This hands-on course focuses on implementing AI-powered automation solutions for clinical workflows. Learners gain practical experience with Azure AI services for clinical documentation, medical text processing, anomaly detection, and intelligent monitoring systems. You learn to integrate multiple AI services to create comprehensive workflow automation solutions that enhance clinical efficiency and care quality.

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What you'll learn
Implement Azure AI services, including NLP and speech tools, for clinical documentation and text analysis.
Design and integrate AI-driven systems for patient monitoring, anomaly detection, and clinical alerts.
Evaluate and optimize automated clinical workflows to ensure efficiency, accuracy, and reliability.
Skills you'll gain
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There are 4 modules in this course
This foundational module introduces learners to the core technologies and techniques for automating clinical documentation processes. Students gain hands-on experience with Azure Text Analytics for Health, Dragon Medical One, Azure Speech Services, and natural language processing technologies specifically designed for healthcare environments. The module focuses on transforming unstructured clinical narratives into structured, actionable data while maintaining accuracy and clinical context. Learners explore the integration of speech recognition, entity extraction, and medical terminology processing to create comprehensive documentation workflows that enhance efficiency and reduce administrative burden.
What's included
6 videos6 readings4 assignments
This intermediate module advances learners' skills in sophisticated text processing techniques tailored for healthcare environments. Students explore generative AI applications for clinical summarization, automated medical document classification systems, and the integration of multiple AI services into cohesive workflows. The module emphasizes multi-document analysis, advanced prompt engineering, and the creation of intelligent systems that can process complex clinical narratives across various document types. Learners develop expertise in handling lengthy clinical texts, maintaining medical accuracy, and designing quality assurance processes for AI-generated outputs.
What's included
6 videos6 readings4 assignments
This advanced module focuses on implementing intelligent monitoring systems that can detect patterns and anomalies in patient data to support clinical decision-making. Students learn to configure Power BI's built-in AI anomaly detection features (powered by Azure AI) for physiological parameters, design sophisticated alert generation workflows, and create real-time monitoring systems that integrate with existing clinical infrastructure. The module emphasizes the balance between sensitivity and specificity in clinical alerting, strategies for reducing alert fatigue, and the development of intelligent escalation protocols that ensure critical information reaches the right clinicians at the right time.
What's included
6 videos6 readings4 assignments
This capstone module addresses the critical aspects of maintaining safe, effective, and reliable AI systems in healthcare production environments. Students learn to implement comprehensive monitoring frameworks using Azure Responsible AI tools, design quality assurance processes that ensure consistent performance, and create feedback mechanisms for continuous system improvement. The module covers regulatory compliance, audit trail management, fairness monitoring, and the integration of AI systems with existing healthcare information systems. Learners develop expertise in establishing governance frameworks that balance innovation with patient safety and regulatory requirements.
What's included
6 videos6 readings5 assignments
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