Xiong Juming, Liu Yilin, Deng Ruining, Tyree Regina N, Correa Hernan, Hiremath Girish, Wang Yaohong, Huo Yuankai
Department of Electrical and Computer Engineering, Vanderbilt University, Nashville, TN, USA.
Department of Computer Science, Vanderbilt University, Nashville, TN, USA.
Proc SPIE Int Soc Opt Eng. 2024 Feb;12933. doi: 10.1117/12.3006520. Epub 2024 Apr 3.
Eosinophilic Esophagitis (EoE) is a chronic, immune/antigen-mediated esophageal disease, characterized by symptoms related to esophageal dysfunction and histological evidence of eosinophil-dominant inflammation. Owing to the intricate microscopic representation of EoE in imaging, current methodologies which depend on manual identification are not only labor-intensive but also prone to inaccuracies. In this study, we develop an open-source toolkit, named Open-EoE, to perform end-to-end whole slide image (WSI) level eosinophil (Eos) detection using one line of command via Docker. Specifically, the toolkit supports three state-of-the-art deep learning-based object detection models. Furthermore, Open-EoE further optimizes the performance by implementing an ensemble learning strategy, and enhancing the precision and reliability of our results. The experimental results demonstrated that the Open-EoE toolkit can efficiently detect Eos on a testing set with 289 WSIs. At the widely accepted threshold of ≥ 15 Eos per high power field (HPF) for diagnosing EoE, the Open-EoE achieved an accuracy of 91%, showing decent consistency with pathologist evaluations. This suggests a promising avenue for integrating machine learning methodologies into the diagnostic process for EoE. The docker and source code has been made publicly available at https://github.com/hrlblab/Open-EoE.
嗜酸性粒细胞性食管炎(EoE)是一种慢性、免疫/抗原介导的食管疾病,其特征是与食管功能障碍相关的症状以及嗜酸性粒细胞为主的炎症的组织学证据。由于EoE在成像中的微观表现复杂,当前依赖人工识别的方法不仅劳动强度大,而且容易出现不准确的情况。在本研究中,我们开发了一个名为Open-EoE的开源工具包,通过Docker使用一行命令来执行端到端的全切片图像(WSI)水平的嗜酸性粒细胞(Eos)检测。具体而言,该工具包支持三种基于深度学习的先进目标检测模型。此外,Open-EoE通过实施集成学习策略进一步优化了性能,并提高了我们结果的准确性和可靠性。实验结果表明,Open-EoE工具包能够在包含289张WSI的测试集上高效地检测Eos。在诊断EoE时广泛接受的阈值为每高倍视野(HPF)≥15个Eos的情况下,Open-EoE的准确率达到了91%,与病理学家的评估具有良好的一致性。这表明将机器学习方法整合到EoE诊断过程中是一条有前景的途径。该Docker和源代码已在https://github.com/hrlblab/Open-EoE上公开提供。