged Refresh (refresh symbol on the right side). Now, the number of pixels of the selection can be shown (epidermal cell area for the “epidermal cell area” layer and “dermal cell area” layer) (Figure 2E,F).
2.3.4. Adobe Photoshop: Cell Counting
- Sometimes, the circularity and number of cells makes it very easy to count instead of measuring cell area. However, in cases with many cells, it might be time-consuming.
- Click on Image → Analysis → Count Tool.
- Click on individual cells in the epidermis and dermis ROIs to count.
2.3.5. QuPath: Cell Counting
- In the top pane, select Tools → Points to count individual cells.
- Randomizer.org can be used if counting from randomly selected grids inside ROIs is needed.
- In the top pane, press Show Grid.
2.3.6. QuPath: Create Training Annotations
- Drag and drop the .ndpi files into the project window.
- First, a classification application needs to be trained to aid in the classification of stained cells.
- Click Classify → Training images → Create region annotations → Width 100, Height 100, size units µm. Set Classification Region* → and press Create region.
- Place training regions with representative areas with cells that should be classified and areas that should be excluded from the classification (Figure 3A).
- Click Classify → Training images → Create training image. Select classification Region* and leave everything else untouched. This will create a new sparsed image combining all training images (Figure 3B).
- Manually outline each cell staining of interest on the sparsed images and click Set class → Positive (or manually create a new class) and representative areas that should not be included (Set class → Negative) (Figure 3C).
- Go to Classify → Pixel classification → Train pixel classifier (Ctrl + shift + P).
- Use classifier: Artificial neural network (ANN_MLP), resolution very high (0.91 µm/px), and leave everything else as default.
- Press live prediction (Figure 3D).
- Classification is an iterative process and might require adjustments; however, once satisfied with the classification, insert the classifier name and press Save.
2.3.7. QuPath: Regions of Interest and Running the Classification Application
- Go to annotations.
- Make a large, irregular pentagon placed with both sides orthogonal to the apical part of the epidermis (Figure 3E).
- Use the tools in the upper bar to manually “paint” the epidermis. NB: The Alt key can be used to quickly erase an area.
- If separate epidermal and dermal area measurements are not warranted, then a precise delineation of the epidermal or dermal compartment is not as important, so long as no visible cells are misclassified in the wrong compartment.
- To create a dermal compartment, first press the epidermal annotation, then go to Objects → Annotations → Expand annotations.
- In the window, input how much the dermal area should encompass. In our example, CD8+ cells are located close to the epidermis, and an area expanding 400 µm below the ventral part of the epidermis selects the vast majority of CD8+ cells in the dermis.
- Press “Remove interior” and press “Run”.
- A new annotation will appear; however, the area to the left, right, and apical part of the epidermis is not needed. Manually de-select this area using Tools → Brush.
- The epidermal length can be made using the Tools → Polyline. Press once and make a line following the apical part of the epidermis inside the pentagon.
- Select Epidermis and Dermis under Annotations and go to Classify → Pixel classification → Load pixel classifier → Choose model → Classifier.
- Under “Region”, choose ”Any annotations” and press “create objects” →. Under “Choose parent object”, select “Current selection” → and new window will appear. Press OK to the default options.
- A new annotation will now be created containing positive cells in the epidermal and dermal segments (Figure 3G,H).
3. Results
3.1. Comparison between Inflammatory Cell Density Normalized to Epidermal Length or Area
3.2. Comparison of Cell Classification Using QuPath with Threshold Classification Using Photoshop
3.3. Effect of Increased Epidermal Thickness on Inflammatory Cell Density
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Emmanuel, T.; Brent, M.B.; Iversen, L.; Johansen, C. Quantification of Immunohistochemically Stained Cells in Skin Biopsies. Dermatopathology 2022, 9, 82-93. https://doi.org/10.3390/dermatopathology9020011
Emmanuel T, Brent MB, Iversen L, Johansen C. Quantification of Immunohistochemically Stained Cells in Skin Biopsies. Dermatopathology. 2022; 9(2):82-93. https://doi.org/10.3390/dermatopathology9020011
Chicago/Turabian StyleEmmanuel, Thomas, Mikkel Bo Brent, Lars Iversen, and Claus Johansen. 2022. "Quantification of Immunohistochemically Stained Cells in Skin Biopsies" Dermatopathology 9, no. 2: 82-93. https://doi.org/10.3390/dermatopathology9020011
APA StyleEmmanuel, T., Brent, M. B., Iversen, L., & Johansen, C. (2022). Quantification of Immunohistochemically Stained Cells in Skin Biopsies. Dermatopathology, 9(2), 82-93. https://doi.org/10.3390/dermatopathology9020011