Insider Secrets: How AI Chatbots Are Changing the Game for Healthcare Providers

Sasha Andrieiev
6 min readFeb 23, 2024


In recent years, the integration of artificial intelligence into healthcare settings has marked a paradigm shift in patient engagement and healthcare operations. Projections indicate that the global healthcare AI market is poised to reach nearly 188 billion U.S. dollars by 2030.

As we step into 2024, AI-driven chatbots promise to leverage healthcare. However, chatbot training, maintenance costs, and performance issues remain major challenges for healthcare providers.

AI Chatbots in Ambulatory Clinics: Limitations and Challenges

Integrating AI chatbots into ambulatory care clinics transforms patient interactions, making them more efficient, personalized, and supportive throughout the entire care journey. However, such integration requires knowledge and resources. It’s crucial to address the limitations and challenges associated with AI chatbots in ambulatory care settings to conduct a successful implementation.

Data Security and Privacy Concerns

The exchange of sensitive health information raises concerns about data security and privacy. Ensuring compliance with healthcare regulations, such as HIPAA, is crucial to prevent unauthorized access and protect patient confidentiality.

Think about Implementing end-to-end encryption, secure authentication, and access controls to safeguard patient information and prevent potential security breaches.

Integration with Electronic Health Records

Seamless integration with EHR systems is essential for comprehensive patient care. However, achieving interoperability between AI chatbots and diverse EHR platforms can be technically challenging, leading to fragmented healthcare data.

To handle this challenge, collaborate with EHR providers for custom solutions. Ensure that the chatbot can access and update relevant patient data securely, fostering a cohesive healthcare information environment that benefits both patients and healthcare providers.

If you would like to learn more about the possibilities of tailored healthcare solutions, feel free to contact Jelvix’s managers.

Complex Medical Queries

Handling intricate medical queries that require in-depth knowledge and analysis poses a challenge. While chatbots can provide general information, they might struggle with complex medical scenarios that demand the expertise of healthcare professionals.

Facilitate continuous learning for AI chatbots by regularly updating their medical knowledge base. Integrate a chatbot with reputable medical databases, research updates, and training datasets to enhance its ability to handle complex medical queries.

Lack of Emotional Intelligence

AI chatbots may struggle to interpret and respond appropriately to nuanced emotions expressed by patients. The absence of emotional intelligence could impact the quality of patient interactions, especially in sensitive situations.

If you want to get the most out of chatbots for health, consider investing in AI algorithms that enhance emotional intelligence. This will enable chatbots to recognize and respond to a broader spectrum of emotions. Also, incorporate natural language processing techniques to better understand the context and sentiment.

Limited Context Understanding

AI chatbots may face challenges in understanding the broader context of a patient’s healthcare process. Limited context awareness might result in responses that are not fully tailored to individual patient needs.

Implement context-aware algorithms that consider the patient’s medical history, ongoing treatment plans, and previous interactions to provide more personalized and accurate responses.

Adoption and Trust

Building trust in AI-driven interactions can be challenging. Healthcare professionals may be hesitant to embrace chatbot assistance due to concerns about accuracy, reliability, and the potential for misinterpretation of information.

Consider involving physicians in the development and monitoring of AI chatbot interactions. Assemble teams that collaborate on refining algorithms, validating responses, and ensuring alignment with medical standards.

Common Strategies for AI Chatbot Training

An AI chatbot in healthcare is a complicated tool that requires training, just like a human specialist. This involves using a combination of data-driven approaches and iterative refinement. Here are some of the effective ways to train healthcare chatbots and help them gather relevant healthcare information:

  • Data structuring: annotate large datasets with labeled examples of user queries and appropriate responses. Consider collaborating with healthcare experts to ensure accurate annotations that reflect diverse medical scenarios;
  • User interactions: enable the chatbot to learn from real-time user interactions and queries. Implement feedback loops to adapt and improve the chatbot’s responses. Also, incorporate mechanisms for users to provide feedback on chatbot replies;
  • Scenario-based training: develop scenarios representing various medical conditions and healthcare inquiries. Train the chatbot on diverse scenarios to ensure versatility in handling patient queries;
  • Contextual awareness: train the chatbot to understand and retain context during conversations. Implement memory mechanisms to recall previous user inputs and tailor responses accordingly;
  • Emotion recognition: implement emotion recognition capabilities in the chatbot to identify and respond to the emotional cues of users. This enhances the chatbot’s ability to provide empathetic and personalized responses, especially in healthcare scenarios where emotional support is crucial;
  • Regular updates: keep the chatbot up-to-date with the latest medical information and guidelines. Schedule regular updates to incorporate new data and ensure its knowledge remains actual.

Note that for a better training outcome, the Jelvix team recommends combining various techniques.

Addressing Patient Inquiries with ChatGPT

As a Large Language Model, ChatGPT can help address patient inquiries. However, this process involves careful preparation and customization. We recommend that you pay attention to these tips for the efficient use of medical GPT:

  • Medical information and education: ChatGPT can be programmed to provide reliable and up-to-date medical information to patients. It can answer questions about symptoms, conditions, treatment options, medications, and general health education;
  • Appointment scheduling: integrating ChatGPT into healthcare systems can enable patients to schedule appointments, receive reminders, and inquire about the availability of healthcare services;
  • Medication guidance: ChatGPT can provide patients with information about commonly recommended medications, including dosage, side effects, and potential interactions. However, the chatbot should encourage patients to consult with a physician for precise information on medication usage;
  • Symptom assessment: ChatGPT can assist in the initial assessment of symptoms, asking relevant follow-up questions to understand the nature and severity of the issue. Based on the information provided, ChatGPT should encourage a patient to contact a physician for a comprehensive symptom evaluation and personalized medical advice;
  • Post-discharge support: after hospital discharge, patients may have questions about post-treatment care, recovery, and potential warning signs. ChatGPT can serve as an assistant who accepts patient requests 24/7 and reminds about doctor’s recommendations.

Although ChatGPT can be helpful with patient inquiries, healthcare pros need to note that it may struggle with accurately interpreting nuanced medical queries. This may lead to potential misunderstandings or providing incorrect information.

Healthcare Chatbot Use Cases That Are Worth Talking About

Healthcare chatbots have become invaluable tools in transforming the delivery of healthcare services. The examples below showcase top health chatbots that assist patients in everything, from symptom check-ups to mental health support.

Symptom Checker

Babylon Health, a UK-based telehealth company, offers a chatbot-driven symptom checker that employs AI algorithms to assess the information and provide potential diagnoses. This tool assists users in understanding their health conditions, directing them to appropriate resources, and helping to find a doctor that suits their current condition the most.

Mental Health Support

Woebot, developed by psychologists at Stanford University, is an AI-powered chatbot designed to provide mental health support. It engages users in conversations, offers therapeutic interventions based on cognitive-behavioral therapy, and monitors users’ moods. It can also send the received data to a physician to help diagnose potential mental health issues on time. Woebot has demonstrated effectiveness in providing accessible mental health support and improving users’ emotional well-being.

If you want to learn more use cases, please check the full article here.



Sasha Andrieiev

CEO & Co-founder at Jelvix | Digital Leader| Innovation Expert |