Liu Yilin, Deng Ruining, Xiong Juming, Tyree Regina N, Correa Hernan, Hiremath Girish, Wang Yaohong, Huo Yuankai
Department of Computer Science, Vanderbilt University, Nashville, TN, USA.
Division of Pediatric Gastroenterology, Hepatology, and Nutrition, Vanderbilt University Medical Center, Nashville, TN, USA.
Proc SPIE Int Soc Opt Eng. 2024 Feb;12933. doi: 10.1117/12.3005995. Epub 2024 Apr 3.
Eosinophilic esophagitis (EOE) is a chronic and relapsing disease characterized by esophageal inflammation. Symptoms of EoE include difficulty swallowing, food impaction, and chest pain which significantly impact the quality of life, resulting in nutritional impairments, social limitations, and psychological distress. The diagnosis of EoE is typically performed with a threshold (15 to 20) of eosinophils (Eos) per high-power field (HPF). Since the current counting process of Eos is a resource-intensive process for human pathologists, automatic methods are desired. Circle representation has been shown as a more precise, yet less complicated, representation for automatic instance cell segmentation such as CircleSnake approach. However, the CircleSnake was designed as a single-label model, which is not able to deal with multi-label scenarios. In this paper, we propose the multi-label CircleSnake model for instance segmentation on Eos. It extends the original CircleSnake model from a single-label design to a multi-label model, allowing segmentation of multiple object types. Experimental results illustrate the CircleSnake model's superiority over the traditional Mask R-CNN model and DeepSnake model in terms of average precision (AP) in identifying and segmenting eosinophils, thereby enabling enhanced characterization of EoE. This automated approach holds promise for streamlining the assessment process and improving diagnostic accuracy in EoE analysis. The source code has been made publicly available at https://github.com/yilinliu610730/EoE.
嗜酸性食管炎(EOE)是一种以食管炎症为特征的慢性复发性疾病。EOE的症状包括吞咽困难、食物嵌塞和胸痛,这些症状会显著影响生活质量,导致营养障碍、社交受限和心理困扰。EOE的诊断通常是通过每高倍视野(HPF)嗜酸性粒细胞(Eos)的阈值(15至20)来进行的。由于目前对Eos的计数过程对人类病理学家来说是一个资源密集型过程,因此需要自动方法。圆形表示已被证明是一种更精确但不太复杂的自动实例细胞分割表示方法,如CircleSnake方法。然而,CircleSnake被设计为单标签模型,无法处理多标签场景。在本文中,我们提出了用于Eos实例分割的多标签CircleSnake模型。它将原始的CircleSnake模型从单标签设计扩展为多标签模型,允许对多种对象类型进行分割。实验结果表明,在识别和分割嗜酸性粒细胞方面,CircleSnake模型在平均精度(AP)方面优于传统的Mask R-CNN模型和DeepSnake模型,从而能够更好地表征EOE。这种自动化方法有望简化评估过程并提高EOE分析中的诊断准确性。源代码已在https://github.com/yilinliu610730/EoE上公开提供。