Cardiologs Holter
  • Cardiologs Predict AF Holter

Cardiologs Holter

Arrhythmia diagnostic software using deep neural networks and cloud technology to analyze continuous ambulatory ECGs.
Ambulatory ECG analysis is challenging for non-experts and time-consuming for experts, who are faced with more and longer recordings. The Cardiologs Holter platform is transforming cardiac diagnostics by streamlining ECG analysis with:
  • Medical-grade AI

  • Cloud-based technology

  • Vendor neutrality

  1. 10x

    Fewer AF false positives while keeping a similar sensitivity1.

    10x

    Fewer AF false positives while keeping a similar sensitivity1.

    Meaning fewer false positives have to be manually deleted1.

    Read more
  2. 42%

    Reduction in analysis duration2.

    42%

    Reduction in analysis duration2.

    Considerably reduce your editing labor with confidence and focus on the meaningful episodes where your expertise is really needed.

    Read more
  3. <1 minute

    Additional analysis time per day of additional recording3.

    <1 minute

    Additional analysis time per day of additional recording3.

    Extend recording duration with limited impact on the analysis time. Increasing the recording duration from 1 to 5 days impacts the analysis time by only a few minutes

  4. +29%

    Sensitivity for VT detection (97% vs 68%, p<0.001)4.

    +29%

    Sensitivity for VT detection (97% vs 68%, p<0.001)4.

    According to a multicenter study comparing the performance of Cardiologs’ deep learning algorithm to a traditional algorithm

    Read more
Service delivery summary

Cardiologs Holter Software-as-a-Service (SaaS) is available from any connected computer and requires no local installation or maintenance. It uses Deep Neural Network (DNN) technology to analyze ECG data and detect more than 20 types of events, including the main arrhythmias. Our offering includes

  • Compatibility with ECGs recorded in devices from multiple vendors
  • Free platform updates
  • Pay per ECG regardless the number of users
  • Application Programming Interface (API)
Image shows the categories of arrhythmia analysis available with Cardiologs Holter
Benefits

Benefit from expert assistance to free yourself from redundant ECG analysis tasks and tackle inefficiencies.

  • Reduce Holter analysis time by about 42% [2]
  • Generate easy-to-read reports, automatically enriched with arrhythmia illustrations and metrics
  • Work from anywhere
  • Use multiple compatible recording devices without additional software
  • Collaborate more easily between colleagues, facilities and within care or service networks
A clinician reviews Cardiologs Holter data on a laptop between consults
Why now

Cardiology departments and service providers need innovative solutions to manage staff shortages while coping with the increasing burden of arrhythmias and data.

  • By age 40 years, the lifetime risk for AF is ~25%5
  • Holter recordings are getting longer, resulting in more data to analyze
  • 29% of Cardiologists are burned out6
A clinician reviews Cardiologs Holter data in between surgeries

We need more solutions like Cardiologs, which help us save time, standardize workflow and collaborate.

Dr. Jerôme Lacotte
Dr. Jerôme Lacotte
Cardiac Electrophysiologist
Institut Cardiovasculaire Paris-Sud (ICPS)
We need more solutions

Documentation

Cardiologs Holter for Clinicians
PDF|(821.30 KB)
Footnotes
  1. Li, J., Rapin, J., Rosier, A., Smith, S.W., Fleureau, Y., Taboulet, P. Deep neural networks improve atrial fibrillation detection in Holter: first results. European Journal of Preventive Cardiology. 2016;23(2uppls):41–55. DOI: 10.1177/2047487316668070.
  2. Fiorina, L., Marijon, E., Maupain, C., et al. AI-based strategy enables faster Holter ECG analysis with equivalent clinical accuracy compared to a classical strategy. EP Europace. 2020;22(suppl 1), euaa162.374. DOI: 10.1093/europace/ euaa162.374.
  3. Based on the analysis of 61,000 consecutive recordings in Cardiologs internal database from 12 different service providers located in 4 different countries.
  4. Multicenter study comparing the performance of Cardiologs’ AI-based algorithm to a traditional algorithm. Fiorina, L., Marijon, E., Maupain, C., et al. Evaluation of an Ambulatory ECG Analysis Platform Using Deep Neural Networks in Routine Clinical Practice. Journal of the American Heart Association. 2022;11(18):e026196. DOI: 10.1161/JAHA.122.026196. Lloyd-Jones, D.M, Wang, T.J, Leip, E.P, Larson, M.G, Levy, D., et al. Lifetime risk for development of atrial fibrillation: the Framingham Heart Study. Circulation. 2004;110(9): 1042–1046. DOI: 10.1161/01.CIR.0000140263.20897.42 Medscape Cardiologist Lifestyle, Happiness & Burnout Report 2023.
Disclaimer
See Cardiologs Holter intended use and cautions here