Ilesanmi Ademola E, Udupa Jayaram K, Tong Yubing, Liu Tiange, Odhner Dewey, Pednekar Gargi, Nag Sanghita, Lewis Sharon, Camaratta Joe, Owens Steve, Torigian Drew A
Medical Image Processing Group, 602 Goddard building, 3710 Hamilton Walk, Department of Radiology, University of Pennsylvania, Philadelphia, PA 19104.
School of Information Science and Engineering, Yanshan University, Qinhuangdao, Hebei 066004, China.
Proc SPIE Int Soc Opt Eng. 2023 Feb;12466. doi: 10.1117/12.2655159. Epub 2023 Apr 3.
Recently, deep learning networks have achieved considerable success in segmenting organs in medical images. Several methods have used volumetric information with deep networks to achieve segmentation accuracy. However, these networks suffer from interference, risk of overfitting, and low accuracy as a result of artifacts, in the case of very challenging objects like the brachial plexuses. In this paper, to address these issues, we synergize the strengths of high-level human knowledge (i.e., natural intelligence (NI)) with deep learning (i.e., artificial intelligence (AI)) for recognition and delineation of the thoracic brachial plexuses (BPs) in computed tomography (CT) images. We formulate an anatomy-guided deep learning hybrid intelligence approach for segmenting thoracic right and left brachial plexuses consisting of 2 key stages. In the first stage (AAR-R), objects are recognized based on a previously created fuzzy anatomy model of the body region with its key organs relevant for the task at hand wherein high-level human anatomic knowledge is precisely codified. The second stage (DL-D) uses information from AAR-R to limit the search region to just where each object is most likely to reside and performs encoder-decoder delineation in slices. The proposed method is tested on a dataset that consists of 125 images of the thorax acquired for radiation therapy planning of tumors in the thorax and achieves a Dice coefficient of 0.659.
最近,深度学习网络在医学图像中的器官分割方面取得了显著成功。有几种方法利用深度网络的体积信息来实现分割精度。然而,对于像臂丛神经这样极具挑战性的对象,这些网络会受到干扰、过拟合风险以及伪影导致的低精度问题的影响。在本文中,为了解决这些问题,我们将高级人类知识(即自然智能(NI))的优势与深度学习(即人工智能(AI))相结合,用于在计算机断层扫描(CT)图像中识别和描绘胸段臂丛神经(BP)。我们制定了一种解剖学引导的深度学习混合智能方法,用于分割左右胸段臂丛神经,该方法包括两个关键阶段。在第一阶段(AAR-R),基于先前创建的身体区域模糊解剖模型及其与手头任务相关的关键器官来识别对象,其中高级人类解剖学知识被精确编码。第二阶段(DL-D)使用来自AAR-R的信息将搜索区域限制在每个对象最可能所在的位置,并在切片中执行编码器-解码器描绘。所提出的方法在一个由125张胸部图像组成的数据集上进行了测试,这些图像是为胸部肿瘤的放射治疗计划而获取的,其Dice系数达到了0.659。