"Antibiotic resistance is a growing threat worldwide, and we urgently need faster, more reliable tools to detect it," explains study leader Egli. Despite good results, the AI occasionally showed weaknesses: While it correctly identified specific types of resistance, there were occasional misclassifications where microbes were categorized as resistant when this was not the case. These discrepancies illustrate that human experts continue to play a central role in diagnostics. However, the AI-based system offers the potential to standardize the diagnostic process and ensure greater consistency.