GNS-AI

Patient support chatbot

Enhancing Cancer Care with AI-Powered Symptom Management and Follow-Up Systems

Before:
Cancer care teams faced persistent challenges, including staff shortages and inconsistent patient follow-up, which undermined both patient outcomes and clinical efficiency. Patients often contacted their care providers for minor, non-urgent symptoms, adding to the workload, or failed to follow up on their treatment progress, leading to serious consequences. In some cases, this lack of structured follow-up resulted in premature discontinuation of critical immunotherapy treatments, negatively impacting long-term treatment outcomes. These gaps in care created inefficiencies, delayed critical interventions, and disrupted patient adherence to care plans.


What We Did:
To address these challenges, I spearheaded the development of an AI-driven solution combining a chatbot and a recommender engine to optimize symptom management and improve follow-up care:

  1. Real-Time Symptom Reporting:
    • A chatbot was deployed to collect patient-reported symptoms in real time through a user-friendly interface.
    • Patients could log their symptoms anytime, ensuring consistent monitoring without requiring immediate staff involvement.
  2. Symptom Severity Assessment:
    • The recommender engine utilized machine learning algorithms to grade symptom severity based on patient inputs.
    • Severe symptoms were flagged for immediate action, while mild symptoms triggered automated responses with guidance and reminders tailored to individual patients.
  3. Automated Triage and Follow-Up:
    • Patients requiring urgent intervention were automatically flagged for immediate follow-up by clinical staff, ensuring timely care.
    • Those with mild or moderate symptoms received automated, personalized guidance, reducing unnecessary clinical workload.
  4. Enhanced Staff Workflow:
    • The system provided real-time alerts to clinical teams, prioritizing cases based on severity. This enabled care providers to focus their attention on high-priority cases without being overwhelmed by less critical concerns.

After:

  1. Improved Treatment Adherence:
    • By streamlining follow-up processes and ensuring timely symptom management, the system led to a 20% increase in patients completing their immunotherapy treatments, preventing premature discontinuation and improving outcomes.
  2. Optimized Clinical Workflows:
    • Clinical staff experienced a significant reduction in workload, allowing them to dedicate more time and resources to high-priority cases.
    • Response times for critical interventions were significantly reduced, improving overall efficiency.
  3. Enhanced Patient Care:
    • Patients received timely and personalized attention based on their specific needs, fostering trust and improving their experience.
    • The system ensured that minor concerns were addressed proactively while serious symptoms were escalated promptly, resulting in better overall outcomes.

Key Results:

  • 20% increase in treatment adherence rates for immunotherapy patients.
  • Reduced response times for critical cases, enabling faster clinical interventions.
  • Improved patient satisfaction, with patients reporting higher levels of confidence and engagement in their care.
  • Streamlined workflows, reducing the administrative burden on clinical staff while enhancing their ability to prioritize urgent cases.

Takeaway:
This project exemplifies how AI-powered tools like chatbots and recommender systems can address inefficiencies in healthcare while significantly enhancing patient outcomes. By leveraging real-time data collection, intelligent triage, and automated follow-up processes, cancer care teams can deliver more efficient, patient-centered care while reducing the strain on their resources.

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