论文标题

一种基于病理学的机器学习方法,可协助上皮发育不良诊断

A Pathology-Based Machine Learning Method to Assist in Epithelial Dysplasia Diagnosis

论文作者

da Rocha, Karoline, Bermudez, José C. M., Rivero, Elena R. C., Costa, Márcio H.

论文摘要

上皮发育不良(ED)是口腔癌前病变中通常存在的组织改变,是其进展向癌的最重要因素之一。这项研究提出了一种设计低计算成本分类系统的方法,以支持检测发育不良上皮的检测,从而减少病理学家评估的变异性。我们采用多层人工神经网络(MLP-ANN),并根据病理学家的知识来定义上皮的区域。统计评估了所提出的解决方案的性能。实施的MLP-ANN的平均准确度为87%,其可变性远低于从三位训练有素的评估者获得的可变性。此外,提出的解决方案导致结果非常接近使用通过转移学习实现的卷积神经网络(CNN)获得的结果,其计算复杂性降低了100倍。总之,我们的结果表明,简单的神经网络结构可以导致相当于更复杂的结构的性能,该结构通常在文献中使用。

The Epithelial Dysplasia (ED) is a tissue alteration commonly present in lesions preceding oral cancer, being its presence one of the most important factors in the progression toward carcinoma. This study proposes a method to design a low computational cost classification system to support the detection of dysplastic epithelia, contributing to reduce the variability of pathologist assessments. We employ a multilayer artificial neural network (MLP-ANN) and defining the regions of the epithelium to be assessed based on the knowledge of the pathologist. The performance of the proposed solution was statistically evaluated. The implemented MLP-ANN presented an average accuracy of 87%, with a variability much inferior to that obtained from three trained evaluators. Moreover, the proposed solution led to results which are very close to those obtained using a convolutional neural network (CNN) implemented by transfer learning, with 100 times less computational complexity. In conclusion, our results show that a simple neural network structure can lead to a performance equivalent to that of much more complex structures, which are routinely used in the literature.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源