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Hybrid Deep Reinforced Regression Framework for Cardio-Thoracic Ratio Measurement

机译:用于心胸比率测量的混合深度强化回归框架

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Quantitative measurements obtained from medical images guide clinicians in several use cases but manually obtaining such measurements are both laborious and subject to inter-observer variations. We develop a hybrid deep reinforced regression framework to robustly measure the Cardio-Thoracic ratio (CTR) from Chest X-ray (CXR) images, thereby directly identifying the presence of Cardiomegaly. The proposed hybrid framework initially employs a CNN based Regressor on pre-processed images to obtain approximate critical points. As the actual critical points are based on human expert’s experience and subject to labeling uncertainties, a deep reinforcement learning (deep RL) approach is specifically designed to fine-tune estimated regression points from the CNN Regressor. The final regressed points are then used to measure CTR. Wingspan and ChestX-ray8 datasets are used for validating the proposed framework. The proposed framework shows generalization ability on ChestX-ray8 and outperforms the state-of-the-art results on Wingspan.
机译:从医学图像获得的定量测量值可在几个用例中为临床医生提供指导,但手动获得此类测量值既费力又容易受到观察者之间的影响。我们开发了一种混合型深层强化回归框架,可以从胸部X射线(CXR)图像中稳健地测量心胸比(CTR),从而直接确定存在心脏肥大。提出的混合框架最初在预处理的图像上使用基于CNN的回归器以获得近似临界点。由于实际的临界点是基于人类专家的经验并受到标签不确定性的影响,因此专门设计了深度强化学习(deep RL)方法来微调CNN回归器的估计回归点。然后,将最终的回归点用于测量点击率。 Wingspan和ChestX-ray8数据集用于验证提出的框架。拟议的框架显示了对ChestX-ray8的泛化能力,并且胜过了Wingspan上的最新结果。

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