MedLM harnesses the power of Google’s
MedLM, and is aligned to the medical domain to more accurately answer medical questions. It can be used to facilitate rich, informative discussions, answer complex medical questions, and find insights in complicated and unstructured medical texts. It is also used to help draft short- and long-form responses and summarize documentation and insights from internal data sets and bodies of scientific knowledge.
In our experiments, we fed the output of the Personalized Pagerank model to MedLM as context and generated the final response, which had a higher accuracy.
We observed that the final responses generated by this approach using MedLM and clinical knowledge graphs were grounded in factuality and are far more accurate by reducing the false positives and boosting the true positives.
“This solution built on MedLM augmented with a clinical knowledge graph can analyze a patient's medical records and generate insights on relevant medications, laboratory evaluations, medical procedures, and potential diagnoses for the clinician to review. By generating these evidence-based insights, this gen AI solution aims to enhance the clinical workflows, reduce errors, and improve patient outcomes. And it is super important to understand that this is just the tip of the iceberg in terms of the AI’s capabilities where it is so powerful, but yet always assistive to the clinicians.” - Abdussamad M, Engineering Lead at Apollo 24|7.
This solution is not intended to replace the clinician's expertise but rather to augment the clinician’s skills and experience.