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Electronic nose: clinical diagnosis based on soft computing methodologies

机译:电子鼻子:基于软计算方法的临床诊断

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Recently, the use of smell in clinical diagnosis has been rediscovered due to major advances in odour sensing technology and artificial intelligence. It was well known in the past that a number of infectious or metabolic diseases could liberate specific odours characteristic of the disease stage and among others, urine volatile compounds have been identified as possible diagnostic markers. A newly developed electronic nose based on chemoresistive sensors has been employed to identify in vitro 13 bacterial clinical isolates, collected from patients diagnosed with urinary tract infections, gastrointestinal and respiratory infections, and in viva time samples from patients with suspected uncomplicated UTI who were scheduled for microbiological analysis in a UK Health Laboratory environment. An intelligent model consisting of an odour generation mechanism, rapid volatile delivery and recover, system, and a classifier system based on a neural networks, genetic algorithms, and multivariate techniques such as principal components analysis and discriminant function analysis-cross validation. The experimental results confirm the validity of the presented methods.
机译:最近,由于气味传感技术和人工智能的主要进步,已经重新发现了临床诊断中的气味。过去众所周知,许多传染病或代谢疾病可以释放疾病阶段的特异性特征,其中尿液挥发性化合物已被鉴定为可能的诊断标志物。基于化学诱发的传感器的新开发的电子鼻子已经用于鉴定体外13个细菌临床分离株,这些临床分离株从被诊断出患有尿路感染,胃肠和呼吸道感染的患者中收集,以及患有疑似简单UTI的患者的VIVA时间样本英国健康实验室环境中的微生物分析。一种智能模型,包括一种基于神经网络,遗传算法和多变量技术,如主成分分析和判别函数分析 - 交叉验证的气味生成机制,系统和恢复系统和分类器系统组成的智能模型。实验结果证实了所提出的方法的有效性。

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