论文标题

使用集合基于CNN的分类器的多类伤口图像分类

Multiclass Wound Image Classification using an Ensemble Deep CNN-based Classifier

论文作者

Rostami, Behrouz, Anisuzzaman, D. M., Wang, Chuanbo, Gopalakrishnan, Sandeep, Niezgoda, Jeffrey, Yu, Zeyun

论文摘要

急性和慢性伤口是世界各地医疗保健系统的挑战,每年都会影响许多人的生活。伤口分类是伤口诊断的关键步骤,可以帮助临床医生确定最佳治疗程序。因此,拥有高性能分类器有助于该领域的专家以减少财务和时间成本来对伤口进行分类。文献中已经提出了不同的机器学习和深度学习的伤口分类方法。在这项研究中,我们开发了一个集合深卷积神经网络的分类器,以将包括手术,糖尿病和静脉溃疡在内的伤口图像分类为多类。两个分类器的输出分类得分(贴片和图像方面)被馈入多层感知器,以提供出色的分类性能。使用5倍的交叉验证方法来评估所提出的方法。对于二进制,我们获得了最大和平均分类精度值96.4%和94.28%,对于3类分类问题,我们获得了91.9 \%和87.7 \%。结果表明,我们所提出的方法可以有效地用作伤口图像或其他相关临床应用分类的决策支持系统。

Acute and chronic wounds are a challenge to healthcare systems around the world and affect many people's lives annually. Wound classification is a key step in wound diagnosis that would help clinicians to identify an optimal treatment procedure. Hence, having a high-performance classifier assists the specialists in the field to classify the wounds with less financial and time costs. Different machine learning and deep learning-based wound classification methods have been proposed in the literature. In this study, we have developed an ensemble Deep Convolutional Neural Network-based classifier to classify wound images including surgical, diabetic, and venous ulcers, into multi-classes. The output classification scores of two classifiers (patch-wise and image-wise) are fed into a Multi-Layer Perceptron to provide a superior classification performance. A 5-fold cross-validation approach is used to evaluate the proposed method. We obtained maximum and average classification accuracy values of 96.4% and 94.28% for binary and 91.9\% and 87.7\% for 3-class classification problems. The results show that our proposed method can be used effectively as a decision support system in classification of wound images or other related clinical applications.

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