| Literature DB >> 33436919 |
Satoshi Miyamoto1,2, Zu Soh3, Shigeyuki Okahara4, Akira Furui3, Taiichi Takasaki5, Keijiro Katayama5, Shinya Takahashi5, Toshio Tsuji6.
Abstract
The need for the estimation of the number of microbubbles (MBs) in cardiopulmonary bypass surgery has been recognized among surgeons to avoid postoperative neurological complications. MBs that exceed the diameter of human capillaries may cause endothelial disruption as well as microvascular obstructions that block posterior capillary blood flow. In this paper, we analyzed the relationship between the number of microbubbles generated and four circulation factors, i.e., intraoperative suction flow rate, venous reservoir level, continuous blood viscosity and perfusion flow rate in cardiopulmonary bypass, and proposed a neural-networked model to estimate the number of microbubbles with the factors. Model parameters were determined in a machine-learning manner using experimental data with bovine blood as the perfusate. The estimation accuracy of the model, assessed by tenfold cross-validation, demonstrated that the number of MBs can be estimated with a determinant coefficient R2 = 0.9328 (p < 0.001). A significant increase in the residual error was found when each of four factors was excluded from the contributory variables. The study demonstrated the importance of four circulation factors in the prediction of the number of MBs and its capacity to eliminate potential postsurgical complication risks.Entities:
Year: 2021 PMID: 33436919 PMCID: PMC7804121 DOI: 10.1038/s41598-020-80810-3
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379