A Segmentation Method for fluorescence images without a machine learning approach
Giuseppe Giacopelli, Michele Migliore, Domenico Tegolo

TL;DR
This paper introduces a deterministic, non-machine learning segmentation method for fluorescence images, demonstrating robustness and accuracy comparable to ML approaches across different datasets and noise conditions.
Contribution
The study presents a novel, formally correct, deterministic segmentation algorithm that does not rely on machine learning, ensuring robustness and generalizability in fluorescence image analysis.
Findings
Method is robust against parameter variability
Validated on two datasets with expert annotations
Achieves performance comparable to ML methods
Abstract
Background: Image analysis applications in digital pathology include various methods for segmenting regions of interest. Their identification is one of the most complex steps, and therefore of great interest for the study of robust methods that do not necessarily rely on a machine learning (ML) approach. Method: A fully automatic and optimized segmentation process for different datasets is a prerequisite for classifying and diagnosing Indirect ImmunoFluorescence (IIF) raw data. This study describes a deterministic computational neuroscience approach for identifying cells and nuclei. It is far from the conventional neural network approach, but it is equivalent to their quantitative and qualitative performance, and it is also solid to adversative noise. The method is robust, based on formally correct functions, and does not suffer from tuning on specific data sets. Results: This work…
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Taxonomy
TopicsCell Image Analysis Techniques
