Combined Mutual Learning Net for Raman Spectral Microbial Strain Identification.
Junfan ChenJiaqi HuChenlong XueQian ZhangJingyan LiZiyue WangJinqian LvAoyan ZhangHong DangDan LuDefeng ZouLongqing CongYuchao LiGina Jinna ChenPerry Ping ShumPublished in: Analytical chemistry (2024)
Infectious diseases pose a significant threat to global health, yet traditional microbiological identification methods suffer from drawbacks, such as high costs and long processing times. Raman spectroscopy, a label-free and noninvasive technique, provides rich chemical information and has tremendous potential in fast microbial diagnoses. Here, we propose a novel Combined Mutual Learning Net that precisely identifies microbial subspecies. It demonstrated an average identification accuracy of 87.96% in an open-access data set with thirty microbial strains, representing a 5.76% improvement. 50% of the microbial subspecies accuracies were elevated by 1% to 46%, especially for E. coli 2 improved from 31% to 77%. Furthermore, it achieved a remarkable subspecies accuracy of 92.4% in the custom-built fiber-optical tweezers Raman spectroscopy system, which collects Raman spectra at a single-cell level. This advancement demonstrates the effectiveness of this method in microbial subspecies identification, offering a promising solution for microbiology diagnosis.
Keyphrases
- raman spectroscopy
- microbial community
- label free
- infectious diseases
- global health
- single cell
- systematic review
- bioinformatics analysis
- public health
- healthcare
- dna methylation
- machine learning
- high resolution
- magnetic resonance
- big data
- computed tomography
- genome wide
- high throughput
- climate change
- health information