Google shares 4 updates on generative AI in healthcare

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Last year at Google Health’s Check Up event, we introduced Med-PaLM 2, our large language model (LLM) fine-tuned for healthcare. Since introducing that research, the model has become available to a set of global customer and partner organizations that are building solutions for a range of uses — including streamlining nurse handoffs and supporting clinicians’ documentation. At the end of last year, we introduced MedLM, a family of foundation models for healthcare built on Med-PaLM 2, and made it more broadly available through Google Cloud’s Vertex AI platform.

Since then, our work on generative AI for healthcare has progressed — from the new ways we’re training our health AI models to our latest research on applying AI to the healthcare industry.

New modalities in models for healthcare

Medicine is a multimodal discipline; it’s made up of different types of information stored across formats — like radiology images, lab results, genomics data, environmental context and more. To get a fuller understanding of a person’s health, we need to build technology that understands all of this information.

We’re bringing new capabilities to our models with the hope of making generative AI more helpful to healthcare organizations and people’s health. We just introduced MedLM for Chest X-ray, which has the potential to help transform radiology workflows by helping with the classification of chest X-rays for a variety of use cases. We’re starting with Chest X-rays because they are critical in detecting lung and heart conditions. MedLM for Chest X-ray is now available to trusted testers in an experimental preview on Google Cloud.

Research on fine-tuning our models for the medical domain

Approximately 30% of the world’s data volume is being generated by the healthcare industry – and is growing at 36% annually. This includes large quantities of text, images, audio, and video. And further, important information about patients’ histories is often buried deep in a medical record, making it difficult to find relevant information quickly.

For these reasons, we’re researching how a version of the Gemini model, fine-tuned for the medical domain, can unlock new capabilities for advanced reasoning, understanding a high volume of context, and processing multiple modalities. Our latest research resulted in state-of-the-art performance on the benchmark for the U.S. Medical Licensing Exam (USMLE)-style questions at 91.1%, and on a video dataset called MedVidQA.

And because our Gemini models are multimodal, we were able to apply this fine-tuned model to other clinical benchmarks — including answering questions about chest X-ray images and genomics information. We’re also seeing promising results from our fine-tuned models on complex tasks such as report generation for 2D images like X-rays, as well as 3D images like brain CT scans – representing a step-change in our medical AI capabilities. While this work is still in the research phase, there’s potential for generative AI in radiology to bring assistive capabilities to health organizations.

A Personal Health LLM for personalized coaching and recommendations

Fitbit and Google Research are working together to build a Personal Health Large Language Model that can power personalized health and wellness features in the Fitbit mobile app, helping people get even more insights and recommendations from the data from their Fitbit and Pixel devices. This model is being fine-tuned to deliver personalized coaching capabilities, like actionable messages and guidance, that can be individualized based on personal health and fitness goals. For example, this model may be able to analyze variations in your sleep patterns and sleep quality, and then suggest recommendations on how you might change the intensity of your workout based on those insights.

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