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Connected Care

Medical artificial intelligence (AI) has made remarkable strides, from detecting pneumonia on chest X-rays to predicting sepsis risk in critically ill patients. However, existing AI models remain constrained by their narrow task scope and reliance on single-modal data. Most systems require retraining for each new function and struggle to synthesize diverse clinical information, such as imaging, ..
Healthcare interoperability
2025. 3. 12. 09:00