Computational Pathology for Brain Disorders
- URL: http://arxiv.org/abs/2301.07030v1
- Date: Fri, 13 Jan 2023 14:09:02 GMT
- Title: Computational Pathology for Brain Disorders
- Authors: Gabriel Jimenez and Daniel Racoceanu
- Abstract summary: This chapter focuses on understanding the state-of-the-art machine learning techniques used to analyze whole slide images within the context of brain disorders.
We present a selective set of remarkable machine learning algorithms providing discriminative approaches and quality results on brain disorders.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Non-invasive brain imaging techniques allow understanding the behavior and
macro changes in the brain to determine the progress of a disease. However,
computational pathology provides a deeper understanding of brain disorders at
cellular level, able to consolidate a diagnosis and make the bridge between the
medical image and the omics analysis. In traditional histopathology, histology
slides are visually inspected, under the microscope, by trained pathologists.
This process is time-consuming and labor-intensive; therefore, the emergence of
Computational Pathology has triggered great hope to ease this tedious task and
make it more robust. This chapter focuses on understanding the state-of-the-art
machine learning techniques used to analyze whole slide images within the
context of brain disorders. We present a selective set of remarkable machine
learning algorithms providing discriminative approaches and quality results on
brain disorders. These methodologies are applied to different tasks, such as
monitoring mechanisms contributing to disease progression and patient survival
rates, analyzing morphological phenotypes for classification and quantitative
assessment of disease, improving clinical care, diagnosing tumor specimens, and
intraoperative interpretation. Thanks to the recent progress in machine
learning algorithms for high-content image processing, computational pathology
marks the rise of a new generation of medical discoveries and clinical
protocols, including in brain disorders.
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