AInsight: Augmenting Expert Decision-Making with On-the-Fly Insights Grounded in Historical Data
AInsight: Augmenting Expert Decision-Making with On-the-Fly Insights Grounded in Historical Data
In decision-making conversations, experts must navigate complex choices and make on-the-spot decisions while engaged in conversation. Although extensive historical data often exists, the real-time nature of these scenarios makes it infeasible for decision-makers to review and leverage relevant information. This raises an interesting question: What if experts could utilize relevant past data in real-time decision-making through insights derived from past data? To explore this, we implemented a conversational user interface, taking doctor-patient interactions as an example use case. Our system continuously listens to the conversation, identifies patient problems and doctor-suggested solutions, and retrieves related data from an embedded dataset, generating concise insights using a pipeline built around a retrieval-based Large Language Model (LLM) agent. We evaluated the prototype by embedding Health Canada datasets into a vector database and conducting simulated studies using sample doctor-patient dialogues, showing effectiveness but also challenges, setting directions for the next steps of our work.
Mohammad Abolnejadian、Shakiba Amirshahi、Matthew Brehmer、Anamaria Crisan
医学研究方法临床医学
Mohammad Abolnejadian,Shakiba Amirshahi,Matthew Brehmer,Anamaria Crisan.AInsight: Augmenting Expert Decision-Making with On-the-Fly Insights Grounded in Historical Data[EB/OL].(2025-07-12)[2025-08-02].https://arxiv.org/abs/2507.09100.点此复制
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