Microscopy Image Dataset for Deep Learning-Based Quantitative Assessment of Pulmonary Vascular Changes.
Aleksandr M SinitcaAsya I LyanovaDmitrii I KaplunHassan HassanAlexander S KrasichkovKseniia E SanarovaLeonid A ShilenkoElizaveta E SidorovaAnna A AkhmetovaDariya D VaulinaAndrei A KarpovPublished in: Scientific data (2024)
Pulmonary hypertension (PH) is a syndrome complex that accompanies a number of diseases of different etiologies, associated with basic mechanisms of structural and functional changes of the pulmonary circulation vessels and revealed pressure increasing in the pulmonary artery. The structural changes in the pulmonary circulation vessels are the main limiting factor determining the prognosis of patients with PH. Thickening and irreversible deposition of collagen in the pulmonary artery branches walls leads to rapid disease progression and a therapy effectiveness decreasing. In this regard, histological examination of the pulmonary circulation vessels is critical both in preclinical studies and clinical practice. However, measurements of quantitative parameters such as the average vessel outer diameter, the vessel walls area, and the hypertrophy index claimed significant time investment and the requirement for specialist training to analyze micrographs. A dataset of pulmonary circulation vessels for pathology assessment using semantic segmentation techniques based on deep-learning is presented in this work. 609 original microphotographs of vessels, numerical data from experts' measurements, and microphotographs with outlines of these measurements for each of the vessels are presented. Furthermore, here we cite an example of a deep learning pipeline using the U-Net semantic segmentation model to extract vascular regions. The presented database will be useful for the development of new software solutions for the analysis of histological micrograph.
Keyphrases
- pulmonary hypertension
- pulmonary artery
- deep learning
- pulmonary arterial hypertension
- convolutional neural network
- artificial intelligence
- coronary artery
- clinical practice
- machine learning
- randomized controlled trial
- systematic review
- high resolution
- stem cells
- oxidative stress
- high speed
- electronic health record
- quantum dots
- data analysis
- case control
- high throughput
- anti inflammatory
- case report