Information Engineering Dept., University of Brescia, Brescia, Italy; Futura Science Park, Copan Group S.p.A., Brescia, Italy.
Information Engineering Dept., University of Brescia, Brescia, Italy.
Comput Biol Med. 2017 Sep 1;88:60-71. doi: 10.1016/j.compbiomed.2017.06.018. Epub 2017 Jun 21.
With the rapid diffusion of Full Laboratory Automation systems, Clinical Microbiology is currently experiencing a new digital revolution. The ability to capture and process large amounts of visual data from microbiological specimen processing enables the definition of completely new objectives. These include the direct identification of pathogens growing on culturing plates, with expected improvements in rapid definition of the right treatment for patients affected by bacterial infections. In this framework, the synergies between light spectroscopy and image analysis, offered by hyperspectral imaging, are of prominent interest. This leads us to assess the feasibility of a reliable and rapid discrimination of pathogens through the classification of their spectral signatures extracted from hyperspectral image acquisitions of bacteria colonies growing on blood agar plates. We designed and implemented the whole data acquisition and processing pipeline and performed a comprehensive comparison among 40 combinations of different data preprocessing and classification techniques. High discrimination performance has been achieved also thanks to improved colony segmentation and spectral signature extraction. Experimental results reveal the high accuracy and suitability of the proposed approach, driving the selection of most suitable and scalable classification pipelines and stimulating clinical validations.
随着全实验室自动化系统的快速普及,临床微生物学目前正在经历一场新的数字化革命。从微生物标本处理中获取和处理大量视觉数据的能力,使我们能够定义全新的目标。其中包括直接鉴定培养板上生长的病原体,这有望快速确定受细菌感染影响的患者的正确治疗方法。在这个框架中,高光谱学和图像分析之间的协同作用(由高光谱成像提供)引起了人们的极大兴趣。这促使我们评估通过对从血琼脂平板上细菌菌落的高光谱图像采集提取的光谱特征进行分类,实现可靠和快速区分病原体的可行性。我们设计并实现了整个数据采集和处理管道,并对 40 种不同数据预处理和分类技术的组合进行了全面比较。由于改进了菌落分割和光谱特征提取,因此实现了高区分性能。实验结果表明,所提出的方法具有很高的准确性和适用性,从而选择了最合适和可扩展的分类管道,并推动了临床验证。