自动检测坏死性筋膜炎:一个数据集和早期结果

Anik Das, Sumaiya Amin, J. Hughes
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引用次数: 0

摘要

坏死性筋膜炎(NF)或坏死性软组织感染(NSTI)是一种罕见的感染,对健康构成重大威胁。在没有适当诊断的情况下,感染可迅速扩散,引起广泛的组织坏死和死亡——死亡率为20% - 35%。由于资源不足,在自动检测NF方面进展甚微。我们已经准备了一个新的数据集,其中包含受影响的人体器官的图像,通过NF使用互联网图像搜索。该数据集总共包含693张图像,包括原始图像、增强图像和非nf图像。本文开发了一种基于人工神经网络的自动检测系统。我们对数据集的五种排列评估了YOLOv3对象识别模型,并在每运行五次后比较了这些不同数据排列的性能。数据集被分成80%的训练数据和20%的测试数据,对于性能度量,我们考虑了评估指标:Union交集(IoU)和平均精度(AP)。我们获得了原始数据和增强数据集的平均AP得分最高,为57.97%;原始数据、增强数据集和阴性图像数据集的平均IoU得分最高,为61.94%。这项工作的初步发现可以进一步改进,并成为NF诊断和管理的临床安排的重大贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Detection of Necrotizing Fasciitis: A Dataset and Early Results
Necrotizing Fasciitis (NF), or Necrotizing Soft-Tissue Infection (NSTI), is a rare infection that poses a significant threat to health. In the absence of a proper diagnosis, the infection can spread rapidly causing extensive tissue necrosis and death - mortality rate of 20% - 35%. Due to inadequate resources, little progress has been made for the automatic detection of NF. We have prepared a novel dataset containing images of affected human organs by NF using an internet image search. The dataset contains 693 images in total, containing raw, augmented, and non-NF images. A system has been developed for performing automated detection of NF with an Artificial Neural Network. We have evaluated the YOLOv3 object recognition model for five arrangements of our dataset and compared the performance for these different data arrangements after running each five times. The datasets were split into 80% train data and 20% test data, and for performance measures, we have taken into account the evaluation metrics: Intersection over Union (IoU) and Average Precision (AP). We obtained the highest average AP score of 57.97% for the dataset with raw data and augmentation and the highest average IoU score of 61.94% for dataset with raw data, augmentation, and negative images. The initial finding of this work can be further improved and become a substantial contribution to clinical arrangements for the diagnosis and management of NF.
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