Image Analysis can be a powerful tool for researchers using digital pathology. We offer some top tips to consider when choosing your solution.
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1. Consider Your Use Case
What applications do you want to use image analysis for? Consider your biomarkers, tissue types, and goals. Some examples include:- Brightfield or fluorescence.
- Immunohistochemistry.
- In situ hybridization.
- Tumor / histology pattern recognition.
2. Look for Flexible Analysis Options
Researchers frequently work with a changing array of biomarkers, tissues, and disease states. While there are technical limitations to image analysis, your tools should be flexible enough to meet a variety of needs.- Will the algorithm analyze images in the file formats you use, or is it locked to a vendor-specific format?
- Can you customize the analysis algorithms for different stains, markers or tissues?
- Can custom algorithm parameters be saved and easily re-run as needed?
- Will the algorithm analyze whole slide images and / or regions of interest?
- Can you define your own scoring categories for the output data?
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