| Literature DB >> 34206457 |
Xina Quan1, Junjun Liu1, Thomas Roxlo1, Siddharth Siddharth1, Weyland Leong1, Arthur Muir1, So-Min Cheong2, Anoop Rao3.
Abstract
This paper reviews recent advances in non-invasive blood pressure monitoring and highlights the added value of a novel algorithm-based blood pressure sensor which uses machine-learning techniques to extract blood pressure values from the shape of the pulse waveform. We report results from preliminary studies on a range of patient populations and discuss the accuracy and limitations of this capacitive-based technology and its potential application in hospitals and communities.Entities:
Keywords: NICU; cNIBP; hypertension; hypotension; neonate; non-invasive blood pressure monitoring
Mesh:
Year: 2021 PMID: 34206457 PMCID: PMC8271585 DOI: 10.3390/s21134273
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Comparison of non-invasive blood pressure monitoring technologies.
| Method | Measurement | Advantages | Disadvantages | Example | Example | |
|---|---|---|---|---|---|---|
| Cuff | Finger, tabletop (volume clamp technology) | Continuous | Validated for adults, can be self-calibrated | Restricted mobility, bulky, expensive (>$15 K) | BMEYE, Finapres, ADI, | |
| Finger, wearable (volume clamp technology) | Continuous | Validated for adults, can be self-calibrated | Expensive ($5 K), uncomfortable, restricts movement of hand, high power | Caretaker | ||
| Wrist | Intermittent | Validated for adults; established technology | Concerns about accuracy, bulky, high power | Omron, H2Care | ||
| Cuffless | PPG | Continuous | Wearable technology widely used for heart rate; low cost; can pick up signal almost anywhere on body | Noise from ambient light, skin color; uncomfortable; high power; periodic calibration | Aktiia, BioBeat, Aura | Apple, ASUS, Samsung, Sensifree, |
| PWV, PTT | Continuous | Widely studied technique; can use many combinations of sensor technology | Requires multiple sensors to determine pulse wave velocity (PWV) and pulse transit time (PTT), large training dataset, high power; many of the same issues as PPG | Sotera, Somnometics | Vital Insite, Quanttus, Scanadu, Blumio, | |
| Tonometer | Continuous | Established technique; validated for adults | Requires calibration, expensive, uncomfortable, restricts movement | Tensys, HealthStat | ||
| Capacitance | Continuous | Demonstrated for neonates; highly detailed pulse waveforms; requires minimal contact with skin for less irritation; lower power | New technology | PyrAmes, |
Abbreviations: FDA–US Food and Drug Administration; EU–European Union; PWV–Pulse wave velocity; PTT–Pulse transit time; PPG–Photoplethysmography.
Figure 1BoppliTM device to monitor the blood pressure of infants in critical care.
Figure 2Schematic of operating principle of PyrAmes’ capacitive sensor technology.
Figure 3Comparison of normalized invasive arterial line data (red) taken simultaneously with normalized PyrAmes sensor data (blue).
Figure 4Proof-of-concept results for a single person convolutional neural network algorithm trained on cuff data collected from March through May and then tested in September and October.
Feasibility Studies.
| Features | Study #1: | Study #2a: | Study #2b: |
|---|---|---|---|
|
| |||
|
| ~10 min per subject (6 h total) | ~5 h per patient (500 h) | ~10 h per patient (360 h) |
|
| V2 Prototype (training data) | V3 Prototype | Boppli Band |
|
| Area of 4-sensor array: 6 × 10 mm2, | Area of 4-sensor array: | Area of 4-sensor array: |
|
| Wrist | Wrist and foot | |
|
| 3–100 cuff msmts per patient. | Stanford invasive arterial line (IAL) data ( | |
| SBP: −0.3 (5.7) mmHg | SBP: −3 to 3 (>12) mmHg | SBP: 2.8 (5.5) mmHg | |
|
| Drs. Vivek Bhalla, Tara Chang, Sandra Tsai | Drs. Anita Honkanen, Chandra Ramamoorthy, Archana Varma, Alexandria Joseph | Drs. William Rhine, |
|
| Cardiology & Hypertensive clinics | Intensive Care Unit (ICU), Pediatric ICU (PICU), Cardiovascular ICU (CVICU) | Neonatal (ICU), CVICU |
Abbreviations: M–Male; F–Female; GA–Gestational age; msmts–BP measurements; ABPM–Ambulatory Blood Pressure Monitor; ANN–Artificial neural network; ICU–Intensive Care Unit; PICU–Pediatric ICU; CVICU–Cardiovascular ICU; NICU–Neonatal ICU; SBP, DBP and MAP–Systolic, Diastolic and Mean arterial pressure; IAL–invasive arterial line.
Figure 5Results from convolutional neural network model trained with cuff data from Study 1 and tested with an ambulatory blood pressure monitor for 4 other ambulatory subjects (SBP values color coded by individual).
Results of neonate BP-model-3 (N = 16).
| MAP | SBP | DBP | FDA Guidelines [ | ||||
|---|---|---|---|---|---|---|---|
| MAE | sd | MAE | sd | MAE | sd | MAE | sd |
| 0.1 | 4.1 | 2.8 | 5.5 | −0.2 | 4.6 | <±5 | <8 mmHg |
Figure 6Plots of convolutional neural network model outputs vs. invasive arterial line ground truth values of mean arterial pressure (MAP), systolic (SBP), and diastolic (DBP) blood pressure values averaged over each individual. The points are color coded for the patients’ age in days.
Figure 7Bland-Altman plots of BP-model-3 results for mean arterial (MAP), systolic (SBP), and diastolic (DBP) blood pressure values in mmHg averaged over each individual. The x-axis is the average of the model and reference blood pressure values. The y-axis is the difference between the model and reference values. The points are color coded for the patients’ weight in kilograms. The red solid line indicates the overall error of the model (Mean Difference (MD)). The dotted red lines indicate 1.96 × the standard deviation (sd). The green dotted lines indicate the MD limits for accuracy of ±5 mmHg per guidelines from the US Food and Drug Administration.
Figure 8Comparison of invasive arterial line (blue) and BP-model-3 (red) mean arterial pressure (MAP) values as a function of time. Each data point is averaged over a one-minute interval. The curves are a spline fit with lambda = 1 × 10−6.