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ABLE: An Automated Bacterial Load Estimator for the Urinoculture Screening

机译:能够:用于尿素培养筛查的自动细菌负荷估计

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Urinary Tract Infections (UTIs) are very common in women, babies and the elderly. The most frequent cause is a bacterium, called Escherichia Coli, which usually lives in the digestive system and in the bowel. Infections can target the urethra, bladder or kidneys. Traditional analysis methods, based on human experts' evaluation, are typically used to diagnose UTIs, an error prone and lengthy process, whereas an early treatment of common pathologies is fundamental to prevent the infection spreading to kidneys. This paper presents an image based Automated Bacterial Load Estimator (ABLE) system for the urinoculture screening, that provides quick and traceable results for UTIs. Infections are accurately detected and the bacterial load is evaluated through image processing techniques. First, digital color images of the Petri dishes are automatically captured, and cleaned from noisily elements due to laboratory procedures, then specific spatial clustering algorithms are applied to isolate the colonies from the culture ground and, finally, an accurate evaluation of the infection severity is performed. A dataset of 499 urine samples has been used during the experiments and the obtained results are fully discussed. The ABLE system speeds up the analysis, grants repeatable results, contributes to the process standardization, and guarantees a significant cost reduction.
机译:尿路感染(UTI)在女性,婴儿和老年人中很常见。最常见的原因是一种叫做大肠杆菌的细菌,其通常在消化系统和肠道中生活在消化系统中。感染可以靶向尿道,膀胱或肾脏。基于人体专家评价的传统分析方法通常用于诊断UTI,易于易受困难和冗长的过程,而对常见病理的早期治疗是基本的,以防止对肾脏传播的感染。本文介绍了一种基于图像的自动细菌负载估计器(能够)系统,用于尿素培养筛选,为UTIS提供了快速和可追踪的结果。精确检测到感染,通过图像处理技术评估细菌载荷。首先,由于实验室程序,自动捕获培养皿的数字彩色图像,并从喧闹的元素清除,然后应用特定的空间聚类算法,以将菌落与培养物的分离,最后,对感染严重程度的准确评估是表演。在实验期间使用了499个尿液样品的数据集,并完全讨论了所得结果。能够的系统加速分析,授予可重复的结果,有助于过程标准化,并保证大量成本降低。

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