Impulsionando a próxima geração de aplicações de saúde com os modelos de IA MedGemma de ponta do Google DeepMind.
医療テキストと画像分析のためのMedGemma 4B ITモデルの力を体験
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MedGemma MedGemma is a collection of cutting-edge AI models designed specifically to understand and process medical text and images. Developed by Google DeepMind and announced in May 2025, MedGemma represents a significant advancement in the field of medical artificial intelligence.
Built on the powerful Gemma 3 architecture, MedGemma has been optimized for healthcare applications, providing developers with robust tools to create innovative medical solutions.
As part of the Health AI Developer Foundations, MedGemma aims to democratize access to advanced medical AI technology, enabling researchers and developers worldwide to build more effective healthcare applications.
Launched at Google I/O 2025
Released as part of Google's ongoing efforts to enhance healthcare through technology
Powerful capabilities designed for medical applications
Processes both medical images and text with 4 billion parameters, using a SigLIP image encoder pre-trained on de-identified medical data.
Optimized for deep medical text comprehension and clinical reasoning with 27 billion parameters.
Build AI-based applications that examine medical images, generate reports, and triage patients.
Accelerate research with open access to advanced AI through Hugging Face and Google Cloud.
Enhance patient interviewing and clinical decision support for improved healthcare efficiency.
Implementation guides and adaptation methods
MedGemma models are accessible on platforms like Hugging Face, subject to the terms of use by the Health AI Developer Foundations.
# Example Python code to load MedGemma model
from transformers import AutoTokenizer, AutoModelForCausalLM
tokenizer = AutoTokenizer.from_pretrained("google/medgemma-4b-it")
model = AutoModelForCausalLM.from_pretrained("google/medgemma-4b-it")
Use few-shot examples and break tasks into subtasks to enhance performance.
Optimize using your own medical data with resources like GitHub notebooks.
Integrate with tools like web search, FHIR generators, and Gemini Live.
Choose the right deployment method based on your requirements:
Run models locally for experimentation and development purposes.
Deploy as scalable HTTPS endpoints on Vertex AI through Model Garden for production-grade applications.
MedGemma models are not clinical-grade out of the box. Developers must validate performance and make necessary improvements before deploying in production environments.
The use of MedGemma is governed by the Health AI Developer Foundations terms of use, which developers must review and agree to before accessing models.
Perguntas comuns sobre MedGemma
O modelo multimodal 4B processa imagens e texto médicos, enquanto o modelo 27B foca em processamento de texto e raciocínio clínico.
Não, os modelos MedGemma requerem validação e melhorias antes da implantação em ambientes de produção.