Ali Abder-Rahman, Li Jingpeng, Kanwal Summrina, Yang Guang, Hussain Amir, Jane O'Shea Sally
Faculty of Natural Sciences, Computing Science and Mathematics, University of Stirling, Stirling, United Kingdom.
Department of Computing and Informatics, Saudi Electronic University, Al-Dammam, Saudi Arabia.
Front Med (Lausanne). 2020 Jul 7;7:297. doi: 10.3389/fmed.2020.00297. eCollection 2020.
Skin lesion border irregularity, which represents the B feature in the ABCD rule, is considered one of the most significant factors in melanoma diagnosis. Since signs that clinicians rely on in melanoma diagnosis involve subjective judgment including visual signs such as border irregularity, this deems it necessary to develop an objective approach to finding border irregularity. Increased research in neural networks has been carried out in recent years mainly driven by the advances of deep learning. Artificial neural networks (ANNs) or multilayer perceptrons have been shown to perform well in supervised learning tasks. However, such networks usually don't incorporate information pertaining the ambiguity of the inputs when training the network, which in turn could affect how the weights are being updated in the learning process and eventually degrading the performance of the network when applied on test data. In this paper, we propose a fuzzy multilayer perceptron (F-MLP) that takes the ambiguity of the inputs into consideration and subsequently reduces the effects of ambiguous inputs on the learning process. A new optimization function, the fuzzy gradient descent, has been proposed to reflect those changes. Moreover, a type-II fuzzy sigmoid activation function has also been proposed which enables finding the range of performance the fuzzy neural network is able to attain. The fuzzy neural network was used to predict the skin lesion border irregularity, where the lesion was firstly segmented from the skin, the lesion border extracted, border irregularity measured using a proposed measure vector, and using the extracted border irregularity measures to train the neural network. The proposed approach outperformed most of the state-of-the-art classification methods in general and its standard neural network counterpart in particular. However, the proposed fuzzy neural network was more time-consuming when training the network.
皮肤病变边界不规则是ABCD规则中的B特征,被认为是黑色素瘤诊断中最重要的因素之一。由于临床医生在黑色素瘤诊断中所依赖的体征涉及主观判断,包括边界不规则等视觉体征,因此有必要开发一种客观的方法来发现边界不规则。近年来,受深度学习进展的推动,对神经网络的研究不断增加。人工神经网络(ANN)或多层感知器在监督学习任务中已被证明表现良好。然而,此类网络在训练时通常不考虑与输入的模糊性相关的信息,这反过来可能会影响学习过程中权重的更新方式,并最终在应用于测试数据时降低网络的性能。在本文中,我们提出了一种模糊多层感知器(F-MLP),它考虑了输入的模糊性,从而减少了模糊输入对学习过程的影响。我们提出了一种新的优化函数——模糊梯度下降,以反映这些变化。此外,还提出了一种II型模糊Sigmoid激活函数,它能够找到模糊神经网络能够达到的性能范围。该模糊神经网络用于预测皮肤病变边界不规则性,首先从皮肤中分割出病变,提取病变边界,使用提出的测量向量测量边界不规则性,并使用提取的边界不规则性测量值来训练神经网络。总体而言,所提出的方法优于大多数现有分类方法,尤其是其标准神经网络对应方法。然而,所提出的模糊神经网络在训练时耗时更长。