| Literature DB >> 34157469 |
Amir Mohammad Naderi1, Haisong Bu2, Jingcheng Su1, Mao-Hsiang Huang3, Khuong Vo4, Ramses Seferino Trigo Torres5, J-C Chiao6, Juhyun Lee7, Michael P H Lau8, Xiaolei Xu2, Hung Cao9.
Abstract
Zebrafish is a powerful and widely-used model system for a host of biological investigations, including cardiovascular studies and genetic screening. Zebrafish are readily assessable during developmental stages; however, the current methods for quantifying and monitoring cardiac functions mainly involve tedious manual work and inconsistent estimations. In this paper, we developed and validated a Zebrafish Automatic Cardiovascular Assessment Framework (ZACAF) based on a U-net deep learning model for automated assessment of cardiovascular indices, such as ejection fraction (EF) and fractional shortening (FS) from microscopic videos of wildtype and cardiomyopathy mutant zebrafish embryos. Our approach yielded favorable performance with accuracy above 90% compared with manual processing. We used only black and white regular microscopic recordings with frame rates of 5-20 frames per second (fps); thus, the framework could be widely applicable with any laboratory resources and infrastructure. Most importantly, the automatic feature holds promise to enable efficient, consistent, and reliable processing and analysis capacity for large amounts of videos, which can be generated by diverse collaborating teams.Entities:
Keywords: Cardiomyopathy; Deep learning; Ejection fraction; Heart disease; Zebrafish
Mesh:
Year: 2021 PMID: 34157469 PMCID: PMC8919966 DOI: 10.1016/j.compbiomed.2021.104565
Source DB: PubMed Journal: Comput Biol Med ISSN: 0010-4825 Impact factor: 4.589