Kang Haiquan, Wang Ziling, Sun Jingfang, Song Shuang, Cheng Lei, Sun Yi, Pan Xingqi, Wu Changyu, Gong Ping, Li Hongchun
Department of Clinical Laboratory, Affiliated Hospital of Xuzhou Medical University, Xuzhou, China.
Medical Technology School, Xuzhou Medical University, Xuzhou, China.
Front Microbiol. 2024 Jul 15;15:1428304. doi: 10.3389/fmicb.2024.1428304. eCollection 2024.
Bloodstream infections (BSIs) are a critical medical concern, characterized by elevated morbidity, mortality, extended hospital stays, substantial healthcare costs, and diagnostic challenges. The clinical outcomes for patients with BSI can be markedly improved through the prompt identification of the causative pathogens and their susceptibility to antibiotics and antimicrobial agents. Traditional BSI diagnosis via blood culture is often hindered by its lengthy incubation period and its limitations in detecting pathogenic bacteria and their resistance profiles. Surface-enhanced Raman scattering (SERS) has recently gained prominence as a rapid and effective technique for identifying pathogenic bacteria and assessing drug resistance. This method offers molecular fingerprinting with benefits such as rapidity, sensitivity, and non-destructiveness. The objective of this study was to integrate deep learning (DL) with SERS for the rapid identification of common pathogens and their resistance to drugs in BSIs. To assess the feasibility of combining DL with SERS for direct detection, erythrocyte lysis and differential centrifugation were employed to isolate bacteria from blood samples with positive blood cultures. A total of 12,046 and 11,968 SERS spectra were collected from the two methods using Raman spectroscopy and subsequently analyzed using DL algorithms. The findings reveal that convolutional neural networks (CNNs) exhibit considerable potential in identifying prevalent pathogens and their drug-resistant strains. The differential centrifugation technique outperformed erythrocyte lysis in bacterial isolation from blood, achieving a detection accuracy of 98.68% for pathogenic bacteria and an impressive 99.85% accuracy in identifying carbapenem-resistant . In summary, this research successfully developed an innovative approach by combining DL with SERS for the swift identification of pathogenic bacteria and their drug resistance in BSIs. This novel method holds the promise of significantly improving patient prognoses and optimizing healthcare efficiency. Its potential impact could be profound, potentially transforming the diagnostic and therapeutic landscape of BSIs.
血流感染(BSIs)是一个关键的医学问题,其特点是发病率和死亡率升高、住院时间延长、医疗成本高昂以及诊断面临挑战。通过及时识别致病病原体及其对抗生素和抗菌药物的敏感性,可显著改善BSI患者的临床结局。传统的通过血培养诊断BSI常常受到其漫长的培养期以及在检测致病细菌及其耐药谱方面的局限性的阻碍。表面增强拉曼散射(SERS)最近作为一种快速有效的技术,在识别致病细菌和评估耐药性方面受到了关注。该方法提供分子指纹识别,具有快速、灵敏和无损等优点。本研究的目的是将深度学习(DL)与SERS相结合,用于快速识别BSIs中的常见病原体及其耐药性。为了评估将DL与SERS结合用于直接检测的可行性,采用红细胞裂解和差速离心从血培养阳性的血样中分离细菌。使用拉曼光谱从这两种方法中总共收集了12046和11968个SERS光谱,随后使用DL算法进行分析。研究结果表明,卷积神经网络(CNNs)在识别常见病原体及其耐药菌株方面具有相当大的潜力。在从血液中分离细菌方面,差速离心技术优于红细胞裂解,对致病细菌的检测准确率达到98.68%,在识别耐碳青霉烯菌方面的准确率高达99.85%。总之,本研究成功开发了一种创新方法,将DL与SERS相结合,用于快速识别BSIs中的致病细菌及其耐药性。这种新方法有望显著改善患者预后并优化医疗效率。其潜在影响可能是深远的,有可能改变BSIs的诊断和治疗格局。