胸部x线影像预测心脏肥大技术的研究进展

Dina Ahmed, Enas Hamood Al Saadi
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引用次数: 0

摘要

心脏肥大是一种以心脏增大为特征的疾病,它可以表明各种潜在的健康问题。这种情况的早期诊断减少了患者的影响。本文给出了疾病的全面概述,它的分类,算法和方法,强调在这个领域遇到的挑战。诊断心脏肿大的传统方法依赖于超声心动图或胸部x光等医学成像技术,这些技术可能很耗时,并且需要专门的专业知识来解释。然而,深度学习算法的最新进展显示出了从医学图像中准确识别心脏肥大及其潜在原因的希望。在心脏肥大的诊断中使用深度学习算法有可能提高诊断的速度和准确性,从而改善患者的治疗效果,并更有效地利用医疗资源。此外,深度学习算法可以潜在地识别心脏大小随时间的细微变化,从而可以更早地发现和治疗心脏肥大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Survey On Techniques For Cardiomegaly Prediction By Chest X-ray Images
Cardiomegaly is a condition characterized by an enlarged heart, which can be indicative of various underlying health issues. Early diagnosis of this condition lessens the patient's repercussions. The paper gives a thorough overview of the disease, its classifications, algorithms, and methods employed emphasizing the challenges encountered in this field. Traditional methods of diagnosing cardiomegaly rely on medical imaging techniques such as echocardiography or chest X-rays, which can be time-consuming and require specialized expertise to interpret. However, recent advances in deep learning algorithms have shown promise in accurately identifying cardiomegaly and its underlying causes from medical images. The use of deep learning algorithms in the diagnosis of cardiomegaly has the potential to improve both the speed and accuracy of diagnosis, leading to better patient outcomes and more efficient use of healthcare resources. Moreover, deep learning algorithms can potentially identify subtle changes in heart size over time, allowing for earlier detection and treatment of cardiomegaly.
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