Patient Intake Assistant: A Practical AI Use Case in Healthcare

As hospitals and clinics manage growing patient volumes and limited staff resources, automation tools that support early-stage care processes are becoming more essential. One example developed by TMA AI Center is the Patient Intake Assistant, a digital assistant that helps patients report symptoms, receive guidance, and book appointments—all before meeting a healthcare professional.
This solution was built using TMA’s internal AI Agent Builder platform, which enables fast development of custom AI agents for healthcare and other industries. The Patient Intake Assistant has already shown strong potential in streamlining operations while improving patient communication.
How the Patient Intake Assistant Works

The assistant accepts inputs from patients via text or image uploads. For example, a patient can describe their symptoms through a chat interface or submit a photo of a skin rash. The system then uses trained medical datasets to analyze the input, understand the potential condition, and ask follow-up questions to clarify details. This allows for more accurate symptom reporting and faster triage.
Once the assistant has gathered enough information, it provides clear, user-friendly guidance and can offer next steps based on the symptoms reported. It also connects directly with hospital systems—including electronic medical records (EMR), scheduling software, and HIS platforms—to suggest time slots, book appointments, and send confirmation messages.
In addition to improving efficiency, the tool supports personalized care by responding to patient concerns in real time, reducing delays, and minimizing the need for repeated data entry.
A Real Chat Interface and Automated Booking Flow
One of the key highlights from the implementation is its real-time chatbot interface, shown in the first screenshot. The assistant interacts with patients using natural language, guiding them through symptom descriptions and refining the inputs for accuracy. When an image is uploaded—such as a rash on the skin—the chatbot cross-references it with medical data and follows up with clarifying questions. This reduces uncertainty and ensures that the patient reaches the right care pathway.
The system also includes an automated booking process, illustrated in the visual flow. After understanding the symptoms, the assistant checks for doctor availability, presents appointment options, and finalizes the booking. It can also send out reminders, helping patients stay informed and reducing no-shows.

Built with the TMA AI Agent Platform
This use case was created using the TMA AI Agent Builder, which supports modular development of different types of agents. As shown in the second screenshot, the platform includes various agent types—such as knowledge-based agents, data analysis agents, and conversation agents—that can be reused or adapted to support specific needs.
The platform includes core modules such as a workflow builder, multimodal large language model (LLM), and secure data integration. These building blocks make it easier for healthcare teams to deploy similar tools across different departments or use cases.

Adaptable for Other Healthcare Providers
The Patient Intake Assistant is just one example of how TMA’s AI tools can be applied in clinical settings. While this solution currently supports symptom intake and scheduling, it can be adapted for broader workflows—including post-care follow-up, lab result support, or even call center automation.
By combining medical data, automation, and conversational AI, the Patient Intake Assistant demonstrates how targeted AI agents can improve the intake process without changing existing systems.
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