Search a title or topic

Over 20 million podcasts, powered by 

Player FM logo
Artwork

Content provided by Jake Ryks. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Jake Ryks or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://podcastplayer.com/legal.
Player FM - Podcast App
Go offline with the Player FM app!

HC0037 - Using AI to Predict and Prevent Firefighter Death Featuring: Dr. Andy Tam and Dr. Dillion Dzikowicz

46:31
 
Share
 

Manage episode 500051497 series 3618155
Content provided by Jake Ryks. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Jake Ryks or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://podcastplayer.com/legal.

In this episode, we explore cutting-edge research aimed at tackling one of the leading causes of firefighter line-of-duty deaths: sudden cardiac events. Host [Your Name] speaks with Dr. Andy Tam (NIST) and Dr. Dillon Dzikowicz (University of Rochester) about their groundbreaking project combining AI-driven ECG analysis with wearable technology. Their goal? A real-time, portable monitoring system that can detect dangerous heart rhythms in firefighters before it’s too late.

The conversation covers the science behind ischemic heart events, the challenges of collecting high-quality ECG data during firefighting, the role of machine learning in interpreting those signals, and the path from public research to a usable, life-saving product. You’ll also hear some lighter moments, including a debate about aliens and the quirks of wearable devices for tattooed users.

CONTACT DILLION:

[email protected]


0:00 – 3:50 | Introduction & Guest Backgrounds

Host introduces the episode’s focus: AI detecting abnormal heart rhythms in firefighters.

Meet Dr. Andy Tam (mechanical engineering, machine learning, firefighting technology)

Meet Dr. Dillion Dzikowicz (registered nurse, PhD, cardiovascular research in firefighters)

3:51 – 4:13 | The “Wheel of Stupid Questions” Intro

Acknowledging the show’s tradition of opening with fun, offbeat questions.

4:24 – 8:02 | Stupid Question: Do You Believe in Aliens?

Andy: Yes, as a mix of curiosity and belief.

Dillion: No — prefers evidence-based conclusions.

8:02 – 11:05 | The Problem: Sudden Cardiac Death in Firefighters

100+ firefighter deaths annually in the U.S. from cardiac events

Past interventions: diet, exercise, rehab — but missing the unique on-duty risk window

Shift toward real-time monitoring during actual firefighting

11:06 – 15:13 | Pathophysiology & Detection Goals

Ischemic-induced arrhythmias as primary target

ST segment changes as a key indicator

Predictive potential beyond real-time alerts

15:13 – 18:49 | Machine Learning 101 for ECG Interpretation

Training AI to “think” like a cardiologist

Filtering noise from movement artifacts

Importance of firefighter-specific datasets

18:50 – 21:49 | Wearable Device Development

Moving from bulky Holter monitors to modern wearables

Choosing chest-strap placement over wrist devices for reliability

FDA-cleared continuous ECG with ischemia-specific lead

21:50 – 22:50 | Wearables & Tattoos

Unique challenges in signal detection through tattooed skin

Clinical validation study includes tattooed subjects

22:51 – 27:01 | Software + Hardware Collaboration

Balancing AI development with firefighter comfort & usability

Open questions about when/where to wear devices (on shift vs. during calls)

Volunteer vs. career firefighter considerations

27:02 – 32:32 | Data Collection & Validation

Current study: monitors worn during structural fire training

Avoiding alarm fatigue with careful algorithm tuning

Combining hospital abnormal-event data with real-world firefighter data

32:33 – 39:20 | Model Performance & Future Applications

Accuracy: 95% with Holter data, 92% with wearable data

Potential expansion to police, military, EMS

Goal: device-agnostic algorithms for broad accessibility

39:20 – 45:05 | From Research to Product

Regulatory hurdles: FDA approval for “software as a medical device”

Public funding and the bridge between science and business

Focus remains on saving lives over commercialization

45:06 – 46:07 | Call for Participants

Recruiting volunteer, wildland, and career firefighters (18+) for ongoing studies

Contact details provided in episode description and social media posts

  continue reading

46 episodes

Artwork
iconShare
 
Manage episode 500051497 series 3618155
Content provided by Jake Ryks. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Jake Ryks or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://podcastplayer.com/legal.

In this episode, we explore cutting-edge research aimed at tackling one of the leading causes of firefighter line-of-duty deaths: sudden cardiac events. Host [Your Name] speaks with Dr. Andy Tam (NIST) and Dr. Dillon Dzikowicz (University of Rochester) about their groundbreaking project combining AI-driven ECG analysis with wearable technology. Their goal? A real-time, portable monitoring system that can detect dangerous heart rhythms in firefighters before it’s too late.

The conversation covers the science behind ischemic heart events, the challenges of collecting high-quality ECG data during firefighting, the role of machine learning in interpreting those signals, and the path from public research to a usable, life-saving product. You’ll also hear some lighter moments, including a debate about aliens and the quirks of wearable devices for tattooed users.

CONTACT DILLION:

[email protected]


0:00 – 3:50 | Introduction & Guest Backgrounds

Host introduces the episode’s focus: AI detecting abnormal heart rhythms in firefighters.

Meet Dr. Andy Tam (mechanical engineering, machine learning, firefighting technology)

Meet Dr. Dillion Dzikowicz (registered nurse, PhD, cardiovascular research in firefighters)

3:51 – 4:13 | The “Wheel of Stupid Questions” Intro

Acknowledging the show’s tradition of opening with fun, offbeat questions.

4:24 – 8:02 | Stupid Question: Do You Believe in Aliens?

Andy: Yes, as a mix of curiosity and belief.

Dillion: No — prefers evidence-based conclusions.

8:02 – 11:05 | The Problem: Sudden Cardiac Death in Firefighters

100+ firefighter deaths annually in the U.S. from cardiac events

Past interventions: diet, exercise, rehab — but missing the unique on-duty risk window

Shift toward real-time monitoring during actual firefighting

11:06 – 15:13 | Pathophysiology & Detection Goals

Ischemic-induced arrhythmias as primary target

ST segment changes as a key indicator

Predictive potential beyond real-time alerts

15:13 – 18:49 | Machine Learning 101 for ECG Interpretation

Training AI to “think” like a cardiologist

Filtering noise from movement artifacts

Importance of firefighter-specific datasets

18:50 – 21:49 | Wearable Device Development

Moving from bulky Holter monitors to modern wearables

Choosing chest-strap placement over wrist devices for reliability

FDA-cleared continuous ECG with ischemia-specific lead

21:50 – 22:50 | Wearables & Tattoos

Unique challenges in signal detection through tattooed skin

Clinical validation study includes tattooed subjects

22:51 – 27:01 | Software + Hardware Collaboration

Balancing AI development with firefighter comfort & usability

Open questions about when/where to wear devices (on shift vs. during calls)

Volunteer vs. career firefighter considerations

27:02 – 32:32 | Data Collection & Validation

Current study: monitors worn during structural fire training

Avoiding alarm fatigue with careful algorithm tuning

Combining hospital abnormal-event data with real-world firefighter data

32:33 – 39:20 | Model Performance & Future Applications

Accuracy: 95% with Holter data, 92% with wearable data

Potential expansion to police, military, EMS

Goal: device-agnostic algorithms for broad accessibility

39:20 – 45:05 | From Research to Product

Regulatory hurdles: FDA approval for “software as a medical device”

Public funding and the bridge between science and business

Focus remains on saving lives over commercialization

45:06 – 46:07 | Call for Participants

Recruiting volunteer, wildland, and career firefighters (18+) for ongoing studies

Contact details provided in episode description and social media posts

  continue reading

46 episodes

All episodes

×
 
Loading …

Welcome to Player FM!

Player FM is scanning the web for high-quality podcasts for you to enjoy right now. It's the best podcast app and works on Android, iPhone, and the web. Signup to sync subscriptions across devices.

 

Copyright 2025 | Privacy Policy | Terms of Service | | Copyright
Listen to this show while you explore
Play