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Professor Oguz Akbilgic

Wake Forest Baptist Medical Center, Winston-Salem (United States of America)

He is a health informaticist with expertise in AI and statistical methodology and their applications in healthcare. His health informatics areas of application include risk prediction, detection and monitoring of cardiovascular disease, adverse maternal events and movement disorders. He has extensive experience in integrating AI models with wearable devices that can remotely collect physiological waveform data, especially, electrocardiogram. His work has been funded by both federal agencies and private organizations such as Michael J Fox Foundation. He is the PI of two active R01 and one R21 as well as contributing to many other federally funded research studies. He is also an innovator and entrepreneur aiming to translate AI models into Software as Medical Devices that can help improving health outcomes through clinical implementations. His efforts led to an FDA Breakthrough Designation for an AI model that can track cardiac biomarkers, non-invasively and remotely via weaerables.

Electrocardiographic sex index applied to children: a proxy assessment for heart maturation

Event: ESC Digital & AI Summit 2025

Topic: Artificial Intelligence, Other

Session: AI in ECG-based risk stratification and disease prediction

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Early identification of underdiagnosed HFpEF by artificial intelligence from electrocardiogram

Event: ESC Digital & AI Summit 2025

Topic: Artificial Intelligence, Other

Session: AI in ECG-based risk stratification and disease prediction

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Remote and noninvasive monitoring of childhood cancer survivors for elevated NT-proBNP using Apple Watch ECG

Event: ESC Digital & AI Summit 2025

Topic: Remote Patient Monitoring

Session: Telemedicine and remote monitoring in cardiovascular and chronic disease management

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The role of ECG sex index (ESI) to identify men at risk for breast cancer

Event: ESC Digital & AI Summit 2025

Topic: Artificial Intelligence, Other

Session: Poster session (2)

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Electrocardiographic artificial intelligence model for timely detection of preeclampsia

Event: ESC Congress 2023

Topic: Electrocardiogram (ECG) and Arrhythmia Analysis

Session: Allow artificial intelligence to assist with diagnostic heavy lifting

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Screening for cardiac dysfunction using artificial intelligence-enabled ECG

Event: ESC Congress 2023

Topic: Chronic Heart Failure

Session: Artificial intelligence for heart failure: from screening to treatment

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