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American Heart Association

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Final ID: Mo3072

Stepwise Screening with AI-Enhanced Electrocardiogram and Point-of-Care Ultrasound Improves Cost Savings of Structural Heart Disease Detection Compared to AI-Enhanced Electrocardiogram Alone

Abstract Body (Do not enter title and authors here): Background:
AI-ECG is a cost-effective tool for left ventricular dysfunction (LVD) screening. However, its cost-effectiveness for other forms of structural heart disease (SHD) is unknown. While AI-ECG is inexpensive, a drawback is low positive predictive value (PPV), which leads to high costs from unnecessary follow-up tests. Therefore, strategies to improve the yield of AI-ECG-based screening are needed.

Aim:
To evaluate the cost savings of a stepwise approach to SHD screening with AI-ECG followed by POCUS compared to AI-ECG alone.

Methods:
286 adult outpatients undergoing AI-ECG were selected at random. Participants received same-day POCUS and had a recent TTE (our gold standard for SHD). We evaluated four SHDs: aortic stenosis (AS), cardiac amyloidosis (CA), HCM, and LVD. The costs of AI-ECG ($75) and TTE ($1,305) were obtained from Healthcare Bluebook. The cost of POCUS ($100) was estimated independently. Cost savings were analyzed for simultaneous screening for all forms of SHD and screening for individual SHDs.

Results:
AI-ECG identified potential SHD in 125 patients, but only 39 were true positives by TTE (31% PPV). In AI-ECG positive patients, POCUS demonstrated findings of SHD in 52/125. Compared to TTE, this stepwise approach yielded 32 true positives and 20 false positives (62% PPV). The cost per patient diagnosed with SHD was $4,733 with AI-ECG alone but decreased to $3,182 with stepwise screening (33% cost savings). Screening for individual SHDs resulted in cost reduction from $18,724 to $6,315 (66% savings) for AS, $21,023 to $12,230 (42% savings) for CA, $9,883 to $6,175 (38% savings) for HCM, and $4,019 to $3,582 (11% savings) for LVD.

Conclusions:
Stepwise screening for SHD with AI-ECG followed by POCUS significantly reduces costs compared to AI-ECG alone. We also suggest a model for parallel screening for multiple SHDs, which is likely more cost-effective than screening for individual SHDs.
  • Schlesinger, Reid  ( Mayo Clinic , Rochester , Minnesota , United States )
  • Friedman, Paul  ( Mayo Clinic , Rochester , Minnesota , United States )
  • Pislaru, Sorin  ( Mayo Clinic , Rochester , Minnesota , United States )
  • Tsaban, Gal  ( Mayo Clinic , Rochester , Minnesota , United States )
  • Alexandrino, Francisco  ( Mayo Clinic , Rochester , Minnesota , United States )
  • Bird, Jared  ( Mayo Clinic , Rochester , Minnesota , United States )
  • Kane, Garvan  ( Mayo Clinic , Rochester , Minnesota , United States )
  • Deshmukh, Abhishek  ( Mayo Clinic , Rochester , Minnesota , United States )
  • Pellikka, Patricia  ( Mayo Clinic , Rochester , Minnesota , United States )
  • Oh, Jae  ( Mayo Clinic , Rochester , Minnesota , United States )
  • Noseworthy, Peter  ( Mayo Clinic , Rochester , Minnesota , United States )
  • Lopez-jimenez, Francisco  ( Mayo Clinic , Rochester , Minnesota , United States )
  • Author Disclosures:
    Reid Schlesinger: DO NOT have relevant financial relationships | Paul Friedman: No Answer | Sorin Pislaru: No Answer | Gal Tsaban: No Answer | Francisco Alexandrino: DO NOT have relevant financial relationships | Jared Bird: No Answer | Garvan Kane: DO NOT have relevant financial relationships | Abhishek Deshmukh: DO NOT have relevant financial relationships | Patricia Pellikka: DO have relevant financial relationships ; Research Funding (PI or named investigator):Ultromics Ltd:Active (exists now) ; Research Funding (PI or named investigator):TerSera:Past (completed) ; Research Funding (PI or named investigator):GE Healthcare:Past (completed) ; Consultant:Astellas:Past (completed) ; Research Funding (PI or named investigator):Edwards Lifesciences:Active (exists now) | Jae Oh: DO have relevant financial relationships ; Royalties/Patent Beneficiary:Anumana:Active (exists now) ; Consultant:Medtronic:Active (exists now) ; Research Funding (PI or named investigator):REDNVIA:Active (exists now) | Peter Noseworthy: DO NOT have relevant financial relationships | Francisco Lopez-Jimenez: DO have relevant financial relationships ; Employee:Mayo Clinic:Active (exists now) ; Advisor:Select Research:Active (exists now) ; Advisor:WizeCare:Active (exists now) ; Consultant:Kento Health:Active (exists now) ; Advisor:Novo Nordisk:Active (exists now)
Meeting Info:

Scientific Sessions 2024

2024

Chicago, Illinois

Session Info:

Echoes and ECGs: How AI Is Revolutionizing Pillars of Cardiovascular Diagnostics

Monday, 11/18/2024 , 10:30AM - 11:30AM

Abstract Poster Session

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