Exploring artificial neural network combined with laser-induced auto-fluorescence technology for noninvasive in vivo upper gastrointestinal tract cancer early diagnosis

Z. Chen, S. Fu, Minghui Li, Wei Zhang, Huilong Ou
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引用次数: 1

Abstract

In this study, a laser-induced auto-fluorescence (LIAF) system combined with the artificial neural network (ANN) algorithm is developed for early detection of human upper gastrointestinal tract carcinoma in vivo, through investigating the LIAF spectrum characteristics of the normal mucosa layer and the changes concerning an abnormal surface. Of the 44 participating patients, 41 underwent biopsy at the abnormal surface area at endoscopy. The ANN is employed to differentiate the LIAF data obtained from the normal and carcinoma patients (according to biopsy pathology diagnosis). The LIAF spectrum between 500 and 700 nm is selected and normalized. One data point is selected every 10 nm. A feed-forward back-propagation network with 2 hidden layers is constructed and trained. To evaluate the performance of ANN, 10 normal and 10 carcinoma data sets are tested with the trained ANN. 100% of the carcinoma data are very close to −1 (desired), 80% of the normal surface is very close to 1 (desired), and 20% return values around −0.28. Previous works on this type of ANN suggested a threshold of −0.5. As a result, all normal data are successful and the carcinoma cases are accurately classified and diagnosed. In conclusion, the LIAF technology combined with ANN diagnosis is more accurate.
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探索人工神经网络联合激光诱导自荧光技术在无创体内上消化道肿瘤早期诊断中的应用
本研究通过研究正常粘膜层的LIAF光谱特征和异常表面的变化,建立了一种结合人工神经网络(ANN)算法的激光诱导自荧光(LIAF)系统,用于人体上消化道肿瘤的体内早期检测。在44例患者中,41例在内镜下对异常表面进行活检。采用人工神经网络(ANN)对正常和癌患者的LIAF数据进行区分(根据活检病理诊断)。选取500 ~ 700 nm的LIAF光谱进行归一化处理。每10 nm选择一个数据点。构造并训练了一个具有2隐层的前馈反向传播网络。为了评估人工神经网络的性能,使用训练好的人工神经网络对10个正常数据集和10个癌数据集进行了测试。100%的癌数据非常接近- 1(期望),80%的正常表面非常接近1(期望),20%的返回值约为- 0.28。之前对这类人工神经网络的研究表明阈值为- 0.5。结果,所有的正常数据都是成功的,癌病例被准确地分类和诊断。综上所述,LIAF技术结合人工神经网络诊断更为准确。
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