Show simple item record

contributor authorZhang, Yifan
contributor authorWei, Zhenglun Alan
date accessioned2025-08-20T09:25:09Z
date available2025-08-20T09:25:09Z
date copyright4/28/2025 12:00:00 AM
date issued2025
identifier issn0098-2202
identifier otherfe_147_10_101501.pdf
identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4308246
description abstractThe Fontan procedure, essential for newborns with single-ventricle malformations, establishes a total cavopulmonary connection (TCPC). Understanding TCPC hemodynamics is critical for evaluating surgical outcomes. However, the intricate flow collisions within TCPC present a significant challenge. While computational fluid dynamics (CFD) offers insight into these mechanics, its computational inefficiency limits clinical application. Machine learning (ML) shows promise in overcoming this limitation. This study develops an ML framework to analyze TCPC hemodynamics. The ML models are trained to predict the relationship between TCPC flow parameters and two hemodynamic metrics: power loss (PL) and hepatic flow distribution (HFD). Four ML algorithms—random forest (RF), support vector regression (SVR), extreme gradient boosting (XGBoost), and artificial neural networks (ANNs)—are evaluated for their performance using a training dataset of 7056 CFD simulations. All ML models demonstrate strong correlations with CFD results (R2 = 0.95). Notably, the ANN model slightly outperforms others in predicting HFD (R2 = 0.98), while both ANN and XGBoost models achieve similar accuracy in predicting PL (R2 = 0.99). Additionally, the study investigates the feasibility of training an ANN model with a reduced dataset of 968 samples, which can still successfully capture the relationship between flow parameters and TCPC hemodynamics. This study underscores the potential of ML-enabled models to enhance the efficiency of hemodynamic assessments in TCPC with flow collision scenarios. Given that flow collision phenomena are common in various physiological systems and engineering contexts, these findings may drive advancements in ML-augmented flow modeling across a broad range of applications.
publisherThe American Society of Mechanical Engineers (ASME)
titleAdvancing Machine Learning-Enhanced Flow Modeling for Collision Phenomena in Total Cavopulmonary Connection
typeJournal Paper
journal volume147
journal issue10
journal titleJournal of Fluids Engineering
identifier doi10.1115/1.4068408
journal fristpage101501-1
journal lastpage101501-8
page8
treeJournal of Fluids Engineering:;2025:;volume( 147 ):;issue: 010
contenttypeFulltext


Files in this item

Thumbnail

This item appears in the following Collection(s)

Show simple item record