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  • About EnsoData
    • Vision
    • Leadership
    • Culture
    • DEI
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    • EnsoSleep for Health Systems
    • Sleep Study Management
    • AI Sleep Scoring
    • ePrescribing
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March 5, 2021

Clinical Validation of AI Scoring in Adult and Pediatric Clinical PSG Samples Compared to Prospective, Double-Blind Scoring Panel

In this study, we contribute to this growing body of clinical AI validation evidence and experimental design methodologies with an interoperable AI scoring engine for sleep studies in Adult and Pediatric populations.

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Clinical Validation of AI Analysis of PPG Based Sleep-Wake Staging, Total Sleep Time, and Respiratory Rate

In this study, we clinically validate the performance of AI for interoperable, PPG-based sleep staging and sleep disordered breathing event detection.

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Redefining Positive Airway Pressure (PAP) Adherence Phenotypes Utilizing Deep Neural Networks and Unsupervised Clustering

This study looks to identify CPAP adherence phenotypes in order to assist with the creation of more precise and personalized patient categorization and treatment.

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Dynamic Phenotype Learning: A Novel Machine Learning Approach To Develop And Discover New OSA Sub-Types

This research abstract examines the ability to utilize Dynamic Phenotype Learning (DPL) as an innovative machine learning technique to identify OSA subtypes that can better predict clinical risk and success with therapies.

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Evaluation of Electronic Medical Record Artificial Intelligence Screening Tools for Undiagnosed OSA

In this study, we demonstrate how AI methodologies can be utilized together with existing EMR data to create new screening tools to increase diagnostic sensitivity and facilitate discovery of preclinical OSA phenotypes.

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Recent Posts
  • EnsoData unveils new product offering with AI-driven Remote Physiological Monitoring for Sleep-Disordered Breathing
  • Revolutionizing Sleep Medicine: Bridging the Gap for Undiagnosis of Sleep Apnea Patients with Innovative Technology
  • EnsoData’s Celeste+ mobile application adds three new physical channels to home sleep apnea testing solution: acoustic flow, snore, and actigraphy
  • Hottest Sensor in Clinical Use: Leveraging the Non-Invasive PPG Signal Across Healthcare Verticals
  • Association Between Positive Airway Pressure Therapy and Healthcare Costs Among Older Adults with Comorbid Obstructive Sleep Apnea and Common Chronic Conditions: An Actuarial Analysis
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