Heatmap-Based Active Shape Model for Landmark Detection in Lumbar X-ray Images.

Minho Choi, Jun-Su Jang
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Abstract

Medical staff inspect lumbar X-ray images to diagnose lumbar spine diseases, and the analysis process is currently automated using deep-learning techniques. The detection of landmarks is necessary in the automatic process of localizing the position and identifying the morphological features of the vertebrae. However, detection errors may occur owing to the noise and ambiguity of images, as well as individual variations in the shape of the lumbar vertebrae. This study proposes a method to improve the robustness of landmark detection results. This method assumes that landmarks are detected by a convolutional neural network-based two-step model consisting of Pose-Net and M-Net. The model generates a heatmap response to indicate the probable landmark positions. The proposed method then corrects the landmark positions using the heatmap response and active shape model, which employs statistical information on the landmark distribution. Experiments were conducted using 3600 lumbar X-ray images, and the results showed that the landmark detection error was reduced by the proposed method. The average value of maximum errors decreased by 5.58% after applying the proposed method, which combines the outstanding image analysis capabilities of deep learning with statistical shape constraints on landmark distribution. The proposed method could also be easily integrated with other techniques to increase the robustness of landmark detection results such as CoordConv layers and non-directional part affinity field. This resulted in a further enhancement in the landmark detection performance. These advantages can improve the reliability of automatic systems used to inspect lumbar X-ray images. This will benefit both patients and medical staff by reducing medical expenses and increasing diagnostic efficiency.

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基于热图的主动形状模型用于腰椎 X 射线图像中的地标检测
医务人员通过检查腰椎 X 射线图像来诊断腰椎疾病,目前分析过程已利用深度学习技术实现自动化。在定位椎体位置和识别椎体形态特征的自动过程中,地标检测是必要的。然而,由于图像的噪声和模糊性,以及腰椎形状的个体差异,可能会出现检测错误。本研究提出了一种提高地标检测结果稳健性的方法。该方法假设地标由基于卷积神经网络的两步模型检测,该模型由 Pose-Net 和 M-Net 组成。该模型生成热图响应,以指示可能的地标位置。然后,建议的方法利用热图响应和主动形状模型修正地标位置,主动形状模型采用了地标分布的统计信息。实验使用了 3600 张腰椎 X 光图像,结果表明,所提出的方法减少了地标检测误差。该方法结合了深度学习出色的图像分析能力和对地标分布的统计形状约束,应用该方法后,最大误差的平均值降低了 5.58%。所提出的方法还可以轻松地与其他技术相结合,以提高地标检测结果的鲁棒性,如 CoordConv 层和非定向部分亲和场。这进一步提高了地标检测性能。这些优势可以提高用于检测腰椎 X 光图像的自动系统的可靠性。这将降低医疗费用,提高诊断效率,从而使患者和医务人员受益。
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