A comprehensive approach to prediction of fractional flow reserve from deep-learning-augmented model

被引:2
|
作者
Liu, Jincheng [1 ]
Li, Bao [1 ]
Yang, Yang [1 ]
Huang, Suqin [1 ]
Sun, Hao [1 ]
Liu, Jian [2 ]
Liu, Youjun [1 ,3 ]
机构
[1] Beijing Univ Technol, Coll Chem & Life Sci, Dept Biomed Engn, Beijing, Peoples R China
[2] Peking Univ Peoples Hosp, Cardiovasc Dept, Beijing, Peoples R China
[3] Beijing Univ Technol, Coll Chem & Life Sci, Dept Biomed Engn, Beijing 100124, Peoples R China
基金
北京市自然科学基金; 中国国家自然科学基金;
关键词
Coronary artery disease; Computational FFR; Deep learning; Cascade neural networks; COMPUTED-TOMOGRAPHY ANGIOGRAPHY; CORONARY-ARTERY-DISEASE; BLOOD-FLOW; CT ANGIOGRAPHY; PRESSURE; MACHINE; QUANTIFICATION; MORPHOMETRY; SEVERITY; DYNAMICS;
D O I
10.1016/j.compbiomed.2024.107967
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
The underuse of invasive fractional flow reserve (FFR) in clinical practice has motivated research towards noninvasive prediction of FFR. Although the non-invasive derivation of FFR (FFRCT) using computational fluid dynamics (CFD) principles has become a common practice, its clinical application has been limited due to the considerable time required for computation of resulting changes in haemodynamic conditions. An alternative to CFD technology is incorporating a neural network into the computational process to reduce the time necessary for running an effective model. In this study we propose a cascade of data -driven and physic -based neural networks (DP -NN) for predicting FFR (DL-FFRCT). The first network of cascade network DP -NN includes geometric features, and the second network includes physical features. We compare the differences between data -driven neural network (D -NN) and DP -NN for predicting FFR. The training and testing datasets were obtained by solving the three-dimensional incompressible Navier-Stokes equations. Coronary flow and geometric features were used as inputs to train D NN. In DP -NN the training process involves first training a D -NN to output resting Delta P as one input feature to the DP -NN. Secondly, the physics -based microcirculatory resistance as another input feature to the DP -NN. Using clinically measured FFR as the "gold standard", we validated the computational accuracy of DL-FFRCT in 77 patients. Compared to D -NN, DP -NN improved the prediction of Delta P (R2 = 0.87 vs. R2 = 0.92). Statistical analysis demonstrated that the diagnostic accuracy of DL-FFRCT was not inferior to FFRCT (85.71 % vs. 88.3 %) and the computational time was reduced by a factor of approximately 3000 (4.26 s vs. 3.5 h). DP -NN represents a near real-time, interpretable, and highly accurate deep -learning network, which contributes to the development of high-performance computational methods for haemodynamics. We anticipate that DP -NN will enable near real-time prediction of DL-FFRCT in personalized narrow blood vessels and provide guidance for cardiovascular disease treatments.
引用
收藏
页数:13
相关论文
共 50 条
  • [21] Machine-learning-based prediction of fractional flow reserve after percutaneous coronary intervention
    Hamaya, Rikuta
    Goto, Shinichi
    Hwang, Doyeon
    Zhang, Jinlong
    Yang, Seokhun
    Lee, Joo Myung
    Hoshino, Masahiro
    Nam, Chang-Wook
    Shin, Eun-Seok
    Doh, Joon-Hyung
    Chen, Shao-Liang
    Toth, Gabor G.
    Piroth, Zsolt
    Hakeem, Abdul
    Uretsky, Barry F.
    Hokama, Yohei
    Tanaka, Nobuhiro
    Lim, Hong-Seok
    Ito, Tsuyoshi
    Matsuo, Akiko
    Azzalini, Lorenzo
    Leesar, Massoud A.
    Collet, Carlos
    Koo, Bon-Kwon
    De Bruyne, Bernard
    Kakuta, Tsunekazu
    ATHEROSCLEROSIS, 2023, 383
  • [22] A Comprehensive Review and Application of Interpretable Deep Learning Model for ADR Prediction
    Dubey, Shiksha Alok
    Pandit, Anala A.
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2022, 13 (09) : 204 - 213
  • [23] Deep learning model for traffic flow prediction in wireless network
    Kavitha, A. K.
    Praveena, S. Mary
    AUTOMATIKA, 2023, 64 (04) : 848 - 857
  • [24] Deep Learning Based a New Passenger Flow Prediction Model
    Utku, Anil
    Kayapinar Kaya, Sema
    SSRN, 2021,
  • [25] MTGCN: A Multitask Deep Learning Model for Traffic Flow Prediction
    Wang, Fucheng
    Xu, Jiajie
    Liu, Chengfei
    Zhou, Rui
    Zhao, Pengpeng
    DATABASE SYSTEMS FOR ADVANCED APPLICATIONS (DASFAA 2020), PT I, 2020, 12112 : 435 - 451
  • [26] Validation of a Prediction Model From Quantitative Coronary Angiography to Detect Ischaemic Lesions as Evaluated by Invasive Fractional Flow Reserve
    Yang, Shuai
    Leng, Shuang
    Fam, Jiang Ming
    Low, Adrian Fatt Hoe
    Tan, Ru-San
    Chai, Ping
    Teo, Lynette
    Chin, Chee Yang
    Allen, John C.
    Chan, Mark Yan-Yee
    Yeo, Khung Keong
    Wong, Aaron Sung Lung
    Wu, Qinghua
    Lim, Soo Teik
    Zhong, Liang
    HEART LUNG AND CIRCULATION, 2025, 34 (02): : 125 - 134
  • [27] Clinical prediction models of fractional flow reserve: an exploration of the current evidence and appraisal of model performance
    Zuo, Wenjie
    Zhang, Rui
    Yang, Mingming
    Ji, Zhenjun
    He, Yanru
    Su, Yamin
    Qu, Yangyang
    Tao, Zaixiao
    Ma, Genshan
    QUANTITATIVE IMAGING IN MEDICINE AND SURGERY, 2021, 11 (06) : 2642 - 2657
  • [28] An Outflow Boundary Condition Model for Noninvasive Prediction of Fractional Flow Reserve in Diseased Coronary Arteries
    Fayssal, Iyad A.
    Moukalled, Fadl
    Alam, Samir
    Isma'eel, Hussain
    JOURNAL OF BIOMECHANICAL ENGINEERING-TRANSACTIONS OF THE ASME, 2018, 140 (04):
  • [29] Machine Learning and Deep Neural Networks Applications in Coronary Flow Assessment The Case of Computed Tomography Fractional Flow Reserve
    Tesche, Christian
    Gray, Hunter N.
    JOURNAL OF THORACIC IMAGING, 2020, 35 : S66 - S71
  • [30] Fractional Flow Reserve: From Homeland to Colony
    Fan Guo-Xin
    Luo Jia-Chen
    Zhou Zhi
    Wang Yue-Ye
    Wang Ji-Kun
    中华医学杂志英文版, 2016, 129 (01) : 101 - 104