The emergence of precision oncology necessitates a comprehensive understanding of how genetic, epigenetic, and other factors influence tumor behavior and response to treatment regimens. This understanding is crucial for translating research findings into patient-specific therapies. In this talk, I will cover two case studies. First, I will discuss how applying healthcare-specific Large Language Models (LLMs) to Electronic Health Records (EHRs) presents a promising approach to constructing detailed oncology patient timelines. This task involves extracting and synthesizing chemotherapy treatment data from diverse clinical notes, including those from primary care providers, oncologists, discharge summaries, emergency departments, pathology, and radiology reports. Second, I will explore how John Snow Labs’ healthcare-specific Large Language Model (LLM) offers a transformative approach to matching patients with the National Comprehensive Cancer Network (NCCN) clinical guidelines. By analyzing comprehensive patient data, including genetic, epigenetic, and phenotypic information, the LLM accurately aligns individual patient profiles with the most relevant clinical guidelines. This innovation enhances precision in oncology care by ensuring that each patient receives tailored treatment recommendations based on the latest NCCN guidelines.
The emergence of precision oncology necessitates a comprehensive understanding of how genetic, epigenetic, and other factors influence tumor behavior and response to treatment regimens. This understanding is crucial for translating...
Hierarchical Condition Category (HCC) coding plays a pivotal role in federally regulated risk adjustment payment models, ensuring accurate reimbursement for health insurance plans and better care for managed populations. Providers...
There is overwhelming evidence from academic research and industry benchmarks that domain-specific and task-specific large language models outperform general-purpose LLMs across multiple dimensions: Accuracy, veracity, human preference, and cost. This...
Clinical data summarization using generative AI involves leveraging advanced algorithms to extract, analyze, and condense vast amounts of medical information into concise, actionable insights. This technology employs natural language processing...
In this speech, I will provide an overview of the current challenges faced by healthcare professionals in accessing and interpreting vast amounts of patient data. I will discuss how our...