ELRL-MD:一种利用心脏磁共振图像进行心肌炎诊断的深度学习方法,集成了集合学习和强化学习。

IF 2.3 4区 医学 Q3 BIOPHYSICS
Adele Mirzaee Moghaddam Kasmaee, Alireza Ataei, Seyed Vahid Moravvej, Roohallah Alizadehsani, Juan M Gorriz, Yu-Dong Zhang, Ru-San Tan, U Rajendra Acharya
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引用次数: 0

摘要

目的:心肌炎对健康构成重大威胁,通常由冠状病毒病(COVID-19)等病毒感染引起,可导致致命的心脏并发症。心内膜心肌活检是一种侵入性较小的标准诊断方法,但侵入性很高,因此仅限于严重病例,而心脏磁共振(CMR)成像为检测心肌异常提供了一种前景广阔的解决方案:本研究介绍了一种名为 ELRL-MD 的深度模型,该模型结合了集合学习和强化学习 (RL),可通过 CMR 图像有效诊断心肌炎。该模型首先通过人工蜂群(ABC)算法进行预训练,以提高学习起点。然后,一个卷积神经网络(CNN)阵列协同工作,从 CMR 图像中提取并整合特征,以进行准确诊断。该模型利用 Z-Alizadeh Sani 心肌炎 CMR 数据集,将诊断概念化为一个决策过程,从而利用 RL 解决数据集的不平衡问题:ELRL-DM显示出了非凡的功效,超越了其他深度学习、传统机器学习和迁移学习模型,达到了88.2%的F-measure和90.6%的几何平均。广泛的实验帮助确定了最佳奖励函数设置和完美的 CNN 数量:这项研究解决了 CMR 成像数据集固有的数据不平衡这一主要技术难题,以及由于初始权重设置不理想导致模型收敛于局部最优的风险。在剔除 ABC 和 RL 组件后进行的进一步分析证实了它们对模型整体性能的贡献,从而强调了解决这些关键技术挑战的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ELRL-MD: a deep learning approach for myocarditis diagnosis using cardiac magnetic resonance images with ensemble and reinforcement learning integration.

Objective.Myocarditis poses a significant health risk, often precipitated by viral infections like coronavirus disease, and can lead to fatal cardiac complications. As a less invasive alternative to the standard diagnostic practice of endomyocardial biopsy, which is highly invasive and thus limited to severe cases, cardiac magnetic resonance (CMR) imaging offers a promising solution for detecting myocardial abnormalities.Approach.This study introduces a deep model called ELRL-MD that combines ensemble learning and reinforcement learning (RL) for effective myocarditis diagnosis from CMR images. The model begins with pre-training via the artificial bee colony (ABC) algorithm to enhance the starting point for learning. An array of convolutional neural networks (CNNs) then works in concert to extract and integrate features from CMR images for accurate diagnosis. Leveraging the Z-Alizadeh Sani myocarditis CMR dataset, the model employs RL to navigate the dataset's imbalance by conceptualizing diagnosis as a decision-making process.Main results.ELRL-DM demonstrates remarkable efficacy, surpassing other deep learning, conventional machine learning, and transfer learning models, achieving an F-measure of 88.2% and a geometric mean of 90.6%. Extensive experimentation helped pinpoint the optimal reward function settings and the perfect count of CNNs.Significance.The study addresses the primary technical challenge of inherent data imbalance in CMR imaging datasets and the risk of models converging on local optima due to suboptimal initial weight settings. Further analysis, leaving out ABC and RL components, confirmed their contributions to the model's overall performance, underscoring the effectiveness of addressing these critical technical challenges.

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来源期刊
Physiological measurement
Physiological measurement 生物-工程:生物医学
CiteScore
5.50
自引率
9.40%
发文量
124
审稿时长
3 months
期刊介绍: Physiological Measurement publishes papers about the quantitative assessment and visualization of physiological function in clinical research and practice, with an emphasis on the development of new methods of measurement and their validation. Papers are published on topics including: applied physiology in illness and health electrical bioimpedance, optical and acoustic measurement techniques advanced methods of time series and other data analysis biomedical and clinical engineering in-patient and ambulatory monitoring point-of-care technologies novel clinical measurements of cardiovascular, neurological, and musculoskeletal systems. measurements in molecular, cellular and organ physiology and electrophysiology physiological modeling and simulation novel biomedical sensors, instruments, devices and systems measurement standards and guidelines.
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