A1 Refereed original research article in a scientific journal
Low-complexity fetal heart rate monitoring from carbon-based single-channel dry electrodes maternal electrocardiogram
Authors: Likitalo, Susanna; Anzanpour, Arman; Axelin, Anna; Jaako, Tommi; Celka, Patrick
Publisher: IOP Publishing
Publication year: 2026
Journal: Physiological Measurement
Article number: 015006
Volume: 47
ISSN: 0967-3334
eISSN: 1361-6579
DOI: https://doi.org/10.1088/1361-6579/ae3365
Publication's open availability at the time of reporting: Open Access
Publication channel's open availability : Partially Open Access publication channel
Web address : https://doi.org/10.1088/1361-6579/ae3365
Self-archived copy’s web address: https://research.utu.fi/converis/portal/detail/Publication/508634108
Self-archived copy's licence: CC BY
Self-archived copy's version: Publisher`s PDF
Objective
Fetal and maternal health during pregnancy can be monitored with sensors such as Doppler or scalp fetal ECG. This study focuses on single-channel dry electrode maternal abdominal ECG (aECG) to extract fetal heart rate (fHR) using a low-complexity algorithm suitable for low-power wearables.
Approach
A hybrid model combining machine learning, QRS masking, and data fusion was trained on two PhysioNet databases and synthetically generated aECG. Model selection employed the Akaike criterion with data balancing and random sampling.
Main results
The algorithm was tested on 80 recordings from the Computer in Cardiology Challenge 2013 (CCC) and the abdominal and direct fetal database (ADFD), augmented with 100 synthetic aECG. Performance for fetal QRS detection reached Precision = 97.2(82.2)%, Specificity = 99.8(93.8)%, and Sensitivity = 97.4(93.9)% on ADFD and CCC, respectively. Clinical validation used the Polar Electro Oy H10 dry-electrode device at the Maternity Hospital of Southwest Finland. Four subjects (gestational age 39.8 ± 1.3weeks) were analyzed, with seven discarded. For fHR, the mean absolute percentage error was 1.9 ± 1.0%, Availability 79.6 ± 3.9%, and coverage probability CP5 = 76.2%, CP10 = 87.5%.
Significance
These results demonstrate the feasibility of fHR monitoring from dryelectrode aECG tailored for low-power wearables. Signal quality in clinical subjects matched the lowest PhysioNet cases, confirming robustness under low signal-to-noise conditions.
Downloadable publication This is an electronic reprint of the original article. |
Funding information in the publication:
This project is supported by the Chips Joint Undertaking (Grant Agreement No. 101095792) and its members Finland, Germany, Ireland, the Netherlands, Sweden, and Switzerland. This work includes top-up funding from the Swiss State Secretariat for Education, Research and Innovation (SERI). In addition, Finnish partner receives funding from Business Finland (4136/31/2022).