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Detection and Classification of Suspicious Areas in Autofluorescence Bronchoscopy

机译:自发荧光支气管镜检查中可疑区域的检测和分类

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Autofluorescence bronchoscopy (AFB) has been utilized over the past decade, proving to be a powerful tool for the detection and localization of premalignant and malignant lesions of the airways. Autofluorescence bronchoscopy is, however, characterized by low specificity and a high rate of false positive findings (FPFs). The majority of FPFs are due to inflammations, as they often fluoresce at the same wavelengths with cancer. According to several clinical trials, the percentage of the FPFs is about 30%. In this paper we present an intelligent computing system for the classification of suspicious areas of the bronchial mucosa, in order to decrease the rate of FPFs, to increase the specificity and sensitivity of AFB and enhance the overall diagnostic value of the AFB method.
机译:自体荧光支气管镜检查(AFB)在过去的十年中得到了使用,被证明是检测和定位气道恶变前和恶性病变的有力工具。但是,自发荧光支气管镜检查的特点是特异性低,假阳性结果(FPF)发生率高。大多数FPF是由于炎症引起的,因为它们通常在与癌症相同的波长下发出荧光。根据一些临床试验,FPF的百分比约为30%。在本文中,我们提出了一种智能计算系统,用于对支气管粘膜可疑区域进行分类,以降低FPF的发生率,提高AFB的特异性和敏感性,并提高AFB方法的总体诊断价值。

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