Machine Learning Image Analysis Is Beginning to Transform Clinical Microbiology Practice
This review examines the emerging role of image analysis AI in clinical microbiology, categorizing applications into rare event detection (e.g., mycobacteria screening, colony detection, parasite identification) and score-based classification (e.g., Nugent scoring, urine culture interpretation). While these tools are starting to penetrate routine laboratory workflows, the authors emphasize that AI currently augments rather than replaces human expertise, and outline development and implementation strategies for clinical laboratories.
The original study
The Use of Machine Learning for Image Analysis Artificial Intelligence in Clinical Microbiology.
- Authors
- Burns BL, Rhoads DD, Misra A
- Journal
- Journal of clinical microbiology
- Type
- Journal Article, Review
- PMID
- 37395657
Original abstract
The growing transition to digital microbiology in clinical laboratories creates the opportunity to interpret images using software. Software analysis tools can be designed to use human-curated knowledge and expert rules, but more novel artificial intelligence (AI) approaches such as machine learning (ML) are being integrated into clinical microbiology practice. These image analysis AI (IAAI) tools are beginning to penetrate routine clinical microbiology practice, and their scope and impact on routine clinical microbiology practice will continue to grow. This review separates the IAAI applications into 2 broad classification categories: (i) rare event detection/classification or (ii) score-based/categorical classification. Rare event detection can be used for screening purposes or for final identification of a microbe including microscopic detection of mycobacteria in a primary specimen, detection of bacterial colonies growing on nutrient agar, or detection of parasites in a stool preparation or blood smear. Score-based image analysis can be applied to a scoring system that classifies images in toto as its output interpretation and examples include application of the Nugent score for diagnosing bacterial vaginosis and interpretation of urine cultures. The benefits, challenges, development, and implementation strategies of IAAI tools are explored. In conclusion, IAAI is beginning to impact the routine practice of clinical microbiology, and its use can enhance the efficiency and quality of clinical microbiology practice. Although the future of IAAI is promising, currently IAAI only augments human effort and is not a replacement for human expertise.