Deep Learning-based Framework for Segmentation and Motion Tracking of Left Ventricle in 3D Echocardiography

基于深度学习的 3D 超声心动图左心室分割和运动跟踪框架

基本信息

  • 批准号:
    10231860
  • 负责人:
  • 金额:
    $ 3.09万
  • 依托单位:
  • 依托单位国家:
    美国
  • 项目类别:
  • 财政年份:
    2021
  • 资助国家:
    美国
  • 起止时间:
    2021-07-01 至 2024-06-30
  • 项目状态:
    已结题

项目摘要

PROJECT SUMMARY/ABSTRACT Coronary artery disease remains the leading cause of death around the world. Acute myocardial infarction (MI) causes regional dysfunction which places remote areas of the heart at a mechanical disadvantage resulting in long term adverse left ventricular (LV) remodeling and complicated congestive heart failure (CHF). Stress echocardiography is currently the clinically established, cost-effective 2D imaging technique for detecting and characterizing myocardial injury by imaging the left ventricle at rest and after either exercise or pharmacologically-induced stress to reveal ischemia and/or infarct. However, the inherent limitations of a 2D echocardiography make it difficult to characterize the whole 3D volume of ischemic/infarct zone, and the qualitative assessment of wall-motion abnormality to characterize myocardial deformation leads to variability among experts. Although 3D echocardiography has potential to address the limitations of 2D imaging, it is not widely accepted in standard clinical use due to the low signal-to-noise ratio (SNR). With the recent advancements in deep learning algorithms, many segmentation and registration tasks have achieved near expert level accuracy. Also, previous works have shown the utility of strain analysis as a way to quantify the degree of wall-motion abnormality in cardiac imaging modalities. Still, many of the current deep learning frameworks focus largely on intensity-based features which are still difficult to train on 3D echocardiography datasets, which in turn leads to poor strain analysis. Thus, in this fellowship, I propose to develop novel data-driven neural network models specifically tailored to 3D echocardiography to improve segmentation and motion tracking of left ventricle in order to achieve full 3D cardiac strain analysis. My first aim is to develop a multi-frame attention-based neural network to exploit the spatiotemporal features of the echocardiography dataset to improve 3D segmentation of left ventricle. This method will take advantage of the inter-frame spatiotemporal features to augment the relevant feature extractions for segmentation. My second aim is to develop a registration neural network in 3D echocardiography by combining intensity-based features and surface-curvature bending energy to improve the motion tracking of left ventricle. This neural network will build upon the accurate segmentations from the first aim to include unique curvature energy features at the boundaries to enhance tracking accuracy at all areas of the myocardium. The improved motion tracking will be used to calculate strain for detection of full 3D ischemic/infarct zones. In summary, this research will provide an objective, quantitative tools for characterizing wall-motion abnormality with strain analysis in 3D echocardiography.
项目总结/文摘

项目成果

期刊论文数量(0)
专著数量(0)
科研奖励数量(0)
会议论文数量(0)
专利数量(0)

数据更新时间:{{ journalArticles.updateTime }}

{{ item.title }}
{{ item.translation_title }}
  • DOI:
    {{ item.doi }}
  • 发表时间:
    {{ item.publish_year }}
  • 期刊:
  • 影响因子:
    {{ item.factor }}
  • 作者:
    {{ item.authors }}
  • 通讯作者:
    {{ item.author }}

数据更新时间:{{ journalArticles.updateTime }}

{{ item.title }}
  • 作者:
    {{ item.author }}

数据更新时间:{{ monograph.updateTime }}

{{ item.title }}
  • 作者:
    {{ item.author }}

数据更新时间:{{ sciAawards.updateTime }}

{{ item.title }}
  • 作者:
    {{ item.author }}

数据更新时间:{{ conferencePapers.updateTime }}

{{ item.title }}
  • 作者:
    {{ item.author }}

数据更新时间:{{ patent.updateTime }}

Shawn Ahn其他文献

Shawn Ahn的其他文献

{{ item.title }}
{{ item.translation_title }}
  • DOI:
    {{ item.doi }}
  • 发表时间:
    {{ item.publish_year }}
  • 期刊:
  • 影响因子:
    {{ item.factor }}
  • 作者:
    {{ item.authors }}
  • 通讯作者:
    {{ item.author }}

{{ truncateString('Shawn Ahn', 18)}}的其他基金

Deep Learning-based Framework for Segmentation and Motion Tracking of Left Ventricle in 3D Echocardiography
基于深度学习的 3D 超声心动图左心室分割和运动跟踪框架
  • 批准号:
    10666687
  • 财政年份:
    2021
  • 资助金额:
    $ 3.09万
  • 项目类别:
Deep Learning-based Framework for Segmentation and Motion Tracking of Left Ventricle in 3D Echocardiography
基于深度学习的 3D 超声心动图左心室分割和运动跟踪框架
  • 批准号:
    10563111
  • 财政年份:
    2021
  • 资助金额:
    $ 3.09万
  • 项目类别:

相似国自然基金

Scalable Learning and Optimization: High-dimensional Models and Online Decision-Making Strategies for Big Data Analysis
  • 批准号:
  • 批准年份:
    2024
  • 资助金额:
    万元
  • 项目类别:
    合作创新研究团队
Understanding structural evolution of galaxies with machine learning
  • 批准号:
  • 批准年份:
    2022
  • 资助金额:
    10.0 万元
  • 项目类别:
    省市级项目
煤矿安全人机混合群智感知任务的约束动态多目标Q-learning进化分配
  • 批准号:
  • 批准年份:
    2022
  • 资助金额:
    30 万元
  • 项目类别:
    青年科学基金项目
基于领弹失效考量的智能弹药编队短时在线Q-learning协同控制机理
  • 批准号:
    62003314
  • 批准年份:
    2020
  • 资助金额:
    24.0 万元
  • 项目类别:
    青年科学基金项目
集成上下文张量分解的e-learning资源推荐方法研究
  • 批准号:
    61902016
  • 批准年份:
    2019
  • 资助金额:
    24.0 万元
  • 项目类别:
    青年科学基金项目
具有时序迁移能力的Spiking-Transfer learning (脉冲-迁移学习)方法研究
  • 批准号:
    61806040
  • 批准年份:
    2018
  • 资助金额:
    20.0 万元
  • 项目类别:
    青年科学基金项目
基于Deep-learning的三江源区冰川监测动态识别技术研究
  • 批准号:
    51769027
  • 批准年份:
    2017
  • 资助金额:
    38.0 万元
  • 项目类别:
    地区科学基金项目
具有时序处理能力的Spiking-Deep Learning(脉冲深度学习)方法研究
  • 批准号:
    61573081
  • 批准年份:
    2015
  • 资助金额:
    64.0 万元
  • 项目类别:
    面上项目
基于有向超图的大型个性化e-learning学习过程模型的自动生成与优化
  • 批准号:
    61572533
  • 批准年份:
    2015
  • 资助金额:
    66.0 万元
  • 项目类别:
    面上项目
E-Learning中学习者情感补偿方法的研究
  • 批准号:
    61402392
  • 批准年份:
    2014
  • 资助金额:
    26.0 万元
  • 项目类别:
    青年科学基金项目

相似海外基金

CRII: OAC: A Compressor-Assisted Collective Communication Framework for GPU-Based Large-Scale Deep Learning
CRII:OAC:基于 GPU 的大规模深度学习的压缩器辅助集体通信框架
  • 批准号:
    2348465
  • 财政年份:
    2024
  • 资助金额:
    $ 3.09万
  • 项目类别:
    Standard Grant
SHF: Small: Hardware-Software Co-design for Privacy Protection on Deep Learning-based Recommendation Systems
SHF:小型:基于深度学习的推荐系统的隐私保护软硬件协同设计
  • 批准号:
    2334628
  • 财政年份:
    2024
  • 资助金额:
    $ 3.09万
  • 项目类别:
    Standard Grant
DeepMARA - Deep Reinforcement Learning based Massive Random Access Toward Massive Machine-to-Machine Communications
DeepMARA - 基于深度强化学习的大规模随机访问实现大规模机器对机器通信
  • 批准号:
    EP/Y028252/1
  • 财政年份:
    2024
  • 资助金额:
    $ 3.09万
  • 项目类别:
    Fellowship
Co-creation between content-generating AI and humans based on deep learning
基于深度学习的内容生成人工智能与人类的共同创造
  • 批准号:
    23K04201
  • 财政年份:
    2023
  • 资助金额:
    $ 3.09万
  • 项目类别:
    Grant-in-Aid for Scientific Research (C)
Security Evaluation Method Against Deep-Learning-Based Side-Channel Attacks Exploiting Physical Behavior of Cryptographic Hardware
针对利用密码硬件物理行为的基于深度学习的侧信道攻击的安全评估方法
  • 批准号:
    23K11102
  • 财政年份:
    2023
  • 资助金额:
    $ 3.09万
  • 项目类别:
    Grant-in-Aid for Scientific Research (C)
TruDetect: Trustworthy Deep-Learning based Hardware Trojan Detection
TruDetect:值得信赖的基于深度学习的硬件木马检测
  • 批准号:
    EP/X036960/1
  • 财政年份:
    2023
  • 资助金额:
    $ 3.09万
  • 项目类别:
    Research Grant
Optimization-based Implicit Deep Learning, Theory and Applications
基于优化的隐式深度学习、理论与应用
  • 批准号:
    2309810
  • 财政年份:
    2023
  • 资助金额:
    $ 3.09万
  • 项目类别:
    Continuing Grant
Spatial Calibration of Head-Mounted Displays Based on Implicit Function Representation of Light Fields Using Deep Learning
基于深度学习光场隐式函数表示的头戴式显示器空间校准
  • 批准号:
    23K16920
  • 财政年份:
    2023
  • 资助金额:
    $ 3.09万
  • 项目类别:
    Grant-in-Aid for Early-Career Scientists
Deep learning-based prediction model for intraoperative neuromuscular blockade
基于深度学习的术中神经肌肉阻滞预测模型
  • 批准号:
    23K14406
  • 财政年份:
    2023
  • 资助金额:
    $ 3.09万
  • 项目类别:
    Grant-in-Aid for Early-Career Scientists
Linking endotype and phenotype to understand COPD heterogeneity via deep learning and network science
通过深度学习和网络科学将内型和表型联系起来以了解 COPD 异质性
  • 批准号:
    10569732
  • 财政年份:
    2023
  • 资助金额:
    $ 3.09万
  • 项目类别:
{{ showInfoDetail.title }}

作者:{{ showInfoDetail.author }}

知道了