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Medical AI Applications Blog

The key takeaway is that dataset shift is inevitable. New types of documents, evolving healthcare practices, and changing patient demographics will all contribute to it. But with the right monitoring strategy—keeping an eye on dataset distribution, entity distribution, and confidence distribution—you can stay ahead of these changes.

Blog

Understanding the Use Case The PHI detection solution we delivered to the customer is designed to identify sensitive information in clinical notes, ensuring privacy and compliance with healthcare standards. However,...

John Snow Labs’ small medical Language model (MedS) outperformed GPT-4o in factuality (by 5–10%), clinical relevance, and conciseness across tasks like summarization, information extraction, and biomedical Q/A, showcasing the impact...

Healthcare-specific language models, like the JSL-MedS-NER family, are designed to extract clinical entities from unstructured medical text. These models can identify key information such as clinical terms, drugs, side effect,...

Literature reviews are a critical component of evidence-based medicine, serving as a structured approach to addressing clinical questions by systematically analyzing the breadth of published academic literature. However, traditional methods...

This talk draws from the paper “LLMs Will Always Hallucinate, and We Need to Live With This” and presents a critical analysis of hallucinations in large language models (LLMs), arguing...