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Market Applications.

Patient Prioritization and Assignment to Care Managers

Patient Prioritization and Assignment to Care Managers

Patient Prioritization and Assignment to Care Managers

In population health management, effectively triaging and prioritizing patients is vital for ensuring that limited resources are optimally allocated to achieve the best health outcomes. AI/ML offers powerful methodologies to streamline this process, ensuring those with the most pressing needs receive timely and targeted care management interventions. 


 1. Data Collection & Unification

  • Multiple Data Sources: Gather comprehensive patient data including demographics, medical history, recent hospitalizations/ED visits, social determinants of health, medication adherence, lab results, provider notes, lifestyle factors, and insurance claims history.
  • Centralized Repository: Integrate this diverse data into a secure data platform, creating a holistic patient profile.

2. Predictive Risk Modeling

  • AI/ML Algorithm Development: Build or utilize powerful predictive models that consider this combined data. The model should be able to stratify patients based on their risk of hospitalization, complications, or disease progression.
  • Risk Scoring: Assign a quantifiable risk value for each patient, reflecting their likelihood of negative health outcomes.

3. Prioritization and Assignment

  • Dynamic Prioritization: Utilize the risk values to dynamically prioritize patients. High-risk patients are flagged for immediate attention, while lower-risk individuals may be scheduled for less frequent check-ins.
  • Automated Case Assignment: Develop a rules-based engine or AI model that matches patient needs to the skillset of care professionals. For example, high-risk diabetic patients might be assigned to care managers with diabetes expertise using recommender models.

4. Targeted Interventions

  • Personalized Care Plans: Care managers leverage integrated patient profiles and risk values to develop personalized care plans addressing the most urgent needs.
  • Proactive Outreach: Engage in proactive outreach to high-risk patients, providing education, monitoring, and coordinating care before issues escalate.

5. Outcomes and Refinement

  • Monitor Outcomes: Track patient outcomes like hospital readmissions, adherence improvement, and health metric stabilization.
  • Iterative Model Refinement: Regularly refine the predictive models and case assignment processes using feedback and new data, improving the accuracy and effectiveness of prioritization.

Benefits:

  • Optimized Resource Allocation: Focused interventions on the highest-risk patients maximize the impact of care management resources.
  • Improved Patient Outcomes: Proactive and targeted care helps prevent complications, reduce hospitalizations, and improve overall health outcomes.
  • Enhanced Efficiency: Streamlined workflows and automated case assignments save time for care managers.
  • Data-Driven Decision Making: Performance tracking and model refinement support continuous, evidence-based improvement to the model and care processes.

Transform Provider Operations & Credentialing

Patient Prioritization and Assignment to Care Managers

Patient Prioritization and Assignment to Care Managers

Tired of manual data entry, inconsistent information, and sluggish onboarding processes plaguing your provider network operations? 


Embrace the future with AI/ML-powered solutions and transform the way you manage and credential your healthcare providers.


Imagine a world where:

  • Automated Data Extraction: AI magically extracts information from enrollment forms and documents, eliminating tedious manual processing and eradicating data entry errors.
  • Improved Data Accuracy: AI-driven verification and anomaly detection guarantee consistent, valid information, ensuring trustworthy data for informed decision-making.
  • Streamlined Onboarding Process: Say goodbye to lengthy onboarding times! AI seamlessly automates tasks, accelerating the process and welcoming new providers with efficiency.
  • Enhanced Reporting & Analytics: Unleash the power of advanced analytics through AI. Gain valuable insights into your provider network data, empowering proactive and data-driven decisions.
  • Reduced Administrative Costs: Dedicate less time and resources to manual tasks. AI minimizes administrative burdens, leading to significant cost savings that can be reinvested in patient care.
  • Improved Compliance: Ensure seamless adherence to regulatory requirements with automated document verification and data quality checks. Eliminate compliance worries and focus on delivering exceptional healthcare.
  • Proactive Network Management: Gain predictive insights into network gaps and identify promising new providers with AI-powered analysis. Proactively manage your network and ensure optimal patient access to quality care.


By embracing AI/ML, you'll not only streamline your operations and reduce costs, but also enhance the quality of your provider network, ensuring your patients have access to the best possible care.

Integrating Risk Adjustment with Population Health Workflows

Integrating Risk Adjustment with Population Health Workflows

Integrating Risk Adjustment with Population Health Workflows

While risk adjustment is a vital component in health insurance, its focus often leans towards financial reimbursement rather than driving proactive healthcare management. Integrating risk adjustment data and processes with care management workflows offers the potential to significantly improve member health outcomes and optimize resource allocation for health plans.


Framework:

1. Holistic Risk Profiling

  • Beyond Financial Risk: Expand traditional risk adjustment scores (such as those based on Hierarchical Condition Categories) to include predictive risk elements and social determinants of health.
  • Dynamic Risk Assessment: Implement AI/ML models that analyze diverse data sources like claims, clinical records, pharmacy data, and lifestyle information. These models calculate real-time, dynamic risk scores that reflect a member's changing health needs.

2. AI-Powered Workflow Integration

  • Automated Case Prioritization: Use these comprehensive risk scores to prioritize caseloads for care managers. Cases with high and escalating risk are flagged for immediate attention, ensuring proactive intervention.
  • Personalized Recommendations: AI-powered tools can analyze risk profiles and suggest specific interventions based on predicted needs in the case management workflow. For example, a member with uncontrolled diabetes and indicators of social isolation might be recommended targeted nutritional support and referrals to community programs using recommendation systems.

3. Proactive Care Management

  • Tailored Interventions: Care managers design care plans that address the individual's most pressing needs and underlying risk factors identified through the integrated risk model.
  • Targeted Engagement: Risk profiles guide personalized communication and outreach, addressing modifiable risk areas and promoting preventive care.

4. Outcome Monitoring & Refinement

  • Tracking Impact: Monitor key population health outcome metrics in the aggregate such as reductions in hospitalizations, improved medication adherence, and ER-admission rate in relation to risk scores.
  • Continuous Feedback Loop: Refine the risk scoring model, care management processes, and intervention recommendations based on ongoing outcome analysis.

Benefits:

  • Improved Member Health: Proactive, targeted care driven by robust risk modeling leads to better health outcomes, reduced complications, and enhanced member well-being.
  • Optimized Resource Utilization: Prioritized caseloads and targeted interventions ensure that care management resources are focused on members with the greatest need.
  • Enhanced Risk Adjustment Accuracy: Integration with care management workflows results in more accurate and timely documentation, improving risk adjustment
  • Data-Driven Population Health: Insights on risk factor distributions across the plan's population support strategic health initiatives and resource allocation.

Streamline Call Center Operations

Integrating Risk Adjustment with Population Health Workflows

Integrating Risk Adjustment with Population Health Workflows

In today's healthcare landscape, gathering valuable feedback from both patients and physicians is crucial for improving service quality and ensuring positive health outcomes. However, traditional methods of analyzing patient-physician interactions, such as manual review of call recordings, can be time-consuming and lack in-depth insights.


This comprehensive framework leverages the power of AI/ML to extract meaningful information from voice call recordings, offering a deeper understanding of stakeholder experiences and paving the way for personalized service and intervention. Let's delve into the specific steps involved:


Transcription & Sentiment Analysis:

  • Automated Transcription: Utilize specialized AI models to convert voice recordings from patient and physician calls into accurate text transcripts.
  • Advanced Sentiment Analysis: Employ advanced AI algorithms to go beyond basic emotion detection. Analyze the text for specific concerns, frustrations, exasperation with care programs, satisfaction levels, and critical topics discussed during the call. This allows for a nuanced understanding of stakeholder experiences.


Data Integration & Insights:

  • Unified Data Platform: Integrate patient demographics, health data, insurance information, and call transcripts into a centralized platform. This creates a comprehensive view of each stakeholder and facilitates deeper insights.
  • AI-powered Analytics: Leverage AI to identify patterns, trends, and correlations within the integrated data. This could reveal insights into specific challenges faced by different patient groups, providers, or insurance members.


Customized Service & Intervention:

  • Targeted Communication & Support: Based on the sentiment analysis and identified issues, use various channels to deliver personalized communication and support. This could involve targeted outreach programs, educational resources, or tailored care coordination plans.
  • Proactive Service Interventions: Employ AI to predict potential issues and proactively reach out to stakeholders with relevant information, resources, or preventive measures. This could involve identifying patients at risk of medication non-adherence or scheduling follow-up appointments with high-risk patients based on call insights and health data.
  • Improved Provider Network Management: Analyze sentiment and feedback related to specific providers. Identify trends in patient satisfaction or concerns related to individual providers, enabling data-driven decisions regarding network management and potential interventions.

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