Performance of Data Enhancements and Training Optimization for Neural Network: A Polyp Detection Case Study

F. Henriksen, Rune Jensen, H. Stensland, Dag Johansen, M. Riegler, P. Halvorsen
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引用次数: 4

Abstract

Deep learning using neural networks is becoming more and more popular. It is frequently used in areas like video analysis, image retrieval, traffic forecast and speech recognition. In this respect, the learning and training process usually requires a lot of data. However, in many areas, data is scarce which is definitely the case in our medical application scenario, i.e., polyp detection in the gastrointestinal tract. Here, colorectal cancer is on the list of most common cancer types, and often, the cancer arises from benign, adenomatous polyps containing dysplastic cells. Detection and removal of polyps can therefore prevent the development of cancer. % Due to high cost, time consumption, patient discomfort and in-accuracy of existing procedures, researchers have started to explore systems for automatic polyp detection to assist and automate current examination procedures. Following the current gained traction for neural networks, and the typical lack of medical data, we explore how data enhancements affect the training and evaluation of the networks in terms of polyp detection accuracy and particularly if it can be used to increase the detection rate. We also experiment with how various training techniques can be used to increase performance. Our experimental results show how data enhancement and training optimization can be used to increase different aspects of the performance, but we also point out mechanisms that have no, and even a negative, effect.
神经网络的数据增强性能和训练优化:息肉检测案例研究
使用神经网络的深度学习正变得越来越流行。它经常用于视频分析、图像检索、交通预测和语音识别等领域。在这方面,学习和培训过程通常需要大量的数据。然而,在很多领域,数据是稀缺的,在我们的医疗应用场景中,即胃肠道息肉的检测,绝对是这种情况。在这里,结直肠癌是最常见的癌症类型之一,通常,癌症起源于含有发育不良细胞的良性腺瘤性息肉。因此,检测和切除息肉可以预防癌症的发展。由于高成本、耗时、患者不适和现有程序的不准确性,研究人员已经开始探索自动息肉检测系统,以辅助和自动化当前的检查程序。随着当前神经网络的发展,以及医疗数据的典型缺乏,我们探索了数据增强如何影响息肉检测准确性方面的网络训练和评估,特别是如果它可以用来提高检测率。我们还试验了如何使用各种训练技术来提高性能。我们的实验结果显示了如何使用数据增强和训练优化来提高性能的不同方面,但我们也指出了没有甚至是负面影响的机制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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